diff --git a/.github/workflows/integration-tests.yml b/.github/workflows/integration-tests.yml index 0eb252695..f54bed839 100644 --- a/.github/workflows/integration-tests.yml +++ b/.github/workflows/integration-tests.yml @@ -6,7 +6,6 @@ on: pull_request: branches: [ main ] paths: - - 'distributions/**' - 'llama_stack/**' - 'tests/integration/**' - 'uv.lock' diff --git a/.github/workflows/providers-build.yml b/.github/workflows/providers-build.yml index ee532a94a..23257d7dc 100644 --- a/.github/workflows/providers-build.yml +++ b/.github/workflows/providers-build.yml @@ -86,15 +86,15 @@ jobs: runs-on: ubuntu-latest steps: - name: Checkout repository - uses: actions/checkout@v4 + uses: actions/checkout@11bd71901bbe5b1630ceea73d27597364c9af683 # v4.2.2 - name: Set up Python - uses: actions/setup-python@v5 + uses: actions/setup-python@8d9ed9ac5c53483de85588cdf95a591a75ab9f55 # v5.5.0 with: python-version: '3.10' - name: Install uv - uses: astral-sh/setup-uv@v5 + uses: astral-sh/setup-uv@0c5e2b8115b80b4c7c5ddf6ffdd634974642d182 # v5.4.1 with: python-version: "3.10" @@ -107,3 +107,41 @@ jobs: - name: Build a single provider run: | USE_COPY_NOT_MOUNT=true LLAMA_STACK_DIR=. uv run llama stack build --image-type venv --image-name test --providers inference=remote::ollama + + build-custom-container-distribution: + runs-on: ubuntu-latest + steps: + - name: Checkout repository + uses: actions/checkout@11bd71901bbe5b1630ceea73d27597364c9af683 # v4.2.2 + + - name: Set up Python + uses: actions/setup-python@8d9ed9ac5c53483de85588cdf95a591a75ab9f55 # v5.5.0 + with: + python-version: '3.10' + + - name: Install uv + uses: astral-sh/setup-uv@0c5e2b8115b80b4c7c5ddf6ffdd634974642d182 # v5.4.1 + with: + python-version: "3.10" + + - name: Install LlamaStack + run: | + uv venv + source .venv/bin/activate + uv pip install -e . + + - name: Build a single provider + run: | + yq -i '.image_type = "container"' llama_stack/templates/dev/build.yaml + yq -i '.image_name = "test"' llama_stack/templates/dev/build.yaml + USE_COPY_NOT_MOUNT=true LLAMA_STACK_DIR=. uv run llama stack build --config llama_stack/templates/dev/build.yaml + + - name: Inspect the container image entrypoint + run: | + IMAGE_ID=$(docker images --format "{{.Repository}}:{{.Tag}}" | head -n 1) + entrypoint=$(docker inspect --format '{{ .Config.Entrypoint }}' $IMAGE_ID) + echo "Entrypoint: $entrypoint" + if [ "$entrypoint" != "[python -m llama_stack.distribution.server.server --config /app/run.yaml]" ]; then + echo "Entrypoint is not correct" + exit 1 + fi diff --git a/.github/workflows/test-external-providers.yml b/.github/workflows/test-external-providers.yml index 2ead8f845..37f5c45ab 100644 --- a/.github/workflows/test-external-providers.yml +++ b/.github/workflows/test-external-providers.yml @@ -5,10 +5,22 @@ on: branches: [ main ] pull_request: branches: [ main ] + paths: + - 'llama_stack/**' + - 'tests/integration/**' + - 'uv.lock' + - 'pyproject.toml' + - 'requirements.txt' + - '.github/workflows/test-external-providers.yml' # This workflow jobs: test-external-providers: runs-on: ubuntu-latest + strategy: + matrix: + image-type: [venv] + # We don't do container yet, it's tricky to install a package from the host into the + # container and point 'uv pip install' to the correct path... steps: - name: Checkout repository uses: actions/checkout@v4 @@ -35,17 +47,25 @@ jobs: uv sync --extra dev --extra test uv pip install -e . - - name: Install Ollama custom provider + - name: Apply image type to config file + run: | + yq -i '.image_type = "${{ matrix.image-type }}"' tests/external-provider/llama-stack-provider-ollama/custom-distro.yaml + cat tests/external-provider/llama-stack-provider-ollama/custom-distro.yaml + + - name: Setup directory for Ollama custom provider run: | mkdir -p tests/external-provider/llama-stack-provider-ollama/src/ cp -a llama_stack/providers/remote/inference/ollama/ tests/external-provider/llama-stack-provider-ollama/src/llama_stack_provider_ollama - uv pip install tests/external-provider/llama-stack-provider-ollama - name: Create provider configuration run: | mkdir -p /tmp/providers.d/remote/inference cp tests/external-provider/llama-stack-provider-ollama/custom_ollama.yaml /tmp/providers.d/remote/inference/custom_ollama.yaml + - name: Build distro from config file + run: | + USE_COPY_NOT_MOUNT=true LLAMA_STACK_DIR=. uv run llama stack build --config tests/external-provider/llama-stack-provider-ollama/custom-distro.yaml + - name: Wait for Ollama to start run: | echo "Waiting for Ollama..." @@ -62,11 +82,13 @@ jobs: exit 1 - name: Start Llama Stack server in background + if: ${{ matrix.image-type }} == 'venv' env: INFERENCE_MODEL: "meta-llama/Llama-3.2-3B-Instruct" run: | - source .venv/bin/activate - nohup uv run llama stack run tests/external-provider/llama-stack-provider-ollama/run.yaml --image-type venv > server.log 2>&1 & + source ci-test/bin/activate + uv run pip list + nohup uv run --active llama stack run tests/external-provider/llama-stack-provider-ollama/run.yaml --image-type ${{ matrix.image-type }} > server.log 2>&1 & - name: Wait for Llama Stack server to be ready run: | diff --git a/.github/workflows/unit-tests.yml b/.github/workflows/unit-tests.yml index 4b0c58b99..962141744 100644 --- a/.github/workflows/unit-tests.yml +++ b/.github/workflows/unit-tests.yml @@ -6,7 +6,6 @@ on: pull_request: branches: [ main ] paths: - - 'distributions/**' - 'llama_stack/**' - 'tests/unit/**' - 'uv.lock' diff --git a/docs/_static/js/detect_theme.js b/docs/_static/js/detect_theme.js index 484b2bb8b..712565ef7 100644 --- a/docs/_static/js/detect_theme.js +++ b/docs/_static/js/detect_theme.js @@ -1,9 +1,32 @@ document.addEventListener("DOMContentLoaded", function () { const prefersDark = window.matchMedia("(prefers-color-scheme: dark)").matches; const htmlElement = document.documentElement; - if (prefersDark) { - htmlElement.setAttribute("data-theme", "dark"); + + // Check if theme is saved in localStorage + const savedTheme = localStorage.getItem("sphinx-rtd-theme"); + + if (savedTheme) { + // Use the saved theme preference + htmlElement.setAttribute("data-theme", savedTheme); + document.body.classList.toggle("dark", savedTheme === "dark"); } else { - htmlElement.setAttribute("data-theme", "light"); + // Fall back to system preference + const theme = prefersDark ? "dark" : "light"; + htmlElement.setAttribute("data-theme", theme); + document.body.classList.toggle("dark", theme === "dark"); + // Save initial preference + localStorage.setItem("sphinx-rtd-theme", theme); } + + // Listen for theme changes from the existing toggle + const observer = new MutationObserver(function(mutations) { + mutations.forEach(function(mutation) { + if (mutation.attributeName === "data-theme") { + const currentTheme = htmlElement.getAttribute("data-theme"); + localStorage.setItem("sphinx-rtd-theme", currentTheme); + } + }); + }); + + observer.observe(htmlElement, { attributes: true }); }); diff --git a/docs/_static/llama-stack-spec.html b/docs/_static/llama-stack-spec.html index 54d888441..4c5393947 100644 --- a/docs/_static/llama-stack-spec.html +++ b/docs/_static/llama-stack-spec.html @@ -5221,17 +5221,25 @@ "default": 10 }, "model": { - "type": "string" + "type": "string", + "description": "The model identifier to use for the agent" }, "instructions": { - "type": "string" + "type": "string", + "description": "The system instructions for the agent" + }, + "name": { + "type": "string", + "description": "Optional name for the agent, used in telemetry and identification" }, "enable_session_persistence": { "type": "boolean", - "default": false + "default": false, + "description": "Optional flag indicating whether session data has to be persisted" }, "response_format": { - "$ref": "#/components/schemas/ResponseFormat" + "$ref": "#/components/schemas/ResponseFormat", + "description": "Optional response format configuration" } }, "additionalProperties": false, @@ -5239,7 +5247,8 @@ "model", "instructions" ], - "title": "AgentConfig" + "title": "AgentConfig", + "description": "Configuration for an agent." }, "AgentTool": { "oneOf": [ @@ -8891,8 +8900,7 @@ }, "additionalProperties": false, "required": [ - "role", - "content" + "role" ], "title": "OpenAIAssistantMessageParam", "description": "A message containing the model's (assistant) response in an OpenAI-compatible chat completion request." diff --git a/docs/_static/llama-stack-spec.yaml b/docs/_static/llama-stack-spec.yaml index cf657bff9..a24f1a9db 100644 --- a/docs/_static/llama-stack-spec.yaml +++ b/docs/_static/llama-stack-spec.yaml @@ -3686,18 +3686,29 @@ components: default: 10 model: type: string + description: >- + The model identifier to use for the agent instructions: type: string + description: The system instructions for the agent + name: + type: string + description: >- + Optional name for the agent, used in telemetry and identification enable_session_persistence: type: boolean default: false + description: >- + Optional flag indicating whether session data has to be persisted response_format: $ref: '#/components/schemas/ResponseFormat' + description: Optional response format configuration additionalProperties: false required: - model - instructions title: AgentConfig + description: Configuration for an agent. AgentTool: oneOf: - type: string @@ -6097,7 +6108,6 @@ components: additionalProperties: false required: - role - - content title: OpenAIAssistantMessageParam description: >- A message containing the model's (assistant) response in an OpenAI-compatible diff --git a/docs/source/building_applications/rag.md b/docs/source/building_applications/rag.md index 39d1ba333..db6303209 100644 --- a/docs/source/building_applications/rag.md +++ b/docs/source/building_applications/rag.md @@ -68,7 +68,8 @@ chunks_response = client.vector_io.query( ### Using the RAG Tool A better way to ingest documents is to use the RAG Tool. This tool allows you to ingest documents from URLs, files, etc. -and automatically chunks them into smaller pieces. +and automatically chunks them into smaller pieces. More examples for how to format a RAGDocument can be found in the +[appendix](#more-ragdocument-examples). ```python from llama_stack_client import RAGDocument @@ -178,3 +179,38 @@ for vector_db_id in client.vector_dbs.list(): print(f"Unregistering vector database: {vector_db_id.identifier}") client.vector_dbs.unregister(vector_db_id=vector_db_id.identifier) ``` + +### Appendix + +#### More RAGDocument Examples +```python +from llama_stack_client import RAGDocument +import base64 + +RAGDocument(document_id="num-0", content={"uri": "file://path/to/file"}) +RAGDocument(document_id="num-1", content="plain text") +RAGDocument( + document_id="num-2", + content={ + "type": "text", + "text": "plain text input", + }, # for inputs that should be treated as text explicitly +) +RAGDocument( + document_id="num-3", + content={ + "type": "image", + "image": {"url": {"uri": "https://mywebsite.com/image.jpg"}}, + }, +) +B64_ENCODED_IMAGE = base64.b64encode( + requests.get( + "https://raw.githubusercontent.com/meta-llama/llama-stack/refs/heads/main/docs/_static/llama-stack.png" + ).content +) +RAGDocuemnt( + document_id="num-4", + content={"type": "image", "image": {"data": B64_ENCODED_IMAGE}}, +) +``` +for more strongly typed interaction use the typed dicts found [here](https://github.com/meta-llama/llama-stack-client-python/blob/38cd91c9e396f2be0bec1ee96a19771582ba6f17/src/llama_stack_client/types/shared_params/document.py). diff --git a/docs/source/building_applications/tools.md b/docs/source/building_applications/tools.md index 94841a773..6da1c5a6a 100644 --- a/docs/source/building_applications/tools.md +++ b/docs/source/building_applications/tools.md @@ -41,7 +41,7 @@ client.toolgroups.register( The tool requires an API key which can be provided either in the configuration or through the request header `X-LlamaStack-Provider-Data`. The format of the header is `{"_api_key": }`. - +> **NOTE:** When using Tavily Search and Bing Search, the inference output will still display "Brave Search." This is because Llama models have been trained with Brave Search as a built-in tool. Tavily and bing is just being used in lieu of Brave search. #### Code Interpreter @@ -214,3 +214,69 @@ response = agent.create_turn( session_id=session_id, ) ``` +## Simple Example 2: Using an Agent with the Web Search Tool +1. Start by registering a Tavily API key at [Tavily](https://tavily.com/). +2. [Optional] Provide the API key directly to the Llama Stack server +```bash +export TAVILY_SEARCH_API_KEY="your key" +``` +```bash +--env TAVILY_SEARCH_API_KEY=${TAVILY_SEARCH_API_KEY} +``` +3. Run the following script. +```python +from llama_stack_client.lib.agents.agent import Agent +from llama_stack_client.types.agent_create_params import AgentConfig +from llama_stack_client.lib.agents.event_logger import EventLogger +from llama_stack_client import LlamaStackClient + +client = LlamaStackClient( + base_url=f"http://localhost:8321", + provider_data={ + "tavily_search_api_key": "your_TAVILY_SEARCH_API_KEY" + }, # Set this from the client side. No need to provide it if it has already been configured on the Llama Stack server. +) + +agent = Agent( + client, + model="meta-llama/Llama-3.2-3B-Instruct", + instructions=( + "You are a web search assistant, must use websearch tool to look up the most current and precise information available. " + ), + tools=["builtin::websearch"], +) + +session_id = agent.create_session("websearch-session") + +response = agent.create_turn( + messages=[ + {"role": "user", "content": "How did the USA perform in the last Olympics?"} + ], + session_id=session_id, +) +for log in EventLogger().log(response): + log.print() +``` + +## Simple Example3: Using an Agent with the WolframAlpha Tool +1. Start by registering for a WolframAlpha API key at [WolframAlpha Developer Portal](https://developer.wolframalpha.com/access). +2. Provide the API key either when starting the Llama Stack server: + ```bash + --env WOLFRAM_ALPHA_API_KEY=${WOLFRAM_ALPHA_API_KEY} + ``` + or from the client side: + ```python + client = LlamaStackClient( + base_url="http://localhost:8321", + provider_data={"wolfram_alpha_api_key": wolfram_api_key}, + ) + ``` +3. Configure the tools in the Agent by setting `tools=["builtin::wolfram_alpha"]`. +4. Example user query: + ```python + response = agent.create_turn( + messages=[{"role": "user", "content": "Solve x^2 + 2x + 1 = 0 using WolframAlpha"}], + session_id=session_id, + ) + ``` +``` diff --git a/docs/source/distributions/building_distro.md b/docs/source/distributions/building_distro.md index ad5d3bff4..4c342b14b 100644 --- a/docs/source/distributions/building_distro.md +++ b/docs/source/distributions/building_distro.md @@ -176,7 +176,11 @@ distribution_spec: safety: inline::llama-guard agents: inline::meta-reference telemetry: inline::meta-reference +image_name: ollama image_type: conda + +# If some providers are external, you can specify the path to the implementation +external_providers_dir: /etc/llama-stack/providers.d ``` ``` @@ -184,6 +188,57 @@ llama stack build --config llama_stack/templates/ollama/build.yaml ``` ::: +:::{tab-item} Building with External Providers + +Llama Stack supports external providers that live outside of the main codebase. This allows you to create and maintain your own providers independently or use community-provided providers. + +To build a distribution with external providers, you need to: + +1. Configure the `external_providers_dir` in your build configuration file: + +```yaml +# Example my-external-stack.yaml with external providers +version: '2' +distribution_spec: + description: Custom distro for CI tests + providers: + inference: + - remote::custom_ollama +# Add more providers as needed +image_type: container +image_name: ci-test +# Path to external provider implementations +external_providers_dir: /etc/llama-stack/providers.d +``` + +Here's an example for a custom Ollama provider: + +```yaml +adapter: + adapter_type: custom_ollama + pip_packages: + - ollama + - aiohttp + - llama-stack-provider-ollama # This is the provider package + config_class: llama_stack_ollama_provider.config.OllamaImplConfig + module: llama_stack_ollama_provider +api_dependencies: [] +optional_api_dependencies: [] +``` + +The `pip_packages` section lists the Python packages required by the provider, as well as the +provider package itself. The package must be available on PyPI or can be provided from a local +directory or a git repository (git must be installed on the build environment). + +2. Build your distribution using the config file: + +``` +llama stack build --config my-external-stack.yaml +``` + +For more information on external providers, including directory structure, provider types, and implementation requirements, see the [External Providers documentation](../providers/external.md). +::: + :::{tab-item} Building Container ```{admonition} Podman Alternative diff --git a/docs/source/distributions/remote_hosted_distro/nvidia.md b/docs/source/distributions/remote_hosted_distro/nvidia.md deleted file mode 100644 index c470faea7..000000000 --- a/docs/source/distributions/remote_hosted_distro/nvidia.md +++ /dev/null @@ -1,87 +0,0 @@ - -# NVIDIA Distribution - -The `llamastack/distribution-nvidia` distribution consists of the following provider configurations. - -| API | Provider(s) | -|-----|-------------| -| agents | `inline::meta-reference` | -| datasetio | `inline::localfs` | -| eval | `inline::meta-reference` | -| inference | `remote::nvidia` | -| post_training | `remote::nvidia` | -| safety | `remote::nvidia` | -| scoring | `inline::basic` | -| telemetry | `inline::meta-reference` | -| tool_runtime | `inline::rag-runtime` | -| vector_io | `inline::faiss` | - - -### Environment Variables - -The following environment variables can be configured: - -- `NVIDIA_API_KEY`: NVIDIA API Key (default: ``) -- `NVIDIA_APPEND_API_VERSION`: Whether to append the API version to the base_url (default: `True`) -- `NVIDIA_DATASET_NAMESPACE`: NVIDIA Dataset Namespace (default: `default`) -- `NVIDIA_PROJECT_ID`: NVIDIA Project ID (default: `test-project`) -- `NVIDIA_CUSTOMIZER_URL`: NVIDIA Customizer URL (default: `https://customizer.api.nvidia.com`) -- `NVIDIA_OUTPUT_MODEL_DIR`: NVIDIA Output Model Directory (default: `test-example-model@v1`) -- `GUARDRAILS_SERVICE_URL`: URL for the NeMo Guardrails Service (default: `http://0.0.0.0:7331`) -- `INFERENCE_MODEL`: Inference model (default: `Llama3.1-8B-Instruct`) -- `SAFETY_MODEL`: Name of the model to use for safety (default: `meta/llama-3.1-8b-instruct`) - -### Models - -The following models are available by default: - -- `meta/llama3-8b-instruct (aliases: meta-llama/Llama-3-8B-Instruct)` -- `meta/llama3-70b-instruct (aliases: meta-llama/Llama-3-70B-Instruct)` -- `meta/llama-3.1-8b-instruct (aliases: meta-llama/Llama-3.1-8B-Instruct)` -- `meta/llama-3.1-70b-instruct (aliases: meta-llama/Llama-3.1-70B-Instruct)` -- `meta/llama-3.1-405b-instruct (aliases: meta-llama/Llama-3.1-405B-Instruct-FP8)` -- `meta/llama-3.2-1b-instruct (aliases: meta-llama/Llama-3.2-1B-Instruct)` -- `meta/llama-3.2-3b-instruct (aliases: meta-llama/Llama-3.2-3B-Instruct)` -- `meta/llama-3.2-11b-vision-instruct (aliases: meta-llama/Llama-3.2-11B-Vision-Instruct)` -- `meta/llama-3.2-90b-vision-instruct (aliases: meta-llama/Llama-3.2-90B-Vision-Instruct)` -- `nvidia/llama-3.2-nv-embedqa-1b-v2 ` -- `nvidia/nv-embedqa-e5-v5 ` -- `nvidia/nv-embedqa-mistral-7b-v2 ` -- `snowflake/arctic-embed-l ` - - -### Prerequisite: API Keys - -Make sure you have access to a NVIDIA API Key. You can get one by visiting [https://build.nvidia.com/](https://build.nvidia.com/). - - -## Running Llama Stack with NVIDIA - -You can do this via Conda (build code) or Docker which has a pre-built image. - -### Via Docker - -This method allows you to get started quickly without having to build the distribution code. - -```bash -LLAMA_STACK_PORT=8321 -docker run \ - -it \ - --pull always \ - -p $LLAMA_STACK_PORT:$LLAMA_STACK_PORT \ - -v ./run.yaml:/root/my-run.yaml \ - llamastack/distribution-nvidia \ - --yaml-config /root/my-run.yaml \ - --port $LLAMA_STACK_PORT \ - --env NVIDIA_API_KEY=$NVIDIA_API_KEY -``` - -### Via Conda - -```bash -llama stack build --template nvidia --image-type conda -llama stack run ./run.yaml \ - --port 8321 \ - --env NVIDIA_API_KEY=$NVIDIA_API_KEY - --env INFERENCE_MODEL=$INFERENCE_MODEL -``` diff --git a/docs/source/distributions/self_hosted_distro/nvidia.md b/docs/source/distributions/self_hosted_distro/nvidia.md index 7aca03bac..c6c92f5d2 100644 --- a/docs/source/distributions/self_hosted_distro/nvidia.md +++ b/docs/source/distributions/self_hosted_distro/nvidia.md @@ -22,6 +22,7 @@ The `llamastack/distribution-nvidia` distribution consists of the following prov The following environment variables can be configured: - `NVIDIA_API_KEY`: NVIDIA API Key (default: ``) +- `NVIDIA_APPEND_API_VERSION`: Whether to append the API version to the base_url (default: `True`) - `NVIDIA_DATASET_NAMESPACE`: NVIDIA Dataset Namespace (default: `default`) - `NVIDIA_PROJECT_ID`: NVIDIA Project ID (default: `test-project`) - `NVIDIA_CUSTOMIZER_URL`: NVIDIA Customizer URL (default: `https://customizer.api.nvidia.com`) @@ -43,20 +44,91 @@ The following models are available by default: - `meta/llama-3.2-3b-instruct (aliases: meta-llama/Llama-3.2-3B-Instruct)` - `meta/llama-3.2-11b-vision-instruct (aliases: meta-llama/Llama-3.2-11B-Vision-Instruct)` - `meta/llama-3.2-90b-vision-instruct (aliases: meta-llama/Llama-3.2-90B-Vision-Instruct)` +- `meta/llama-3.3-70b-instruct (aliases: meta-llama/Llama-3.3-70B-Instruct)` - `nvidia/llama-3.2-nv-embedqa-1b-v2 ` - `nvidia/nv-embedqa-e5-v5 ` - `nvidia/nv-embedqa-mistral-7b-v2 ` - `snowflake/arctic-embed-l ` -### Prerequisite: API Keys +## Prerequisites +### NVIDIA API Keys -Make sure you have access to a NVIDIA API Key. You can get one by visiting [https://build.nvidia.com/](https://build.nvidia.com/). +Make sure you have access to a NVIDIA API Key. You can get one by visiting [https://build.nvidia.com/](https://build.nvidia.com/). Use this key for the `NVIDIA_API_KEY` environment variable. +### Deploy NeMo Microservices Platform +The NVIDIA NeMo microservices platform supports end-to-end microservice deployment of a complete AI flywheel on your Kubernetes cluster through the NeMo Microservices Helm Chart. Please reference the [NVIDIA NeMo Microservices documentation](https://docs.nvidia.com/nemo/microservices/latest/about/index.html) for platform prerequisites and instructions to install and deploy the platform. + +## Supported Services +Each Llama Stack API corresponds to a specific NeMo microservice. The core microservices (Customizer, Evaluator, Guardrails) are exposed by the same endpoint. The platform components (Data Store) are each exposed by separate endpoints. + +### Inference: NVIDIA NIM +NVIDIA NIM is used for running inference with registered models. There are two ways to access NVIDIA NIMs: + 1. Hosted (default): Preview APIs hosted at https://integrate.api.nvidia.com (Requires an API key) + 2. Self-hosted: NVIDIA NIMs that run on your own infrastructure. + +The deployed platform includes the NIM Proxy microservice, which is the service that provides to access your NIMs (for example, to run inference on a model). Set the `NVIDIA_BASE_URL` environment variable to use your NVIDIA NIM Proxy deployment. + +### Datasetio API: NeMo Data Store +The NeMo Data Store microservice serves as the default file storage solution for the NeMo microservices platform. It exposts APIs compatible with the Hugging Face Hub client (`HfApi`), so you can use the client to interact with Data Store. The `NVIDIA_DATASETS_URL` environment variable should point to your NeMo Data Store endpoint. + +See the [NVIDIA Datasetio docs](/llama_stack/providers/remote/datasetio/nvidia/README.md) for supported features and example usage. + +### Eval API: NeMo Evaluator +The NeMo Evaluator microservice supports evaluation of LLMs. Launching an Evaluation job with NeMo Evaluator requires an Evaluation Config (an object that contains metadata needed by the job). A Llama Stack Benchmark maps to an Evaluation Config, so registering a Benchmark creates an Evaluation Config in NeMo Evaluator. The `NVIDIA_EVALUATOR_URL` environment variable should point to your NeMo Microservices endpoint. + +See the [NVIDIA Eval docs](/llama_stack/providers/remote/eval/nvidia/README.md) for supported features and example usage. + +### Post-Training API: NeMo Customizer +The NeMo Customizer microservice supports fine-tuning models. You can reference [this list of supported models](/llama_stack/providers/remote/post_training/nvidia/models.py) that can be fine-tuned using Llama Stack. The `NVIDIA_CUSTOMIZER_URL` environment variable should point to your NeMo Microservices endpoint. + +See the [NVIDIA Post-Training docs](/llama_stack/providers/remote/post_training/nvidia/README.md) for supported features and example usage. + +### Safety API: NeMo Guardrails +The NeMo Guardrails microservice sits between your application and the LLM, and adds checks and content moderation to a model. The `GUARDRAILS_SERVICE_URL` environment variable should point to your NeMo Microservices endpoint. + +See the NVIDIA Safety docs for supported features and example usage. + +## Deploying models +In order to use a registered model with the Llama Stack APIs, ensure the corresponding NIM is deployed to your environment. For example, you can use the NIM Proxy microservice to deploy `meta/llama-3.2-1b-instruct`. + +Note: For improved inference speeds, we need to use NIM with `fast_outlines` guided decoding system (specified in the request body). This is the default if you deployed the platform with the NeMo Microservices Helm Chart. +```sh +# URL to NeMo NIM Proxy service +export NEMO_URL="http://nemo.test" + +curl --location "$NEMO_URL/v1/deployment/model-deployments" \ + -H 'accept: application/json' \ + -H 'Content-Type: application/json' \ + -d '{ + "name": "llama-3.2-1b-instruct", + "namespace": "meta", + "config": { + "model": "meta/llama-3.2-1b-instruct", + "nim_deployment": { + "image_name": "nvcr.io/nim/meta/llama-3.2-1b-instruct", + "image_tag": "1.8.3", + "pvc_size": "25Gi", + "gpu": 1, + "additional_envs": { + "NIM_GUIDED_DECODING_BACKEND": "fast_outlines" + } + } + } + }' +``` +This NIM deployment should take approximately 10 minutes to go live. [See the docs](https://docs.nvidia.com/nemo/microservices/latest/get-started/tutorials/deploy-nims.html) for more information on how to deploy a NIM and verify it's available for inference. + +You can also remove a deployed NIM to free up GPU resources, if needed. +```sh +export NEMO_URL="http://nemo.test" + +curl -X DELETE "$NEMO_URL/v1/deployment/model-deployments/meta/llama-3.1-8b-instruct" +``` ## Running Llama Stack with NVIDIA -You can do this via Conda (build code) or Docker which has a pre-built image. +You can do this via Conda or venv (build code), or Docker which has a pre-built image. ### Via Docker @@ -78,9 +150,23 @@ docker run \ ### Via Conda ```bash +INFERENCE_MODEL=meta-llama/Llama-3.1-8b-Instruct llama stack build --template nvidia --image-type conda llama stack run ./run.yaml \ --port 8321 \ - --env NVIDIA_API_KEY=$NVIDIA_API_KEY + --env NVIDIA_API_KEY=$NVIDIA_API_KEY \ + --env INFERENCE_MODEL=$INFERENCE_MODEL +``` + +### Via venv + +If you've set up your local development environment, you can also build the image using your local virtual environment. + +```bash +INFERENCE_MODEL=meta-llama/Llama-3.1-8b-Instruct +llama stack build --template nvidia --image-type venv +llama stack run ./run.yaml \ + --port 8321 \ + --env NVIDIA_API_KEY=$NVIDIA_API_KEY \ --env INFERENCE_MODEL=$INFERENCE_MODEL ``` diff --git a/docs/source/distributions/self_hosted_distro/remote-vllm.md b/docs/source/distributions/self_hosted_distro/remote-vllm.md index efa443778..46df56008 100644 --- a/docs/source/distributions/self_hosted_distro/remote-vllm.md +++ b/docs/source/distributions/self_hosted_distro/remote-vllm.md @@ -44,7 +44,7 @@ The following environment variables can be configured: In the following sections, we'll use AMD, NVIDIA or Intel GPUs to serve as hardware accelerators for the vLLM server, which acts as both the LLM inference provider and the safety provider. Note that vLLM also [supports many other hardware accelerators](https://docs.vllm.ai/en/latest/getting_started/installation.html) and -that we only use GPUs here for demonstration purposes. +that we only use GPUs here for demonstration purposes. Note that if you run into issues, you can include the environment variable `--env VLLM_DEBUG_LOG_API_SERVER_RESPONSE=true` (available in vLLM v0.8.3 and above) in the `docker run` command to enable log response from API server for debugging. ### Setting up vLLM server on AMD GPU diff --git a/docs/source/providers/external.md b/docs/source/providers/external.md index 90fc77979..5aab5ee0f 100644 --- a/docs/source/providers/external.md +++ b/docs/source/providers/external.md @@ -50,9 +50,10 @@ Llama Stack supports two types of external providers: Here's a list of known external providers that you can use with Llama Stack: -| Type | Name | Description | Repository | -|------|------|-------------|------------| -| Remote | KubeFlow Training | Train models with KubeFlow | [llama-stack-provider-kft](https://github.com/opendatahub-io/llama-stack-provider-kft) | +| Name | Description | API | Type | Repository | +|------|-------------|-----|------|------------| +| KubeFlow Training | Train models with KubeFlow | Post Training | Remote | [llama-stack-provider-kft](https://github.com/opendatahub-io/llama-stack-provider-kft) | +| RamaLama | Inference models with RamaLama | Inference | Remote | [ramalama-stack](https://github.com/containers/ramalama-stack) | ### Remote Provider Specification diff --git a/llama_stack/apis/agents/agents.py b/llama_stack/apis/agents/agents.py index e13c4960b..dec43280b 100644 --- a/llama_stack/apis/agents/agents.py +++ b/llama_stack/apis/agents/agents.py @@ -225,8 +225,18 @@ class AgentConfigCommon(BaseModel): @json_schema_type class AgentConfig(AgentConfigCommon): + """Configuration for an agent. + + :param model: The model identifier to use for the agent + :param instructions: The system instructions for the agent + :param name: Optional name for the agent, used in telemetry and identification + :param enable_session_persistence: Optional flag indicating whether session data has to be persisted + :param response_format: Optional response format configuration + """ + model: str instructions: str + name: Optional[str] = None enable_session_persistence: Optional[bool] = False response_format: Optional[ResponseFormat] = None diff --git a/llama_stack/apis/inference/inference.py b/llama_stack/apis/inference/inference.py index 596efb136..309171f20 100644 --- a/llama_stack/apis/inference/inference.py +++ b/llama_stack/apis/inference/inference.py @@ -526,9 +526,9 @@ class OpenAIAssistantMessageParam(BaseModel): """ role: Literal["assistant"] = "assistant" - content: OpenAIChatCompletionMessageContent + content: Optional[OpenAIChatCompletionMessageContent] = None name: Optional[str] = None - tool_calls: Optional[List[OpenAIChatCompletionToolCall]] = Field(default_factory=list) + tool_calls: Optional[List[OpenAIChatCompletionToolCall]] = None @json_schema_type diff --git a/llama_stack/cli/stack/_build.py b/llama_stack/cli/stack/_build.py index 3251bc632..80ab0631b 100644 --- a/llama_stack/cli/stack/_build.py +++ b/llama_stack/cli/stack/_build.py @@ -210,16 +210,9 @@ def run_stack_build_command(args: argparse.Namespace) -> None: ) sys.exit(1) - if build_config.image_type == LlamaStackImageType.CONTAINER.value and not args.image_name: - cprint( - "Please specify --image-name when building a container from a config file", - color="red", - ) - sys.exit(1) - if args.print_deps_only: print(f"# Dependencies for {args.template or args.config or image_name}") - normal_deps, special_deps = get_provider_dependencies(build_config.distribution_spec.providers) + normal_deps, special_deps = get_provider_dependencies(build_config) normal_deps += SERVER_DEPENDENCIES print(f"uv pip install {' '.join(normal_deps)}") for special_dep in special_deps: @@ -235,10 +228,14 @@ def run_stack_build_command(args: argparse.Namespace) -> None: ) except (Exception, RuntimeError) as exc: + import traceback + cprint( f"Error building stack: {exc}", color="red", ) + cprint("Stack trace:", color="red") + traceback.print_exc() sys.exit(1) if run_config is None: cprint( @@ -270,9 +267,10 @@ def _generate_run_config( image_name=image_name, apis=apis, providers={}, + external_providers_dir=build_config.external_providers_dir if build_config.external_providers_dir else None, ) # build providers dict - provider_registry = get_provider_registry() + provider_registry = get_provider_registry(build_config) for api in apis: run_config.providers[api] = [] provider_types = build_config.distribution_spec.providers[api] @@ -286,8 +284,22 @@ def _generate_run_config( if p.deprecation_error: raise InvalidProviderError(p.deprecation_error) - config_type = instantiate_class_type(provider_registry[Api(api)][provider_type].config_class) - if hasattr(config_type, "sample_run_config"): + try: + config_type = instantiate_class_type(provider_registry[Api(api)][provider_type].config_class) + except ModuleNotFoundError: + # HACK ALERT: + # This code executes after building is done, the import cannot work since the + # package is either available in the venv or container - not available on the host. + # TODO: use a "is_external" flag in ProviderSpec to check if the provider is + # external + cprint( + f"Failed to import provider {provider_type} for API {api} - assuming it's external, skipping", + color="yellow", + ) + # Set config_type to None to avoid UnboundLocalError + config_type = None + + if config_type is not None and hasattr(config_type, "sample_run_config"): config = config_type.sample_run_config(__distro_dir__=f"~/.llama/distributions/{image_name}") else: config = {} @@ -305,11 +317,15 @@ def _generate_run_config( to_write = json.loads(run_config.model_dump_json()) f.write(yaml.dump(to_write, sort_keys=False)) - # this path is only invoked when no template is provided - cprint( - f"You can now run your stack with `llama stack run {run_config_file}`", - color="green", - ) + # Only print this message for non-container builds since it will be displayed before the + # container is built + # For non-container builds, the run.yaml is generated at the very end of the build process so it + # makes sense to display this message + if build_config.image_type != LlamaStackImageType.CONTAINER.value: + cprint( + f"You can now run your stack with `llama stack run {run_config_file}`", + color="green", + ) return run_config_file @@ -319,6 +335,7 @@ def _run_stack_build_command_from_build_config( template_name: Optional[str] = None, config_path: Optional[str] = None, ) -> str: + image_name = image_name or build_config.image_name if build_config.image_type == LlamaStackImageType.CONTAINER.value: if template_name: image_name = f"distribution-{template_name}" @@ -342,6 +359,13 @@ def _run_stack_build_command_from_build_config( build_file_path = build_dir / f"{image_name}-build.yaml" os.makedirs(build_dir, exist_ok=True) + run_config_file = None + # Generate the run.yaml so it can be included in the container image with the proper entrypoint + # Only do this if we're building a container image and we're not using a template + if build_config.image_type == LlamaStackImageType.CONTAINER.value and not template_name and config_path: + cprint("Generating run.yaml file", color="green") + run_config_file = _generate_run_config(build_config, build_dir, image_name) + with open(build_file_path, "w") as f: to_write = json.loads(build_config.model_dump_json()) f.write(yaml.dump(to_write, sort_keys=False)) @@ -350,7 +374,8 @@ def _run_stack_build_command_from_build_config( build_config, build_file_path, image_name, - template_or_config=template_name or config_path, + template_or_config=template_name or config_path or str(build_file_path), + run_config=run_config_file, ) if return_code != 0: raise RuntimeError(f"Failed to build image {image_name}") diff --git a/llama_stack/distribution/build.py b/llama_stack/distribution/build.py index a8ee372da..9664449f3 100644 --- a/llama_stack/distribution/build.py +++ b/llama_stack/distribution/build.py @@ -7,16 +7,16 @@ import importlib.resources import logging from pathlib import Path -from typing import Dict, List from pydantic import BaseModel from termcolor import cprint -from llama_stack.distribution.datatypes import BuildConfig, Provider +from llama_stack.distribution.datatypes import BuildConfig from llama_stack.distribution.distribution import get_provider_registry from llama_stack.distribution.utils.exec import run_command from llama_stack.distribution.utils.image_types import LlamaStackImageType from llama_stack.providers.datatypes import Api +from llama_stack.templates.template import DistributionTemplate log = logging.getLogger(__name__) @@ -37,19 +37,24 @@ class ApiInput(BaseModel): def get_provider_dependencies( - config_providers: Dict[str, List[Provider]], + config: BuildConfig | DistributionTemplate, ) -> tuple[list[str], list[str]]: """Get normal and special dependencies from provider configuration.""" - all_providers = get_provider_registry() + # Extract providers based on config type + if isinstance(config, DistributionTemplate): + providers = config.providers + elif isinstance(config, BuildConfig): + providers = config.distribution_spec.providers deps = [] + registry = get_provider_registry(config) - for api_str, provider_or_providers in config_providers.items(): - providers_for_api = all_providers[Api(api_str)] + for api_str, provider_or_providers in providers.items(): + providers_for_api = registry[Api(api_str)] providers = provider_or_providers if isinstance(provider_or_providers, list) else [provider_or_providers] for provider in providers: - # Providers from BuildConfig and RunConfig are subtly different – not great + # Providers from BuildConfig and RunConfig are subtly different – not great provider_type = provider if isinstance(provider, str) else provider.provider_type if provider_type not in providers_for_api: @@ -71,8 +76,8 @@ def get_provider_dependencies( return list(set(normal_deps)), list(set(special_deps)) -def print_pip_install_help(providers: Dict[str, List[Provider]]): - normal_deps, special_deps = get_provider_dependencies(providers) +def print_pip_install_help(config: BuildConfig): + normal_deps, special_deps = get_provider_dependencies(config) cprint( f"Please install needed dependencies using the following commands:\n\nuv pip install {' '.join(normal_deps)}", @@ -88,10 +93,11 @@ def build_image( build_file_path: Path, image_name: str, template_or_config: str, + run_config: str | None = None, ): container_base = build_config.distribution_spec.container_image or "python:3.10-slim" - normal_deps, special_deps = get_provider_dependencies(build_config.distribution_spec.providers) + normal_deps, special_deps = get_provider_dependencies(build_config) normal_deps += SERVER_DEPENDENCIES if build_config.image_type == LlamaStackImageType.CONTAINER.value: @@ -103,6 +109,11 @@ def build_image( container_base, " ".join(normal_deps), ] + + # When building from a config file (not a template), include the run config path in the + # build arguments + if run_config is not None: + args.append(run_config) elif build_config.image_type == LlamaStackImageType.CONDA.value: script = str(importlib.resources.files("llama_stack") / "distribution/build_conda_env.sh") args = [ diff --git a/llama_stack/distribution/build_container.sh b/llama_stack/distribution/build_container.sh index ed83b7bff..ad316d45e 100755 --- a/llama_stack/distribution/build_container.sh +++ b/llama_stack/distribution/build_container.sh @@ -19,12 +19,16 @@ UV_HTTP_TIMEOUT=${UV_HTTP_TIMEOUT:-500} # mounting is not supported by docker buildx, so we use COPY instead USE_COPY_NOT_MOUNT=${USE_COPY_NOT_MOUNT:-} +# Path to the run.yaml file in the container +RUN_CONFIG_PATH=/app/run.yaml + +BUILD_CONTEXT_DIR=$(pwd) + if [ "$#" -lt 4 ]; then # This only works for templates - echo "Usage: $0 []" >&2 + echo "Usage: $0 [] []" >&2 exit 1 fi - set -euo pipefail template_or_config="$1" @@ -35,8 +39,27 @@ container_base="$1" shift pip_dependencies="$1" shift -special_pip_deps="${1:-}" +# Handle optional arguments +run_config="" +special_pip_deps="" + +# Check if there are more arguments +# The logics is becoming cumbersom, we should refactor it if we can do better +if [ $# -gt 0 ]; then + # Check if the argument ends with .yaml + if [[ "$1" == *.yaml ]]; then + run_config="$1" + shift + # If there's another argument after .yaml, it must be special_pip_deps + if [ $# -gt 0 ]; then + special_pip_deps="$1" + fi + else + # If it's not .yaml, it must be special_pip_deps + special_pip_deps="$1" + fi +fi # Define color codes RED='\033[0;31m' @@ -72,9 +95,13 @@ if [[ $container_base == *"registry.access.redhat.com/ubi9"* ]]; then FROM $container_base WORKDIR /app -RUN dnf -y update && dnf install -y iputils net-tools wget \ +# We install the Python 3.11 dev headers and build tools so that any +# C‑extension wheels (e.g. polyleven, faiss‑cpu) can compile successfully. + +RUN dnf -y update && dnf install -y iputils git net-tools wget \ vim-minimal python3.11 python3.11-pip python3.11-wheel \ - python3.11-setuptools && ln -s /bin/pip3.11 /bin/pip && ln -s /bin/python3.11 /bin/python && dnf clean all + python3.11-setuptools python3.11-devel gcc make && \ + ln -s /bin/pip3.11 /bin/pip && ln -s /bin/python3.11 /bin/python && dnf clean all ENV UV_SYSTEM_PYTHON=1 RUN pip install uv @@ -86,7 +113,7 @@ WORKDIR /app RUN apt-get update && apt-get install -y \ iputils-ping net-tools iproute2 dnsutils telnet \ - curl wget telnet \ + curl wget telnet git\ procps psmisc lsof \ traceroute \ bubblewrap \ @@ -115,6 +142,45 @@ EOF done fi +# Function to get Python command +get_python_cmd() { + if is_command_available python; then + echo "python" + elif is_command_available python3; then + echo "python3" + else + echo "Error: Neither python nor python3 is installed. Please install Python to continue." >&2 + exit 1 + fi +} + +if [ -n "$run_config" ]; then + # Copy the run config to the build context since it's an absolute path + cp "$run_config" "$BUILD_CONTEXT_DIR/run.yaml" + add_to_container << EOF +COPY run.yaml $RUN_CONFIG_PATH +EOF + + # Parse the run.yaml configuration to identify external provider directories + # If external providers are specified, copy their directory to the container + # and update the configuration to reference the new container path + python_cmd=$(get_python_cmd) + external_providers_dir=$($python_cmd -c "import yaml; config = yaml.safe_load(open('$run_config')); print(config.get('external_providers_dir') or '')") + if [ -n "$external_providers_dir" ]; then + echo "Copying external providers directory: $external_providers_dir" + add_to_container << EOF +COPY $external_providers_dir /app/providers.d +EOF + # Edit the run.yaml file to change the external_providers_dir to /app/providers.d + if [ "$(uname)" = "Darwin" ]; then + sed -i.bak -e 's|external_providers_dir:.*|external_providers_dir: /app/providers.d|' "$BUILD_CONTEXT_DIR/run.yaml" + rm -f "$BUILD_CONTEXT_DIR/run.yaml.bak" + else + sed -i 's|external_providers_dir:.*|external_providers_dir: /app/providers.d|' "$BUILD_CONTEXT_DIR/run.yaml" + fi + fi +fi + stack_mount="/app/llama-stack-source" client_mount="/app/llama-stack-client-source" @@ -174,15 +240,16 @@ fi RUN pip uninstall -y uv EOF -# if template_or_config ends with .yaml, it is not a template and we should not use the --template flag -if [[ "$template_or_config" != *.yaml ]]; then +# If a run config is provided, we use the --config flag +if [[ -n "$run_config" ]]; then + add_to_container << EOF +ENTRYPOINT ["python", "-m", "llama_stack.distribution.server.server", "--config", "$RUN_CONFIG_PATH"] +EOF +# If a template is provided (not a yaml file), we use the --template flag +elif [[ "$template_or_config" != *.yaml ]]; then add_to_container << EOF ENTRYPOINT ["python", "-m", "llama_stack.distribution.server.server", "--template", "$template_or_config"] EOF -else - add_to_container << EOF -ENTRYPOINT ["python", "-m", "llama_stack.distribution.server.server"] -EOF fi # Add other require item commands genearic to all containers @@ -254,9 +321,10 @@ $CONTAINER_BINARY build \ "${CLI_ARGS[@]}" \ -t "$image_tag" \ -f "$TEMP_DIR/Containerfile" \ - "." + "$BUILD_CONTEXT_DIR" # clean up tmp/configs +rm -f "$BUILD_CONTEXT_DIR/run.yaml" set +x echo "Success!" diff --git a/llama_stack/distribution/datatypes.py b/llama_stack/distribution/datatypes.py index b24b0ec50..38353c1ff 100644 --- a/llama_stack/distribution/datatypes.py +++ b/llama_stack/distribution/datatypes.py @@ -326,3 +326,12 @@ class BuildConfig(BaseModel): default="conda", description="Type of package to build (conda | container | venv)", ) + image_name: Optional[str] = Field( + default=None, + description="Name of the distribution to build", + ) + external_providers_dir: Optional[str] = Field( + default=None, + description="Path to directory containing external provider implementations. The providers packages will be resolved from this directory. " + "pip_packages MUST contain the provider package name.", + ) diff --git a/llama_stack/distribution/distribution.py b/llama_stack/distribution/distribution.py index d4447139c..f948ddf1c 100644 --- a/llama_stack/distribution/distribution.py +++ b/llama_stack/distribution/distribution.py @@ -12,7 +12,6 @@ from typing import Any, Dict, List import yaml from pydantic import BaseModel -from llama_stack.distribution.datatypes import StackRunConfig from llama_stack.log import get_logger from llama_stack.providers.datatypes import ( AdapterSpec, @@ -97,7 +96,9 @@ def _load_inline_provider_spec(spec_data: Dict[str, Any], api: Api, provider_nam return spec -def get_provider_registry(config: StackRunConfig | None = None) -> Dict[Api, Dict[str, ProviderSpec]]: +def get_provider_registry( + config=None, +) -> Dict[Api, Dict[str, ProviderSpec]]: """Get the provider registry, optionally including external providers. This function loads both built-in providers and external providers from YAML files. @@ -122,7 +123,7 @@ def get_provider_registry(config: StackRunConfig | None = None) -> Dict[Api, Dic llama-guard.yaml Args: - config: Optional StackRunConfig containing the external providers directory path + config: Optional object containing the external providers directory path Returns: A dictionary mapping APIs to their available providers @@ -142,7 +143,8 @@ def get_provider_registry(config: StackRunConfig | None = None) -> Dict[Api, Dic except ImportError as e: logger.warning(f"Failed to import module {name}: {e}") - if config and config.external_providers_dir: + # Check if config has the external_providers_dir attribute + if config and hasattr(config, "external_providers_dir") and config.external_providers_dir: external_providers_dir = os.path.abspath(config.external_providers_dir) if not os.path.exists(external_providers_dir): raise FileNotFoundError(f"External providers directory not found: {external_providers_dir}") diff --git a/llama_stack/distribution/routers/routers.py b/llama_stack/distribution/routers/routers.py index 17aecdaf8..d88df00bd 100644 --- a/llama_stack/distribution/routers/routers.py +++ b/llama_stack/distribution/routers/routers.py @@ -8,6 +8,11 @@ import asyncio import time from typing import Any, AsyncGenerator, AsyncIterator, Dict, List, Optional, Union +from openai.types.chat import ChatCompletionToolChoiceOptionParam as OpenAIChatCompletionToolChoiceOptionParam +from openai.types.chat import ChatCompletionToolParam as OpenAIChatCompletionToolParam +from pydantic import Field, TypeAdapter +from typing_extensions import Annotated + from llama_stack.apis.common.content_types import ( URL, InterleavedContent, @@ -526,7 +531,7 @@ class InferenceRouter(Inference): async def openai_chat_completion( self, model: str, - messages: List[OpenAIMessageParam], + messages: Annotated[List[OpenAIMessageParam], Field(..., min_length=1)], frequency_penalty: Optional[float] = None, function_call: Optional[Union[str, Dict[str, Any]]] = None, functions: Optional[List[Dict[str, Any]]] = None, @@ -558,6 +563,16 @@ class InferenceRouter(Inference): if model_obj.model_type == ModelType.embedding: raise ValueError(f"Model '{model}' is an embedding model and does not support chat completions") + # Use the OpenAI client for a bit of extra input validation without + # exposing the OpenAI client itself as part of our API surface + if tool_choice: + TypeAdapter(OpenAIChatCompletionToolChoiceOptionParam).validate_python(tool_choice) + if tools is None: + raise ValueError("'tool_choice' is only allowed when 'tools' is also provided") + if tools: + for tool in tools: + TypeAdapter(OpenAIChatCompletionToolParam).validate_python(tool) + params = dict( model=model_obj.identifier, messages=messages, diff --git a/llama_stack/distribution/server/server.py b/llama_stack/distribution/server/server.py index 9bbb2ce88..2942920d4 100644 --- a/llama_stack/distribution/server/server.py +++ b/llama_stack/distribution/server/server.py @@ -22,6 +22,7 @@ from fastapi import Body, FastAPI, HTTPException, Request from fastapi import Path as FastapiPath from fastapi.exceptions import RequestValidationError from fastapi.responses import JSONResponse, StreamingResponse +from openai import BadRequestError from pydantic import BaseModel, ValidationError from typing_extensions import Annotated @@ -92,7 +93,7 @@ async def global_exception_handler(request: Request, exc: Exception): def translate_exception(exc: Exception) -> Union[HTTPException, RequestValidationError]: if isinstance(exc, ValidationError): - exc = RequestValidationError(exc.raw_errors) + exc = RequestValidationError(exc.errors()) if isinstance(exc, RequestValidationError): return HTTPException( @@ -110,6 +111,8 @@ def translate_exception(exc: Exception) -> Union[HTTPException, RequestValidatio ) elif isinstance(exc, ValueError): return HTTPException(status_code=400, detail=f"Invalid value: {str(exc)}") + elif isinstance(exc, BadRequestError): + return HTTPException(status_code=400, detail=str(exc)) elif isinstance(exc, PermissionError): return HTTPException(status_code=403, detail=f"Permission denied: {str(exc)}") elif isinstance(exc, TimeoutError): @@ -162,9 +165,10 @@ async def maybe_await(value): return value -async def sse_generator(event_gen): +async def sse_generator(event_gen_coroutine): + event_gen = await event_gen_coroutine try: - async for item in await event_gen: + async for item in event_gen: yield create_sse_event(item) await asyncio.sleep(0.01) except asyncio.CancelledError: diff --git a/llama_stack/distribution/ui/page/playground/rag.py b/llama_stack/distribution/ui/page/playground/rag.py index 392c9afe2..696d89bc2 100644 --- a/llama_stack/distribution/ui/page/playground/rag.py +++ b/llama_stack/distribution/ui/page/playground/rag.py @@ -24,6 +24,13 @@ def rag_chat_page(): def should_disable_input(): return "displayed_messages" in st.session_state and len(st.session_state.displayed_messages) > 0 + def log_message(message): + with st.chat_message(message["role"]): + if "tool_output" in message and message["tool_output"]: + with st.expander(label="Tool Output", expanded=False, icon="🛠"): + st.write(message["tool_output"]) + st.markdown(message["content"]) + with st.sidebar: # File/Directory Upload Section st.subheader("Upload Documents", divider=True) @@ -146,8 +153,7 @@ def rag_chat_page(): # Display chat history for message in st.session_state.displayed_messages: - with st.chat_message(message["role"]): - st.markdown(message["content"]) + log_message(message) if temperature > 0.0: strategy = { @@ -201,7 +207,7 @@ def rag_chat_page(): # Display assistant response with st.chat_message("assistant"): - retrieval_message_placeholder = st.empty() + retrieval_message_placeholder = st.expander(label="Tool Output", expanded=False, icon="🛠") message_placeholder = st.empty() full_response = "" retrieval_response = "" @@ -209,14 +215,16 @@ def rag_chat_page(): log.print() if log.role == "tool_execution": retrieval_response += log.content.replace("====", "").strip() - retrieval_message_placeholder.info(retrieval_response) + retrieval_message_placeholder.write(retrieval_response) else: full_response += log.content message_placeholder.markdown(full_response + "▌") message_placeholder.markdown(full_response) st.session_state.messages.append({"role": "assistant", "content": full_response}) - st.session_state.displayed_messages.append({"role": "assistant", "content": full_response}) + st.session_state.displayed_messages.append( + {"role": "assistant", "content": full_response, "tool_output": retrieval_response} + ) def direct_process_prompt(prompt): # Add the system prompt in the beginning of the conversation @@ -230,15 +238,14 @@ def rag_chat_page(): prompt_context = rag_response.content with st.chat_message("assistant"): + with st.expander(label="Retrieval Output", expanded=False): + st.write(prompt_context) + retrieval_message_placeholder = st.empty() message_placeholder = st.empty() full_response = "" retrieval_response = "" - # Display the retrieved content - retrieval_response += str(prompt_context) - retrieval_message_placeholder.info(retrieval_response) - # Construct the extended prompt extended_prompt = f"Please answer the following query using the context below.\n\nCONTEXT:\n{prompt_context}\n\nQUERY:\n{prompt}" diff --git a/llama_stack/distribution/ui/page/playground/tools.py b/llama_stack/distribution/ui/page/playground/tools.py index bc2e8975f..96c6a1783 100644 --- a/llama_stack/distribution/ui/page/playground/tools.py +++ b/llama_stack/distribution/ui/page/playground/tools.py @@ -29,17 +29,39 @@ def tool_chat_page(): st.cache_resource.clear() with st.sidebar: + st.title("Configuration") st.subheader("Model") - model = st.selectbox(label="models", options=model_list, on_change=reset_agent) + model = st.selectbox(label="Model", options=model_list, on_change=reset_agent, label_visibility="collapsed") + + st.subheader("Available ToolGroups") - st.subheader("Builtin Tools") toolgroup_selection = st.pills( - label="Available ToolGroups", options=builtin_tools_list, selection_mode="multi", on_change=reset_agent + label="Built-in tools", + options=builtin_tools_list, + selection_mode="multi", + on_change=reset_agent, + format_func=lambda tool: "".join(tool.split("::")[1:]), + help="List of built-in tools from your llama stack server.", ) - st.subheader("MCP Servers") + if "builtin::rag" in toolgroup_selection: + vector_dbs = llama_stack_api.client.vector_dbs.list() or [] + if not vector_dbs: + st.info("No vector databases available for selection.") + vector_dbs = [vector_db.identifier for vector_db in vector_dbs] + selected_vector_dbs = st.multiselect( + label="Select Document Collections to use in RAG queries", + options=vector_dbs, + on_change=reset_agent, + ) + mcp_selection = st.pills( - label="Available MCP Servers", options=mcp_tools_list, selection_mode="multi", on_change=reset_agent + label="MCP Servers", + options=mcp_tools_list, + selection_mode="multi", + on_change=reset_agent, + format_func=lambda tool: "".join(tool.split("::")[1:]), + help="List of MCP servers registered to your llama stack server.", ) toolgroup_selection.extend(mcp_selection) @@ -53,10 +75,10 @@ def tool_chat_page(): ] ) - st.subheader(f"Active Tools: 🛠 {len(active_tool_list)}") + st.markdown(f"Active Tools: 🛠 {len(active_tool_list)}", help="List of currently active tools.") st.json(active_tool_list) - st.subheader("Chat Configurations") + st.subheader("Agent Configurations") max_tokens = st.slider( "Max Tokens", min_value=0, @@ -67,6 +89,16 @@ def tool_chat_page(): on_change=reset_agent, ) + for i, tool_name in enumerate(toolgroup_selection): + if tool_name == "builtin::rag": + tool_dict = dict( + name="builtin::rag", + args={ + "vector_db_ids": list(selected_vector_dbs), + }, + ) + toolgroup_selection[i] = tool_dict + @st.cache_resource def create_agent(): return Agent( @@ -112,7 +144,11 @@ def tool_chat_page(): yield response.event.payload.delta.text if response.event.payload.event_type == "step_complete": if response.event.payload.step_details.step_type == "tool_execution": - yield " 🛠 " + if response.event.payload.step_details.tool_calls: + tool_name = str(response.event.payload.step_details.tool_calls[0].tool_name) + yield f'\n\n🛠 :grey[_Using "{tool_name}" tool:_]\n\n' + else: + yield "No tool_calls present in step_details" else: yield f"Error occurred in the Llama Stack Cluster: {response}" diff --git a/llama_stack/models/llama/llama4/chat_format.py b/llama_stack/models/llama/llama4/chat_format.py index 9d60d00e9..1debadcc5 100644 --- a/llama_stack/models/llama/llama4/chat_format.py +++ b/llama_stack/models/llama/llama4/chat_format.py @@ -5,6 +5,7 @@ # the root directory of this source tree. import io +import json import uuid from dataclasses import dataclass from typing import Dict, List, Optional, Tuple @@ -299,6 +300,7 @@ class ChatFormat: call_id=call_id, tool_name=tool_name, arguments=tool_arguments, + arguments_json=json.dumps(tool_arguments), ) ) diff --git a/llama_stack/providers/inline/agents/meta_reference/agent_instance.py b/llama_stack/providers/inline/agents/meta_reference/agent_instance.py index f441d6eb6..b5714b438 100644 --- a/llama_stack/providers/inline/agents/meta_reference/agent_instance.py +++ b/llama_stack/providers/inline/agents/meta_reference/agent_instance.py @@ -178,6 +178,8 @@ class ChatAgent(ShieldRunnerMixin): span.set_attribute("request", request.model_dump_json()) turn_id = str(uuid.uuid4()) span.set_attribute("turn_id", turn_id) + if self.agent_config.name: + span.set_attribute("agent_name", self.agent_config.name) await self._initialize_tools(request.toolgroups) async for chunk in self._run_turn(request, turn_id): @@ -190,6 +192,8 @@ class ChatAgent(ShieldRunnerMixin): span.set_attribute("session_id", request.session_id) span.set_attribute("request", request.model_dump_json()) span.set_attribute("turn_id", request.turn_id) + if self.agent_config.name: + span.set_attribute("agent_name", self.agent_config.name) await self._initialize_tools() async for chunk in self._run_turn(request): @@ -498,6 +502,8 @@ class ChatAgent(ShieldRunnerMixin): stop_reason = None async with tracing.span("inference") as span: + if self.agent_config.name: + span.set_attribute("agent_name", self.agent_config.name) async for chunk in await self.inference_api.chat_completion( self.agent_config.model, input_messages, diff --git a/llama_stack/providers/inline/inference/meta_reference/inference.py b/llama_stack/providers/inline/inference/meta_reference/inference.py index 2b9a27982..0e69c2e7e 100644 --- a/llama_stack/providers/inline/inference/meta_reference/inference.py +++ b/llama_stack/providers/inline/inference/meta_reference/inference.py @@ -515,7 +515,8 @@ class MetaReferenceInferenceImpl( stop_reason = None ipython = False - for token_result in self.generator.chat_completion(request): + for token_results in self.generator.chat_completion([request]): + token_result = token_results[0] if os.environ.get("LLAMA_MODELS_DEBUG", "0") == "1": cprint(token_result.text, "cyan", end="") if os.environ.get("LLAMA_MODELS_DEBUG", "0") == "2": diff --git a/llama_stack/providers/inline/tool_runtime/rag/memory.py b/llama_stack/providers/inline/tool_runtime/rag/memory.py index 97c53d454..8d4689e5d 100644 --- a/llama_stack/providers/inline/tool_runtime/rag/memory.py +++ b/llama_stack/providers/inline/tool_runtime/rag/memory.py @@ -33,6 +33,7 @@ from llama_stack.apis.tools import ( ) from llama_stack.apis.vector_io import QueryChunksResponse, VectorIO from llama_stack.providers.datatypes import ToolsProtocolPrivate +from llama_stack.providers.utils.inference.prompt_adapter import interleaved_content_as_str from llama_stack.providers.utils.memory.vector_store import ( content_from_doc, make_overlapped_chunks, @@ -153,6 +154,11 @@ class MemoryToolRuntimeImpl(ToolsProtocolPrivate, ToolRuntime, RAGToolRuntime): ) ) picked.append(TextContentItem(text="END of knowledge_search tool results.\n")) + picked.append( + TextContentItem( + text=f'The above results were retrieved to help answer the user\'s query: "{interleaved_content_as_str(content)}". Use them as supporting information only in answering this query.\n', + ) + ) return RAGQueryResult( content=picked, diff --git a/llama_stack/providers/remote/inference/fireworks/fireworks.py b/llama_stack/providers/remote/inference/fireworks/fireworks.py index 48c163c87..58678a9cc 100644 --- a/llama_stack/providers/remote/inference/fireworks/fireworks.py +++ b/llama_stack/providers/remote/inference/fireworks/fireworks.py @@ -362,6 +362,39 @@ class FireworksInferenceAdapter(ModelRegistryHelper, Inference, NeedsRequestProv user: Optional[str] = None, ) -> Union[OpenAIChatCompletion, AsyncIterator[OpenAIChatCompletionChunk]]: model_obj = await self.model_store.get_model(model) + + # Divert Llama Models through Llama Stack inference APIs because + # Fireworks chat completions OpenAI-compatible API does not support + # tool calls properly. + llama_model = self.get_llama_model(model_obj.provider_resource_id) + if llama_model: + return await OpenAIChatCompletionToLlamaStackMixin.openai_chat_completion( + self, + model=model, + messages=messages, + frequency_penalty=frequency_penalty, + function_call=function_call, + functions=functions, + logit_bias=logit_bias, + logprobs=logprobs, + max_completion_tokens=max_completion_tokens, + max_tokens=max_tokens, + n=n, + parallel_tool_calls=parallel_tool_calls, + presence_penalty=presence_penalty, + response_format=response_format, + seed=seed, + stop=stop, + stream=stream, + stream_options=stream_options, + temperature=temperature, + tool_choice=tool_choice, + tools=tools, + top_logprobs=top_logprobs, + top_p=top_p, + user=user, + ) + params = await prepare_openai_completion_params( messages=messages, frequency_penalty=frequency_penalty, @@ -387,11 +420,4 @@ class FireworksInferenceAdapter(ModelRegistryHelper, Inference, NeedsRequestProv user=user, ) - # Divert Llama Models through Llama Stack inference APIs because - # Fireworks chat completions OpenAI-compatible API does not support - # tool calls properly. - llama_model = self.get_llama_model(model_obj.provider_resource_id) - if llama_model: - return await OpenAIChatCompletionToLlamaStackMixin.openai_chat_completion(self, model=model, **params) - return await self._get_openai_client().chat.completions.create(model=model_obj.provider_resource_id, **params) diff --git a/llama_stack/providers/remote/inference/nvidia/NVIDIA.md b/llama_stack/providers/remote/inference/nvidia/NVIDIA.md new file mode 100644 index 000000000..a353c67f5 --- /dev/null +++ b/llama_stack/providers/remote/inference/nvidia/NVIDIA.md @@ -0,0 +1,85 @@ +# NVIDIA Inference Provider for LlamaStack + +This provider enables running inference using NVIDIA NIM. + +## Features +- Endpoints for completions, chat completions, and embeddings for registered models + +## Getting Started + +### Prerequisites + +- LlamaStack with NVIDIA configuration +- Access to NVIDIA NIM deployment +- NIM for model to use for inference is deployed + +### Setup + +Build the NVIDIA environment: + +```bash +llama stack build --template nvidia --image-type conda +``` + +### Basic Usage using the LlamaStack Python Client + +#### Initialize the client + +```python +import os + +os.environ["NVIDIA_API_KEY"] = ( + "" # Required if using hosted NIM endpoint. If self-hosted, not required. +) +os.environ["NVIDIA_BASE_URL"] = "http://nim.test" # NIM URL + +from llama_stack.distribution.library_client import LlamaStackAsLibraryClient + +client = LlamaStackAsLibraryClient("nvidia") +client.initialize() +``` + +### Create Completion + +```python +response = client.completion( + model_id="meta-llama/Llama-3.1-8b-Instruct", + content="Complete the sentence using one word: Roses are red, violets are :", + stream=False, + sampling_params={ + "max_tokens": 50, + }, +) +print(f"Response: {response.content}") +``` + +### Create Chat Completion + +```python +response = client.chat_completion( + model_id="meta-llama/Llama-3.1-8b-Instruct", + messages=[ + { + "role": "system", + "content": "You must respond to each message with only one word", + }, + { + "role": "user", + "content": "Complete the sentence using one word: Roses are red, violets are:", + }, + ], + stream=False, + sampling_params={ + "max_tokens": 50, + }, +) +print(f"Response: {response.completion_message.content}") +``` + +### Create Embeddings +```python +response = client.embeddings( + model_id="meta-llama/Llama-3.1-8b-Instruct", contents=["foo", "bar", "baz"] +) +print(f"Embeddings: {response.embeddings}") +``` diff --git a/llama_stack/providers/remote/inference/nvidia/models.py b/llama_stack/providers/remote/inference/nvidia/models.py index 964125148..127a6ca59 100644 --- a/llama_stack/providers/remote/inference/nvidia/models.py +++ b/llama_stack/providers/remote/inference/nvidia/models.py @@ -48,6 +48,10 @@ MODEL_ENTRIES = [ "meta/llama-3.2-90b-vision-instruct", CoreModelId.llama3_2_90b_vision_instruct.value, ), + build_hf_repo_model_entry( + "meta/llama-3.3-70b-instruct", + CoreModelId.llama3_3_70b_instruct.value, + ), # NeMo Retriever Text Embedding models - # # https://docs.nvidia.com/nim/nemo-retriever/text-embedding/latest/support-matrix.html diff --git a/llama_stack/providers/remote/inference/nvidia/nvidia.py b/llama_stack/providers/remote/inference/nvidia/nvidia.py index 5f2742418..4a62ad6cb 100644 --- a/llama_stack/providers/remote/inference/nvidia/nvidia.py +++ b/llama_stack/providers/remote/inference/nvidia/nvidia.py @@ -129,6 +129,14 @@ class NVIDIAInferenceAdapter(Inference, ModelRegistryHelper): base_url = special_model_urls[provider_model_id] return _get_client_for_base_url(base_url) + async def _get_provider_model_id(self, model_id: str) -> str: + if not self.model_store: + raise RuntimeError("Model store is not set") + model = await self.model_store.get_model(model_id) + if model is None: + raise ValueError(f"Model {model_id} is unknown") + return model.provider_model_id + async def completion( self, model_id: str, @@ -147,7 +155,7 @@ class NVIDIAInferenceAdapter(Inference, ModelRegistryHelper): # removing this health check as NeMo customizer endpoint health check is returning 404 # await check_health(self._config) # this raises errors - provider_model_id = self.get_provider_model_id(model_id) + provider_model_id = await self._get_provider_model_id(model_id) request = convert_completion_request( request=CompletionRequest( model=provider_model_id, @@ -191,7 +199,7 @@ class NVIDIAInferenceAdapter(Inference, ModelRegistryHelper): # flat_contents = [content.text if isinstance(content, TextContentItem) else content for content in contents] input = [content.text if isinstance(content, TextContentItem) else content for content in flat_contents] - model = self.get_provider_model_id(model_id) + provider_model_id = await self._get_provider_model_id(model_id) extra_body = {} @@ -214,8 +222,8 @@ class NVIDIAInferenceAdapter(Inference, ModelRegistryHelper): extra_body["input_type"] = task_type_options[task_type] try: - response = await self._get_client(model).embeddings.create( - model=model, + response = await self._get_client(provider_model_id).embeddings.create( + model=provider_model_id, input=input, extra_body=extra_body, ) @@ -249,10 +257,10 @@ class NVIDIAInferenceAdapter(Inference, ModelRegistryHelper): # await check_health(self._config) # this raises errors - provider_model_id = self.get_provider_model_id(model_id) + provider_model_id = await self._get_provider_model_id(model_id) request = await convert_chat_completion_request( request=ChatCompletionRequest( - model=self.get_provider_model_id(model_id), + model=provider_model_id, messages=messages, sampling_params=sampling_params, response_format=response_format, @@ -297,7 +305,7 @@ class NVIDIAInferenceAdapter(Inference, ModelRegistryHelper): guided_choice: Optional[List[str]] = None, prompt_logprobs: Optional[int] = None, ) -> OpenAICompletion: - provider_model_id = self.get_provider_model_id(model) + provider_model_id = await self._get_provider_model_id(model) params = await prepare_openai_completion_params( model=provider_model_id, @@ -350,7 +358,7 @@ class NVIDIAInferenceAdapter(Inference, ModelRegistryHelper): top_p: Optional[float] = None, user: Optional[str] = None, ) -> Union[OpenAIChatCompletion, AsyncIterator[OpenAIChatCompletionChunk]]: - provider_model_id = self.get_provider_model_id(model) + provider_model_id = await self._get_provider_model_id(model) params = await prepare_openai_completion_params( model=provider_model_id, diff --git a/llama_stack/providers/remote/inference/together/together.py b/llama_stack/providers/remote/inference/together/together.py index 001e6aac4..48e41f5b0 100644 --- a/llama_stack/providers/remote/inference/together/together.py +++ b/llama_stack/providers/remote/inference/together/together.py @@ -76,8 +76,11 @@ class TogetherInferenceAdapter(ModelRegistryHelper, Inference, NeedsRequestProvi async def shutdown(self) -> None: if self._client: - await self._client.close() + # Together client has no close method, so just set to None self._client = None + if self._openai_client: + await self._openai_client.close() + self._openai_client = None async def completion( self, @@ -359,7 +362,7 @@ class TogetherInferenceAdapter(ModelRegistryHelper, Inference, NeedsRequestProvi top_p=top_p, user=user, ) - if params.get("stream", True): + if params.get("stream", False): return self._stream_openai_chat_completion(params) return await self._get_openai_client().chat.completions.create(**params) # type: ignore diff --git a/llama_stack/providers/remote/inference/vllm/vllm.py b/llama_stack/providers/remote/inference/vllm/vllm.py index d141afa86..8cfef2ee0 100644 --- a/llama_stack/providers/remote/inference/vllm/vllm.py +++ b/llama_stack/providers/remote/inference/vllm/vllm.py @@ -231,12 +231,7 @@ class VLLMInferenceAdapter(Inference, ModelsProtocolPrivate): self.client = None async def initialize(self) -> None: - log.info(f"Initializing VLLM client with base_url={self.config.url}") - self.client = AsyncOpenAI( - base_url=self.config.url, - api_key=self.config.api_token, - http_client=None if self.config.tls_verify else httpx.AsyncClient(verify=False), - ) + pass async def shutdown(self) -> None: pass @@ -249,6 +244,20 @@ class VLLMInferenceAdapter(Inference, ModelsProtocolPrivate): raise ValueError("Model store not set") return await self.model_store.get_model(model_id) + def _lazy_initialize_client(self): + if self.client is not None: + return + + log.info(f"Initializing vLLM client with base_url={self.config.url}") + self.client = self._create_client() + + def _create_client(self): + return AsyncOpenAI( + base_url=self.config.url, + api_key=self.config.api_token, + http_client=None if self.config.tls_verify else httpx.AsyncClient(verify=False), + ) + async def completion( self, model_id: str, @@ -258,6 +267,7 @@ class VLLMInferenceAdapter(Inference, ModelsProtocolPrivate): stream: Optional[bool] = False, logprobs: Optional[LogProbConfig] = None, ) -> CompletionResponse | AsyncGenerator[CompletionResponseStreamChunk, None]: + self._lazy_initialize_client() if sampling_params is None: sampling_params = SamplingParams() model = await self._get_model(model_id) @@ -287,6 +297,7 @@ class VLLMInferenceAdapter(Inference, ModelsProtocolPrivate): logprobs: Optional[LogProbConfig] = None, tool_config: Optional[ToolConfig] = None, ) -> ChatCompletionResponse | AsyncGenerator[ChatCompletionResponseStreamChunk, None]: + self._lazy_initialize_client() if sampling_params is None: sampling_params = SamplingParams() model = await self._get_model(model_id) @@ -357,9 +368,12 @@ class VLLMInferenceAdapter(Inference, ModelsProtocolPrivate): yield chunk async def register_model(self, model: Model) -> Model: - assert self.client is not None + # register_model is called during Llama Stack initialization, hence we cannot init self.client if not initialized yet. + # self.client should only be created after the initialization is complete to avoid asyncio cross-context errors. + # Changing this may lead to unpredictable behavior. + client = self._create_client() if self.client is None else self.client model = await self.register_helper.register_model(model) - res = await self.client.models.list() + res = await client.models.list() available_models = [m.id async for m in res] if model.provider_resource_id not in available_models: raise ValueError( @@ -410,6 +424,7 @@ class VLLMInferenceAdapter(Inference, ModelsProtocolPrivate): output_dimension: Optional[int] = None, task_type: Optional[EmbeddingTaskType] = None, ) -> EmbeddingsResponse: + self._lazy_initialize_client() assert self.client is not None model = await self._get_model(model_id) @@ -449,6 +464,7 @@ class VLLMInferenceAdapter(Inference, ModelsProtocolPrivate): guided_choice: Optional[List[str]] = None, prompt_logprobs: Optional[int] = None, ) -> OpenAICompletion: + self._lazy_initialize_client() model_obj = await self._get_model(model) extra_body: Dict[str, Any] = {} @@ -505,6 +521,7 @@ class VLLMInferenceAdapter(Inference, ModelsProtocolPrivate): top_p: Optional[float] = None, user: Optional[str] = None, ) -> Union[OpenAIChatCompletion, AsyncIterator[OpenAIChatCompletionChunk]]: + self._lazy_initialize_client() model_obj = await self._get_model(model) params = await prepare_openai_completion_params( model=model_obj.provider_resource_id, diff --git a/llama_stack/providers/remote/post_training/nvidia/models.py b/llama_stack/providers/remote/post_training/nvidia/models.py index 7c696ac20..1b31b4dbe 100644 --- a/llama_stack/providers/remote/post_training/nvidia/models.py +++ b/llama_stack/providers/remote/post_training/nvidia/models.py @@ -16,7 +16,11 @@ _MODEL_ENTRIES = [ build_hf_repo_model_entry( "meta/llama-3.1-8b-instruct", CoreModelId.llama3_1_8b_instruct.value, - ) + ), + build_hf_repo_model_entry( + "meta/llama-3.2-1b-instruct", + CoreModelId.llama3_2_1b_instruct.value, + ), ] diff --git a/llama_stack/providers/remote/post_training/nvidia/post_training.py b/llama_stack/providers/remote/post_training/nvidia/post_training.py index e14fcf0cc..d3de930f7 100644 --- a/llama_stack/providers/remote/post_training/nvidia/post_training.py +++ b/llama_stack/providers/remote/post_training/nvidia/post_training.py @@ -27,11 +27,12 @@ from .models import _MODEL_ENTRIES # Map API status to JobStatus enum STATUS_MAPPING = { - "running": "in_progress", - "completed": "completed", - "failed": "failed", - "cancelled": "cancelled", - "pending": "scheduled", + "running": JobStatus.in_progress.value, + "completed": JobStatus.completed.value, + "failed": JobStatus.failed.value, + "cancelled": JobStatus.cancelled.value, + "pending": JobStatus.scheduled.value, + "unknown": JobStatus.scheduled.value, } diff --git a/llama_stack/providers/remote/safety/nvidia/README.md b/llama_stack/providers/remote/safety/nvidia/README.md new file mode 100644 index 000000000..434db32fb --- /dev/null +++ b/llama_stack/providers/remote/safety/nvidia/README.md @@ -0,0 +1,77 @@ +# NVIDIA Safety Provider for LlamaStack + +This provider enables safety checks and guardrails for LLM interactions using NVIDIA's NeMo Guardrails service. + +## Features + +- Run safety checks for messages + +## Getting Started + +### Prerequisites + +- LlamaStack with NVIDIA configuration +- Access to NVIDIA NeMo Guardrails service +- NIM for model to use for safety check is deployed + +### Setup + +Build the NVIDIA environment: + +```bash +llama stack build --template nvidia --image-type conda +``` + +### Basic Usage using the LlamaStack Python Client + +#### Initialize the client + +```python +import os + +os.environ["NVIDIA_API_KEY"] = "your-api-key" +os.environ["NVIDIA_GUARDRAILS_URL"] = "http://guardrails.test" + +from llama_stack.distribution.library_client import LlamaStackAsLibraryClient + +client = LlamaStackAsLibraryClient("nvidia") +client.initialize() +``` + +#### Create a safety shield + +```python +from llama_stack.apis.safety import Shield +from llama_stack.apis.inference import Message + +# Create a safety shield +shield = Shield( + shield_id="your-shield-id", + provider_resource_id="safety-model-id", # The model to use for safety checks + description="Safety checks for content moderation", +) + +# Register the shield +await client.safety.register_shield(shield) +``` + +#### Run safety checks + +```python +# Messages to check +messages = [Message(role="user", content="Your message to check")] + +# Run safety check +response = await client.safety.run_shield( + shield_id="your-shield-id", + messages=messages, +) + +# Check for violations +if response.violation: + print(f"Safety violation detected: {response.violation.user_message}") + print(f"Violation level: {response.violation.violation_level}") + print(f"Metadata: {response.violation.metadata}") +else: + print("No safety violations detected") +``` diff --git a/llama_stack/providers/utils/inference/openai_compat.py b/llama_stack/providers/utils/inference/openai_compat.py index d98261abb..f91e7d7dc 100644 --- a/llama_stack/providers/utils/inference/openai_compat.py +++ b/llama_stack/providers/utils/inference/openai_compat.py @@ -8,7 +8,17 @@ import logging import time import uuid import warnings -from typing import Any, AsyncGenerator, AsyncIterator, Awaitable, Dict, Iterable, List, Optional, Union +from typing import ( + Any, + AsyncGenerator, + AsyncIterator, + Awaitable, + Dict, + Iterable, + List, + Optional, + Union, +) from openai import AsyncStream from openai.types.chat import ( @@ -78,6 +88,7 @@ from llama_stack.apis.common.content_types import ( TextDelta, ToolCallDelta, ToolCallParseStatus, + _URLOrData, ) from llama_stack.apis.inference import ( ChatCompletionRequest, @@ -93,6 +104,7 @@ from llama_stack.apis.inference import ( SamplingParams, SystemMessage, TokenLogProbs, + ToolChoice, ToolResponseMessage, TopKSamplingStrategy, TopPSamplingStrategy, @@ -103,7 +115,6 @@ from llama_stack.apis.inference.inference import ( OpenAIChatCompletion, OpenAICompletion, OpenAICompletionChoice, - OpenAIMessageParam, OpenAIResponseFormatParam, ToolConfig, ) @@ -612,13 +623,10 @@ async def convert_message_to_openai_dict_new( ) for tool in message.tool_calls ] - params = {} - if tool_calls: - params = {"tool_calls": tool_calls} out = OpenAIChatCompletionAssistantMessage( role="assistant", content=await _convert_message_content(message.content), - **params, + tool_calls=tool_calls or None, ) elif isinstance(message, ToolResponseMessage): out = OpenAIChatCompletionToolMessage( @@ -695,7 +703,10 @@ def to_openai_param_type(param_type: str) -> dict: if param_type.startswith("list[") and param_type.endswith("]"): inner_type = param_type[5:-1] if inner_type in basic_types: - return {"type": "array", "items": {"type": basic_types.get(inner_type, inner_type)}} + return { + "type": "array", + "items": {"type": basic_types.get(inner_type, inner_type)}, + } return {"type": param_type} @@ -815,6 +826,10 @@ def _convert_openai_finish_reason(finish_reason: str) -> StopReason: def _convert_openai_request_tool_config(tool_choice: Optional[Union[str, Dict[str, Any]]] = None) -> ToolConfig: tool_config = ToolConfig() if tool_choice: + try: + tool_choice = ToolChoice(tool_choice) + except ValueError: + pass tool_config.tool_choice = tool_choice return tool_config @@ -849,7 +864,9 @@ def _convert_openai_request_tools(tools: Optional[List[Dict[str, Any]]] = None) return lls_tools -def _convert_openai_request_response_format(response_format: OpenAIResponseFormatParam = None): +def _convert_openai_request_response_format( + response_format: OpenAIResponseFormatParam = None, +): if not response_format: return None # response_format can be a dict or a pydantic model @@ -957,38 +974,50 @@ def _convert_openai_sampling_params( return sampling_params -def _convert_openai_request_messages(messages: List[OpenAIMessageParam]): - # Llama Stack messages and OpenAI messages are similar, but not identical. - lls_messages = [] +def openai_messages_to_messages( + messages: List[OpenAIChatCompletionMessage], +) -> List[Message]: + """ + Convert a list of OpenAIChatCompletionMessage into a list of Message. + """ + converted_messages = [] for message in messages: - lls_message = dict(message) + if message.role == "system": + converted_message = SystemMessage(content=message.content) + elif message.role == "user": + converted_message = UserMessage(content=openai_content_to_content(message.content)) + elif message.role == "assistant": + converted_message = CompletionMessage( + content=message.content, + tool_calls=_convert_openai_tool_calls(message.tool_calls), + stop_reason=StopReason.end_of_turn, + ) + elif message.role == "tool": + converted_message = ToolResponseMessage( + role="tool", + call_id=message.tool_call_id, + content=openai_content_to_content(message.content), + ) + else: + raise ValueError(f"Unknown role {message.role}") + converted_messages.append(converted_message) + return converted_messages - # Llama Stack expects `call_id` but OpenAI uses `tool_call_id` - tool_call_id = lls_message.pop("tool_call_id", None) - if tool_call_id: - lls_message["call_id"] = tool_call_id - content = lls_message.get("content", None) - if isinstance(content, list): - lls_content = [] - for item in content: - # items can either by pydantic models or dicts here... - item = dict(item) - if item.get("type", "") == "image_url": - lls_item = ImageContentItem( - type="image", - image=URL(uri=item.get("image_url", {}).get("url", "")), - ) - elif item.get("type", "") == "text": - lls_item = TextContentItem( - type="text", - text=item.get("text", ""), - ) - lls_content.append(lls_item) - lls_message["content"] = lls_content - lls_messages.append(lls_message) - - return lls_messages +def openai_content_to_content(content: Union[str, Iterable[OpenAIChatCompletionContentPartParam]]): + if isinstance(content, str): + return content + elif isinstance(content, list): + return [openai_content_to_content(c) for c in content] + elif hasattr(content, "type"): + if content.type == "text": + return TextContentItem(type="text", text=content.text) + elif content.type == "image_url": + return ImageContentItem(type="image", image=_URLOrData(url=URL(uri=content.image_url.url))) + else: + raise ValueError(f"Unknown content type: {content.type}") + else: + raise ValueError(f"Unknown content type: {content}") def convert_openai_chat_completion_choice( @@ -1313,7 +1342,7 @@ class OpenAIChatCompletionToLlamaStackMixin: top_p: Optional[float] = None, user: Optional[str] = None, ) -> Union[OpenAIChatCompletion, AsyncIterator[OpenAIChatCompletionChunk]]: - messages = _convert_openai_request_messages(messages) + messages = openai_messages_to_messages(messages) response_format = _convert_openai_request_response_format(response_format) sampling_params = _convert_openai_sampling_params( max_tokens=max_tokens, @@ -1321,7 +1350,10 @@ class OpenAIChatCompletionToLlamaStackMixin: top_p=top_p, ) tool_config = _convert_openai_request_tool_config(tool_choice) + tools = _convert_openai_request_tools(tools) + if tool_config.tool_choice == ToolChoice.none: + tools = [] outstanding_responses = [] # "n" is the number of completions to generate per prompt @@ -1346,7 +1378,9 @@ class OpenAIChatCompletionToLlamaStackMixin: ) async def _process_stream_response( - self, model: str, outstanding_responses: List[Awaitable[AsyncIterator[ChatCompletionResponseStreamChunk]]] + self, + model: str, + outstanding_responses: List[Awaitable[AsyncIterator[ChatCompletionResponseStreamChunk]]], ): id = f"chatcmpl-{uuid.uuid4()}" for outstanding_response in outstanding_responses: @@ -1369,11 +1403,31 @@ class OpenAIChatCompletionToLlamaStackMixin: elif isinstance(event.delta, ToolCallDelta): if event.delta.parse_status == ToolCallParseStatus.succeeded: tool_call = event.delta.tool_call + + # First chunk includes full structure openai_tool_call = OpenAIChoiceDeltaToolCall( index=0, id=tool_call.call_id, function=OpenAIChoiceDeltaToolCallFunction( - name=tool_call.tool_name, arguments=tool_call.arguments_json + name=tool_call.tool_name, + arguments="", + ), + ) + delta = OpenAIChoiceDelta(tool_calls=[openai_tool_call]) + yield OpenAIChatCompletionChunk( + id=id, + choices=[ + OpenAIChatCompletionChunkChoice(index=i, finish_reason=finish_reason, delta=delta) + ], + created=int(time.time()), + model=model, + object="chat.completion.chunk", + ) + # arguments + openai_tool_call = OpenAIChoiceDeltaToolCall( + index=0, + function=OpenAIChoiceDeltaToolCallFunction( + arguments=tool_call.arguments_json, ), ) delta = OpenAIChoiceDelta(tool_calls=[openai_tool_call]) diff --git a/llama_stack/templates/nvidia/doc_template.md b/llama_stack/templates/nvidia/doc_template.md index da95227d8..068dd7ac3 100644 --- a/llama_stack/templates/nvidia/doc_template.md +++ b/llama_stack/templates/nvidia/doc_template.md @@ -25,14 +25,84 @@ The following models are available by default: {% endif %} -### Prerequisite: API Keys +## Prerequisites +### NVIDIA API Keys -Make sure you have access to a NVIDIA API Key. You can get one by visiting [https://build.nvidia.com/](https://build.nvidia.com/). +Make sure you have access to a NVIDIA API Key. You can get one by visiting [https://build.nvidia.com/](https://build.nvidia.com/). Use this key for the `NVIDIA_API_KEY` environment variable. +### Deploy NeMo Microservices Platform +The NVIDIA NeMo microservices platform supports end-to-end microservice deployment of a complete AI flywheel on your Kubernetes cluster through the NeMo Microservices Helm Chart. Please reference the [NVIDIA NeMo Microservices documentation](https://docs.nvidia.com/nemo/microservices/latest/about/index.html) for platform prerequisites and instructions to install and deploy the platform. + +## Supported Services +Each Llama Stack API corresponds to a specific NeMo microservice. The core microservices (Customizer, Evaluator, Guardrails) are exposed by the same endpoint. The platform components (Data Store) are each exposed by separate endpoints. + +### Inference: NVIDIA NIM +NVIDIA NIM is used for running inference with registered models. There are two ways to access NVIDIA NIMs: + 1. Hosted (default): Preview APIs hosted at https://integrate.api.nvidia.com (Requires an API key) + 2. Self-hosted: NVIDIA NIMs that run on your own infrastructure. + +The deployed platform includes the NIM Proxy microservice, which is the service that provides to access your NIMs (for example, to run inference on a model). Set the `NVIDIA_BASE_URL` environment variable to use your NVIDIA NIM Proxy deployment. + +### Datasetio API: NeMo Data Store +The NeMo Data Store microservice serves as the default file storage solution for the NeMo microservices platform. It exposts APIs compatible with the Hugging Face Hub client (`HfApi`), so you can use the client to interact with Data Store. The `NVIDIA_DATASETS_URL` environment variable should point to your NeMo Data Store endpoint. + +See the [NVIDIA Datasetio docs](/llama_stack/providers/remote/datasetio/nvidia/README.md) for supported features and example usage. + +### Eval API: NeMo Evaluator +The NeMo Evaluator microservice supports evaluation of LLMs. Launching an Evaluation job with NeMo Evaluator requires an Evaluation Config (an object that contains metadata needed by the job). A Llama Stack Benchmark maps to an Evaluation Config, so registering a Benchmark creates an Evaluation Config in NeMo Evaluator. The `NVIDIA_EVALUATOR_URL` environment variable should point to your NeMo Microservices endpoint. + +See the [NVIDIA Eval docs](/llama_stack/providers/remote/eval/nvidia/README.md) for supported features and example usage. + +### Post-Training API: NeMo Customizer +The NeMo Customizer microservice supports fine-tuning models. You can reference [this list of supported models](/llama_stack/providers/remote/post_training/nvidia/models.py) that can be fine-tuned using Llama Stack. The `NVIDIA_CUSTOMIZER_URL` environment variable should point to your NeMo Microservices endpoint. + +See the [NVIDIA Post-Training docs](/llama_stack/providers/remote/post_training/nvidia/README.md) for supported features and example usage. + +### Safety API: NeMo Guardrails +The NeMo Guardrails microservice sits between your application and the LLM, and adds checks and content moderation to a model. The `GUARDRAILS_SERVICE_URL` environment variable should point to your NeMo Microservices endpoint. + +See the NVIDIA Safety docs for supported features and example usage. + +## Deploying models +In order to use a registered model with the Llama Stack APIs, ensure the corresponding NIM is deployed to your environment. For example, you can use the NIM Proxy microservice to deploy `meta/llama-3.2-1b-instruct`. + +Note: For improved inference speeds, we need to use NIM with `fast_outlines` guided decoding system (specified in the request body). This is the default if you deployed the platform with the NeMo Microservices Helm Chart. +```sh +# URL to NeMo NIM Proxy service +export NEMO_URL="http://nemo.test" + +curl --location "$NEMO_URL/v1/deployment/model-deployments" \ + -H 'accept: application/json' \ + -H 'Content-Type: application/json' \ + -d '{ + "name": "llama-3.2-1b-instruct", + "namespace": "meta", + "config": { + "model": "meta/llama-3.2-1b-instruct", + "nim_deployment": { + "image_name": "nvcr.io/nim/meta/llama-3.2-1b-instruct", + "image_tag": "1.8.3", + "pvc_size": "25Gi", + "gpu": 1, + "additional_envs": { + "NIM_GUIDED_DECODING_BACKEND": "fast_outlines" + } + } + } + }' +``` +This NIM deployment should take approximately 10 minutes to go live. [See the docs](https://docs.nvidia.com/nemo/microservices/latest/get-started/tutorials/deploy-nims.html) for more information on how to deploy a NIM and verify it's available for inference. + +You can also remove a deployed NIM to free up GPU resources, if needed. +```sh +export NEMO_URL="http://nemo.test" + +curl -X DELETE "$NEMO_URL/v1/deployment/model-deployments/meta/llama-3.1-8b-instruct" +``` ## Running Llama Stack with NVIDIA -You can do this via Conda (build code) or Docker which has a pre-built image. +You can do this via Conda or venv (build code), or Docker which has a pre-built image. ### Via Docker @@ -54,9 +124,23 @@ docker run \ ### Via Conda ```bash +INFERENCE_MODEL=meta-llama/Llama-3.1-8b-Instruct llama stack build --template nvidia --image-type conda llama stack run ./run.yaml \ --port 8321 \ - --env NVIDIA_API_KEY=$NVIDIA_API_KEY + --env NVIDIA_API_KEY=$NVIDIA_API_KEY \ + --env INFERENCE_MODEL=$INFERENCE_MODEL +``` + +### Via venv + +If you've set up your local development environment, you can also build the image using your local virtual environment. + +```bash +INFERENCE_MODEL=meta-llama/Llama-3.1-8b-Instruct +llama stack build --template nvidia --image-type venv +llama stack run ./run.yaml \ + --port 8321 \ + --env NVIDIA_API_KEY=$NVIDIA_API_KEY \ --env INFERENCE_MODEL=$INFERENCE_MODEL ``` diff --git a/llama_stack/templates/nvidia/nvidia.py b/llama_stack/templates/nvidia/nvidia.py index b7fb7d453..46a5ad2c4 100644 --- a/llama_stack/templates/nvidia/nvidia.py +++ b/llama_stack/templates/nvidia/nvidia.py @@ -59,7 +59,7 @@ def get_distribution_template() -> DistributionTemplate: default_models = get_model_registry(available_models) return DistributionTemplate( name="nvidia", - distro_type="remote_hosted", + distro_type="self_hosted", description="Use NVIDIA NIM for running LLM inference and safety", container_image=None, template_path=Path(__file__).parent / "doc_template.md", diff --git a/llama_stack/templates/nvidia/run.yaml b/llama_stack/templates/nvidia/run.yaml index c47eaa5cc..bc5dec8e4 100644 --- a/llama_stack/templates/nvidia/run.yaml +++ b/llama_stack/templates/nvidia/run.yaml @@ -174,6 +174,16 @@ models: provider_id: nvidia provider_model_id: meta/llama-3.2-90b-vision-instruct model_type: llm +- metadata: {} + model_id: meta/llama-3.3-70b-instruct + provider_id: nvidia + provider_model_id: meta/llama-3.3-70b-instruct + model_type: llm +- metadata: {} + model_id: meta-llama/Llama-3.3-70B-Instruct + provider_id: nvidia + provider_model_id: meta/llama-3.3-70b-instruct + model_type: llm - metadata: embedding_dimension: 2048 context_length: 8192 diff --git a/llama_stack/templates/remote-vllm/doc_template.md b/llama_stack/templates/remote-vllm/doc_template.md index fe50e9d49..3cede6080 100644 --- a/llama_stack/templates/remote-vllm/doc_template.md +++ b/llama_stack/templates/remote-vllm/doc_template.md @@ -31,7 +31,7 @@ The following environment variables can be configured: In the following sections, we'll use AMD, NVIDIA or Intel GPUs to serve as hardware accelerators for the vLLM server, which acts as both the LLM inference provider and the safety provider. Note that vLLM also [supports many other hardware accelerators](https://docs.vllm.ai/en/latest/getting_started/installation.html) and -that we only use GPUs here for demonstration purposes. +that we only use GPUs here for demonstration purposes. Note that if you run into issues, you can include the environment variable `--env VLLM_DEBUG_LOG_API_SERVER_RESPONSE=true` (available in vLLM v0.8.3 and above) in the `docker run` command to enable log response from API server for debugging. ### Setting up vLLM server on AMD GPU diff --git a/pyproject.toml b/pyproject.toml index 7e910f673..209367c4b 100644 --- a/pyproject.toml +++ b/pyproject.toml @@ -46,6 +46,7 @@ dev = [ "pytest-asyncio", "pytest-cov", "pytest-html", + "pytest-json-report", "nbval", # For notebook testing "black", "ruff", @@ -57,7 +58,16 @@ dev = [ "ruamel.yaml", # needed for openapi generator ] # These are the dependencies required for running unit tests. -unit = ["sqlite-vec", "openai", "aiosqlite", "aiohttp", "pypdf", "chardet", "qdrant-client"] +unit = [ + "sqlite-vec", + "openai", + "aiosqlite", + "aiohttp", + "pypdf", + "chardet", + "qdrant-client", + "opentelemetry-exporter-otlp-proto-http" +] # These are the core dependencies required for running integration tests. They are shared across all # providers. If a provider requires additional dependencies, please add them to your environment # separately. If you are using "uv" to execute your tests, you can use the "--with" flag to specify extra diff --git a/scripts/distro_codegen.py b/scripts/distro_codegen.py index 98faa53a3..a65e2c80d 100755 --- a/scripts/distro_codegen.py +++ b/scripts/distro_codegen.py @@ -98,7 +98,7 @@ def collect_template_dependencies(template_dir: Path) -> tuple[str | None, list[ if template_func := getattr(module, "get_distribution_template", None): template = template_func() - normal_deps, special_deps = get_provider_dependencies(template.providers) + normal_deps, special_deps = get_provider_dependencies(template) # Combine all dependencies in order: normal deps, special deps, server deps all_deps = sorted(set(normal_deps + SERVER_DEPENDENCIES)) + sorted(set(special_deps)) diff --git a/tests/external-provider/llama-stack-provider-ollama/custom-distro.yaml b/tests/external-provider/llama-stack-provider-ollama/custom-distro.yaml new file mode 100644 index 000000000..eb3b85e52 --- /dev/null +++ b/tests/external-provider/llama-stack-provider-ollama/custom-distro.yaml @@ -0,0 +1,9 @@ +version: '2' +distribution_spec: + description: Custom distro for CI tests + providers: + inference: + - remote::custom_ollama +image_type: container +image_name: ci-test +external_providers_dir: /tmp/providers.d diff --git a/tests/external-provider/llama-stack-provider-ollama/custom_ollama.yaml b/tests/external-provider/llama-stack-provider-ollama/custom_ollama.yaml index f0960b4d8..2ae1e2cf3 100644 --- a/tests/external-provider/llama-stack-provider-ollama/custom_ollama.yaml +++ b/tests/external-provider/llama-stack-provider-ollama/custom_ollama.yaml @@ -1,6 +1,6 @@ adapter: adapter_type: custom_ollama - pip_packages: ["ollama", "aiohttp"] + pip_packages: ["ollama", "aiohttp", "tests/external-provider/llama-stack-provider-ollama"] config_class: llama_stack_provider_ollama.config.OllamaImplConfig module: llama_stack_provider_ollama api_dependencies: [] diff --git a/tests/external-provider/llama-stack-provider-ollama/run.yaml b/tests/external-provider/llama-stack-provider-ollama/run.yaml index 7a3636c4d..a070a6dbb 100644 --- a/tests/external-provider/llama-stack-provider-ollama/run.yaml +++ b/tests/external-provider/llama-stack-provider-ollama/run.yaml @@ -1,14 +1,10 @@ version: '2' image_name: ollama apis: -- agents -- datasetio -- eval - inference -- safety -- scoring - telemetry - tool_runtime +- datasetio - vector_io providers: inference: @@ -24,19 +20,6 @@ providers: type: sqlite namespace: null db_path: ${env.SQLITE_STORE_DIR:~/.llama/distributions/ollama}/faiss_store.db - safety: - - provider_id: llama-guard - provider_type: inline::llama-guard - config: - excluded_categories: [] - agents: - - provider_id: meta-reference - provider_type: inline::meta-reference - config: - persistence_store: - type: sqlite - namespace: null - db_path: ${env.SQLITE_STORE_DIR:~/.llama/distributions/ollama}/agents_store.db telemetry: - provider_id: meta-reference provider_type: inline::meta-reference @@ -44,14 +27,6 @@ providers: service_name: ${env.OTEL_SERVICE_NAME:llama-stack} sinks: ${env.TELEMETRY_SINKS:console,sqlite} sqlite_db_path: ${env.SQLITE_DB_PATH:~/.llama/distributions/ollama/trace_store.db} - eval: - - provider_id: meta-reference - provider_type: inline::meta-reference - config: - kvstore: - type: sqlite - namespace: null - db_path: ${env.SQLITE_STORE_DIR:~/.llama/distributions/ollama}/meta_reference_eval.db datasetio: - provider_id: huggingface provider_type: remote::huggingface @@ -67,17 +42,6 @@ providers: type: sqlite namespace: null db_path: ${env.SQLITE_STORE_DIR:~/.llama/distributions/ollama}/localfs_datasetio.db - scoring: - - provider_id: basic - provider_type: inline::basic - config: {} - - provider_id: llm-as-judge - provider_type: inline::llm-as-judge - config: {} - - provider_id: braintrust - provider_type: inline::braintrust - config: - openai_api_key: ${env.OPENAI_API_KEY:} tool_runtime: - provider_id: brave-search provider_type: remote::brave-search diff --git a/tests/integration/agents/test_agents.py b/tests/integration/agents/test_agents.py index 7def55291..f884d440d 100644 --- a/tests/integration/agents/test_agents.py +++ b/tests/integration/agents/test_agents.py @@ -115,6 +115,70 @@ def test_agent_simple(llama_stack_client_with_mocked_inference, agent_config): assert "I can't" in logs_str +def test_agent_name(llama_stack_client, text_model_id): + agent_name = f"test-agent-{uuid4()}" + + try: + agent = Agent( + llama_stack_client, + model=text_model_id, + instructions="You are a helpful assistant", + name=agent_name, + ) + except TypeError: + agent = Agent( + llama_stack_client, + model=text_model_id, + instructions="You are a helpful assistant", + ) + return + + session_id = agent.create_session(f"test-session-{uuid4()}") + + agent.create_turn( + messages=[ + { + "role": "user", + "content": "Give me a sentence that contains the word: hello", + } + ], + session_id=session_id, + stream=False, + ) + + all_spans = [] + for span in llama_stack_client.telemetry.query_spans( + attribute_filters=[ + {"key": "session_id", "op": "eq", "value": session_id}, + ], + attributes_to_return=["input", "output", "agent_name", "agent_id", "session_id"], + ): + all_spans.append(span.attributes) + + agent_name_spans = [] + for span in llama_stack_client.telemetry.query_spans( + attribute_filters=[], + attributes_to_return=["agent_name"], + ): + if "agent_name" in span.attributes: + agent_name_spans.append(span.attributes) + + agent_logs = [] + for span in llama_stack_client.telemetry.query_spans( + attribute_filters=[ + {"key": "agent_name", "op": "eq", "value": agent_name}, + ], + attributes_to_return=["input", "output", "agent_name"], + ): + if "output" in span.attributes and span.attributes["output"] != "no shields": + agent_logs.append(span.attributes) + + assert len(agent_logs) == 1 + assert agent_logs[0]["agent_name"] == agent_name + assert "Give me a sentence that contains the word: hello" in agent_logs[0]["input"] + assert "hello" in agent_logs[0]["output"].lower() + + def test_tool_config(llama_stack_client_with_mocked_inference, agent_config): common_params = dict( model="meta-llama/Llama-3.2-3B-Instruct", diff --git a/tests/integration/datasets/test_datasets.py b/tests/integration/datasets/test_datasets.py index 60db95f30..18b31d39c 100644 --- a/tests/integration/datasets/test_datasets.py +++ b/tests/integration/datasets/test_datasets.py @@ -31,6 +31,7 @@ def data_url_from_file(file_path: str) -> str: return data_url +@pytest.mark.skip(reason="flaky. Couldn't find 'llamastack/simpleqa' on the Hugging Face Hub") @pytest.mark.parametrize( "purpose, source, provider_id, limit", [ diff --git a/tests/unit/distribution/test_build_path.py b/tests/unit/distribution/test_build_path.py new file mode 100644 index 000000000..555cdda4a --- /dev/null +++ b/tests/unit/distribution/test_build_path.py @@ -0,0 +1,40 @@ +# Copyright (c) Meta Platforms, Inc. and affiliates. +# All rights reserved. +# +# This source code is licensed under the terms described in the LICENSE file in +# the root directory of this source tree. + +from pathlib import Path + +from llama_stack.cli.stack._build import ( + _run_stack_build_command_from_build_config, +) +from llama_stack.distribution.datatypes import BuildConfig, DistributionSpec +from llama_stack.distribution.utils.image_types import LlamaStackImageType + + +def test_container_build_passes_path(monkeypatch, tmp_path): + called_with = {} + + def spy_build_image(cfg, build_file_path, image_name, template_or_config, run_config=None): + called_with["path"] = template_or_config + called_with["run_config"] = run_config + return 0 + + monkeypatch.setattr( + "llama_stack.cli.stack._build.build_image", + spy_build_image, + raising=True, + ) + + cfg = BuildConfig( + image_type=LlamaStackImageType.CONTAINER.value, + distribution_spec=DistributionSpec(providers={}, description=""), + ) + + _run_stack_build_command_from_build_config(cfg, image_name="dummy") + + assert "path" in called_with + assert isinstance(called_with["path"], str) + assert Path(called_with["path"]).exists() + assert called_with["run_config"] is None diff --git a/tests/unit/providers/nvidia/test_supervised_fine_tuning.py b/tests/unit/providers/nvidia/test_supervised_fine_tuning.py index 94e189e3e..09f67e4e6 100644 --- a/tests/unit/providers/nvidia/test_supervised_fine_tuning.py +++ b/tests/unit/providers/nvidia/test_supervised_fine_tuning.py @@ -216,35 +216,48 @@ class TestNvidiaPostTraining(unittest.TestCase): ) def test_get_training_job_status(self): - self.mock_make_request.return_value = { - "created_at": "2024-12-09T04:06:28.580220", - "updated_at": "2024-12-09T04:21:19.852832", - "status": "completed", - "steps_completed": 1210, - "epochs_completed": 2, - "percentage_done": 100.0, - "best_epoch": 2, - "train_loss": 1.718016266822815, - "val_loss": 1.8661999702453613, - } + customizer_status_to_job_status = [ + ("running", "in_progress"), + ("completed", "completed"), + ("failed", "failed"), + ("cancelled", "cancelled"), + ("pending", "scheduled"), + ("unknown", "scheduled"), + ] - job_id = "cust-JGTaMbJMdqjJU8WbQdN9Q2" + for customizer_status, expected_status in customizer_status_to_job_status: + with self.subTest(customizer_status=customizer_status, expected_status=expected_status): + self.mock_make_request.return_value = { + "created_at": "2024-12-09T04:06:28.580220", + "updated_at": "2024-12-09T04:21:19.852832", + "status": customizer_status, + "steps_completed": 1210, + "epochs_completed": 2, + "percentage_done": 100.0, + "best_epoch": 2, + "train_loss": 1.718016266822815, + "val_loss": 1.8661999702453613, + } - status = self.run_async(self.adapter.get_training_job_status(job_uuid=job_id)) + job_id = "cust-JGTaMbJMdqjJU8WbQdN9Q2" - assert isinstance(status, NvidiaPostTrainingJobStatusResponse) - assert status.status.value == "completed" - assert status.steps_completed == 1210 - assert status.epochs_completed == 2 - assert status.percentage_done == 100.0 - assert status.best_epoch == 2 - assert status.train_loss == 1.718016266822815 - assert status.val_loss == 1.8661999702453613 + status = self.run_async(self.adapter.get_training_job_status(job_uuid=job_id)) - self.mock_make_request.assert_called_once() - self._assert_request( - self.mock_make_request, "GET", f"/v1/customization/jobs/{job_id}/status", expected_params={"job_id": job_id} - ) + assert isinstance(status, NvidiaPostTrainingJobStatusResponse) + assert status.status.value == expected_status + assert status.steps_completed == 1210 + assert status.epochs_completed == 2 + assert status.percentage_done == 100.0 + assert status.best_epoch == 2 + assert status.train_loss == 1.718016266822815 + assert status.val_loss == 1.8661999702453613 + + self._assert_request( + self.mock_make_request, + "GET", + f"/v1/customization/jobs/{job_id}/status", + expected_params={"job_id": job_id}, + ) def test_get_training_jobs(self): job_id = "cust-JGTaMbJMdqjJU8WbQdN9Q2" diff --git a/tests/unit/server/test_sse.py b/tests/unit/server/test_sse.py new file mode 100644 index 000000000..4a76bdc9b --- /dev/null +++ b/tests/unit/server/test_sse.py @@ -0,0 +1,55 @@ +# Copyright (c) Meta Platforms, Inc. and affiliates. +# All rights reserved. +# +# This source code is licensed under the terms described in the LICENSE file in +# the root directory of this source tree. + +import asyncio + +import pytest + +from llama_stack.distribution.server.server import create_sse_event, sse_generator + + +@pytest.mark.asyncio +async def test_sse_generator_basic(): + # An AsyncIterator wrapped in an Awaitable, just like our web methods + async def async_event_gen(): + async def event_gen(): + yield "Test event 1" + yield "Test event 2" + + return event_gen() + + sse_gen = sse_generator(async_event_gen()) + assert sse_gen is not None + + # Test that the events are streamed correctly + seen_events = [] + async for event in sse_gen: + seen_events.append(event) + assert len(seen_events) == 2 + assert seen_events[0] == create_sse_event("Test event 1") + assert seen_events[1] == create_sse_event("Test event 2") + + +@pytest.mark.asyncio +async def test_sse_generator_client_disconnected(): + # An AsyncIterator wrapped in an Awaitable, just like our web methods + async def async_event_gen(): + async def event_gen(): + yield "Test event 1" + # Simulate a client disconnect before emitting event 2 + raise asyncio.CancelledError() + + return event_gen() + + sse_gen = sse_generator(async_event_gen()) + assert sse_gen is not None + + # Start reading the events, ensuring this doesn't raise an exception + seen_events = [] + async for event in sse_gen: + seen_events.append(event) + assert len(seen_events) == 1 + assert seen_events[0] == create_sse_event("Test event 1") diff --git a/tests/verifications/README.md b/tests/verifications/README.md index 986ff1087..88762e0ba 100644 --- a/tests/verifications/README.md +++ b/tests/verifications/README.md @@ -8,29 +8,44 @@ This framework allows you to run the same set of verification tests against diff ## Features -The verification suite currently tests: +The verification suite currently tests the following in both streaming and non-streaming modes: -- Basic chat completions (streaming and non-streaming) +- Basic chat completions - Image input capabilities - Structured JSON output formatting - Tool calling functionality +## Report + +The lastest report can be found at [REPORT.md](REPORT.md). + +To update the report, ensure you have the API keys set, +```bash +export OPENAI_API_KEY= +export FIREWORKS_API_KEY= +export TOGETHER_API_KEY= +``` +then run +```bash +uv run --with-editable ".[dev]" python tests/verifications/generate_report.py --run-tests +``` + ## Running Tests To run the verification tests, use pytest with the following parameters: ```bash cd llama-stack -pytest tests/verifications/openai --provider= +pytest tests/verifications/openai_api --provider= ``` Example: ```bash # Run all tests -pytest tests/verifications/openai --provider=together +pytest tests/verifications/openai_api --provider=together # Only run tests with Llama 4 models -pytest tests/verifications/openai --provider=together -k 'Llama-4' +pytest tests/verifications/openai_api --provider=together -k 'Llama-4' ``` ### Parameters @@ -41,23 +56,22 @@ pytest tests/verifications/openai --provider=together -k 'Llama-4' ## Supported Providers -The verification suite currently supports: -- OpenAI -- Fireworks -- Together -- Groq -- Cerebras +The verification suite supports any provider with an OpenAI compatible endpoint. + +See `tests/verifications/conf/` for the list of supported providers. + +To run on a new provider, simply add a new yaml file to the `conf/` directory with the provider config. See `tests/verifications/conf/together.yaml` for an example. ## Adding New Test Cases -To add new test cases, create appropriate JSON files in the `openai/fixtures/test_cases/` directory following the existing patterns. +To add new test cases, create appropriate JSON files in the `openai_api/fixtures/test_cases/` directory following the existing patterns. ## Structure - `__init__.py` - Marks the directory as a Python package -- `conftest.py` - Global pytest configuration and fixtures -- `openai/` - Tests specific to OpenAI-compatible APIs +- `conf/` - Provider-specific configuration files +- `openai_api/` - Tests specific to OpenAI-compatible APIs - `fixtures/` - Test fixtures and utilities - `fixtures.py` - Provider-specific fixtures - `load.py` - Utilities for loading test cases diff --git a/tests/verifications/REPORT.md b/tests/verifications/REPORT.md index 2dd0af41b..2a700fa9c 100644 --- a/tests/verifications/REPORT.md +++ b/tests/verifications/REPORT.md @@ -1,6 +1,6 @@ # Test Results Report -*Generated on: 2025-04-14 18:11:37* +*Generated on: 2025-04-17 12:42:33* *This report was generated by running `python tests/verifications/generate_report.py`* @@ -15,22 +15,74 @@ | Provider | Pass Rate | Tests Passed | Total Tests | | --- | --- | --- | --- | -| Together | 48.7% | 37 | 76 | -| Fireworks | 47.4% | 36 | 76 | -| Openai | 100.0% | 52 | 52 | +| Meta_reference | 100.0% | 28 | 28 | +| Together | 50.0% | 40 | 80 | +| Fireworks | 50.0% | 40 | 80 | +| Openai | 100.0% | 56 | 56 | +## Meta_reference + +*Tests run on: 2025-04-17 12:37:11* + +```bash +# Run all tests for this provider: +pytest tests/verifications/openai_api/test_chat_completion.py --provider=meta_reference -v + +# Example: Run only the 'stream=False' case of test_chat_multi_turn_multiple_images: +pytest tests/verifications/openai_api/test_chat_completion.py --provider=meta_reference -k "test_chat_multi_turn_multiple_images and stream=False" +``` + + +**Model Key (Meta_reference)** + +| Display Name | Full Model ID | +| --- | --- | +| Llama-4-Scout-Instruct | `meta-llama/Llama-4-Scout-17B-16E-Instruct` | + + +| Test | Llama-4-Scout-Instruct | +| --- | --- | +| test_chat_multi_turn_multiple_images (stream=False) | ✅ | +| test_chat_multi_turn_multiple_images (stream=True) | ✅ | +| test_chat_non_streaming_basic (earth) | ✅ | +| test_chat_non_streaming_basic (saturn) | ✅ | +| test_chat_non_streaming_image | ✅ | +| test_chat_non_streaming_multi_turn_tool_calling (add_product_tool) | ✅ | +| test_chat_non_streaming_multi_turn_tool_calling (compare_monthly_expense_tool) | ✅ | +| test_chat_non_streaming_multi_turn_tool_calling (get_then_create_event_tool) | ✅ | +| test_chat_non_streaming_multi_turn_tool_calling (text_then_weather_tool) | ✅ | +| test_chat_non_streaming_multi_turn_tool_calling (weather_tool_then_text) | ✅ | +| test_chat_non_streaming_structured_output (calendar) | ✅ | +| test_chat_non_streaming_structured_output (math) | ✅ | +| test_chat_non_streaming_tool_calling | ✅ | +| test_chat_non_streaming_tool_choice_none | ✅ | +| test_chat_non_streaming_tool_choice_required | ✅ | +| test_chat_streaming_basic (earth) | ✅ | +| test_chat_streaming_basic (saturn) | ✅ | +| test_chat_streaming_image | ✅ | +| test_chat_streaming_multi_turn_tool_calling (add_product_tool) | ✅ | +| test_chat_streaming_multi_turn_tool_calling (compare_monthly_expense_tool) | ✅ | +| test_chat_streaming_multi_turn_tool_calling (get_then_create_event_tool) | ✅ | +| test_chat_streaming_multi_turn_tool_calling (text_then_weather_tool) | ✅ | +| test_chat_streaming_multi_turn_tool_calling (weather_tool_then_text) | ✅ | +| test_chat_streaming_structured_output (calendar) | ✅ | +| test_chat_streaming_structured_output (math) | ✅ | +| test_chat_streaming_tool_calling | ✅ | +| test_chat_streaming_tool_choice_none | ✅ | +| test_chat_streaming_tool_choice_required | ✅ | + ## Together -*Tests run on: 2025-04-14 18:08:14* +*Tests run on: 2025-04-17 12:27:45* ```bash # Run all tests for this provider: pytest tests/verifications/openai_api/test_chat_completion.py --provider=together -v -# Example: Run only the 'earth' case of test_chat_non_streaming_basic: -pytest tests/verifications/openai_api/test_chat_completion.py --provider=together -k "test_chat_non_streaming_basic and earth" +# Example: Run only the 'stream=False' case of test_chat_multi_turn_multiple_images: +pytest tests/verifications/openai_api/test_chat_completion.py --provider=together -k "test_chat_multi_turn_multiple_images and stream=False" ``` @@ -45,11 +97,13 @@ pytest tests/verifications/openai_api/test_chat_completion.py --provider=togethe | Test | Llama-3.3-70B-Instruct | Llama-4-Maverick-Instruct | Llama-4-Scout-Instruct | | --- | --- | --- | --- | +| test_chat_multi_turn_multiple_images (stream=False) | ⚪ | ✅ | ✅ | +| test_chat_multi_turn_multiple_images (stream=True) | ⚪ | ❌ | ❌ | | test_chat_non_streaming_basic (earth) | ✅ | ✅ | ✅ | | test_chat_non_streaming_basic (saturn) | ✅ | ✅ | ✅ | | test_chat_non_streaming_image | ⚪ | ✅ | ✅ | | test_chat_non_streaming_multi_turn_tool_calling (add_product_tool) | ✅ | ✅ | ✅ | -| test_chat_non_streaming_multi_turn_tool_calling (compare_monthly_expense_tool) | ❌ | ✅ | ✅ | +| test_chat_non_streaming_multi_turn_tool_calling (compare_monthly_expense_tool) | ✅ | ✅ | ✅ | | test_chat_non_streaming_multi_turn_tool_calling (get_then_create_event_tool) | ✅ | ❌ | ✅ | | test_chat_non_streaming_multi_turn_tool_calling (text_then_weather_tool) | ❌ | ❌ | ❌ | | test_chat_non_streaming_multi_turn_tool_calling (weather_tool_then_text) | ✅ | ✅ | ✅ | @@ -74,14 +128,14 @@ pytest tests/verifications/openai_api/test_chat_completion.py --provider=togethe ## Fireworks -*Tests run on: 2025-04-14 18:04:06* +*Tests run on: 2025-04-17 12:29:53* ```bash # Run all tests for this provider: pytest tests/verifications/openai_api/test_chat_completion.py --provider=fireworks -v -# Example: Run only the 'earth' case of test_chat_non_streaming_basic: -pytest tests/verifications/openai_api/test_chat_completion.py --provider=fireworks -k "test_chat_non_streaming_basic and earth" +# Example: Run only the 'stream=False' case of test_chat_multi_turn_multiple_images: +pytest tests/verifications/openai_api/test_chat_completion.py --provider=fireworks -k "test_chat_multi_turn_multiple_images and stream=False" ``` @@ -96,6 +150,8 @@ pytest tests/verifications/openai_api/test_chat_completion.py --provider=firewor | Test | Llama-3.3-70B-Instruct | Llama-4-Maverick-Instruct | Llama-4-Scout-Instruct | | --- | --- | --- | --- | +| test_chat_multi_turn_multiple_images (stream=False) | ⚪ | ✅ | ✅ | +| test_chat_multi_turn_multiple_images (stream=True) | ⚪ | ✅ | ✅ | | test_chat_non_streaming_basic (earth) | ✅ | ✅ | ✅ | | test_chat_non_streaming_basic (saturn) | ✅ | ✅ | ✅ | | test_chat_non_streaming_image | ⚪ | ✅ | ✅ | @@ -125,14 +181,14 @@ pytest tests/verifications/openai_api/test_chat_completion.py --provider=firewor ## Openai -*Tests run on: 2025-04-14 18:09:51* +*Tests run on: 2025-04-17 12:34:08* ```bash # Run all tests for this provider: pytest tests/verifications/openai_api/test_chat_completion.py --provider=openai -v -# Example: Run only the 'earth' case of test_chat_non_streaming_basic: -pytest tests/verifications/openai_api/test_chat_completion.py --provider=openai -k "test_chat_non_streaming_basic and earth" +# Example: Run only the 'stream=False' case of test_chat_multi_turn_multiple_images: +pytest tests/verifications/openai_api/test_chat_completion.py --provider=openai -k "test_chat_multi_turn_multiple_images and stream=False" ``` @@ -146,6 +202,8 @@ pytest tests/verifications/openai_api/test_chat_completion.py --provider=openai | Test | gpt-4o | gpt-4o-mini | | --- | --- | --- | +| test_chat_multi_turn_multiple_images (stream=False) | ✅ | ✅ | +| test_chat_multi_turn_multiple_images (stream=True) | ✅ | ✅ | | test_chat_non_streaming_basic (earth) | ✅ | ✅ | | test_chat_non_streaming_basic (saturn) | ✅ | ✅ | | test_chat_non_streaming_image | ✅ | ✅ | diff --git a/tests/verifications/conf/cerebras.yaml b/tests/verifications/conf/cerebras.yaml index 5b19b4916..37fc713d6 100644 --- a/tests/verifications/conf/cerebras.yaml +++ b/tests/verifications/conf/cerebras.yaml @@ -8,3 +8,4 @@ test_exclusions: llama-3.3-70b: - test_chat_non_streaming_image - test_chat_streaming_image + - test_chat_multi_turn_multiple_images diff --git a/tests/verifications/conf/fireworks-llama-stack.yaml b/tests/verifications/conf/fireworks-llama-stack.yaml index d91443dd9..fc78a1377 100644 --- a/tests/verifications/conf/fireworks-llama-stack.yaml +++ b/tests/verifications/conf/fireworks-llama-stack.yaml @@ -12,3 +12,4 @@ test_exclusions: fireworks/llama-v3p3-70b-instruct: - test_chat_non_streaming_image - test_chat_streaming_image + - test_chat_multi_turn_multiple_images diff --git a/tests/verifications/conf/fireworks.yaml b/tests/verifications/conf/fireworks.yaml index f55b707ba..9bb21f706 100644 --- a/tests/verifications/conf/fireworks.yaml +++ b/tests/verifications/conf/fireworks.yaml @@ -12,3 +12,4 @@ test_exclusions: accounts/fireworks/models/llama-v3p3-70b-instruct: - test_chat_non_streaming_image - test_chat_streaming_image + - test_chat_multi_turn_multiple_images diff --git a/tests/verifications/conf/groq-llama-stack.yaml b/tests/verifications/conf/groq-llama-stack.yaml index fd5e9abec..6958bafc5 100644 --- a/tests/verifications/conf/groq-llama-stack.yaml +++ b/tests/verifications/conf/groq-llama-stack.yaml @@ -12,3 +12,4 @@ test_exclusions: groq/llama-3.3-70b-versatile: - test_chat_non_streaming_image - test_chat_streaming_image + - test_chat_multi_turn_multiple_images diff --git a/tests/verifications/conf/groq.yaml b/tests/verifications/conf/groq.yaml index 76b1244ae..bc3de58e9 100644 --- a/tests/verifications/conf/groq.yaml +++ b/tests/verifications/conf/groq.yaml @@ -12,3 +12,4 @@ test_exclusions: llama-3.3-70b-versatile: - test_chat_non_streaming_image - test_chat_streaming_image + - test_chat_multi_turn_multiple_images diff --git a/tests/verifications/conf/meta_reference.yaml b/tests/verifications/conf/meta_reference.yaml new file mode 100644 index 000000000..fb2680fe0 --- /dev/null +++ b/tests/verifications/conf/meta_reference.yaml @@ -0,0 +1,8 @@ +# LLAMA_STACK_PORT=5002 llama stack run meta-reference-gpu --env INFERENCE_MODEL=meta-llama/Llama-4-Scout-17B-16E-Instruct --env INFERENCE_CHECKPOINT_DIR= +base_url: http://localhost:5002/v1/openai/v1 +api_key_var: foo +models: +- meta-llama/Llama-4-Scout-17B-16E-Instruct +model_display_names: + meta-llama/Llama-4-Scout-17B-16E-Instruct: Llama-4-Scout-Instruct +test_exclusions: {} diff --git a/tests/verifications/conf/together-llama-stack.yaml b/tests/verifications/conf/together-llama-stack.yaml index e49d82604..719e2d776 100644 --- a/tests/verifications/conf/together-llama-stack.yaml +++ b/tests/verifications/conf/together-llama-stack.yaml @@ -12,3 +12,4 @@ test_exclusions: together/meta-llama/Llama-3.3-70B-Instruct-Turbo: - test_chat_non_streaming_image - test_chat_streaming_image + - test_chat_multi_turn_multiple_images diff --git a/tests/verifications/conf/together.yaml b/tests/verifications/conf/together.yaml index 258616662..e8fb62ab9 100644 --- a/tests/verifications/conf/together.yaml +++ b/tests/verifications/conf/together.yaml @@ -12,3 +12,4 @@ test_exclusions: meta-llama/Llama-3.3-70B-Instruct-Turbo: - test_chat_non_streaming_image - test_chat_streaming_image + - test_chat_multi_turn_multiple_images diff --git a/tests/verifications/generate_report.py b/tests/verifications/generate_report.py index b39c3fd19..f0894bfce 100755 --- a/tests/verifications/generate_report.py +++ b/tests/verifications/generate_report.py @@ -3,14 +3,6 @@ # # This source code is licensed under the terms described in the LICENSE file in # the root directory of this source tree. - -# /// script -# requires-python = ">=3.10" -# dependencies = [ -# "pytest-json-report", -# "pyyaml", -# ] -# /// """ Test Report Generator @@ -67,16 +59,11 @@ RESULTS_DIR.mkdir(exist_ok=True) # Maximum number of test result files to keep per provider MAX_RESULTS_PER_PROVIDER = 1 -PROVIDER_ORDER = [ +DEFAULT_PROVIDERS = [ + "meta_reference", "together", "fireworks", - "groq", - "cerebras", "openai", - "together-llama-stack", - "fireworks-llama-stack", - "groq-llama-stack", - "openai-llama-stack", ] VERIFICATION_CONFIG = _load_all_verification_configs() @@ -142,6 +129,14 @@ def run_tests(provider, keyword=None): return None +def run_multiple_tests(providers_to_run: list[str], keyword: str | None): + """Runs tests for a list of providers.""" + print(f"Running tests for providers: {', '.join(providers_to_run)}") + for provider in providers_to_run: + run_tests(provider.strip(), keyword=keyword) + print("Finished running tests.") + + def parse_results( result_file, ) -> Tuple[DefaultDict[str, DefaultDict[str, Dict[str, bool]]], DefaultDict[str, Set[str]], Set[str], str]: @@ -250,20 +245,6 @@ def parse_results( return parsed_results, providers_in_file, tests_in_file, run_timestamp_str -def get_all_result_files_by_provider(): - """Get all test result files, keyed by provider.""" - provider_results = {} - - result_files = list(RESULTS_DIR.glob("*.json")) - - for file in result_files: - provider = file.stem - if provider: - provider_results[provider] = file - - return provider_results - - def generate_report( results_dict: Dict[str, Any], providers: Dict[str, Set[str]], @@ -276,6 +257,7 @@ def generate_report( Args: results_dict: Aggregated results [provider][model][test_name] -> status. providers: Dict of all providers and their models {provider: {models}}. + The order of keys in this dict determines the report order. all_tests: Set of all test names found. provider_timestamps: Dict of provider to timestamp when tests were run output_file: Optional path to save the report. @@ -353,22 +335,17 @@ def generate_report( passed_tests += 1 provider_totals[provider] = (provider_passed, provider_total) - # Add summary table (use passed-in providers dict) + # Add summary table (use the order from the providers dict keys) report.append("| Provider | Pass Rate | Tests Passed | Total Tests |") report.append("| --- | --- | --- | --- |") - for provider in [p for p in PROVIDER_ORDER if p in providers]: # Check against keys of passed-in dict - passed, total = provider_totals.get(provider, (0, 0)) - pass_rate = f"{(passed / total * 100):.1f}%" if total > 0 else "N/A" - report.append(f"| {provider.capitalize()} | {pass_rate} | {passed} | {total} |") - for provider in [p for p in providers if p not in PROVIDER_ORDER]: # Check against keys of passed-in dict + # Iterate through providers in the order they appear in the input dict + for provider in providers_sorted.keys(): passed, total = provider_totals.get(provider, (0, 0)) pass_rate = f"{(passed / total * 100):.1f}%" if total > 0 else "N/A" report.append(f"| {provider.capitalize()} | {pass_rate} | {passed} | {total} |") report.append("\n") - for provider in sorted( - providers_sorted.keys(), key=lambda p: (PROVIDER_ORDER.index(p) if p in PROVIDER_ORDER else float("inf"), p) - ): + for provider in providers_sorted.keys(): provider_models = providers_sorted[provider] # Use sorted models if not provider_models: continue @@ -461,60 +438,62 @@ def main(): "--providers", type=str, nargs="+", - help="Specify providers to test (comma-separated or space-separated, default: all)", + help="Specify providers to include/test (comma-separated or space-separated, default: uses DEFAULT_PROVIDERS)", ) parser.add_argument("--output", type=str, help="Output file location (default: tests/verifications/REPORT.md)") parser.add_argument("--k", type=str, help="Keyword expression to filter tests (passed to pytest -k)") args = parser.parse_args() all_results = {} - # Initialize collections to aggregate results in main - aggregated_providers = defaultdict(set) + final_providers_order = {} # Dictionary to store results, preserving processing order aggregated_tests = set() provider_timestamps = {} - if args.run_tests: - # Get list of available providers from command line or use detected providers - if args.providers: - # Handle both comma-separated and space-separated lists - test_providers = [] - for provider_arg in args.providers: - # Split by comma if commas are present - if "," in provider_arg: - test_providers.extend(provider_arg.split(",")) - else: - test_providers.append(provider_arg) - else: - # Default providers to test - test_providers = PROVIDER_ORDER - - for provider in test_providers: - provider = provider.strip() # Remove any whitespace - result_file = run_tests(provider, keyword=args.k) - if result_file: - # Parse and aggregate results - parsed_results, providers_in_file, tests_in_file, run_timestamp = parse_results(result_file) - all_results.update(parsed_results) - for prov, models in providers_in_file.items(): - aggregated_providers[prov].update(models) - if run_timestamp: - provider_timestamps[prov] = run_timestamp - aggregated_tests.update(tests_in_file) + # 1. Determine the desired list and order of providers + if args.providers: + desired_providers = [] + for provider_arg in args.providers: + desired_providers.extend([p.strip() for p in provider_arg.split(",")]) else: - # Use existing results - provider_result_files = get_all_result_files_by_provider() + desired_providers = DEFAULT_PROVIDERS # Use default order/list - for result_file in provider_result_files.values(): - # Parse and aggregate results - parsed_results, providers_in_file, tests_in_file, run_timestamp = parse_results(result_file) - all_results.update(parsed_results) - for prov, models in providers_in_file.items(): - aggregated_providers[prov].update(models) - if run_timestamp: - provider_timestamps[prov] = run_timestamp - aggregated_tests.update(tests_in_file) + # 2. Run tests if requested (using the desired provider list) + if args.run_tests: + run_multiple_tests(desired_providers, args.k) - generate_report(all_results, aggregated_providers, aggregated_tests, provider_timestamps, args.output) + for provider in desired_providers: + # Construct the expected result file path directly + result_file = RESULTS_DIR / f"{provider}.json" + + if result_file.exists(): # Check if the specific file exists + print(f"Loading results for {provider} from {result_file}") + try: + parsed_data = parse_results(result_file) + parsed_results, providers_in_file, tests_in_file, run_timestamp = parsed_data + all_results.update(parsed_results) + aggregated_tests.update(tests_in_file) + + # Add models for this provider, ensuring it's added in the correct report order + if provider in providers_in_file: + if provider not in final_providers_order: + final_providers_order[provider] = set() + final_providers_order[provider].update(providers_in_file[provider]) + if run_timestamp != "Unknown": + provider_timestamps[provider] = run_timestamp + else: + print( + f"Warning: Provider '{provider}' found in desired list but not within its result file data ({result_file})." + ) + + except Exception as e: + print(f"Error parsing results for provider {provider} from {result_file}: {e}") + else: + # Only print warning if we expected results (i.e., provider was in the desired list) + print(f"Result file for desired provider '{provider}' not found at {result_file}. Skipping.") + + # 5. Generate the report using the filtered & ordered results + print(f"Final Provider Order for Report: {list(final_providers_order.keys())}") + generate_report(all_results, final_providers_order, aggregated_tests, provider_timestamps, args.output) if __name__ == "__main__": diff --git a/tests/verifications/openai_api/fixtures/images/vision_test_1.jpg b/tests/verifications/openai_api/fixtures/images/vision_test_1.jpg new file mode 100644 index 000000000..32fd0c0e3 Binary files /dev/null and b/tests/verifications/openai_api/fixtures/images/vision_test_1.jpg differ diff --git a/tests/verifications/openai_api/fixtures/images/vision_test_2.jpg b/tests/verifications/openai_api/fixtures/images/vision_test_2.jpg new file mode 100644 index 000000000..f9c28e3d5 Binary files /dev/null and b/tests/verifications/openai_api/fixtures/images/vision_test_2.jpg differ diff --git a/tests/verifications/openai_api/fixtures/images/vision_test_3.jpg b/tests/verifications/openai_api/fixtures/images/vision_test_3.jpg new file mode 100644 index 000000000..63165ea86 Binary files /dev/null and b/tests/verifications/openai_api/fixtures/images/vision_test_3.jpg differ diff --git a/tests/verifications/openai_api/fixtures/test_cases/chat_completion.yaml b/tests/verifications/openai_api/fixtures/test_cases/chat_completion.yaml index 1ace76e34..0c9f1fe9e 100644 --- a/tests/verifications/openai_api/fixtures/test_cases/chat_completion.yaml +++ b/tests/verifications/openai_api/fixtures/test_cases/chat_completion.yaml @@ -15,6 +15,52 @@ test_chat_basic: S? role: user output: Saturn +test_chat_input_validation: + test_name: test_chat_input_validation + test_params: + case: + - case_id: "messages_missing" + input: + messages: [] + output: + error: + status_code: 400 + - case_id: "messages_role_invalid" + input: + messages: + - content: Which planet do humans live on? + role: fake_role + output: + error: + status_code: 400 + - case_id: "tool_choice_invalid" + input: + messages: + - content: Which planet do humans live on? + role: user + tool_choice: invalid + output: + error: + status_code: 400 + - case_id: "tool_choice_no_tools" + input: + messages: + - content: Which planet do humans live on? + role: user + tool_choice: required + output: + error: + status_code: 400 + - case_id: "tools_type_invalid" + input: + messages: + - content: Which planet do humans live on? + role: user + tools: + - type: invalid + output: + error: + status_code: 400 test_chat_image: test_name: test_chat_image test_params: diff --git a/tests/verifications/openai_api/test_chat_completion.py b/tests/verifications/openai_api/test_chat_completion.py index 62a223afb..277eaafa3 100644 --- a/tests/verifications/openai_api/test_chat_completion.py +++ b/tests/verifications/openai_api/test_chat_completion.py @@ -4,19 +4,26 @@ # This source code is licensed under the terms described in the LICENSE file in # the root directory of this source tree. +import base64 import copy import json import re +from pathlib import Path from typing import Any import pytest +from openai import APIError from pydantic import BaseModel -from tests.verifications.openai_api.fixtures.fixtures import _load_all_verification_configs +from tests.verifications.openai_api.fixtures.fixtures import ( + _load_all_verification_configs, +) from tests.verifications.openai_api.fixtures.load import load_test_cases chat_completion_test_cases = load_test_cases("chat_completion") +THIS_DIR = Path(__file__).parent + def case_id_generator(case): """Generate a test ID from the case's 'case_id' field, or use a default.""" @@ -69,6 +76,21 @@ def get_base_test_name(request): return request.node.originalname +@pytest.fixture +def multi_image_data(): + files = [ + THIS_DIR / "fixtures/images/vision_test_1.jpg", + THIS_DIR / "fixtures/images/vision_test_2.jpg", + THIS_DIR / "fixtures/images/vision_test_3.jpg", + ] + encoded_files = [] + for file in files: + with open(file, "rb") as image_file: + base64_data = base64.b64encode(image_file.read()).decode("utf-8") + encoded_files.append(f"data:image/jpeg;base64,{base64_data}") + return encoded_files + + # --- Test Functions --- @@ -115,6 +137,50 @@ def test_chat_streaming_basic(request, openai_client, model, provider, verificat assert case["output"].lower() in content.lower() +@pytest.mark.parametrize( + "case", + chat_completion_test_cases["test_chat_input_validation"]["test_params"]["case"], + ids=case_id_generator, +) +def test_chat_non_streaming_error_handling(request, openai_client, model, provider, verification_config, case): + test_name_base = get_base_test_name(request) + if should_skip_test(verification_config, provider, model, test_name_base): + pytest.skip(f"Skipping {test_name_base} for model {model} on provider {provider} based on config.") + + with pytest.raises(APIError) as e: + openai_client.chat.completions.create( + model=model, + messages=case["input"]["messages"], + stream=False, + tool_choice=case["input"]["tool_choice"] if "tool_choice" in case["input"] else None, + tools=case["input"]["tools"] if "tools" in case["input"] else None, + ) + assert case["output"]["error"]["status_code"] == e.value.status_code + + +@pytest.mark.parametrize( + "case", + chat_completion_test_cases["test_chat_input_validation"]["test_params"]["case"], + ids=case_id_generator, +) +def test_chat_streaming_error_handling(request, openai_client, model, provider, verification_config, case): + test_name_base = get_base_test_name(request) + if should_skip_test(verification_config, provider, model, test_name_base): + pytest.skip(f"Skipping {test_name_base} for model {model} on provider {provider} based on config.") + + with pytest.raises(APIError) as e: + response = openai_client.chat.completions.create( + model=model, + messages=case["input"]["messages"], + stream=True, + tool_choice=case["input"]["tool_choice"] if "tool_choice" in case["input"] else None, + tools=case["input"]["tools"] if "tools" in case["input"] else None, + ) + for _chunk in response: + pass + assert str(case["output"]["error"]["status_code"]) in e.value.message + + @pytest.mark.parametrize( "case", chat_completion_test_cases["test_chat_image"]["test_params"]["case"], @@ -272,7 +338,6 @@ def test_chat_non_streaming_tool_choice_required(request, openai_client, model, tool_choice="required", # Force tool call stream=False, ) - print(response) assert response.choices[0].message.role == "assistant" assert len(response.choices[0].message.tool_calls) > 0, "Expected tool call when tool_choice='required'" @@ -532,6 +597,86 @@ def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, p ) +@pytest.mark.parametrize("stream", [False, True], ids=["stream=False", "stream=True"]) +def test_chat_multi_turn_multiple_images( + request, openai_client, model, provider, verification_config, multi_image_data, stream +): + test_name_base = get_base_test_name(request) + if should_skip_test(verification_config, provider, model, test_name_base): + pytest.skip(f"Skipping {test_name_base} for model {model} on provider {provider} based on config.") + + messages_turn1 = [ + { + "role": "user", + "content": [ + { + "type": "image_url", + "image_url": { + "url": multi_image_data[0], + }, + }, + { + "type": "image_url", + "image_url": { + "url": multi_image_data[1], + }, + }, + { + "type": "text", + "text": "What furniture is in the first image that is not in the second image?", + }, + ], + }, + ] + + # First API call + response1 = openai_client.chat.completions.create( + model=model, + messages=messages_turn1, + stream=stream, + ) + if stream: + message_content1 = "" + for chunk in response1: + message_content1 += chunk.choices[0].delta.content or "" + else: + message_content1 = response1.choices[0].message.content + assert len(message_content1) > 0 + assert any(expected in message_content1.lower().strip() for expected in {"chair", "table"}), message_content1 + + # Prepare messages for the second turn + messages_turn2 = messages_turn1 + [ + {"role": "assistant", "content": message_content1}, + { + "role": "user", + "content": [ + { + "type": "image_url", + "image_url": { + "url": multi_image_data[2], + }, + }, + {"type": "text", "text": "What is in this image that is also in the first image?"}, + ], + }, + ] + + # Second API call + response2 = openai_client.chat.completions.create( + model=model, + messages=messages_turn2, + stream=stream, + ) + if stream: + message_content2 = "" + for chunk in response2: + message_content2 += chunk.choices[0].delta.content or "" + else: + message_content2 = response2.choices[0].message.content + assert len(message_content2) > 0 + assert any(expected in message_content2.lower().strip() for expected in {"bed"}), message_content2 + + # --- Helper functions (structured output validation) --- diff --git a/tests/verifications/test_results/fireworks.json b/tests/verifications/test_results/fireworks.json index 1fb6cb1b4..ef5cf142e 100644 --- a/tests/verifications/test_results/fireworks.json +++ b/tests/verifications/test_results/fireworks.json @@ -1,15 +1,15 @@ { - "created": 1744679294.344288, - "duration": 243.49469900131226, + "created": 1744918448.686489, + "duration": 254.68238854408264, "exitcode": 1, - "root": "/Users/erichuang/projects/llama-stack", + "root": "/home/erichuang/llama-stack", "environment": {}, "summary": { - "passed": 36, - "skipped": 2, + "passed": 40, + "skipped": 4, "failed": 40, - "total": 78, - "collected": 78 + "total": 84, + "collected": 84 }, "collectors": [ { @@ -29,392 +29,422 @@ { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[accounts/fireworks/models/llama-v3p3-70b-instruct-earth]", "type": "Function", - "lineno": 74 + "lineno": 95 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[accounts/fireworks/models/llama-v3p3-70b-instruct-saturn]", "type": "Function", - "lineno": 74 + "lineno": 95 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[accounts/fireworks/models/llama4-scout-instruct-basic-earth]", "type": "Function", - "lineno": 74 + "lineno": 95 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[accounts/fireworks/models/llama4-scout-instruct-basic-saturn]", "type": "Function", - "lineno": 74 + "lineno": 95 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[accounts/fireworks/models/llama4-maverick-instruct-basic-earth]", "type": "Function", - "lineno": 74 + "lineno": 95 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[accounts/fireworks/models/llama4-maverick-instruct-basic-saturn]", "type": "Function", - "lineno": 74 + "lineno": 95 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[accounts/fireworks/models/llama-v3p3-70b-instruct-earth]", "type": "Function", - "lineno": 93 + "lineno": 114 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[accounts/fireworks/models/llama-v3p3-70b-instruct-saturn]", "type": "Function", - "lineno": 93 + "lineno": 114 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[accounts/fireworks/models/llama4-scout-instruct-basic-earth]", "type": "Function", - "lineno": 93 + "lineno": 114 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[accounts/fireworks/models/llama4-scout-instruct-basic-saturn]", "type": "Function", - "lineno": 93 + "lineno": 114 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[accounts/fireworks/models/llama4-maverick-instruct-basic-earth]", "type": 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"lineno": 554 + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[accounts/fireworks/models/llama-v3p3-70b-instruct-stream=True]", + "type": "Function", + "lineno": 554 + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[accounts/fireworks/models/llama4-scout-instruct-basic-stream=False]", + "type": "Function", + "lineno": 554 + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[accounts/fireworks/models/llama4-scout-instruct-basic-stream=True]", + "type": "Function", + "lineno": 554 + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[accounts/fireworks/models/llama4-maverick-instruct-basic-stream=False]", + "type": "Function", + "lineno": 554 + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[accounts/fireworks/models/llama4-maverick-instruct-basic-stream=True]", + "type": "Function", + "lineno": 554 } ] } @@ -422,7 +452,7 @@ "tests": [ { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[accounts/fireworks/models/llama-v3p3-70b-instruct-earth]", - "lineno": 74, + "lineno": 95, "outcome": "passed", "keywords": [ "test_chat_non_streaming_basic[accounts/fireworks/models/llama-v3p3-70b-instruct-earth]", @@ -441,21 +471,21 @@ "case_id": "earth" }, "setup": { - "duration": 0.2540216660127044, + "duration": 0.13845239393413067, "outcome": "passed" }, "call": { - "duration": 0.6861197501420975, + "duration": 1.3300942620262504, "outcome": "passed" }, "teardown": { - "duration": 0.00015208404511213303, + "duration": 0.00025453977286815643, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[accounts/fireworks/models/llama-v3p3-70b-instruct-saturn]", - "lineno": 74, + "lineno": 95, "outcome": "passed", "keywords": [ "test_chat_non_streaming_basic[accounts/fireworks/models/llama-v3p3-70b-instruct-saturn]", @@ -474,21 +504,21 @@ "case_id": "saturn" }, "setup": { - "duration": 0.006722707999870181, + "duration": 0.0806605163961649, "outcome": "passed" }, "call": { - "duration": 0.5997684169560671, + "duration": 0.6202042903751135, "outcome": "passed" }, "teardown": { - "duration": 0.0002298750914633274, + "duration": 0.00026358477771282196, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[accounts/fireworks/models/llama4-scout-instruct-basic-earth]", - "lineno": 74, + "lineno": 95, "outcome": "passed", "keywords": [ "test_chat_non_streaming_basic[accounts/fireworks/models/llama4-scout-instruct-basic-earth]", @@ -507,21 +537,21 @@ "case_id": "earth" }, "setup": { - "duration": 0.015468083089217544, + "duration": 0.07190297450870275, "outcome": "passed" }, "call": { - "duration": 0.4625723329372704, + "duration": 0.7458920907229185, "outcome": "passed" }, "teardown": { - "duration": 0.0003302919212728739, + "duration": 0.00024067144840955734, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[accounts/fireworks/models/llama4-scout-instruct-basic-saturn]", - "lineno": 74, + "lineno": 95, "outcome": "passed", "keywords": [ "test_chat_non_streaming_basic[accounts/fireworks/models/llama4-scout-instruct-basic-saturn]", @@ -540,21 +570,21 @@ "case_id": "saturn" }, "setup": { - "duration": 0.014780875062569976, + "duration": 0.07551384158432484, "outcome": "passed" }, "call": { - "duration": 0.4616922920104116, + "duration": 0.6140249809250236, "outcome": "passed" }, "teardown": { - "duration": 0.0004110001027584076, + "duration": 0.00024476367980241776, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[accounts/fireworks/models/llama4-maverick-instruct-basic-earth]", - "lineno": 74, + "lineno": 95, "outcome": "passed", "keywords": [ "test_chat_non_streaming_basic[accounts/fireworks/models/llama4-maverick-instruct-basic-earth]", @@ -573,21 +603,21 @@ "case_id": "earth" }, "setup": { - "duration": 0.016551292035728693, + "duration": 0.07434738799929619, "outcome": "passed" }, "call": { - "duration": 0.9366653750184923, + "duration": 1.6738943997770548, "outcome": "passed" }, "teardown": { - "duration": 0.00045104208402335644, + "duration": 0.000227426178753376, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[accounts/fireworks/models/llama4-maverick-instruct-basic-saturn]", - "lineno": 74, + "lineno": 95, "outcome": "passed", "keywords": [ "test_chat_non_streaming_basic[accounts/fireworks/models/llama4-maverick-instruct-basic-saturn]", @@ -606,21 +636,21 @@ "case_id": "saturn" }, "setup": { - "duration": 0.043513541808351874, + "duration": 0.07130288146436214, "outcome": "passed" }, "call": { - "duration": 0.5119727500714362, + "duration": 1.337895905598998, "outcome": "passed" }, "teardown": { - "duration": 0.00016754190437495708, + "duration": 0.00028038304299116135, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[accounts/fireworks/models/llama-v3p3-70b-instruct-earth]", - "lineno": 93, + "lineno": 114, "outcome": "passed", "keywords": [ "test_chat_streaming_basic[accounts/fireworks/models/llama-v3p3-70b-instruct-earth]", @@ -639,21 +669,21 @@ "case_id": "earth" }, "setup": { - "duration": 0.008419709047302604, + "duration": 0.0727478675544262, "outcome": "passed" }, "call": { - "duration": 0.7933078748174012, + "duration": 0.7670011632144451, "outcome": "passed" }, "teardown": { - "duration": 0.00016583292745053768, + "duration": 0.00023174844682216644, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[accounts/fireworks/models/llama-v3p3-70b-instruct-saturn]", - "lineno": 93, + "lineno": 114, "outcome": "passed", "keywords": [ "test_chat_streaming_basic[accounts/fireworks/models/llama-v3p3-70b-instruct-saturn]", @@ -672,21 +702,21 @@ "case_id": "saturn" }, "setup": { - "duration": 0.013550583040341735, + "duration": 0.07163545861840248, "outcome": "passed" }, "call": { - "duration": 0.6633435001131147, + "duration": 0.7582714259624481, "outcome": "passed" }, "teardown": { - "duration": 0.00023925001733005047, + "duration": 0.00028524454683065414, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[accounts/fireworks/models/llama4-scout-instruct-basic-earth]", - "lineno": 93, + "lineno": 114, "outcome": "passed", "keywords": [ "test_chat_streaming_basic[accounts/fireworks/models/llama4-scout-instruct-basic-earth]", @@ -705,21 +735,21 @@ "case_id": "earth" }, "setup": { - "duration": 0.007293834118172526, + "duration": 0.08122281823307276, "outcome": "passed" }, "call": { - "duration": 0.5193503750488162, + "duration": 0.6061851140111685, "outcome": "passed" }, "teardown": { - "duration": 0.00018516601994633675, + "duration": 0.0002497304230928421, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[accounts/fireworks/models/llama4-scout-instruct-basic-saturn]", - "lineno": 93, + "lineno": 114, "outcome": "passed", "keywords": [ "test_chat_streaming_basic[accounts/fireworks/models/llama4-scout-instruct-basic-saturn]", @@ -738,21 +768,21 @@ "case_id": "saturn" }, "setup": { - "duration": 0.009030540939420462, + "duration": 0.07185561209917068, "outcome": "passed" }, "call": { - "duration": 0.4338789170142263, + "duration": 0.7516075978055596, "outcome": "passed" }, "teardown": { - "duration": 0.0004670829512178898, + "duration": 0.00026526860892772675, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[accounts/fireworks/models/llama4-maverick-instruct-basic-earth]", - "lineno": 93, + "lineno": 114, "outcome": "passed", "keywords": [ "test_chat_streaming_basic[accounts/fireworks/models/llama4-maverick-instruct-basic-earth]", @@ -771,21 +801,21 @@ "case_id": "earth" }, "setup": { - "duration": 0.01854533306322992, + "duration": 0.07012896798551083, "outcome": "passed" }, "call": { - "duration": 1.0042304168455303, + "duration": 1.8946502823382616, "outcome": "passed" }, "teardown": { - "duration": 0.0004844998475164175, + "duration": 0.0002452842891216278, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[accounts/fireworks/models/llama4-maverick-instruct-basic-saturn]", - "lineno": 93, + "lineno": 114, "outcome": "passed", "keywords": [ "test_chat_streaming_basic[accounts/fireworks/models/llama4-maverick-instruct-basic-saturn]", @@ -804,21 +834,21 @@ "case_id": "saturn" }, "setup": { - "duration": 0.018001709133386612, + "duration": 0.06955648958683014, "outcome": "passed" }, "call": { - "duration": 0.5567380839493126, + "duration": 1.0446623722091317, "outcome": "passed" }, "teardown": { - "duration": 0.00015412503853440285, + "duration": 0.00023738667368888855, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_image[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", - "lineno": 117, + "lineno": 138, "outcome": "skipped", "keywords": [ "test_chat_non_streaming_image[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", @@ -837,22 +867,22 @@ "case_id": "case0" }, "setup": { - "duration": 0.008420375175774097, + "duration": 0.07077906839549541, "outcome": "passed" }, "call": { - "duration": 0.00015591713599860668, + "duration": 0.00021365191787481308, "outcome": "skipped", - "longrepr": "('/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py', 126, 'Skipped: Skipping test_chat_non_streaming_image for model accounts/fireworks/models/llama-v3p3-70b-instruct on provider fireworks based on config.')" + "longrepr": "('/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py', 147, 'Skipped: Skipping test_chat_non_streaming_image for model accounts/fireworks/models/llama-v3p3-70b-instruct on provider fireworks based on config.')" }, "teardown": { - "duration": 0.0001371251419186592, + "duration": 0.00018982868641614914, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_image[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", - "lineno": 117, + "lineno": 138, "outcome": "passed", "keywords": [ "test_chat_non_streaming_image[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", @@ -871,21 +901,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.00672045792452991, + "duration": 0.07118859142065048, "outcome": "passed" }, "call": { - "duration": 1.790064417058602, + "duration": 4.20654855389148, "outcome": "passed" }, "teardown": { - "duration": 0.0004657919052988291, + "duration": 0.00023640412837266922, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_image[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", - "lineno": 117, + "lineno": 138, "outcome": "passed", "keywords": [ "test_chat_non_streaming_image[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", @@ -904,21 +934,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.015534916892647743, + "duration": 0.07351029943674803, "outcome": "passed" }, "call": { - "duration": 3.2250108749140054, + "duration": 4.875292049720883, "outcome": "passed" }, "teardown": { - "duration": 0.00038420804776251316, + "duration": 0.0002571679651737213, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_image[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", - "lineno": 136, + "lineno": 157, "outcome": "skipped", "keywords": [ "test_chat_streaming_image[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", @@ -937,22 +967,22 @@ "case_id": "case0" }, "setup": { - "duration": 0.03246337501332164, + "duration": 0.07474396284669638, "outcome": "passed" }, "call": { - "duration": 0.0005176670383661985, + "duration": 0.0002510417252779007, "outcome": "skipped", - "longrepr": "('/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py', 145, 'Skipped: Skipping test_chat_streaming_image for model accounts/fireworks/models/llama-v3p3-70b-instruct on provider fireworks based on config.')" + "longrepr": "('/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py', 166, 'Skipped: Skipping test_chat_streaming_image for model accounts/fireworks/models/llama-v3p3-70b-instruct on provider fireworks based on config.')" }, "teardown": { - "duration": 0.0002715419977903366, + "duration": 0.00020200759172439575, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_image[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", - "lineno": 136, + "lineno": 157, "outcome": "passed", "keywords": [ "test_chat_streaming_image[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", @@ -971,21 +1001,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.12475762516260147, + "duration": 0.07380561903119087, "outcome": "passed" }, "call": { - "duration": 4.934706958010793, + "duration": 2.0082657346501946, "outcome": "passed" }, "teardown": { - "duration": 0.00027604191564023495, + "duration": 0.0002522030845284462, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_image[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", - "lineno": 136, + "lineno": 157, "outcome": "passed", "keywords": [ "test_chat_streaming_image[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", @@ -1004,21 +1034,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.01025745808146894, + "duration": 0.07040839456021786, "outcome": "passed" }, "call": { - "duration": 3.5653172079473734, + "duration": 4.871666649356484, "outcome": "passed" }, "teardown": { - "duration": 0.0005323749501258135, + "duration": 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"test_chat_non_streaming_structured_output[accounts/fireworks/models/llama-v3p3-70b-instruct-math]", @@ -1070,21 +1100,21 @@ "case_id": "math" }, "setup": { - "duration": 0.06981937494128942, + "duration": 0.07073096185922623, "outcome": "passed" }, "call": { - "duration": 2.829931082902476, + "duration": 3.9858130905777216, "outcome": "passed" }, "teardown": { - "duration": 0.0003029161598533392, + "duration": 0.00024665892124176025, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_structured_output[accounts/fireworks/models/llama4-scout-instruct-basic-calendar]", - "lineno": 160, + "lineno": 181, "outcome": "passed", "keywords": [ "test_chat_non_streaming_structured_output[accounts/fireworks/models/llama4-scout-instruct-basic-calendar]", @@ -1103,21 +1133,21 @@ "case_id": "calendar" }, "setup": { - "duration": 0.0244335001334548, + "duration": 0.07138721086084843, "outcome": "passed" }, "call": { - "duration": 0.7541109579615295, + "duration": 1.1312237158417702, "outcome": "passed" }, "teardown": { - "duration": 0.0004666249733418226, + "duration": 0.00027671270072460175, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_structured_output[accounts/fireworks/models/llama4-scout-instruct-basic-math]", - "lineno": 160, + "lineno": 181, "outcome": "passed", "keywords": [ "test_chat_non_streaming_structured_output[accounts/fireworks/models/llama4-scout-instruct-basic-math]", @@ -1136,21 +1166,21 @@ "case_id": "math" }, "setup": { - "duration": 0.016700832871720195, + "duration": 0.08204951789230108, "outcome": "passed" }, "call": { - "duration": 2.208378749899566, + "duration": 2.7500197598710656, "outcome": "passed" }, "teardown": { - "duration": 0.00016137491911649704, + "duration": 0.00024303700774908066, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_structured_output[accounts/fireworks/models/llama4-maverick-instruct-basic-calendar]", - "lineno": 160, + "lineno": 181, "outcome": "passed", "keywords": [ "test_chat_non_streaming_structured_output[accounts/fireworks/models/llama4-maverick-instruct-basic-calendar]", @@ -1169,21 +1199,21 @@ "case_id": "calendar" }, "setup": { - "duration": 0.006982124876230955, + "duration": 0.07405088562518358, "outcome": "passed" }, "call": { - "duration": 0.6431179158389568, + "duration": 1.238045932725072, "outcome": "passed" }, "teardown": { - "duration": 0.00033412501215934753, + "duration": 0.00024984683841466904, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_structured_output[accounts/fireworks/models/llama4-maverick-instruct-basic-math]", - "lineno": 160, + "lineno": 181, "outcome": "passed", "keywords": [ "test_chat_non_streaming_structured_output[accounts/fireworks/models/llama4-maverick-instruct-basic-math]", @@ -1202,21 +1232,21 @@ "case_id": "math" }, "setup": { - "duration": 0.015676999930292368, + "duration": 0.07009329181164503, "outcome": "passed" }, "call": { - "duration": 4.404933541081846, + "duration": 3.55908961314708, "outcome": "passed" }, "teardown": { - "duration": 0.0002617498394101858, + "duration": 0.00026627909392118454, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[accounts/fireworks/models/llama-v3p3-70b-instruct-calendar]", - "lineno": 183, + "lineno": 204, "outcome": "passed", "keywords": [ "test_chat_streaming_structured_output[accounts/fireworks/models/llama-v3p3-70b-instruct-calendar]", @@ -1235,21 +1265,21 @@ "case_id": "calendar" }, "setup": { - "duration": 0.07572970795445144, + "duration": 0.07596437353640795, "outcome": "passed" }, "call": { - "duration": 1.1367775409016758, + "duration": 1.0093460381031036, "outcome": "passed" }, "teardown": { - "duration": 0.0006681671366095543, + "duration": 0.0002171723172068596, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[accounts/fireworks/models/llama-v3p3-70b-instruct-math]", - "lineno": 183, + "lineno": 204, "outcome": "passed", "keywords": [ "test_chat_streaming_structured_output[accounts/fireworks/models/llama-v3p3-70b-instruct-math]", @@ -1268,21 +1298,21 @@ "case_id": "math" }, "setup": { - "duration": 0.028525790898129344, + "duration": 0.06995268166065216, "outcome": "passed" }, "call": { - "duration": 2.1424834579229355, + "duration": 2.617857910692692, "outcome": "passed" }, "teardown": { - "duration": 0.0003642500378191471, + "duration": 0.00024063047021627426, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[accounts/fireworks/models/llama4-scout-instruct-basic-calendar]", - "lineno": 183, + "lineno": 204, "outcome": "passed", "keywords": [ "test_chat_streaming_structured_output[accounts/fireworks/models/llama4-scout-instruct-basic-calendar]", @@ -1301,21 +1331,21 @@ "case_id": "calendar" }, "setup": { - "duration": 0.0146782910451293, + "duration": 0.0729895168915391, "outcome": "passed" }, "call": { - "duration": 15.13383225002326, + "duration": 0.9500969992950559, "outcome": "passed" }, "teardown": { - "duration": 0.00045950012281537056, + "duration": 0.000257221981883049, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[accounts/fireworks/models/llama4-scout-instruct-basic-math]", - "lineno": 183, + "lineno": 204, "outcome": "passed", "keywords": [ "test_chat_streaming_structured_output[accounts/fireworks/models/llama4-scout-instruct-basic-math]", @@ -1334,21 +1364,21 @@ "case_id": "math" }, "setup": { - "duration": 0.01714799995534122, + "duration": 0.07070339564234018, "outcome": "passed" }, "call": { - "duration": 10.714752790983766, + "duration": 2.6405998673290014, "outcome": "passed" }, "teardown": { - "duration": 0.00027029216289520264, + "duration": 0.0002397783100605011, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[accounts/fireworks/models/llama4-maverick-instruct-basic-calendar]", - "lineno": 183, + "lineno": 204, "outcome": "passed", "keywords": [ "test_chat_streaming_structured_output[accounts/fireworks/models/llama4-maverick-instruct-basic-calendar]", @@ -1367,21 +1397,21 @@ "case_id": "calendar" }, "setup": { - "duration": 0.010765291983261704, + "duration": 0.07140882592648268, "outcome": "passed" }, "call": { - "duration": 0.6682700838427991, + "duration": 0.7515814090147614, "outcome": "passed" }, "teardown": { - "duration": 0.00015808409079909325, + "duration": 0.0002773841843008995, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[accounts/fireworks/models/llama4-maverick-instruct-basic-math]", - "lineno": 183, + "lineno": 204, "outcome": "passed", "keywords": [ "test_chat_streaming_structured_output[accounts/fireworks/models/llama4-maverick-instruct-basic-math]", @@ -1400,21 +1430,21 @@ "case_id": "math" }, "setup": { - "duration": 0.0071080829948186874, + "duration": 0.07105506956577301, "outcome": "passed" }, "call": { - "duration": 1.9725822920445353, + "duration": 3.091084435582161, "outcome": "passed" }, "teardown": { - "duration": 0.0004201668780297041, + "duration": 0.0002588946372270584, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", - "lineno": 205, + "lineno": 226, "outcome": "failed", "keywords": [ "test_chat_non_streaming_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", @@ -1433,34 +1463,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.013940333155915141, + "duration": 0.07215945608913898, "outcome": "passed" }, "call": { - "duration": 0.5732313331682235, + "duration": 1.13668860681355, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 224, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 245, "message": "TypeError: object of type 'NoneType' has no len()" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 224, + "lineno": 245, "message": "TypeError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert len(response.choices[0].message.tool_calls) > 0\nE TypeError: object of type 'NoneType' has no len()\n\ntests/verifications/openai_api/test_chat_completion.py:224: TypeError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert len(response.choices[0].message.tool_calls) > 0\nE TypeError: object of type 'NoneType' has no len()\n\ntests/verifications/openai_api/test_chat_completion.py:245: TypeError" }, "teardown": { - "duration": 0.00022962503135204315, + "duration": 0.0003727646544575691, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", - "lineno": 205, + "lineno": 226, "outcome": "failed", "keywords": [ "test_chat_non_streaming_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", @@ -1479,34 +1509,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.006374292075634003, + "duration": 0.07085339725017548, "outcome": "passed" }, "call": { - "duration": 7.2776273330673575, + "duration": 6.564900263212621, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 224, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 245, "message": "TypeError: object of type 'NoneType' has no len()" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 224, + "lineno": 245, "message": "TypeError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert len(response.choices[0].message.tool_calls) > 0\nE TypeError: object of type 'NoneType' has no len()\n\ntests/verifications/openai_api/test_chat_completion.py:224: TypeError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert len(response.choices[0].message.tool_calls) > 0\nE TypeError: object of type 'NoneType' has no len()\n\ntests/verifications/openai_api/test_chat_completion.py:245: TypeError" }, "teardown": { - "duration": 0.0004100420046597719, + "duration": 0.00036074407398700714, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", - "lineno": 205, + "lineno": 226, "outcome": "failed", "keywords": [ "test_chat_non_streaming_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", @@ -1525,34 +1555,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.012761292047798634, + "duration": 0.07105840742588043, "outcome": "passed" }, "call": { - "duration": 0.8920639578718692, + "duration": 1.9664474660530686, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 224, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 245, "message": "TypeError: object of type 'NoneType' has no len()" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 224, + "lineno": 245, "message": "TypeError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert len(response.choices[0].message.tool_calls) > 0\nE TypeError: object of type 'NoneType' has no len()\n\ntests/verifications/openai_api/test_chat_completion.py:224: TypeError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert len(response.choices[0].message.tool_calls) > 0\nE TypeError: object of type 'NoneType' has no len()\n\ntests/verifications/openai_api/test_chat_completion.py:245: TypeError" }, "teardown": { - "duration": 0.0004124999977648258, + "duration": 0.0003125220537185669, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", - "lineno": 229, + "lineno": 250, "outcome": "failed", "keywords": [ "test_chat_streaming_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", @@ -1571,34 +1601,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.013205124996602535, + "duration": 0.07491886802017689, "outcome": "passed" }, "call": { - "duration": 1.930448625003919, + "duration": 1.6239055208861828, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 248, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 269, "message": "assert 0 == 1\n + where 0 = len([])" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 248, + "lineno": 269, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=True,\n )\n \n _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n> assert len(tool_calls_buffer) == 1\nE assert 0 == 1\nE + where 0 = len([])\n\ntests/verifications/openai_api/test_chat_completion.py:248: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=True,\n )\n \n _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n> assert len(tool_calls_buffer) == 1\nE assert 0 == 1\nE + where 0 = len([])\n\ntests/verifications/openai_api/test_chat_completion.py:269: AssertionError" }, "teardown": { - "duration": 0.0005771249998360872, + "duration": 0.0003996873274445534, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", - "lineno": 229, + "lineno": 250, "outcome": "failed", "keywords": [ "test_chat_streaming_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", @@ -1617,34 +1647,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.01408083294518292, + "duration": 0.07084537390619516, "outcome": "passed" }, "call": { - "duration": 10.029349042102695, + "duration": 7.175910825841129, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 248, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 269, "message": "assert 0 == 1\n + where 0 = len([])" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 248, + "lineno": 269, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=True,\n )\n \n _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n> assert len(tool_calls_buffer) == 1\nE assert 0 == 1\nE + where 0 = len([])\n\ntests/verifications/openai_api/test_chat_completion.py:248: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=True,\n )\n \n _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n> assert len(tool_calls_buffer) == 1\nE assert 0 == 1\nE + where 0 = len([])\n\ntests/verifications/openai_api/test_chat_completion.py:269: AssertionError" }, "teardown": { - "duration": 0.0004449589177966118, + "duration": 0.0003013862296938896, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", - "lineno": 229, + "lineno": 250, "outcome": "failed", "keywords": [ "test_chat_streaming_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", @@ -1663,34 +1693,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.013213291997089982, + "duration": 0.07152015157043934, "outcome": "passed" }, "call": { - "duration": 8.608150291023776, + "duration": 9.749054622836411, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 248, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 269, "message": "assert 0 == 1\n + where 0 = len([])" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 248, + "lineno": 269, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=True,\n )\n \n _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n> assert len(tool_calls_buffer) == 1\nE assert 0 == 1\nE + where 0 = len([])\n\ntests/verifications/openai_api/test_chat_completion.py:248: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=True,\n )\n \n _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n> assert len(tool_calls_buffer) == 1\nE assert 0 == 1\nE + where 0 = len([])\n\ntests/verifications/openai_api/test_chat_completion.py:269: AssertionError" }, "teardown": { - "duration": 0.0005860829260200262, + "duration": 0.0002990690991282463, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_required[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", - "lineno": 257, + "lineno": 278, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_choice_required[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", @@ -1709,21 +1739,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.01437820796854794, + "duration": 0.07075500208884478, "outcome": "passed" }, "call": { - "duration": 0.7105170420836657, + "duration": 0.9870151281356812, "outcome": "passed" }, "teardown": { - "duration": 0.00017283298075199127, + "duration": 0.00022785458713769913, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_required[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", - "lineno": 257, + "lineno": 278, "outcome": "failed", "keywords": [ "test_chat_non_streaming_tool_choice_required[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", @@ -1742,34 +1772,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.009220415959134698, + "duration": 0.0698307491838932, "outcome": "passed" }, "call": { - "duration": 5.718667333945632, + "duration": 4.061793921515346, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 277, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 298, "message": "TypeError: object of type 'NoneType' has no len()" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 277, + "lineno": 298, "message": "TypeError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_choice_required(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"required\", # Force tool call\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert len(response.choices[0].message.tool_calls) > 0, \"Expected tool call when tool_choice='required'\"\nE TypeError: object of type 'NoneType' has no len()\n\ntests/verifications/openai_api/test_chat_completion.py:277: TypeError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_choice_required(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"required\", # Force tool call\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert len(response.choices[0].message.tool_calls) > 0, \"Expected tool call when tool_choice='required'\"\nE TypeError: object of type 'NoneType' has no len()\n\ntests/verifications/openai_api/test_chat_completion.py:298: TypeError" }, "teardown": { - "duration": 0.0003282078541815281, + "duration": 0.00028742197901010513, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_required[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", - "lineno": 257, + "lineno": 278, "outcome": "failed", "keywords": [ "test_chat_non_streaming_tool_choice_required[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", @@ -1788,34 +1818,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.014709000010043383, + "duration": 0.07069965451955795, "outcome": "passed" }, "call": { - "duration": 1.7260455000214279, + "duration": 24.973835667595267, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 277, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 298, "message": "TypeError: object of type 'NoneType' has no len()" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 277, + "lineno": 298, "message": "TypeError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_choice_required(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"required\", # Force tool call\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert len(response.choices[0].message.tool_calls) > 0, \"Expected tool call when tool_choice='required'\"\nE TypeError: object of type 'NoneType' has no len()\n\ntests/verifications/openai_api/test_chat_completion.py:277: TypeError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_choice_required(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"required\", # Force tool call\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert len(response.choices[0].message.tool_calls) > 0, \"Expected tool call when tool_choice='required'\"\nE TypeError: object of type 'NoneType' has no len()\n\ntests/verifications/openai_api/test_chat_completion.py:298: TypeError" }, "teardown": { - "duration": 0.00022012507542967796, + "duration": 0.00034868158400058746, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_required[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", - "lineno": 281, + "lineno": 302, "outcome": "passed", "keywords": [ "test_chat_streaming_tool_choice_required[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", @@ -1834,21 +1864,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.008183792000636458, + "duration": 0.07031871005892754, "outcome": "passed" }, "call": { - "duration": 1.9683502500411123, + "duration": 0.7874777475371957, "outcome": "passed" }, "teardown": { - "duration": 0.0007690000347793102, + "duration": 0.00027067307382822037, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_required[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", - "lineno": 281, + "lineno": 302, "outcome": "failed", "keywords": [ "test_chat_streaming_tool_choice_required[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", @@ -1867,34 +1897,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.014906208030879498, + "duration": 0.07194838207215071, "outcome": "passed" }, "call": { - "duration": 11.76459054206498, + "duration": 5.034253670834005, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 302, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 323, "message": "AssertionError: Expected tool call when tool_choice='required'\nassert 0 > 0\n + where 0 = len([])" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 302, + "lineno": 323, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_required(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"required\", # Force tool call\n stream=True,\n )\n \n _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n \n> assert len(tool_calls_buffer) > 0, \"Expected tool call when tool_choice='required'\"\nE AssertionError: Expected tool call when tool_choice='required'\nE assert 0 > 0\nE + where 0 = len([])\n\ntests/verifications/openai_api/test_chat_completion.py:302: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_required(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"required\", # Force tool call\n stream=True,\n )\n \n _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n \n> assert len(tool_calls_buffer) > 0, \"Expected tool call when tool_choice='required'\"\nE AssertionError: Expected tool call when tool_choice='required'\nE assert 0 > 0\nE + where 0 = len([])\n\ntests/verifications/openai_api/test_chat_completion.py:323: AssertionError" }, "teardown": { - "duration": 0.0003086249344050884, + "duration": 0.00030618347227573395, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_required[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", - "lineno": 281, + "lineno": 302, "outcome": "failed", "keywords": [ "test_chat_streaming_tool_choice_required[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", @@ -1913,34 +1943,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.021144041791558266, + "duration": 0.07107715681195259, "outcome": "passed" }, "call": { - "duration": 2.4300453749019653, + "duration": 6.841737313196063, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 302, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 323, "message": "AssertionError: Expected tool call when tool_choice='required'\nassert 0 > 0\n + where 0 = len([])" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 302, + "lineno": 323, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_required(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"required\", # Force tool call\n stream=True,\n )\n \n _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n \n> assert len(tool_calls_buffer) > 0, \"Expected tool call when tool_choice='required'\"\nE AssertionError: Expected tool call when tool_choice='required'\nE assert 0 > 0\nE + where 0 = len([])\n\ntests/verifications/openai_api/test_chat_completion.py:302: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_required(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"required\", # Force tool call\n stream=True,\n )\n \n _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n \n> assert len(tool_calls_buffer) > 0, \"Expected tool call when tool_choice='required'\"\nE AssertionError: Expected tool call when tool_choice='required'\nE assert 0 > 0\nE + where 0 = len([])\n\ntests/verifications/openai_api/test_chat_completion.py:323: AssertionError" }, "teardown": { - "duration": 0.00037800008431077003, + "duration": 0.0003354279324412346, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_none[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", - "lineno": 308, + "lineno": 329, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_choice_none[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", @@ -1959,21 +1989,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.007929167011752725, + "duration": 0.0726231737062335, "outcome": "passed" }, "call": { - "duration": 1.0130669160280377, + "duration": 0.7659661257639527, "outcome": "passed" }, "teardown": { - "duration": 0.0004307499621063471, + "duration": 0.0003337552770972252, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_none[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", - "lineno": 308, + "lineno": 329, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_choice_none[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", @@ -1992,21 +2022,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.010822792071849108, + "duration": 0.09297824744135141, "outcome": "passed" }, "call": { - "duration": 4.663267957977951, + "duration": 3.257608976215124, "outcome": "passed" }, "teardown": { - "duration": 0.0006220841314643621, + "duration": 0.00022768322378396988, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_none[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", - "lineno": 308, + "lineno": 329, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_choice_none[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", @@ -2025,21 +2055,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.010691167088225484, + "duration": 0.0726541867479682, "outcome": "passed" }, "call": { - "duration": 3.383276625070721, + "duration": 4.5413802824914455, "outcome": "passed" }, "teardown": { - "duration": 0.00047616707161068916, + "duration": 0.00026340410113334656, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_none[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", - "lineno": 331, + "lineno": 352, "outcome": "passed", "keywords": [ "test_chat_streaming_tool_choice_none[accounts/fireworks/models/llama-v3p3-70b-instruct-case0]", @@ -2058,21 +2088,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.030178457964211702, + "duration": 0.07666508108377457, "outcome": "passed" }, "call": { - "duration": 0.4668415829073638, + "duration": 0.5535151390358806, "outcome": "passed" }, "teardown": { - "duration": 0.0007963338866829872, + "duration": 0.0003251638263463974, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_none[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", - "lineno": 331, + "lineno": 352, "outcome": "passed", "keywords": [ "test_chat_streaming_tool_choice_none[accounts/fireworks/models/llama4-scout-instruct-basic-case0]", @@ -2091,21 +2121,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.011727249948307872, + "duration": 0.09550460614264011, "outcome": "passed" }, "call": { - "duration": 11.540696125011891, + "duration": 1.171110725030303, "outcome": "passed" }, "teardown": { - "duration": 0.0009242501109838486, + "duration": 0.0002604629844427109, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_none[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", - "lineno": 331, + "lineno": 352, "outcome": "passed", "keywords": [ "test_chat_streaming_tool_choice_none[accounts/fireworks/models/llama4-maverick-instruct-basic-case0]", @@ -2124,21 +2154,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.008536209119483829, + "duration": 0.07114547491073608, "outcome": "passed" }, "call": { - "duration": 3.6622679999563843, + "duration": 27.369331603869796, "outcome": "passed" }, "teardown": { - "duration": 0.0005495408549904823, + "duration": 0.00023956969380378723, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-text_then_weather_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-text_then_weather_tool]", @@ -2157,34 +2187,34 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.017524708062410355, + "duration": 0.07612851448357105, "outcome": "passed" }, "call": { - "duration": 0.625571500044316, + "duration": 2.10164753254503, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 446, - "message": "AssertionError: Expected one of ['sol'] in content, but got: 'I am not able to execute this task as it exceeds the limitations of the functions I have been given.'\nassert False\n + where False = any(. at 0x1073e5cb0>)" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 467, + "message": "AssertionError: Expected one of ['sol'] in content, but got: 'I cannot perform this task as it requires additional functionality that is not available in the given functions.'\nassert False\n + where False = any(. at 0x7f1acda87ca0>)" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 446, + "lineno": 467, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n tool_call = assistant_message.tool_calls[0]\n assert tool_call.function.name == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call.function.name}'\"\n )\n # Parse the JSON string arguments before comparing\n actual_arguments = json.loads(tool_call.function.arguments)\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call.id,\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n assert assistant_message.content is not None, \"Expected content, but none received.\"\n expected_answers = expected[\"answer\"] # This is now a list\n content_lower = assistant_message.content.lower()\n> assert any(ans.lower() in content_lower for ans in expected_answers), (\n f\"Expected one of {expected_answers} in content, but got: '{assistant_message.content}'\"\n )\nE AssertionError: Expected one of ['sol'] in content, but got: 'I am not able to execute this task as it exceeds the limitations of the functions I have been given.'\nE assert False\nE + where False = any(. at 0x1073e5cb0>)\n\ntests/verifications/openai_api/test_chat_completion.py:446: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n tool_call = assistant_message.tool_calls[0]\n assert tool_call.function.name == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call.function.name}'\"\n )\n # Parse the JSON string arguments before comparing\n actual_arguments = json.loads(tool_call.function.arguments)\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call.id,\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n assert assistant_message.content is not None, \"Expected content, but none received.\"\n expected_answers = expected[\"answer\"] # This is now a list\n content_lower = assistant_message.content.lower()\n> assert any(ans.lower() in content_lower for ans in expected_answers), (\n f\"Expected one of {expected_answers} in content, but got: '{assistant_message.content}'\"\n )\nE AssertionError: Expected one of ['sol'] in content, but got: 'I cannot perform this task as it requires additional functionality that is not available in the given functions.'\nE assert False\nE + where False = any(. at 0x7f1acda87ca0>)\n\ntests/verifications/openai_api/test_chat_completion.py:467: AssertionError" }, "teardown": { - "duration": 0.00044062500819563866, + "duration": 0.00030514132231473923, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-weather_tool_then_text]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-weather_tool_then_text]", @@ -2203,34 +2233,34 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.01056775008328259, + "duration": 0.07009781803935766, "outcome": "passed" }, "call": { - "duration": 0.5624969999771565, + "duration": 2.49614445772022, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"get_weather\", \"parameters\": {\"location\": \"San Francisco, CA\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"get_weather\", \"parameters\": {\"location\": \"San Francisco, CA\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"get_weather\", \"parameters\": {\"location\": \"San Francisco, CA\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.0004401658661663532, + "duration": 0.00035297591239213943, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-add_product_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-add_product_tool]", @@ -2249,34 +2279,34 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.013444249983876944, + "duration": 0.0719120567664504, "outcome": "passed" }, "call": { - "duration": 0.8705885419622064, + "duration": 1.181352874264121, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"addProduct\", \"parameters\": {\"name\": \"Widget\", \"price\": \"19.99\", \"inStock\": \"true\", \"tags\": \"[\\\\\"new\\\\\", \\\\\"sale\\\\\"]\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"addProduct\", \"parameters\": {\"name\": \"Widget\", \"price\": \"19.99\", \"inStock\": \"true\", \"tags\": \"[\\\\\"new\\\\\", \\\\\"sale\\\\\"]\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"addProduct\", \"parameters\": {\"name\": \"Widget\", \"price\": \"19.99\", \"inStock\": \"true\", \"tags\": \"[\\\\\"new\\\\\", \\\\\"sale\\\\\"]\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.0004647918976843357, + "duration": 0.000303901731967926, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-get_then_create_event_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-get_then_create_event_tool]", @@ -2295,34 +2325,34 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.013817500090226531, + "duration": 0.07158921286463737, "outcome": "passed" }, "call": { - "duration": 0.6882082498632371, + "duration": 3.7202864307910204, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.0005112909711897373, + "duration": 0.0003700554370880127, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-compare_monthly_expense_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-compare_monthly_expense_tool]", @@ -2341,34 +2371,34 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.013548000017181039, + "duration": 0.07388217654079199, "outcome": "passed" }, "call": { - "duration": 0.5821714580524713, + "duration": 0.6030126195400953, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": \"1\", \"year\": \"2025\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": \"1\", \"year\": \"2025\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": \"1\", \"year\": \"2025\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.00021225004456937313, + "duration": 0.0003188345581293106, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-text_then_weather_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-text_then_weather_tool]", @@ -2387,34 +2417,34 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.0070156671572476625, + "duration": 0.07314795535057783, "outcome": "passed" }, "call": { - "duration": 8.95718324999325, + "duration": 1.0849075820297003, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, - "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='```\\n{\\n \"name\": \"get_weather\",\\n \"parameters\": {\\n \"description\": \"Get the current weather\",\\n \"parameters\": {\\n \"location\": {\\n \"description\": \"The city and state (both required)\",\\n \"type\": \"object\",\\n \"properties\": {\\n \"location\": {\\n \"description\": \"The city and state, e.g. San Francisco, CA.\",\\n \"type\": \"string\"\\n }\\n }\\n }\\n },\\n \"type\": \"object\",\\n \"properties\": {\\n \"location\": \"San Francisco, CA.\"\\n }\\n }\\n}\\n```', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 467, + "message": "AssertionError: Expected one of ['sol'] in content, but got: '{\"name\": \"get_weather\", \"parameters\": {\"description\": \"Get the current weather\", \"parameters\": {\"type\": \"object\", \"properties\": {\"location\": {\"description\": \"The city and state (both required). e.g. San Francisco, CA.\", \"type\": \"string\"}}}}'\nassert False\n + where False = any(. at 0x7f1acdad8970>)" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 467, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='```\\n{\\n \"name\": \"get_weather\",\\n \"parameters\": {\\n \"description\": \"Get the current weather\",\\n \"parameters\": {\\n \"location\": {\\n \"description\": \"The city and state (both required)\",\\n \"type\": \"object\",\\n \"properties\": {\\n \"location\": {\\n \"description\": \"The city and state, e.g. San Francisco, CA.\",\\n \"type\": \"string\"\\n }\\n }\\n }\\n },\\n \"type\": \"object\",\\n \"properties\": {\\n \"location\": \"San Francisco, CA.\"\\n }\\n }\\n}\\n```', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n tool_call = assistant_message.tool_calls[0]\n assert tool_call.function.name == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call.function.name}'\"\n )\n # Parse the JSON string arguments before comparing\n actual_arguments = json.loads(tool_call.function.arguments)\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call.id,\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n assert assistant_message.content is not None, \"Expected content, but none received.\"\n expected_answers = expected[\"answer\"] # This is now a list\n content_lower = assistant_message.content.lower()\n> assert any(ans.lower() in content_lower for ans in expected_answers), (\n f\"Expected one of {expected_answers} in content, but got: '{assistant_message.content}'\"\n )\nE AssertionError: Expected one of ['sol'] in content, but got: '{\"name\": \"get_weather\", \"parameters\": {\"description\": \"Get the current weather\", \"parameters\": {\"type\": \"object\", \"properties\": {\"location\": {\"description\": \"The city and state (both required). e.g. San Francisco, CA.\", \"type\": \"string\"}}}}'\nE assert False\nE + where False = any(. at 0x7f1acdad8970>)\n\ntests/verifications/openai_api/test_chat_completion.py:467: AssertionError" }, "teardown": { - "duration": 0.00045741605572402477, + "duration": 0.00032442156225442886, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-weather_tool_then_text]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-weather_tool_then_text]", @@ -2433,34 +2463,34 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.011042665923014283, + "duration": 0.07257637288421392, "outcome": "passed" }, "call": { - "duration": 3.372867708094418, + "duration": 1.1364115234464407, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"name\": \"get_weather\", \"parameters\": {\"description\": \"Get the current weather\", \"parameters\": {\"type\": \"object\", \"properties\": {\"location\": {\"description\": \"The city and state (both required)\", \"type\": \"string\"}}}, \"required\": [\"location\"]}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"get_weather\", \"parameters\": {\"description\": \"Get the current weather\", \"parameters\": {\"type\": \"object\", \"properties\": {\"location\": {\"description\": \"The city and state (both required)\", \"type\": \"string\"}}}, \"required\": [\"location\"]}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"get_weather\", \"parameters\": {\"description\": \"Get the current weather\", \"parameters\": {\"type\": \"object\", \"properties\": {\"location\": {\"description\": \"The city and state (both required)\", \"type\": \"string\"}}}, \"required\": [\"location\"]}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.00042333384044468403, + "duration": 0.0003107702359557152, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-add_product_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-add_product_tool]", @@ -2479,34 +2509,34 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.01305404189042747, + "duration": 0.0716616166755557, "outcome": "passed" }, "call": { - "duration": 3.5883425418287516, + "duration": 1.6755285635590553, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, - "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"name\": \"addProduct\", \"parameters\": {\"description\": \"Add a new product\", \"type\": \"object\", \"properties\": {\"name\": {\"description\": \"Name of the product\", \"type\": \"string\"}, \"price\": {\"description\": \"Price of the product\", \"type\": \"number\"}, \"inStock\": {\"description\": \"Availability status of the product\", \"type\": \"boolean\"}, \"tags\": {\"description\": \"List of product tags\", \"type\": \"array\", \"items\": {\"type\": \"string\"}}}}, \"required\": [\"name\", \"price\", \"inStock\", \"tags\"]}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, + "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"name\": \"addProduct\", \"parameters\": {\"name\": {\"type\": \"string\", \"value\": \"Widget\"}, \"description\": {\"type\": \"string\", \"value\": \"Name of the product\"}, \"price\": {\"type\": \"number\", \"value\": 19.99}, \"inStock\": {\"type\": \"boolean\", \"value\": true}, \"tags\": {\"type\": \"array\", \"value\": [\"new\", \"sale\"]}}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"addProduct\", \"parameters\": {\"description\": \"Add a new product\", \"type\": \"object\", \"properties\": {\"name\": {\"description\": \"Name of the product\", \"type\": \"string\"}, \"price\": {\"description\": \"Price of the product\", \"type\": \"number\"}, \"inStock\": {\"description\": \"Availability status of the product\", \"type\": \"boolean\"}, \"tags\": {\"description\": \"List of product tags\", \"type\": \"array\", \"items\": {\"type\": \"string\"}}}}, \"required\": [\"name\", \"price\", \"inStock\", \"tags\"]}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"addProduct\", \"parameters\": {\"name\": {\"type\": \"string\", \"value\": \"Widget\"}, \"description\": {\"type\": \"string\", \"value\": \"Name of the product\"}, \"price\": {\"type\": \"number\", \"value\": 19.99}, \"inStock\": {\"type\": \"boolean\", \"value\": true}, \"tags\": {\"type\": \"array\", \"value\": [\"new\", \"sale\"]}}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.0005818749777972698, + "duration": 0.0003323536366224289, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-get_then_create_event_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-get_then_create_event_tool]", @@ -2525,34 +2555,34 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.01428320910781622, + "duration": 0.07031949236989021, "outcome": "passed" }, "call": { - "duration": 15.402638916159049, + "duration": 2.363899651914835, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, - "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event...: \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, + "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"name\": \"get_event\", \"parameters\": {\"date\": {\"date\": \"March 3rd\"}, \"time\": {\"time\": \"10 am\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"date\": \"2025-03-03\"}, \"time\": {\"time\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"date\": \"2025-03-03\"}, \"time\": {\"time\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"date\": \"2025-03-03\"}, \"time\": {\"time\": \"10:00\"}}}assistant\\n\\nThe function provided is not sufficient for me to answer the question.assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"date\": \"2025-03-03\"}, \"time\": {\"time\": \"10:00\"}}}assistant\\n\\nThe function provided is not sufficient for me to answer the question.', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event...: \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"description\": \"Date of the event in ISO format\", \"type\": \"string\", \"value\": \"2025-03-03\"}, \"time\": {\"description\": \"Event Time (HH:MM)\", \"type\": \"string\", \"value\": \"10:00\"}}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"get_event\", \"parameters\": {\"date\": {\"date\": \"March 3rd\"}, \"time\": {\"time\": \"10 am\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"date\": \"2025-03-03\"}, \"time\": {\"time\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"date\": \"2025-03-03\"}, \"time\": {\"time\": \"10:00\"}}}assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"date\": \"2025-03-03\"}, \"time\": {\"time\": \"10:00\"}}}assistant\\n\\nThe function provided is not sufficient for me to answer the question.assistant\\n\\n{\"name\": \"get_event\", \"parameters\": {\"date\": {\"date\": \"2025-03-03\"}, \"time\": {\"time\": \"10:00\"}}}assistant\\n\\nThe function provided is not sufficient for me to answer the question.', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.0004401251208037138, + "duration": 0.0003245687112212181, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-compare_monthly_expense_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-compare_monthly_expense_tool]", @@ -2571,34 +2601,34 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.021037542028352618, + "duration": 0.07069017831236124, "outcome": "passed" }, "call": { - "duration": 6.548705333843827, + "duration": 1.8757586162537336, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, - "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\"}, \"year\": {\"description\": \"Year\", \"type\": \"integer\"}}}assistant\\n\\n{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\"}, \"year\": {\"description\": \"Year\", \"type\": \"integer\"}}}assistant\\n\\n{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\"}, \"year\": {\"description\": \"Year\", \"type\": \"integer\"}}}assistant\\n\\n{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\", \"value\": 1}, \"year\": {\"description\": \"Year\", \"type\": \"integer\", \"value\": 2025}}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, + "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\"}, \"year\": {\"description\": \"Year\", \"type\": \"integer\"}}}assistant\\n\\n{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\"}, \"year\": {\"description\": \"Year\", \"type\": \"integer\"}}}assistant\\n\\n{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\", \"value\": 1}, \"year\": {\"description\": \"Year\", \"type\": \"integer\", \"value\": 2025}}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\"}, \"year\": {\"description\": \"Year\", \"type\": \"integer\"}}}assistant\\n\\n{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\"}, \"year\": {\"description\": \"Year\", \"type\": \"integer\"}}}assistant\\n\\n{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\"}, \"year\": {\"description\": \"Year\", \"type\": \"integer\"}}}assistant\\n\\n{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\", \"value\": 1}, \"year\": {\"description\": \"Year\", \"type\": \"integer\", \"value\": 2025}}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\"}, \"year\": {\"description\": \"Year\", \"type\": \"integer\"}}}assistant\\n\\n{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\"}, \"year\": {\"description\": \"Year\", \"type\": \"integer\"}}}assistant\\n\\n{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": {\"description\": \"Month of the year (1-12)\", \"type\": \"integer\", \"value\": 1}, \"year\": {\"description\": \"Year\", \"type\": \"integer\", \"value\": 2025}}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.00035033305175602436, + "duration": 0.00030215736478567123, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-text_then_weather_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-text_then_weather_tool]", @@ -2617,34 +2647,34 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.00768870790489018, + "duration": 0.07024750486016273, "outcome": "passed" }, "call": { - "duration": 3.410787041997537, + "duration": 2.9532439298927784, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, - "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='To answer the question about the weather in San Francisco, we can directly utilize the provided function `get_weather` as it matches the context of the query.\\n\\nThe function `get_weather` requires a `location` parameter. Given that San Francisco is a city and assuming California (CA) is the state, we can directly fit the query into the provided function format.\\n\\nHere\\'s the response in the required JSON format:\\n\\n```json\\n{\\n \"name\": \"get_weather\",\\n \"parameters\": {\\n \"location\": \"San Francisco, CA\"\\n }\\n}\\n```', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 467, + "message": "AssertionError: Expected one of ['sol'] in content, but got: 'Since there's no function defined to directly answer \"What's the name of the Sun in latin?\", I'll assume there's a general knowledge or information retrieval function available. Let's call it \"get_general_knowledge\". \n \n Here is a potential JSON response for a function call:\n \n {\"name\": \"get_general_knowledge\", \"parameters\": {\"query\": \"Latin name of the Sun\"}} \n \n However, the exact function and parameter names might vary based on the actual function definitions available. If we consider the given function \"get_weather\" and its parameters, it doesn't fit the prompt. Therefore, based on a hypothetical \"get_general_knowledge\" function, the response is provided. \n \n If the actual available functions were listed, a more accurate response could be provided. \n \n For the sake of the given prompt and assuming the presence of a \"get_general_knowledge\" function, the response is:\n \n {\"name\": \"get_general_knowledge\", \"parameters\": {\"query\": \"Latin name of the Sun\"}}'\nassert False\n + where False = any(. at 0x7f1acd9d54d0>)" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 467, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='To answer the question about the weather in San Francisco, we can directly utilize the provided function `get_weather` as it matches the context of the query.\\n\\nThe function `get_weather` requires a `location` parameter. Given that San Francisco is a city and assuming California (CA) is the state, we can directly fit the query into the provided function format.\\n\\nHere\\'s the response in the required JSON format:\\n\\n```json\\n{\\n \"name\": \"get_weather\",\\n \"parameters\": {\\n \"location\": \"San Francisco, CA\"\\n }\\n}\\n```', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n tool_call = assistant_message.tool_calls[0]\n assert tool_call.function.name == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call.function.name}'\"\n )\n # Parse the JSON string arguments before comparing\n actual_arguments = json.loads(tool_call.function.arguments)\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call.id,\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n assert assistant_message.content is not None, \"Expected content, but none received.\"\n expected_answers = expected[\"answer\"] # This is now a list\n content_lower = assistant_message.content.lower()\n> assert any(ans.lower() in content_lower for ans in expected_answers), (\n f\"Expected one of {expected_answers} in content, but got: '{assistant_message.content}'\"\n )\nE AssertionError: Expected one of ['sol'] in content, but got: 'Since there's no function defined to directly answer \"What's the name of the Sun in latin?\", I'll assume there's a general knowledge or information retrieval function available. Let's call it \"get_general_knowledge\". \nE \nE Here is a potential JSON response for a function call:\nE \nE {\"name\": \"get_general_knowledge\", \"parameters\": {\"query\": \"Latin name of the Sun\"}} \nE \nE However, the exact function and parameter names might vary based on the actual function definitions available. If we consider the given function \"get_weather\" and its parameters, it doesn't fit the prompt. Therefore, based on a hypothetical \"get_general_knowledge\" function, the response is provided. \nE \nE If the actual available functions were listed, a more accurate response could be provided. \nE \nE For the sake of the given prompt and assuming the presence of a \"get_general_knowledge\" function, the response is:\nE \nE {\"name\": \"get_general_knowledge\", \"parameters\": {\"query\": \"Latin name of the Sun\"}}'\nE assert False\nE + where False = any(. at 0x7f1acd9d54d0>)\n\ntests/verifications/openai_api/test_chat_completion.py:467: AssertionError" }, "teardown": { - "duration": 0.0002946250606328249, + "duration": 0.00038253143429756165, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-weather_tool_then_text]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-weather_tool_then_text]", @@ -2663,34 +2693,34 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.009200166910886765, + "duration": 0.07193771284073591, "outcome": "passed" }, "call": { - "duration": 0.5177558751311153, + "duration": 0.9909431086853147, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"name\": \"get_weather\", \"parameters\": {\"location\": \"San Francisco, CA\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"get_weather\", \"parameters\": {\"location\": \"San Francisco, CA\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"get_weather\", \"parameters\": {\"location\": \"San Francisco, CA\"}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.00025020912289619446, + "duration": 0.0003658318892121315, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-add_product_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-add_product_tool]", @@ -2709,34 +2739,34 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.007124624913558364, + "duration": 0.0702557684853673, "outcome": "passed" }, "call": { - "duration": 0.6132153749931604, + "duration": 0.8836336443200707, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"name\": \"addProduct\", \"parameters\": {\"name\": \"Widget\", \"price\": 19.99, \"inStock\": true, \"tags\": [\"new\", \"sale\"]}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"addProduct\", \"parameters\": {\"name\": \"Widget\", \"price\": 19.99, \"inStock\": true, \"tags\": [\"new\", \"sale\"]}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"addProduct\", \"parameters\": {\"name\": \"Widget\", \"price\": 19.99, \"inStock\": true, \"tags\": [\"new\", \"sale\"]}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.0003745418507605791, + "duration": 0.00036840979009866714, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-get_then_create_event_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-get_then_create_event_tool]", @@ -2755,34 +2785,34 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.01410404103808105, + "duration": 0.07019469328224659, "outcome": "passed" }, "call": { - "duration": 1.3956649999599904, + "duration": 7.394101745449007, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, - "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}<|uniquepaddingtoken557|>---\"\"\"\"\"\"\"\"\"---\" \" \" \"\"\" \" \" \"Interaction\"\"\\n\\nI am unable to execute this task as it exceeds the limitations of the functions I have at hand.\"', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, + "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}} \"\\n\\n{\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}assistant\\n\\n{\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}assistant\\n\\nimport json\\noutput = json.loads(\"{\\\\\"type\\\\\": \\\\\"function\\\\\", \\\\\"name\\\\\": \\\\\"get_event\\\\\", \\\\\"parameters\\\\\": {\\\\\"date\\\\\": \\\\\"2025-03-03\\\\\", \\\\\"time\\\\\": \\\\\"10:00\\\\\"}}\")\\nprint(output)assistant\\n\\nimport json\\n\\n# Define the input data\\ndata = \\'[{\"type\": \"function\", \"name\": \"create_event\", \"parameters\": {\"name\": \"Meeting\", \"date\": \"2025-03-03\", \"time\": \"10:00\", \"location\": \"Conference Room\", \"participants\": [\"John\", \"Jane\"]}}, {\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}]\\'\\n\\n# Parse the JSON string into a Python object\\njson_data = json.loads(data)\\n\\n# Print the parsed data\\nprint(json_data)assistant\\n\\nimport json\\n\\ndef check_meeting(data):\\n # Parse the JSON string into a Python object\\n json_data = json.loads(data)\\n\\n # Check if there is a meeting on March 3rd at 10 am\\n for item in json_data:\\n if item[\\'type\\'] == \\'function\\' and item[\\'name\\'] == \\'get_event\\':\\n date = item[\\'parameters\\'][\\'date\\']\\n time = item[\\'parameters\\'][\\'time\\']\\n # Assuming you have a function to check if there is a meeting at the given date and time\\n # For simplicity, let\\'s assume the function is called \\'has_meeting\\'\\n # if has_meeting(date, time):\\n # return \\'Yes\\'\\n # else:\\n # return \\'No\\'\\n return \\'Yes\\' # For demonstration purposes, let\\'s assume there is a meeting\\n\\n return \\'No\\'\\n\\ndata = \\'[{\"type\": \"function\", \"name\": \"create_event\", \"parameters\": {\"name\": \"Meeting\", \"date\": \"2025-03-03\", \"time\": \"10:00\", \"location\": \"Conference Room\", \"participants\": [\"John\", \"Jane\"]}}, {\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}]\\'\\nprint(check_meeting(data))assistant\\n\\nYes.', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}<|uniquepaddingtoken557|>---\"\"\"\"\"\"\"\"\"---\" \" \" \"\"\" \" \" \"Interaction\"\"\\n\\nI am unable to execute this task as it exceeds the limitations of the functions I have at hand.\"', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}} \"\\n\\n{\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}assistant\\n\\n{\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}assistant\\n\\nimport json\\noutput = json.loads(\"{\\\\\"type\\\\\": \\\\\"function\\\\\", \\\\\"name\\\\\": \\\\\"get_event\\\\\", \\\\\"parameters\\\\\": {\\\\\"date\\\\\": \\\\\"2025-03-03\\\\\", \\\\\"time\\\\\": \\\\\"10:00\\\\\"}}\")\\nprint(output)assistant\\n\\nimport json\\n\\n# Define the input data\\ndata = \\'[{\"type\": \"function\", \"name\": \"create_event\", \"parameters\": {\"name\": \"Meeting\", \"date\": \"2025-03-03\", \"time\": \"10:00\", \"location\": \"Conference Room\", \"participants\": [\"John\", \"Jane\"]}}, {\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}]\\'\\n\\n# Parse the JSON string into a Python object\\njson_data = json.loads(data)\\n\\n# Print the parsed data\\nprint(json_data)assistant\\n\\nimport json\\n\\ndef check_meeting(data):\\n # Parse the JSON string into a Python object\\n json_data = json.loads(data)\\n\\n # Check if there is a meeting on March 3rd at 10 am\\n for item in json_data:\\n if item[\\'type\\'] == \\'function\\' and item[\\'name\\'] == \\'get_event\\':\\n date = item[\\'parameters\\'][\\'date\\']\\n time = item[\\'parameters\\'][\\'time\\']\\n # Assuming you have a function to check if there is a meeting at the given date and time\\n # For simplicity, let\\'s assume the function is called \\'has_meeting\\'\\n # if has_meeting(date, time):\\n # return \\'Yes\\'\\n # else:\\n # return \\'No\\'\\n return \\'Yes\\' # For demonstration purposes, let\\'s assume there is a meeting\\n\\n return \\'No\\'\\n\\ndata = \\'[{\"type\": \"function\", \"name\": \"create_event\", \"parameters\": {\"name\": \"Meeting\", \"date\": \"2025-03-03\", \"time\": \"10:00\", \"location\": \"Conference Room\", \"participants\": [\"John\", \"Jane\"]}}, {\"type\": \"function\", \"name\": \"get_event\", \"parameters\": {\"date\": \"2025-03-03\", \"time\": \"10:00\"}}]\\'\\nprint(check_meeting(data))assistant\\n\\nYes.', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.00041033304296433926, + "duration": 0.0003475993871688843, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-compare_monthly_expense_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-compare_monthly_expense_tool]", @@ -2801,34 +2831,34 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.027331124991178513, + "duration": 0.07140176557004452, "outcome": "passed" }, "call": { - "duration": 2.465563999954611, + "duration": 1.5649437978863716, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, - "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": 1, \"year\": 2024}}\"\\n\\nThe provided JSON describes a function `getMonthlyExpenseSummary` that takes two parameters: `month` and `year`. The prompt asks for the monthly expense in January of this year. Assuming the current year is 2024, we can fill in the appropriate values for `month` and `year`.\\n\\nThe value for `month` should be `1` (January is the first month), and the value for `year` should be `2024`.\\n\\nTherefore, the appropriate function call with its arguments is:assistant\\n\\nimport datetime\\n\\n# Get the current year\\ncurrent_year = datetime.datetime.now().year\\n\\n# The function call with its arguments\\nprint({\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": 1, \"year\": current_year}})\"{\\\\\"name\\\\\": \\\\\"getMonthlyExpenseSummary\\\\\", \\\\\"parameters\\\\\": {\\\\\"month\\\\\": 1, \\\\\"year\\\\\": 2024}}\"assistant\\n\\nThe final response is: {\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": 1, \"year\": 2024}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, + "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len((None or []))\n + where None = ChatCompletionMessage(content='{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": 1, \"year\": 2024}}\"\" \"\" \" \"\"\"\"\"\"\"\"\"\"\"\"\" \"\" \"\"\" \"}\",\"\" \" \"}\",\"\" \" \"}\",\"\" \" \"{\" \"name\" \": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": 1, \"year\": 2024}}\"', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": 1, \"year\": 2024}}\"\\n\\nThe provided JSON describes a function `getMonthlyExpenseSummary` that takes two parameters: `month` and `year`. The prompt asks for the monthly expense in January of this year. Assuming the current year is 2024, we can fill in the appropriate values for `month` and `year`.\\n\\nThe value for `month` should be `1` (January is the first month), and the value for `year` should be `2024`.\\n\\nTherefore, the appropriate function call with its arguments is:assistant\\n\\nimport datetime\\n\\n# Get the current year\\ncurrent_year = datetime.datetime.now().year\\n\\n# The function call with its arguments\\nprint({\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": 1, \"year\": current_year}})\"{\\\\\"name\\\\\": \\\\\"getMonthlyExpenseSummary\\\\\", \\\\\"parameters\\\\\": {\\\\\"month\\\\\": 1, \\\\\"year\\\\\": 2024}}\"assistant\\n\\nThe final response is: {\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": 1, \"year\": 2024}}', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len((None or []))\nE + where None = ChatCompletionMessage(content='{\"name\": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": 1, \"year\": 2024}}\"\" \"\" \" \"\"\"\"\"\"\"\"\"\"\"\"\" \"\" \"\"\" \"}\",\"\" \" \"}\",\"\" \" \"}\",\"\" \" \"{\" \"name\" \": \"getMonthlyExpenseSummary\", \"parameters\": {\"month\": 1, \"year\": 2024}}\"', refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=None).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.0005783340893685818, + "duration": 0.00034684035927057266, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-text_then_weather_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-text_then_weather_tool]", @@ -2847,34 +2877,34 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.016343542141839862, + "duration": 0.07161083538085222, "outcome": "passed" }, "call": { - "duration": 0.6930254579056054, + "duration": 0.972024847753346, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 529, - "message": "AssertionError: Expected one of ['sol'] in content, but got: 'I cannot accomplish this task as it requires capabilities beyond those offered by the provided functions.'\nassert False\n + where False = any(. at 0x10738e0a0>)" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 550, + "message": "AssertionError: Expected one of ['sol'] in content, but got: 'I cannot perform this task as it requires additional functionality that is not available in the given functions.'\nassert False\n + where False = any(. at 0x7f1acd9d4510>)" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 529, + "lineno": 550, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n # Use the first accumulated tool call for assertion\n tool_call = accumulated_tool_calls[0]\n assert tool_call[\"function\"][\"name\"] == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call['function']['name']}'\"\n )\n # Parse the accumulated arguments string for comparison\n actual_arguments = json.loads(tool_call[\"function\"][\"arguments\"])\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call[\"id\"],\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n assert accumulated_content is not None and accumulated_content != \"\", \"Expected content, but none received.\"\n expected_answers = expected[\"answer\"]\n content_lower = accumulated_content.lower()\n> assert any(ans.lower() in content_lower for ans in expected_answers), (\n f\"Expected one of {expected_answers} in content, but got: '{accumulated_content}'\"\n )\nE AssertionError: Expected one of ['sol'] in content, but got: 'I cannot accomplish this task as it requires capabilities beyond those offered by the provided functions.'\nE assert False\nE + where False = any(. at 0x10738e0a0>)\n\ntests/verifications/openai_api/test_chat_completion.py:529: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n # Use the first accumulated tool call for assertion\n tool_call = accumulated_tool_calls[0]\n assert tool_call[\"function\"][\"name\"] == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call['function']['name']}'\"\n )\n # Parse the accumulated arguments string for comparison\n actual_arguments = json.loads(tool_call[\"function\"][\"arguments\"])\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call[\"id\"],\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n assert accumulated_content is not None and accumulated_content != \"\", \"Expected content, but none received.\"\n expected_answers = expected[\"answer\"]\n content_lower = accumulated_content.lower()\n> assert any(ans.lower() in content_lower for ans in expected_answers), (\n f\"Expected one of {expected_answers} in content, but got: '{accumulated_content}'\"\n )\nE AssertionError: Expected one of ['sol'] in content, but got: 'I cannot perform this task as it requires additional functionality that is not available in the given functions.'\nE assert False\nE + where False = any(. at 0x7f1acd9d4510>)\n\ntests/verifications/openai_api/test_chat_completion.py:550: AssertionError" }, "teardown": { - "duration": 0.00024741701781749725, + "duration": 0.0003080591559410095, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-weather_tool_then_text]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-weather_tool_then_text]", @@ -2893,34 +2923,34 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.007791666081175208, + "duration": 0.07267874106764793, "outcome": "passed" }, "call": { - "duration": 0.4420052089262754, + "duration": 0.632216920144856, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.000628374982625246, + "duration": 0.0003350367769598961, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-add_product_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-add_product_tool]", @@ -2939,34 +2969,34 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.013015333097428083, + "duration": 0.0707720061764121, "outcome": "passed" }, "call": { - "duration": 0.6754761249758303, + "duration": 0.9429405080154538, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.000581083819270134, + "duration": 0.0002858620136976242, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-get_then_create_event_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-get_then_create_event_tool]", @@ -2985,34 +3015,34 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.0128930420614779, + "duration": 0.06923680566251278, "outcome": "passed" }, "call": { - "duration": 0.367436750093475, + "duration": 0.7107308339327574, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.00024812505580484867, + "duration": 0.0003181472420692444, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-compare_monthly_expense_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama-v3p3-70b-instruct-compare_monthly_expense_tool]", @@ -3031,34 +3061,34 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.006677915807813406, + "duration": 0.07021687645465136, "outcome": "passed" }, "call": { - "duration": 0.5142939588986337, + "duration": 0.7717038569971919, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama-v3p3-70b-instruct'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.0002248329110443592, + "duration": 0.00030398648232221603, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-text_then_weather_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-text_then_weather_tool]", @@ -3077,34 +3107,34 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.008392333984375, + "duration": 0.07320436742156744, "outcome": "passed" }, "call": { - "duration": 9.519045708002523, + "duration": 1.2869794629514217, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, - "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 550, + "message": "AssertionError: Expected one of ['sol'] in content, but got: '{\"name\": \"get_weather\", \"parameters\": {\"description\": \"Get the current weather\", \"parameters\": {\"type\": \"object\", \"properties\": {\"location\": {\"description\": \"The city and state (both required) (e.g. San Francisco, CA.\", \"type\": \"string\"}}}, \"required\": [\"location\"]}}'\nassert False\n + where False = any(. at 0x7f1acd9b8e40>)" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 550, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n # Use the first accumulated tool call for assertion\n tool_call = accumulated_tool_calls[0]\n assert tool_call[\"function\"][\"name\"] == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call['function']['name']}'\"\n )\n # Parse the accumulated arguments string for comparison\n actual_arguments = json.loads(tool_call[\"function\"][\"arguments\"])\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call[\"id\"],\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n assert accumulated_content is not None and accumulated_content != \"\", \"Expected content, but none received.\"\n expected_answers = expected[\"answer\"]\n content_lower = accumulated_content.lower()\n> assert any(ans.lower() in content_lower for ans in expected_answers), (\n f\"Expected one of {expected_answers} in content, but got: '{accumulated_content}'\"\n )\nE AssertionError: Expected one of ['sol'] in content, but got: '{\"name\": \"get_weather\", \"parameters\": {\"description\": \"Get the current weather\", \"parameters\": {\"type\": \"object\", \"properties\": {\"location\": {\"description\": \"The city and state (both required) (e.g. San Francisco, CA.\", \"type\": \"string\"}}}, \"required\": [\"location\"]}}'\nE assert False\nE + where False = any(. at 0x7f1acd9b8e40>)\n\ntests/verifications/openai_api/test_chat_completion.py:550: AssertionError" }, "teardown": { - "duration": 0.00019570882432162762, + "duration": 0.0003076540306210518, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-weather_tool_then_text]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-weather_tool_then_text]", @@ -3123,34 +3153,34 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.009688499849289656, + "duration": 0.0732570867985487, "outcome": "passed" }, "call": { - "duration": 0.9869634578935802, + "duration": 0.9204158475622535, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.0002135841641575098, + "duration": 0.000310627743601799, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-add_product_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-add_product_tool]", @@ -3169,34 +3199,34 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.007028624881058931, + "duration": 0.07232664246112108, "outcome": "passed" }, "call": { - "duration": 4.688094082986936, + "duration": 3.829266043379903, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.00026954198256134987, + "duration": 0.00034091807901859283, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-get_then_create_event_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-get_then_create_event_tool]", @@ -3215,34 +3245,34 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.006646708119660616, + "duration": 0.07045515719801188, "outcome": "passed" }, "call": { - "duration": 15.899775499943644, + "duration": 6.550140863284469, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.0004787910729646683, + "duration": 0.0003092316910624504, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-compare_monthly_expense_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-scout-instruct-basic-compare_monthly_expense_tool]", @@ -3261,34 +3291,34 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.016487207962200046, + "duration": 0.07400601450353861, "outcome": "passed" }, "call": { - "duration": 3.922360667027533, + "duration": 3.142588397487998, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-scout-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.00043979217298328876, + "duration": 0.0003124792128801346, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-text_then_weather_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-text_then_weather_tool]", @@ -3307,34 +3337,34 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.013401374919340014, + "duration": 0.07049713470041752, "outcome": "passed" }, "call": { - "duration": 2.2223200001753867, + "duration": 4.074657499790192, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 529, - "message": "AssertionError: Expected one of ['sol'] in content, but got: '{\"name\": \"get_weather\", \"parameters\": {\"location\": \"Rome, Italy\"}} is not the best response here.\n \n Since we don't have a function that directly answers \"What's the name of the Sun in latin?\", a more appropriate response would be to say that there's no function available to answer this question. However, to follow the given format and assuming there's an implicit expectation to still attempt an answer or provide a closest match:\n \n {\"name\": \"get_weather\", \"parameters\": {\"location\": \"Invalid input, no relation to weather\"}} is still not a valid response.\n \n A correct response according to the given constraints isn't feasible. However, to fit the required format and indicating a function that could be related or a default, if there was a \"get_fact\" function:\n \n {\"name\": \"get_fact\", \"parameters\": {\"query\": \"Latin name of the Sun\"}} \n \n But since \"get_fact\" isn't defined in the prompt, and sticking strictly to the given function:\n \n There isn't a proper function to call.\n \n For the sake of compliance, let's assume an unrelated function was to be used due to lack of information.\n \n The best course of action is to indicate that the provided function definitions don't directly support answering the question about the Latin name of the Sun.'\nassert False\n + where False = any(. at 0x1074b9bd0>)" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 550, + "message": "AssertionError: Expected one of ['sol'] in content, but got: 'Since the provided text describes a JSON schema for a function call to get the weather, and the prompt asks for the name of the Sun in Latin, we need to identify a suitable function that can provide this information. However, the given schema is for a \"get_weather\" function, which doesn't directly relate to the question about the Sun's name in Latin.\n \n Assuming there's another function available that can provide information about celestial bodies or their names in different languages, we might look for something like \"get_celestial_body_info\" or a similar function.\n \n However, based on the given format and the information provided, it seems there's an implication that we should directly provide a response in the specified JSON format for a hypothetical or related function. Let's assume a function named \"get_celestial_body_name\" that takes parameters like \"body\" and \"language\".\n \n Given the constraint of the format and assuming a function that fits, we might construct a response like:\n \n ```json\n {\n \"name\": \"get_celestial_body_name\",\n \"parameters\": {\n \"body\": \"Sun\",\n \"language\": \"Latin\"\n }\n }\n ```\n \n This response implies the existence of a function \"get_celestial_body_name\" that can take the name of a celestial body and a language as input and return the name of the celestial body in that language. \n \n So, the response is:\n {\"name\": \"get_celestial_body_name\", \"parameters\": {\"body\": \"Sun\", \"language\": \"Latin\"}}'\nassert False\n + where False = any(. at 0x7f1acdaba030>)" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 529, + "lineno": 550, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n # Use the first accumulated tool call for assertion\n tool_call = accumulated_tool_calls[0]\n assert tool_call[\"function\"][\"name\"] == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call['function']['name']}'\"\n )\n # Parse the accumulated arguments string for comparison\n actual_arguments = json.loads(tool_call[\"function\"][\"arguments\"])\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call[\"id\"],\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n assert accumulated_content is not None and accumulated_content != \"\", \"Expected content, but none received.\"\n expected_answers = expected[\"answer\"]\n content_lower = accumulated_content.lower()\n> assert any(ans.lower() in content_lower for ans in expected_answers), (\n f\"Expected one of {expected_answers} in content, but got: '{accumulated_content}'\"\n )\nE AssertionError: Expected one of ['sol'] in content, but got: '{\"name\": \"get_weather\", \"parameters\": {\"location\": \"Rome, Italy\"}} is not the best response here.\nE \nE Since we don't have a function that directly answers \"What's the name of the Sun in latin?\", a more appropriate response would be to say that there's no function available to answer this question. However, to follow the given format and assuming there's an implicit expectation to still attempt an answer or provide a closest match:\nE \nE {\"name\": \"get_weather\", \"parameters\": {\"location\": \"Invalid input, no relation to weather\"}} is still not a valid response.\nE \nE A correct response according to the given constraints isn't feasible. However, to fit the required format and indicating a function that could be related or a default, if there was a \"get_fact\" function:\nE \nE {\"name\": \"get_fact\", \"parameters\": {\"query\": \"Latin name of the Sun\"}} \nE \nE But since \"get_fact\" isn't defined in the prompt, and sticking strictly to the given function:\nE \nE There isn't a proper function to call.\nE \nE For the sake of compliance, let's assume an unrelated function was to be used due to lack of information.\nE \nE The best course of action is to indicate that the provided function definitions don't directly support answering the question about the Latin name of the Sun.'\nE assert False\nE + where False = any(. at 0x1074b9bd0>)\n\ntests/verifications/openai_api/test_chat_completion.py:529: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n # Use the first accumulated tool call for assertion\n tool_call = accumulated_tool_calls[0]\n assert tool_call[\"function\"][\"name\"] == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call['function']['name']}'\"\n )\n # Parse the accumulated arguments string for comparison\n actual_arguments = json.loads(tool_call[\"function\"][\"arguments\"])\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call[\"id\"],\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n assert accumulated_content is not None and accumulated_content != \"\", \"Expected content, but none received.\"\n expected_answers = expected[\"answer\"]\n content_lower = accumulated_content.lower()\n> assert any(ans.lower() in content_lower for ans in expected_answers), (\n f\"Expected one of {expected_answers} in content, but got: '{accumulated_content}'\"\n )\nE AssertionError: Expected one of ['sol'] in content, but got: 'Since the provided text describes a JSON schema for a function call to get the weather, and the prompt asks for the name of the Sun in Latin, we need to identify a suitable function that can provide this information. However, the given schema is for a \"get_weather\" function, which doesn't directly relate to the question about the Sun's name in Latin.\nE \nE Assuming there's another function available that can provide information about celestial bodies or their names in different languages, we might look for something like \"get_celestial_body_info\" or a similar function.\nE \nE However, based on the given format and the information provided, it seems there's an implication that we should directly provide a response in the specified JSON format for a hypothetical or related function. Let's assume a function named \"get_celestial_body_name\" that takes parameters like \"body\" and \"language\".\nE \nE Given the constraint of the format and assuming a function that fits, we might construct a response like:\nE \nE ```json\nE {\nE \"name\": \"get_celestial_body_name\",\nE \"parameters\": {\nE \"body\": \"Sun\",\nE \"language\": \"Latin\"\nE }\nE }\nE ```\nE \nE This response implies the existence of a function \"get_celestial_body_name\" that can take the name of a celestial body and a language as input and return the name of the celestial body in that language. \nE \nE So, the response is:\nE {\"name\": \"get_celestial_body_name\", \"parameters\": {\"body\": \"Sun\", \"language\": \"Latin\"}}'\nE assert False\nE + where False = any(. at 0x7f1acdaba030>)\n\ntests/verifications/openai_api/test_chat_completion.py:550: AssertionError" }, "teardown": { - "duration": 0.00047154095955193043, + "duration": 0.00031174439936876297, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-weather_tool_then_text]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-weather_tool_then_text]", @@ -3353,34 +3383,34 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.01485933386720717, + "duration": 0.07156828418374062, "outcome": "passed" }, "call": { - "duration": 0.6193458330817521, + "duration": 0.6585372854024172, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.000300833024084568, + "duration": 0.0003233151510357857, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-add_product_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-add_product_tool]", @@ -3399,34 +3429,34 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.012684250017628074, + "duration": 0.07135927956551313, "outcome": "passed" }, "call": { - "duration": 0.5173197500407696, + "duration": 1.0483367526903749, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.00047266692854464054, + "duration": 0.00028971116989851, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-get_then_create_event_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-get_then_create_event_tool]", @@ -3445,34 +3475,34 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.01282945810817182, + "duration": 0.07051362749189138, "outcome": "passed" }, "call": { - "duration": 2.990155333885923, + "duration": 4.592376064509153, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.00027558300644159317, + "duration": 0.00029074493795633316, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-compare_monthly_expense_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[accounts/fireworks/models/llama4-maverick-instruct-basic-compare_monthly_expense_tool]", @@ -3491,31 +3521,231 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.008087666006758809, + "duration": 0.07347700279206038, "outcome": "passed" }, "call": { - "duration": 3.6024099169299006, + "duration": 1.5335856154561043, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, "message": "AssertionError: Expected 1 tool calls, but got 0\nassert 0 == 1\n + where 0 = len(([] or []))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'accounts/fireworks/models/llama4-maverick-instruct-basic'\nprovider = 'fireworks'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 1 tool calls, but got 0\nE assert 0 == 1\nE + where 0 = len(([] or []))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.0010035419836640358, + "duration": 0.0003180811181664467, + "outcome": "passed" + } + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[accounts/fireworks/models/llama-v3p3-70b-instruct-stream=False]", + "lineno": 554, + "outcome": "skipped", + "keywords": [ + "test_chat_multi_turn_multiple_images[accounts/fireworks/models/llama-v3p3-70b-instruct-stream=False]", + "parametrize", + "pytestmark", + "accounts/fireworks/models/llama-v3p3-70b-instruct-stream=False", + "test_chat_completion.py", + "openai_api", + "verifications", + "tests", + "llama-stack", + "" + ], + 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"test_chat_non_streaming_structured_output[gpt-4o-calendar]", @@ -705,21 +725,21 @@ "case_id": "calendar" }, "setup": { - "duration": 0.017477875109761953, + "duration": 0.07038832642138004, "outcome": "passed" }, "call": { - "duration": 0.7350135410670191, + "duration": 1.0188098661601543, "outcome": "passed" }, "teardown": { - "duration": 0.00046616699546575546, + "duration": 0.00027244072407484055, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_structured_output[gpt-4o-math]", - "lineno": 160, + "lineno": 181, "outcome": "passed", "keywords": [ "test_chat_non_streaming_structured_output[gpt-4o-math]", @@ -738,21 +758,21 @@ "case_id": "math" }, "setup": { - "duration": 0.033007249934598804, + "duration": 0.07331131957471371, "outcome": "passed" }, "call": { - "duration": 5.031138291116804, + "duration": 7.0907115917652845, "outcome": "passed" }, "teardown": { - "duration": 0.00032295798882842064, + "duration": 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{ - "duration": 0.02985133300535381, + "duration": 0.07268172968178988, "outcome": "passed" }, "call": { - "duration": 2.388004041975364, + "duration": 2.6800331017002463, "outcome": "passed" }, "teardown": { - "duration": 0.00038116704672574997, + "duration": 0.0002518612891435623, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[gpt-4o-calendar]", - "lineno": 183, + "lineno": 204, "outcome": "passed", "keywords": [ "test_chat_streaming_structured_output[gpt-4o-calendar]", @@ -837,21 +857,21 @@ "case_id": "calendar" }, "setup": { - "duration": 0.017887332942336798, + "duration": 0.07150284852832556, "outcome": "passed" }, "call": { - "duration": 1.0018641669303179, + "duration": 0.6667193034663796, "outcome": "passed" }, "teardown": { - "duration": 0.0005486670415848494, + "duration": 0.00025727134197950363, "outcome": "passed" } }, { "nodeid": 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"passed" }, "call": { - "duration": 0.9268912919797003, + "duration": 0.9911826532334089, "outcome": "passed" }, "teardown": { - "duration": 0.00046200002543628216, + "duration": 0.00028301775455474854, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[gpt-4o-mini-math]", - "lineno": 183, + "lineno": 204, "outcome": "passed", "keywords": [ "test_chat_streaming_structured_output[gpt-4o-mini-math]", @@ -936,21 +956,21 @@ "case_id": "math" }, "setup": { - "duration": 0.01635808404535055, + "duration": 0.07489973120391369, "outcome": "passed" }, "call": { - "duration": 3.7341703751590103, + "duration": 5.81621040776372, "outcome": "passed" }, "teardown": { - "duration": 0.0004277920816093683, + "duration": 0.00027776509523391724, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_calling[gpt-4o-case0]", - "lineno": 205, + "lineno": 226, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_calling[gpt-4o-case0]", @@ -969,21 +989,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.021756208036094904, + "duration": 0.0709689250215888, "outcome": "passed" }, "call": { - "duration": 0.6105514578521252, + "duration": 0.6838962603360415, "outcome": "passed" }, "teardown": { - "duration": 0.0004747910425066948, + "duration": 0.00038875360041856766, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_calling[gpt-4o-mini-case0]", - "lineno": 205, + "lineno": 226, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_calling[gpt-4o-mini-case0]", @@ -1002,21 +1022,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.015522167086601257, + "duration": 0.07440952491015196, "outcome": "passed" }, "call": { - "duration": 0.9731334580574185, + "duration": 0.6124099707230926, "outcome": "passed" }, "teardown": { - "duration": 0.0003415420651435852, + "duration": 0.00031805597245693207, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_calling[gpt-4o-case0]", - "lineno": 229, + "lineno": 250, "outcome": "passed", "keywords": [ "test_chat_streaming_tool_calling[gpt-4o-case0]", @@ -1035,21 +1055,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.014343583025038242, + "duration": 0.07558728754520416, "outcome": "passed" }, "call": { - "duration": 0.5453979168087244, + "duration": 1.0413735723122954, "outcome": "passed" }, "teardown": { - "duration": 0.0011145840398967266, + "duration": 0.00026555173099040985, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_calling[gpt-4o-mini-case0]", - "lineno": 229, + "lineno": 250, "outcome": "passed", "keywords": [ "test_chat_streaming_tool_calling[gpt-4o-mini-case0]", @@ -1068,21 +1088,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.017669249791651964, + "duration": 0.07159029692411423, "outcome": "passed" }, "call": { - "duration": 0.6310562079306692, + "duration": 0.619917850010097, "outcome": "passed" }, "teardown": { - "duration": 0.0006836249958723783, + "duration": 0.00026798900216817856, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_required[gpt-4o-case0]", - "lineno": 257, + "lineno": 278, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_choice_required[gpt-4o-case0]", @@ -1101,21 +1121,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.016614832915365696, + "duration": 0.10359053406864405, "outcome": "passed" }, "call": { - "duration": 0.6914504591841251, + "duration": 0.6396236326545477, "outcome": "passed" }, "teardown": { - "duration": 0.0004829999525099993, + "duration": 0.000257750041782856, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_required[gpt-4o-mini-case0]", - "lineno": 257, + "lineno": 278, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_choice_required[gpt-4o-mini-case0]", @@ -1134,21 +1154,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.03217837493866682, + "duration": 0.07243514712899923, "outcome": "passed" }, "call": { - "duration": 0.4917086660861969, + "duration": 0.6169720906764269, "outcome": "passed" }, "teardown": { - "duration": 0.0005399580113589764, + "duration": 0.0002462640404701233, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_required[gpt-4o-case0]", - "lineno": 281, + "lineno": 302, "outcome": "passed", "keywords": [ "test_chat_streaming_tool_choice_required[gpt-4o-case0]", @@ -1167,21 +1187,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.01154208299703896, + "duration": 0.07266584690660238, "outcome": "passed" }, "call": { - "duration": 0.5663661658763885, + "duration": 0.9391414495185018, "outcome": "passed" }, "teardown": { - "duration": 0.0008221250027418137, + "duration": 0.0003280108794569969, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_required[gpt-4o-mini-case0]", - "lineno": 281, + "lineno": 302, "outcome": "passed", "keywords": [ "test_chat_streaming_tool_choice_required[gpt-4o-mini-case0]", @@ -1200,21 +1220,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.013238833984360099, + "duration": 0.08437065314501524, "outcome": "passed" }, "call": { - "duration": 0.6098562499973923, + "duration": 0.6935106571763754, "outcome": "passed" }, "teardown": { - "duration": 0.00045654200948774815, + "duration": 0.00027523748576641083, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_none[gpt-4o-case0]", - "lineno": 308, + "lineno": 329, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_choice_none[gpt-4o-case0]", @@ -1233,21 +1253,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.014951375080272555, + "duration": 0.07208988349884748, "outcome": "passed" }, "call": { - "duration": 0.5425659997854382, + "duration": 0.6744982637465, "outcome": "passed" }, "teardown": { - "duration": 0.0002112078946083784, + "duration": 0.0002555781975388527, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_none[gpt-4o-mini-case0]", - "lineno": 308, + "lineno": 329, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_choice_none[gpt-4o-mini-case0]", @@ -1266,21 +1286,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.010041083907708526, + "duration": 0.07785151246935129, "outcome": "passed" }, "call": { - "duration": 0.7337456250097603, + "duration": 0.6253539212048054, "outcome": "passed" }, "teardown": { - "duration": 0.00042791711166501045, + "duration": 0.00028202030807733536, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_none[gpt-4o-case0]", - "lineno": 331, + "lineno": 352, "outcome": "passed", "keywords": [ "test_chat_streaming_tool_choice_none[gpt-4o-case0]", @@ -1299,21 +1319,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.007236667210236192, + "duration": 0.0911521203815937, "outcome": "passed" }, "call": { - "duration": 0.4192167909350246, + "duration": 0.7869452070444822, "outcome": "passed" }, "teardown": { - "duration": 0.0010569579899311066, + "duration": 0.00043197907507419586, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_none[gpt-4o-mini-case0]", - "lineno": 331, + "lineno": 352, "outcome": "passed", "keywords": [ "test_chat_streaming_tool_choice_none[gpt-4o-mini-case0]", @@ -1332,21 +1352,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.01997062494046986, + "duration": 0.10472878441214561, "outcome": "passed" }, "call": { - "duration": 0.6866283339913934, + "duration": 0.6786438375711441, "outcome": "passed" }, "teardown": { - "duration": 0.0010521251242607832, + "duration": 0.00025699567049741745, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-text_then_weather_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-text_then_weather_tool]", @@ -1365,21 +1385,21 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.017386124935001135, + "duration": 0.07002853509038687, "outcome": "passed" }, "call": { - "duration": 4.425433791941032, + "duration": 2.395758199505508, "outcome": "passed" }, "teardown": { - "duration": 0.00043645803816616535, + "duration": 0.0002955012023448944, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-weather_tool_then_text]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-weather_tool_then_text]", @@ -1398,21 +1418,21 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.014067957876250148, + "duration": 0.07316868472844362, "outcome": "passed" }, "call": { - "duration": 1.205255625071004, + "duration": 1.3224441464990377, "outcome": "passed" }, "teardown": { - "duration": 0.0004651669878512621, + "duration": 0.0002612341195344925, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-add_product_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-add_product_tool]", @@ -1431,21 +1451,21 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.016634040977805853, + "duration": 0.10713072493672371, "outcome": "passed" }, "call": { - "duration": 1.4360020828898996, + "duration": 1.0061814906075597, "outcome": "passed" }, "teardown": { - "duration": 0.0004704580642282963, + "duration": 0.0002610785886645317, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-get_then_create_event_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-get_then_create_event_tool]", @@ -1464,21 +1484,21 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.015702415956184268, + "duration": 0.07267123833298683, "outcome": "passed" }, "call": { - "duration": 5.882555708056316, + "duration": 4.26907461322844, "outcome": "passed" }, "teardown": { - "duration": 0.003662874922156334, + "duration": 0.00025866832584142685, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-compare_monthly_expense_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-compare_monthly_expense_tool]", @@ -1497,21 +1517,21 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.020038041984662414, + "duration": 0.07208938524127007, "outcome": "passed" }, "call": { - "duration": 2.2738899998366833, + "duration": 2.8186135441064835, "outcome": "passed" }, "teardown": { - "duration": 0.0004929169081151485, + "duration": 0.00026924535632133484, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-mini-text_then_weather_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-mini-text_then_weather_tool]", @@ -1530,21 +1550,21 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.007982166949659586, + "duration": 0.07148494757711887, "outcome": "passed" }, "call": { - "duration": 1.7494398748967797, + "duration": 2.1276168935000896, "outcome": "passed" }, "teardown": { - "duration": 0.0005488330498337746, + "duration": 0.00024427566677331924, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-mini-weather_tool_then_text]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-mini-weather_tool_then_text]", @@ -1563,21 +1583,21 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.007455583196133375, + "duration": 0.07107946090400219, "outcome": "passed" }, "call": { - "duration": 5.338647875003517, + "duration": 1.1634307894855738, "outcome": "passed" }, "teardown": { - "duration": 0.0005507499445229769, + "duration": 0.00030216481536626816, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-mini-add_product_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-mini-add_product_tool]", @@ -1596,21 +1616,21 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.01675066608004272, + "duration": 0.07261826191097498, "outcome": "passed" }, "call": { - "duration": 4.016703582834452, + "duration": 1.4525672728195786, "outcome": "passed" }, "teardown": { - "duration": 0.0005397920031100512, + "duration": 0.0002602897584438324, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-mini-get_then_create_event_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-mini-get_then_create_event_tool]", @@ -1629,21 +1649,21 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.009890957968309522, + "duration": 0.0710728308185935, "outcome": "passed" }, "call": { - "duration": 3.9003724998328835, + "duration": 4.533652591519058, "outcome": "passed" }, "teardown": { - "duration": 0.0005802921950817108, + "duration": 0.0002704774960875511, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[gpt-4o-mini-compare_monthly_expense_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ 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"tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-compare_monthly_expense_tool]", "type": "Function", - "lineno": 359 + "lineno": 380 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-text_then_weather_tool]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-weather_tool_then_text]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-add_product_tool]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-get_then_create_event_tool]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-compare_monthly_expense_tool]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-text_then_weather_tool]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-weather_tool_then_text]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-add_product_tool]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-get_then_create_event_tool]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-compare_monthly_expense_tool]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-text_then_weather_tool]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-weather_tool_then_text]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-add_product_tool]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-get_then_create_event_tool]", "type": "Function", - "lineno": 450 + "lineno": 471 }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-compare_monthly_expense_tool]", "type": "Function", - "lineno": 450 + "lineno": 471 + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[meta-llama/Llama-3.3-70B-Instruct-Turbo-stream=False]", + "type": "Function", + "lineno": 554 + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[meta-llama/Llama-3.3-70B-Instruct-Turbo-stream=True]", + "type": "Function", + "lineno": 554 + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[meta-llama/Llama-4-Scout-17B-16E-Instruct-stream=False]", + "type": "Function", + "lineno": 554 + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[meta-llama/Llama-4-Scout-17B-16E-Instruct-stream=True]", + "type": "Function", + "lineno": 554 + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-stream=False]", + "type": "Function", + "lineno": 554 + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-stream=True]", + "type": "Function", + "lineno": 554 } ] } @@ -422,7 +452,7 @@ "tests": [ { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[meta-llama/Llama-3.3-70B-Instruct-Turbo-earth]", - "lineno": 74, + "lineno": 95, "outcome": "passed", "keywords": [ "test_chat_non_streaming_basic[meta-llama/Llama-3.3-70B-Instruct-Turbo-earth]", @@ -441,21 +471,21 @@ "case_id": "earth" }, "setup": { - "duration": 0.1559112500399351, + "duration": 0.11939296405762434, "outcome": "passed" }, "call": { - "duration": 0.3692209171131253, + "duration": 0.6422080835327506, "outcome": "passed" }, "teardown": { - "duration": 0.00021362490952014923, + "duration": 0.0002934802323579788, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[meta-llama/Llama-3.3-70B-Instruct-Turbo-saturn]", - "lineno": 74, + "lineno": 95, "outcome": "passed", "keywords": [ "test_chat_non_streaming_basic[meta-llama/Llama-3.3-70B-Instruct-Turbo-saturn]", @@ -474,21 +504,21 @@ "case_id": "saturn" }, "setup": { - "duration": 0.007326166843995452, + "duration": 0.07340026367455721, "outcome": "passed" }, "call": { - "duration": 0.49173945817165077, + "duration": 0.6134521719068289, "outcome": "passed" }, "teardown": { - "duration": 0.00034487503580749035, + "duration": 0.00031049735844135284, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[meta-llama/Llama-4-Scout-17B-16E-Instruct-earth]", - "lineno": 74, + "lineno": 95, "outcome": "passed", "keywords": [ "test_chat_non_streaming_basic[meta-llama/Llama-4-Scout-17B-16E-Instruct-earth]", @@ -507,21 +537,21 @@ "case_id": "earth" }, "setup": { - "duration": 0.021014458034187555, + "duration": 0.07351398840546608, "outcome": "passed" }, "call": { - "duration": 0.36956487502902746, + "duration": 0.898847377859056, "outcome": "passed" }, "teardown": { - "duration": 0.0007119579240679741, + "duration": 0.0002735760062932968, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[meta-llama/Llama-4-Scout-17B-16E-Instruct-saturn]", - "lineno": 74, + "lineno": 95, "outcome": "passed", "keywords": [ "test_chat_non_streaming_basic[meta-llama/Llama-4-Scout-17B-16E-Instruct-saturn]", @@ -540,21 +570,21 @@ "case_id": "saturn" }, "setup": { - "duration": 0.011922625126317143, + "duration": 0.08612977154552937, "outcome": "passed" }, "call": { - "duration": 2.7763332079630345, + "duration": 0.6511319326236844, "outcome": "passed" }, "teardown": { - "duration": 0.0004842919297516346, + "duration": 0.0003559151664376259, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-earth]", - "lineno": 74, + "lineno": 95, "outcome": "passed", "keywords": [ "test_chat_non_streaming_basic[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-earth]", @@ -573,21 +603,21 @@ "case_id": "earth" }, "setup": { - "duration": 0.023896750062704086, + "duration": 0.08106738794595003, "outcome": "passed" }, "call": { - "duration": 0.9817597079090774, + "duration": 1.206272155046463, "outcome": "passed" }, "teardown": { - "duration": 0.0004768748767673969, + "duration": 0.0003584325313568115, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_basic[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-saturn]", - "lineno": 74, + "lineno": 95, "outcome": "passed", "keywords": [ "test_chat_non_streaming_basic[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-saturn]", @@ -606,21 +636,21 @@ "case_id": "saturn" }, "setup": { - "duration": 0.07423937506973743, + "duration": 0.0796442786231637, "outcome": "passed" }, "call": { - "duration": 0.3721332079730928, + "duration": 0.4815350500866771, "outcome": "passed" }, "teardown": { - "duration": 0.00020033284090459347, + "duration": 0.00025806669145822525, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[meta-llama/Llama-3.3-70B-Instruct-Turbo-earth]", - "lineno": 93, + "lineno": 114, "outcome": "passed", "keywords": [ "test_chat_streaming_basic[meta-llama/Llama-3.3-70B-Instruct-Turbo-earth]", @@ -639,21 +669,21 @@ "case_id": "earth" }, "setup": { - "duration": 0.010166750056669116, + "duration": 0.07231954019516706, "outcome": "passed" }, "call": { - "duration": 0.41266337502747774, + "duration": 1.1521263290196657, "outcome": "passed" }, "teardown": { - "duration": 0.00034358282573521137, + "duration": 0.00032721273601055145, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[meta-llama/Llama-3.3-70B-Instruct-Turbo-saturn]", - "lineno": 93, + "lineno": 114, "outcome": "passed", "keywords": [ "test_chat_streaming_basic[meta-llama/Llama-3.3-70B-Instruct-Turbo-saturn]", @@ -672,21 +702,21 @@ "case_id": "saturn" }, "setup": { - "duration": 0.016687541967257857, + "duration": 0.07364387530833483, "outcome": "passed" }, "call": { - "duration": 0.7235856249462813, + "duration": 1.0600289879366755, "outcome": "passed" }, "teardown": { - "duration": 0.00027179205790162086, + "duration": 0.00028987880796194077, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[meta-llama/Llama-4-Scout-17B-16E-Instruct-earth]", - "lineno": 93, + "lineno": 114, "outcome": "failed", "keywords": [ "test_chat_streaming_basic[meta-llama/Llama-4-Scout-17B-16E-Instruct-earth]", @@ -705,34 +735,34 @@ "case_id": "earth" }, "setup": { - "duration": 0.012556416913866997, + "duration": 0.07162868417799473, "outcome": "passed" }, "call": { - "duration": 0.27039612480439246, + "duration": 0.2930005770176649, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 111, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 132, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 111, + "lineno": 132, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'earth', 'input': {'messages': [{'content': 'Which planet do humans live on?', 'role': 'user'}]}, 'output': 'Earth'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_basic\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_basic(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n stream=True,\n )\n content = \"\"\n for chunk in response:\n> content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:111: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'earth', 'input': {'messages': [{'content': 'Which planet do humans live on?', 'role': 'user'}]}, 'output': 'Earth'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_basic\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_basic(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n stream=True,\n )\n content = \"\"\n for chunk in response:\n> content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:132: IndexError" }, "teardown": { - "duration": 0.0002312080468982458, + "duration": 0.0004123607650399208, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[meta-llama/Llama-4-Scout-17B-16E-Instruct-saturn]", - "lineno": 93, + "lineno": 114, "outcome": "failed", "keywords": [ "test_chat_streaming_basic[meta-llama/Llama-4-Scout-17B-16E-Instruct-saturn]", @@ -751,34 +781,34 @@ "case_id": "saturn" }, "setup": { - "duration": 0.006413874914869666, + "duration": 0.07553945016115904, "outcome": "passed" }, "call": { - "duration": 0.36463545891456306, + "duration": 0.4265708066523075, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 111, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 132, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 111, + "lineno": 132, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'saturn', 'input': {'messages': [{'content': 'Which planet has rings around it with a name starting with letter S?', 'role': 'user'}]}, 'output': 'Saturn'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_basic\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_basic(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n stream=True,\n )\n content = \"\"\n for chunk in response:\n> content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:111: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'saturn', 'input': {'messages': [{'content': 'Which planet has rings around it with a name starting with letter S?', 'role': 'user'}]}, 'output': 'Saturn'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_basic\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_basic(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n stream=True,\n )\n content = \"\"\n for chunk in response:\n> content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:132: IndexError" }, "teardown": { - "duration": 0.00023154192604124546, + "duration": 0.0003767991438508034, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-earth]", - "lineno": 93, + "lineno": 114, "outcome": "failed", "keywords": [ "test_chat_streaming_basic[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-earth]", @@ -797,34 +827,34 @@ "case_id": "earth" }, "setup": { - "duration": 0.015633082948625088, + "duration": 0.07143466174602509, "outcome": "passed" }, "call": { - "duration": 0.8896284159272909, + "duration": 1.0281891459599137, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 111, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 132, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 111, + "lineno": 132, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'earth', 'input': {'messages': [{'content': 'Which planet do humans live on?', 'role': 'user'}]}, 'output': 'Earth'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_basic\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_basic(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n stream=True,\n )\n content = \"\"\n for chunk in response:\n> content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:111: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'earth', 'input': {'messages': [{'content': 'Which planet do humans live on?', 'role': 'user'}]}, 'output': 'Earth'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_basic\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_basic(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n stream=True,\n )\n content = \"\"\n for chunk in response:\n> content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:132: IndexError" }, "teardown": { - "duration": 0.0006587498355656862, + "duration": 0.0003773234784603119, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_basic[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-saturn]", - "lineno": 93, + "lineno": 114, "outcome": "failed", "keywords": [ "test_chat_streaming_basic[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-saturn]", @@ -843,34 +873,34 @@ "case_id": "saturn" }, "setup": { - "duration": 0.012669583084061742, + "duration": 0.07092289440333843, "outcome": "passed" }, "call": { - "duration": 0.3499396659899503, + "duration": 0.4124102909117937, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 111, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 132, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 111, + "lineno": 132, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'saturn', 'input': {'messages': [{'content': 'Which planet has rings around it with a name starting with letter S?', 'role': 'user'}]}, 'output': 'Saturn'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_basic\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_basic(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n stream=True,\n )\n content = \"\"\n for chunk in response:\n> content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:111: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'saturn', 'input': {'messages': [{'content': 'Which planet has rings around it with a name starting with letter S?', 'role': 'user'}]}, 'output': 'Saturn'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_basic\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_basic(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n stream=True,\n )\n content = \"\"\n for chunk in response:\n> content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:132: IndexError" }, "teardown": { - "duration": 0.00024912506341934204, + "duration": 0.0003204820677638054, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_image[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", - "lineno": 117, + "lineno": 138, "outcome": "skipped", "keywords": [ "test_chat_non_streaming_image[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", @@ -889,22 +919,22 @@ "case_id": "case0" }, "setup": { - "duration": 0.0153201250359416, + "duration": 0.07159135863184929, "outcome": "passed" }, "call": { - "duration": 0.0001901669893413782, + "duration": 0.0002104705199599266, "outcome": "skipped", - "longrepr": "('/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py', 126, 'Skipped: Skipping test_chat_non_streaming_image for model meta-llama/Llama-3.3-70B-Instruct-Turbo on provider together based on config.')" + "longrepr": "('/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py', 147, 'Skipped: Skipping test_chat_non_streaming_image for model meta-llama/Llama-3.3-70B-Instruct-Turbo on provider together based on config.')" }, "teardown": { - "duration": 0.00012779212556779385, + "duration": 0.0003354400396347046, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_image[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", - "lineno": 117, + "lineno": 138, "outcome": "passed", "keywords": [ "test_chat_non_streaming_image[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", @@ -923,21 +953,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.008855124935507774, + "duration": 0.0744061404839158, "outcome": "passed" }, "call": { - "duration": 1.37906050006859, + "duration": 2.2864254424348474, "outcome": "passed" }, "teardown": { - "duration": 0.0004904591478407383, + "duration": 0.000246487557888031, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_image[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", - "lineno": 117, + "lineno": 138, "outcome": "passed", "keywords": [ "test_chat_non_streaming_image[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", @@ -956,21 +986,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.017166708130389452, + "duration": 0.07066962588578463, "outcome": "passed" }, "call": { - "duration": 4.003400916932151, + "duration": 4.47614302393049, "outcome": "passed" }, "teardown": { - "duration": 0.00042724981904029846, + "duration": 0.00034836214035749435, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_image[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", - "lineno": 136, + "lineno": 157, "outcome": "skipped", "keywords": [ "test_chat_streaming_image[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", @@ -989,22 +1019,22 @@ "case_id": "case0" }, "setup": { - "duration": 0.007232750067487359, + "duration": 0.09739464800804853, "outcome": "passed" }, "call": { - "duration": 0.0001449580304324627, + "duration": 0.0003191335126757622, "outcome": "skipped", - "longrepr": "('/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py', 145, 'Skipped: Skipping test_chat_streaming_image for model meta-llama/Llama-3.3-70B-Instruct-Turbo on provider together based on config.')" + "longrepr": "('/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py', 166, 'Skipped: Skipping test_chat_streaming_image for model meta-llama/Llama-3.3-70B-Instruct-Turbo on provider together based on config.')" }, "teardown": { - "duration": 0.0001349160447716713, + "duration": 0.00026350561529397964, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_image[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", - "lineno": 136, + "lineno": 157, "outcome": "failed", "keywords": [ "test_chat_streaming_image[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", @@ -1023,34 +1053,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.007052165921777487, + "duration": 0.10561292432248592, "outcome": "passed" }, "call": { - "duration": 1.4663615000899881, + "duration": 2.6175378002226353, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 154, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 175, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 154, + "lineno": 175, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': [{'text': 'What is in this image?', 'type': 'text'}, {'image_url': {...}, 'type': 'image_url'}], 'role': 'user'}]}, 'output': 'llama'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_image\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_image(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n stream=True,\n )\n content = \"\"\n for chunk in response:\n> content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:154: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': [{'text': 'What is in this image?', 'type': 'text'}, {'image_url': {...}, 'type': 'image_url'}], 'role': 'user'}]}, 'output': 'llama'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_image\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_image(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n stream=True,\n )\n content = \"\"\n for chunk in response:\n> content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:175: IndexError" }, "teardown": { - "duration": 0.0005696250591427088, + "duration": 0.0003682933747768402, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_image[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", - "lineno": 136, + "lineno": 157, "outcome": "failed", "keywords": [ "test_chat_streaming_image[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", @@ -1069,34 +1099,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.01214433298446238, + "duration": 0.07195662055164576, "outcome": "passed" }, "call": { - "duration": 3.902559082955122, + "duration": 3.2985631534829736, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 154, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 175, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 154, + "lineno": 175, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': [{'text': 'What is in this image?', 'type': 'text'}, {'image_url': {...}, 'type': 'image_url'}], 'role': 'user'}]}, 'output': 'llama'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_image\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_image(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n stream=True,\n )\n content = \"\"\n for chunk in response:\n> content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:154: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': [{'text': 'What is in this image?', 'type': 'text'}, {'image_url': {...}, 'type': 'image_url'}], 'role': 'user'}]}, 'output': 'llama'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_image\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_image(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n stream=True,\n )\n content = \"\"\n for chunk in response:\n> content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:175: IndexError" }, "teardown": { - "duration": 0.000591374933719635, + "duration": 0.0003777453675866127, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_structured_output[meta-llama/Llama-3.3-70B-Instruct-Turbo-calendar]", - "lineno": 160, + "lineno": 181, "outcome": "passed", "keywords": [ "test_chat_non_streaming_structured_output[meta-llama/Llama-3.3-70B-Instruct-Turbo-calendar]", @@ -1115,21 +1145,21 @@ "case_id": "calendar" }, "setup": { - "duration": 0.01478054211474955, + "duration": 0.0733196372166276, "outcome": "passed" }, "call": { - "duration": 0.569845792138949, + "duration": 0.40959454514086246, "outcome": "passed" }, "teardown": { - "duration": 0.00038724998012185097, + "duration": 0.00029125437140464783, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_structured_output[meta-llama/Llama-3.3-70B-Instruct-Turbo-math]", - "lineno": 160, + "lineno": 181, "outcome": "passed", "keywords": [ "test_chat_non_streaming_structured_output[meta-llama/Llama-3.3-70B-Instruct-Turbo-math]", @@ -1148,21 +1178,21 @@ "case_id": "math" }, "setup": { - "duration": 0.014717916958034039, + "duration": 0.07248916011303663, "outcome": "passed" }, "call": { - "duration": 1.1819656670559198, + "duration": 3.498455540277064, "outcome": "passed" }, "teardown": { - "duration": 0.0002410421147942543, + "duration": 0.00023921672254800797, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_structured_output[meta-llama/Llama-4-Scout-17B-16E-Instruct-calendar]", - "lineno": 160, + "lineno": 181, "outcome": "passed", "keywords": [ "test_chat_non_streaming_structured_output[meta-llama/Llama-4-Scout-17B-16E-Instruct-calendar]", @@ -1181,21 +1211,21 @@ "case_id": "calendar" }, "setup": { - "duration": 0.006486707832664251, + "duration": 0.07911352813243866, "outcome": "passed" }, "call": { - "duration": 0.5623017910402268, + "duration": 0.6717434097081423, "outcome": "passed" }, "teardown": { - "duration": 0.00032504182308912277, + "duration": 0.00025916099548339844, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_structured_output[meta-llama/Llama-4-Scout-17B-16E-Instruct-math]", - "lineno": 160, + "lineno": 181, "outcome": "passed", "keywords": [ "test_chat_non_streaming_structured_output[meta-llama/Llama-4-Scout-17B-16E-Instruct-math]", @@ -1214,21 +1244,21 @@ "case_id": "math" }, "setup": { - "duration": 0.009171125013381243, + "duration": 0.07156322989612818, "outcome": "passed" }, "call": { - "duration": 2.6005691669415683, + "duration": 3.698870756663382, "outcome": "passed" }, "teardown": { - "duration": 0.00023995805531740189, + "duration": 0.0002654632553458214, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_structured_output[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-calendar]", - "lineno": 160, + "lineno": 181, "outcome": "passed", "keywords": [ "test_chat_non_streaming_structured_output[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-calendar]", @@ -1247,21 +1277,21 @@ "case_id": "calendar" }, "setup": { - "duration": 0.009700333932414651, + "duration": 0.07457748707383871, "outcome": "passed" }, "call": { - "duration": 0.4192442081402987, + "duration": 0.8891718471422791, "outcome": "passed" }, "teardown": { - "duration": 0.00040241610258817673, + "duration": 0.0002395138144493103, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_structured_output[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-math]", - "lineno": 160, + "lineno": 181, "outcome": "passed", "keywords": [ "test_chat_non_streaming_structured_output[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-math]", @@ -1280,21 +1310,21 @@ "case_id": "math" }, "setup": { - "duration": 0.006938542006537318, + "duration": 0.07155069429427385, "outcome": "passed" }, "call": { - "duration": 2.1736337919719517, + "duration": 3.276700599119067, "outcome": "passed" }, "teardown": { - "duration": 0.00019279099069535732, + "duration": 0.0002568913623690605, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[meta-llama/Llama-3.3-70B-Instruct-Turbo-calendar]", - "lineno": 183, + "lineno": 204, "outcome": "passed", "keywords": [ "test_chat_streaming_structured_output[meta-llama/Llama-3.3-70B-Instruct-Turbo-calendar]", @@ -1313,21 +1343,21 @@ "case_id": "calendar" }, "setup": { - "duration": 0.008775749942287803, + "duration": 0.07365360390394926, "outcome": "passed" }, "call": { - "duration": 0.5588400410488248, + "duration": 0.7638470390811563, "outcome": "passed" }, "teardown": { - "duration": 0.00040091690607368946, + "duration": 0.00027653202414512634, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[meta-llama/Llama-3.3-70B-Instruct-Turbo-math]", - "lineno": 183, + "lineno": 204, "outcome": "passed", "keywords": [ "test_chat_streaming_structured_output[meta-llama/Llama-3.3-70B-Instruct-Turbo-math]", @@ -1346,21 +1376,21 @@ "case_id": "math" }, "setup": { - "duration": 0.01844154205173254, + "duration": 0.07424602191895247, "outcome": "passed" }, "call": { - "duration": 2.205772665794939, + "duration": 3.622116087935865, "outcome": "passed" }, "teardown": { - "duration": 0.00021091708913445473, + "duration": 0.0002861013635993004, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[meta-llama/Llama-4-Scout-17B-16E-Instruct-calendar]", - "lineno": 183, + "lineno": 204, "outcome": "failed", "keywords": [ "test_chat_streaming_structured_output[meta-llama/Llama-4-Scout-17B-16E-Instruct-calendar]", @@ -1379,34 +1409,34 @@ "case_id": "calendar" }, "setup": { - "duration": 0.015595750184729695, + "duration": 0.07192372716963291, "outcome": "passed" }, "call": { - "duration": 0.6904467919375747, + "duration": 0.5049019353464246, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 202, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 223, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 202, + "lineno": 223, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'calendar', 'input': {'messages': [{'content': 'Extract the event information.', 'role': 'system'}, {'cont...articipants'], 'title': 'CalendarEvent', 'type': 'object'}}, 'type': 'json_schema'}}, 'output': 'valid_calendar_event'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_structured_output\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_structured_output(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n response_format=case[\"input\"][\"response_format\"],\n stream=True,\n )\n maybe_json_content = \"\"\n for chunk in response:\n> maybe_json_content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:202: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'calendar', 'input': {'messages': [{'content': 'Extract the event information.', 'role': 'system'}, {'cont...articipants'], 'title': 'CalendarEvent', 'type': 'object'}}, 'type': 'json_schema'}}, 'output': 'valid_calendar_event'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_structured_output\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_structured_output(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n response_format=case[\"input\"][\"response_format\"],\n stream=True,\n )\n maybe_json_content = \"\"\n for chunk in response:\n> maybe_json_content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:223: IndexError" }, "teardown": { - "duration": 0.0002907498273998499, + "duration": 0.00036794692277908325, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[meta-llama/Llama-4-Scout-17B-16E-Instruct-math]", - "lineno": 183, + "lineno": 204, "outcome": "failed", "keywords": [ "test_chat_streaming_structured_output[meta-llama/Llama-4-Scout-17B-16E-Instruct-math]", @@ -1425,34 +1455,34 @@ "case_id": "math" }, "setup": { - "duration": 0.008272957988083363, + "duration": 0.07304532174021006, "outcome": "passed" }, "call": { - "duration": 3.499622541014105, + "duration": 2.961389934644103, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 202, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 223, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 202, + "lineno": 223, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'math', 'input': {'messages': [{'content': 'You are a helpful math tutor. Guide the user through the solut... ['steps', 'final_answer'], 'title': 'MathReasoning', ...}}, 'type': 'json_schema'}}, 'output': 'valid_math_reasoning'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_structured_output\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_structured_output(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n response_format=case[\"input\"][\"response_format\"],\n stream=True,\n )\n maybe_json_content = \"\"\n for chunk in response:\n> maybe_json_content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:202: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'math', 'input': {'messages': [{'content': 'You are a helpful math tutor. Guide the user through the solut... ['steps', 'final_answer'], 'title': 'MathReasoning', ...}}, 'type': 'json_schema'}}, 'output': 'valid_math_reasoning'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_structured_output\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_structured_output(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n response_format=case[\"input\"][\"response_format\"],\n stream=True,\n )\n maybe_json_content = \"\"\n for chunk in response:\n> maybe_json_content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:223: IndexError" }, "teardown": { - "duration": 0.0005947079043835402, + "duration": 0.0003312695771455765, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-calendar]", - "lineno": 183, + "lineno": 204, "outcome": "failed", "keywords": [ "test_chat_streaming_structured_output[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-calendar]", @@ -1471,34 +1501,34 @@ "case_id": "calendar" }, "setup": { - "duration": 0.013340875040739775, + "duration": 0.07350922282785177, "outcome": "passed" }, "call": { - "duration": 0.42789591709151864, + "duration": 0.6764275450259447, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 202, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 223, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 202, + "lineno": 223, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'calendar', 'input': {'messages': [{'content': 'Extract the event information.', 'role': 'system'}, {'cont...articipants'], 'title': 'CalendarEvent', 'type': 'object'}}, 'type': 'json_schema'}}, 'output': 'valid_calendar_event'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_structured_output\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_structured_output(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n response_format=case[\"input\"][\"response_format\"],\n stream=True,\n )\n maybe_json_content = \"\"\n for chunk in response:\n> maybe_json_content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:202: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'calendar', 'input': {'messages': [{'content': 'Extract the event information.', 'role': 'system'}, {'cont...articipants'], 'title': 'CalendarEvent', 'type': 'object'}}, 'type': 'json_schema'}}, 'output': 'valid_calendar_event'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_structured_output\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_structured_output(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n response_format=case[\"input\"][\"response_format\"],\n stream=True,\n )\n maybe_json_content = \"\"\n for chunk in response:\n> maybe_json_content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:223: IndexError" }, "teardown": { - "duration": 0.0003039578441530466, + "duration": 0.0003826189786195755, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_structured_output[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-math]", - "lineno": 183, + "lineno": 204, "outcome": "failed", "keywords": [ "test_chat_streaming_structured_output[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-math]", @@ -1517,34 +1547,34 @@ "case_id": "math" }, "setup": { - "duration": 0.01058275019749999, + "duration": 0.07295230869203806, "outcome": "passed" }, "call": { - "duration": 5.795635707909241, + "duration": 10.689278944395483, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 202, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 223, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 202, + "lineno": 223, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'math', 'input': {'messages': [{'content': 'You are a helpful math tutor. Guide the user through the solut... ['steps', 'final_answer'], 'title': 'MathReasoning', ...}}, 'type': 'json_schema'}}, 'output': 'valid_math_reasoning'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_structured_output\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_structured_output(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n response_format=case[\"input\"][\"response_format\"],\n stream=True,\n )\n maybe_json_content = \"\"\n for chunk in response:\n> maybe_json_content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:202: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'math', 'input': {'messages': [{'content': 'You are a helpful math tutor. Guide the user through the solut... ['steps', 'final_answer'], 'title': 'MathReasoning', ...}}, 'type': 'json_schema'}}, 'output': 'valid_math_reasoning'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_chat_structured_output\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_structured_output(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n response_format=case[\"input\"][\"response_format\"],\n stream=True,\n )\n maybe_json_content = \"\"\n for chunk in response:\n> maybe_json_content += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:223: IndexError" }, "teardown": { - "duration": 0.0005178749561309814, + "duration": 0.0004014279693365097, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", - "lineno": 205, + "lineno": 226, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", @@ -1563,21 +1593,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.014336749911308289, + "duration": 0.09202722646296024, "outcome": "passed" }, "call": { - "duration": 0.451304541900754, + "duration": 0.8140280386433005, "outcome": "passed" }, "teardown": { - "duration": 0.0004718329291790724, + "duration": 0.0003595082089304924, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", - "lineno": 205, + "lineno": 226, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", @@ -1596,21 +1626,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.01625004201196134, + "duration": 0.09484888892620802, "outcome": "passed" }, "call": { - "duration": 0.5111537908669561, + "duration": 0.3706049248576164, "outcome": "passed" }, "teardown": { - "duration": 0.00046774977818131447, + "duration": 0.0003290809690952301, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", - "lineno": 205, + "lineno": 226, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", @@ -1629,21 +1659,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.015832332894206047, + "duration": 0.10521113499999046, "outcome": "passed" }, "call": { - "duration": 0.8238586660008878, + "duration": 0.36842701490968466, "outcome": "passed" }, "teardown": { - "duration": 0.0006185418460518122, + "duration": 0.00031410157680511475, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", - "lineno": 229, + "lineno": 250, "outcome": "passed", "keywords": [ "test_chat_streaming_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", @@ -1662,21 +1692,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.007832166040316224, + "duration": 0.10422383341938257, "outcome": "passed" }, "call": { - "duration": 0.685583250131458, + "duration": 0.6454980997368693, "outcome": "passed" }, "teardown": { - "duration": 0.0004414590075612068, + "duration": 0.0002997415140271187, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", - "lineno": 229, + "lineno": 250, "outcome": "failed", "keywords": [ "test_chat_streaming_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", @@ -1695,39 +1725,39 @@ "case_id": "case0" }, "setup": { - "duration": 0.021764083998277783, + "duration": 0.09408890828490257, "outcome": "passed" }, "call": { - "duration": 0.35617320891469717, + "duration": 0.36066764686256647, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 247, + "lineno": 268, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=True,\n )\n \n> _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:247: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=True,\n )\n \n> _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:268: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.0005425831768661737, + "duration": 0.00035039614886045456, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", - "lineno": 229, + "lineno": 250, "outcome": "failed", "keywords": [ "test_chat_streaming_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", @@ -1746,39 +1776,39 @@ "case_id": "case0" }, "setup": { - "duration": 0.016708041075617075, + "duration": 0.07232134602963924, "outcome": "passed" }, "call": { - "duration": 0.49443637509830296, + "duration": 0.4706049496307969, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 247, + "lineno": 268, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=True,\n )\n \n> _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:247: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"],\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_calling(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n stream=True,\n )\n \n> _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:268: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.0002642078325152397, + "duration": 0.00039384420961141586, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_required[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", - "lineno": 257, + "lineno": 278, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_choice_required[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", @@ -1797,21 +1827,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.009570583933964372, + "duration": 0.07465469185262918, "outcome": "passed" }, "call": { - "duration": 0.5232214999850839, + "duration": 0.4374591317027807, "outcome": "passed" }, "teardown": { - "duration": 0.0006591668352484703, + "duration": 0.0003099888563156128, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_required[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", - "lineno": 257, + "lineno": 278, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_choice_required[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", @@ -1830,21 +1860,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.01567283389158547, + "duration": 0.07351493183523417, "outcome": "passed" }, "call": { - "duration": 0.4465816249139607, + "duration": 0.4368853671476245, "outcome": "passed" }, "teardown": { - "duration": 0.0003922500181943178, + "duration": 0.00026369933038949966, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_required[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", - "lineno": 257, + "lineno": 278, "outcome": "passed", "keywords": [ "test_chat_non_streaming_tool_choice_required[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", @@ -1863,21 +1893,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.021711332956328988, + "duration": 0.07258845027536154, "outcome": "passed" }, "call": { - "duration": 0.5361095829866827, + "duration": 0.940508272498846, "outcome": "passed" }, "teardown": { - "duration": 0.0003099590539932251, + "duration": 0.00032961275428533554, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_required[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", - "lineno": 281, + "lineno": 302, "outcome": "passed", "keywords": [ "test_chat_streaming_tool_choice_required[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", @@ -1896,21 +1926,21 @@ "case_id": "case0" }, "setup": { - "duration": 0.009334125090390444, + "duration": 0.07273276895284653, "outcome": "passed" }, "call": { - "duration": 0.5789772500284016, + "duration": 0.6150273764505982, "outcome": "passed" }, "teardown": { - "duration": 0.00037712487392127514, + "duration": 0.0002876110374927521, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_required[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", - "lineno": 281, + "lineno": 302, "outcome": "failed", "keywords": [ "test_chat_streaming_tool_choice_required[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", @@ -1929,39 +1959,39 @@ "case_id": "case0" }, "setup": { - "duration": 0.019614499993622303, + "duration": 0.07505382597446442, "outcome": "passed" }, "call": { - "duration": 0.444399792002514, + "duration": 0.5026597818359733, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 300, + "lineno": 321, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_required(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"required\", # Force tool call\n stream=True,\n )\n \n> _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:300: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_required(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"required\", # Force tool call\n stream=True,\n )\n \n> _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:321: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.0004192921333014965, + "duration": 0.0003487151116132736, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_required[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", - "lineno": 281, + "lineno": 302, "outcome": "failed", "keywords": [ "test_chat_streaming_tool_choice_required[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", @@ -1980,39 +2010,39 @@ "case_id": "case0" }, "setup": { - "duration": 0.012822834076359868, + "duration": 0.07343385275453329, "outcome": "passed" }, "call": { - "duration": 0.6777042911853641, + "duration": 0.720921658910811, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 300, + "lineno": 321, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_required(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"required\", # Force tool call\n stream=True,\n )\n \n> _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:300: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_required(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"required\", # Force tool call\n stream=True,\n )\n \n> _, tool_calls_buffer = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:321: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.0004483328666538, + "duration": 0.0004109758883714676, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_none[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", - "lineno": 308, + "lineno": 329, "outcome": "failed", "keywords": [ "test_chat_non_streaming_tool_choice_none[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", @@ -2031,34 +2061,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.011924332939088345, + "duration": 0.07189673464745283, "outcome": "passed" }, "call": { - "duration": 0.4756374170538038, + "duration": 0.403152690269053, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 328, - "message": "AssertionError: Expected no tool calls when tool_choice='none'\nassert [ChatCompletionMessageToolCall(id='call_nfd8oz9wmhlwf4mqglcaokrs', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)] is None\n + where [ChatCompletionMessageToolCall(id='call_nfd8oz9wmhlwf4mqglcaokrs', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_nfd8oz9wmhlwf4mqglcaokrs', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)]).tool_calls\n + where ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_nfd8oz9wmhlwf4mqglcaokrs', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)]) = Choice(finish_reason='tool_calls', index=0, logprobs=None, message=ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_nfd8oz9wmhlwf4mqglcaokrs', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)]), seed=13421903014786785000).message" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 349, + "message": "AssertionError: Expected no tool calls when tool_choice='none'\nassert [ChatCompletionMessageToolCall(id='call_xx4eg2o4wladhs7i0gy8d2cb', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)] is None\n + where [ChatCompletionMessageToolCall(id='call_xx4eg2o4wladhs7i0gy8d2cb', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_xx4eg2o4wladhs7i0gy8d2cb', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)]).tool_calls\n + where ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_xx4eg2o4wladhs7i0gy8d2cb', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)]) = Choice(finish_reason='tool_calls', index=0, logprobs=None, message=ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_xx4eg2o4wladhs7i0gy8d2cb', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)]), seed=4867562177231181000).message" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 328, + "lineno": 349, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_choice_none(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"none\",\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert response.choices[0].message.tool_calls is None, \"Expected no tool calls when tool_choice='none'\"\nE AssertionError: Expected no tool calls when tool_choice='none'\nE assert [ChatCompletionMessageToolCall(id='call_nfd8oz9wmhlwf4mqglcaokrs', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)] is None\nE + where [ChatCompletionMessageToolCall(id='call_nfd8oz9wmhlwf4mqglcaokrs', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_nfd8oz9wmhlwf4mqglcaokrs', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)]).tool_calls\nE + where ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_nfd8oz9wmhlwf4mqglcaokrs', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)]) = Choice(finish_reason='tool_calls', index=0, logprobs=None, message=ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_nfd8oz9wmhlwf4mqglcaokrs', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)]), seed=13421903014786785000).message\n\ntests/verifications/openai_api/test_chat_completion.py:328: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_choice_none(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"none\",\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert response.choices[0].message.tool_calls is None, \"Expected no tool calls when tool_choice='none'\"\nE AssertionError: Expected no tool calls when tool_choice='none'\nE assert [ChatCompletionMessageToolCall(id='call_xx4eg2o4wladhs7i0gy8d2cb', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)] is None\nE + where [ChatCompletionMessageToolCall(id='call_xx4eg2o4wladhs7i0gy8d2cb', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_xx4eg2o4wladhs7i0gy8d2cb', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)]).tool_calls\nE + where ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_xx4eg2o4wladhs7i0gy8d2cb', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)]) = Choice(finish_reason='tool_calls', index=0, logprobs=None, message=ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_xx4eg2o4wladhs7i0gy8d2cb', function=Function(arguments='{\"location\":\"San Francisco, USA\"}', name='get_weather'), type='function', index=0)]), seed=4867562177231181000).message\n\ntests/verifications/openai_api/test_chat_completion.py:349: AssertionError" }, "teardown": { - "duration": 0.0004585420247167349, + "duration": 0.00037758704274892807, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_none[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", - "lineno": 308, + "lineno": 329, "outcome": "failed", "keywords": [ "test_chat_non_streaming_tool_choice_none[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", @@ -2077,34 +2107,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.013246082933619618, + "duration": 0.07282305508852005, "outcome": "passed" }, "call": { - "duration": 0.5618870409671217, + "duration": 0.4538485202938318, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 328, - "message": "AssertionError: Expected no tool calls when tool_choice='none'\nassert [ChatCompletionMessageToolCall(id='call_h5u55eksczab7xtg8oot43k5', function=Function(arguments='{\"location\":\"San Francisco, United States\"}', name='get_weather'), type='function', index=0)] is None\n + where [ChatCompletionMessageToolCall(id='call_h5u55eksczab7xtg8oot43k5', function=Function(arguments='{\"location\":\"San Francisco, United States\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_h5u55eksczab7xtg8oot43k5', function=Function(arguments='{\"location\":\"San Francisco, United States\"}', name='get_weather'), type='function', index=0)]).tool_calls\n + where ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_h5u55eksczab7xtg8oot43k5', function=Function(arguments='{\"location\":\"San Francisco, United States\"}', name='get_weather'), type='function', index=0)]) = Choice(finish_reason='tool_calls', index=0, logprobs=None, message=ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_h5u55eksczab7xtg8oot43k5', function=Function(arguments='{\"location\":\"San Francisco, United States\"}', name='get_weather'), type='function', index=0)]), seed=None).message" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 349, + "message": "AssertionError: Expected no tool calls when tool_choice='none'\nassert [ChatCompletionMessageToolCall(id='call_6gehr7flf4gaqu65prmi1pca', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)] is None\n + where [ChatCompletionMessageToolCall(id='call_6gehr7flf4gaqu65prmi1pca', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_6gehr7flf4gaqu65prmi1pca', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]).tool_calls\n + where ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_6gehr7flf4gaqu65prmi1pca', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]) = Choice(finish_reason='tool_calls', index=0, logprobs=None, message=ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_6gehr7flf4gaqu65prmi1pca', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]), seed=None).message" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 328, + "lineno": 349, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_choice_none(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"none\",\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert response.choices[0].message.tool_calls is None, \"Expected no tool calls when tool_choice='none'\"\nE AssertionError: Expected no tool calls when tool_choice='none'\nE assert [ChatCompletionMessageToolCall(id='call_h5u55eksczab7xtg8oot43k5', function=Function(arguments='{\"location\":\"San Francisco, United States\"}', name='get_weather'), type='function', index=0)] is None\nE + where [ChatCompletionMessageToolCall(id='call_h5u55eksczab7xtg8oot43k5', function=Function(arguments='{\"location\":\"San Francisco, United States\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_h5u55eksczab7xtg8oot43k5', function=Function(arguments='{\"location\":\"San Francisco, United States\"}', name='get_weather'), type='function', index=0)]).tool_calls\nE + where ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_h5u55eksczab7xtg8oot43k5', function=Function(arguments='{\"location\":\"San Francisco, United States\"}', name='get_weather'), type='function', index=0)]) = Choice(finish_reason='tool_calls', index=0, logprobs=None, message=ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_h5u55eksczab7xtg8oot43k5', function=Function(arguments='{\"location\":\"San Francisco, United States\"}', name='get_weather'), type='function', index=0)]), seed=None).message\n\ntests/verifications/openai_api/test_chat_completion.py:328: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_choice_none(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"none\",\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert response.choices[0].message.tool_calls is None, \"Expected no tool calls when tool_choice='none'\"\nE AssertionError: Expected no tool calls when tool_choice='none'\nE assert [ChatCompletionMessageToolCall(id='call_6gehr7flf4gaqu65prmi1pca', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)] is None\nE + where [ChatCompletionMessageToolCall(id='call_6gehr7flf4gaqu65prmi1pca', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_6gehr7flf4gaqu65prmi1pca', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]).tool_calls\nE + where ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_6gehr7flf4gaqu65prmi1pca', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]) = Choice(finish_reason='tool_calls', index=0, logprobs=None, message=ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_6gehr7flf4gaqu65prmi1pca', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]), seed=None).message\n\ntests/verifications/openai_api/test_chat_completion.py:349: AssertionError" }, "teardown": { - "duration": 0.00025883293710649014, + "duration": 0.0003799665719270706, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_tool_choice_none[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", - "lineno": 308, + "lineno": 329, "outcome": "failed", "keywords": [ "test_chat_non_streaming_tool_choice_none[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", @@ -2123,34 +2153,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.008055417099967599, + "duration": 0.07050042506307364, "outcome": "passed" }, "call": { - "duration": 0.32869591703638434, + "duration": 0.3740060832351446, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 328, - "message": "AssertionError: Expected no tool calls when tool_choice='none'\nassert [ChatCompletionMessageToolCall(id='call_s1bz9v57b8uizqy2i81869pb', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)] is None\n + where [ChatCompletionMessageToolCall(id='call_s1bz9v57b8uizqy2i81869pb', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_s1bz9v57b8uizqy2i81869pb', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]).tool_calls\n + where ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_s1bz9v57b8uizqy2i81869pb', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]) = Choice(finish_reason='tool_calls', index=0, logprobs=None, message=ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_s1bz9v57b8uizqy2i81869pb', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]), seed=None).message" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 349, + "message": "AssertionError: Expected no tool calls when tool_choice='none'\nassert [ChatCompletionMessageToolCall(id='call_ngwnt1xmgxipkswdhdepisni', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)] is None\n + where [ChatCompletionMessageToolCall(id='call_ngwnt1xmgxipkswdhdepisni', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_ngwnt1xmgxipkswdhdepisni', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]).tool_calls\n + where ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_ngwnt1xmgxipkswdhdepisni', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]) = Choice(finish_reason='tool_calls', index=0, logprobs=None, message=ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_ngwnt1xmgxipkswdhdepisni', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]), seed=None).message" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 328, + "lineno": 349, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_choice_none(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"none\",\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert response.choices[0].message.tool_calls is None, \"Expected no tool calls when tool_choice='none'\"\nE AssertionError: Expected no tool calls when tool_choice='none'\nE assert [ChatCompletionMessageToolCall(id='call_s1bz9v57b8uizqy2i81869pb', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)] is None\nE + where [ChatCompletionMessageToolCall(id='call_s1bz9v57b8uizqy2i81869pb', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_s1bz9v57b8uizqy2i81869pb', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]).tool_calls\nE + where ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_s1bz9v57b8uizqy2i81869pb', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]) = Choice(finish_reason='tool_calls', index=0, logprobs=None, message=ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_s1bz9v57b8uizqy2i81869pb', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]), seed=None).message\n\ntests/verifications/openai_api/test_chat_completion.py:328: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_non_streaming_tool_choice_none(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n response = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"none\",\n stream=False,\n )\n \n assert response.choices[0].message.role == \"assistant\"\n> assert response.choices[0].message.tool_calls is None, \"Expected no tool calls when tool_choice='none'\"\nE AssertionError: Expected no tool calls when tool_choice='none'\nE assert [ChatCompletionMessageToolCall(id='call_ngwnt1xmgxipkswdhdepisni', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)] is None\nE + where [ChatCompletionMessageToolCall(id='call_ngwnt1xmgxipkswdhdepisni', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_ngwnt1xmgxipkswdhdepisni', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]).tool_calls\nE + where ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_ngwnt1xmgxipkswdhdepisni', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]) = Choice(finish_reason='tool_calls', index=0, logprobs=None, message=ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_ngwnt1xmgxipkswdhdepisni', function=Function(arguments='{\"location\":\"San Francisco\"}', name='get_weather'), type='function', index=0)]), seed=None).message\n\ntests/verifications/openai_api/test_chat_completion.py:349: AssertionError" }, "teardown": { - "duration": 0.0003937501460313797, + "duration": 0.0003066370263695717, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_none[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", - "lineno": 331, + "lineno": 352, "outcome": "failed", "keywords": [ "test_chat_streaming_tool_choice_none[meta-llama/Llama-3.3-70B-Instruct-Turbo-case0]", @@ -2169,34 +2199,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.013460749993100762, + "duration": 0.06983672920614481, "outcome": "passed" }, "call": { - "duration": 0.35879983310587704, + "duration": 0.6774894064292312, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 355, - "message": "AssertionError: Expected no tool call chunks when tool_choice='none'\nassert not [ChoiceDeltaToolCall(index=0, id='call_q472clmnii99ps1fxqtv8qvr', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]\n + where [ChoiceDeltaToolCall(index=0, id='call_q472clmnii99ps1fxqtv8qvr', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')] = ChoiceDelta(content=None, function_call=None, refusal=None, role=None, tool_calls=[ChoiceDeltaToolCall(index=0, id='call_q472clmnii99ps1fxqtv8qvr', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]).tool_calls" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 376, + "message": "AssertionError: Expected no tool call chunks when tool_choice='none'\nassert not [ChoiceDeltaToolCall(index=0, id='call_emdpbpvm77rqbzz66arrzv5w', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]\n + where [ChoiceDeltaToolCall(index=0, id='call_emdpbpvm77rqbzz66arrzv5w', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')] = ChoiceDelta(content=None, function_call=None, refusal=None, role=None, tool_calls=[ChoiceDeltaToolCall(index=0, id='call_emdpbpvm77rqbzz66arrzv5w', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 355, + "lineno": 376, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_none(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"none\",\n stream=True,\n )\n \n content = \"\"\n for chunk in stream:\n delta = chunk.choices[0].delta\n if delta.content:\n content += delta.content\n> assert not delta.tool_calls, \"Expected no tool call chunks when tool_choice='none'\"\nE AssertionError: Expected no tool call chunks when tool_choice='none'\nE assert not [ChoiceDeltaToolCall(index=0, id='call_q472clmnii99ps1fxqtv8qvr', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]\nE + where [ChoiceDeltaToolCall(index=0, id='call_q472clmnii99ps1fxqtv8qvr', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')] = ChoiceDelta(content=None, function_call=None, refusal=None, role=None, tool_calls=[ChoiceDeltaToolCall(index=0, id='call_q472clmnii99ps1fxqtv8qvr', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:355: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_none(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"none\",\n stream=True,\n )\n \n content = \"\"\n for chunk in stream:\n delta = chunk.choices[0].delta\n if delta.content:\n content += delta.content\n> assert not delta.tool_calls, \"Expected no tool call chunks when tool_choice='none'\"\nE AssertionError: Expected no tool call chunks when tool_choice='none'\nE assert not [ChoiceDeltaToolCall(index=0, id='call_emdpbpvm77rqbzz66arrzv5w', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]\nE + where [ChoiceDeltaToolCall(index=0, id='call_emdpbpvm77rqbzz66arrzv5w', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')] = ChoiceDelta(content=None, function_call=None, refusal=None, role=None, tool_calls=[ChoiceDeltaToolCall(index=0, id='call_emdpbpvm77rqbzz66arrzv5w', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:376: AssertionError" }, "teardown": { - "duration": 0.0002649170346558094, + "duration": 0.0003580348566174507, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_none[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", - "lineno": 331, + "lineno": 352, "outcome": "failed", "keywords": [ "test_chat_streaming_tool_choice_none[meta-llama/Llama-4-Scout-17B-16E-Instruct-case0]", @@ -2215,34 +2245,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.0068365419283509254, + "duration": 0.07331710867583752, "outcome": "passed" }, "call": { - "duration": 0.5351063329726458, + "duration": 0.38044120091944933, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 355, - "message": "AssertionError: Expected no tool call chunks when tool_choice='none'\nassert not [ChoiceDeltaToolCall(index=0, id='call_l3roc57o2pn9b70f0dcgil53', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]\n + where [ChoiceDeltaToolCall(index=0, id='call_l3roc57o2pn9b70f0dcgil53', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')] = ChoiceDelta(content=None, function_call=None, refusal=None, role=None, tool_calls=[ChoiceDeltaToolCall(index=0, id='call_l3roc57o2pn9b70f0dcgil53', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]).tool_calls" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 376, + "message": "AssertionError: Expected no tool call chunks when tool_choice='none'\nassert not [ChoiceDeltaToolCall(index=0, id='call_g85q6ysacljgjczgq8r30tjv', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]\n + where [ChoiceDeltaToolCall(index=0, id='call_g85q6ysacljgjczgq8r30tjv', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')] = ChoiceDelta(content=None, function_call=None, refusal=None, role=None, tool_calls=[ChoiceDeltaToolCall(index=0, id='call_g85q6ysacljgjczgq8r30tjv', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 355, + "lineno": 376, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_none(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"none\",\n stream=True,\n )\n \n content = \"\"\n for chunk in stream:\n delta = chunk.choices[0].delta\n if delta.content:\n content += delta.content\n> assert not delta.tool_calls, \"Expected no tool call chunks when tool_choice='none'\"\nE AssertionError: Expected no tool call chunks when tool_choice='none'\nE assert not [ChoiceDeltaToolCall(index=0, id='call_l3roc57o2pn9b70f0dcgil53', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]\nE + where [ChoiceDeltaToolCall(index=0, id='call_l3roc57o2pn9b70f0dcgil53', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')] = ChoiceDelta(content=None, function_call=None, refusal=None, role=None, tool_calls=[ChoiceDeltaToolCall(index=0, id='call_l3roc57o2pn9b70f0dcgil53', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:355: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_none(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"none\",\n stream=True,\n )\n \n content = \"\"\n for chunk in stream:\n delta = chunk.choices[0].delta\n if delta.content:\n content += delta.content\n> assert not delta.tool_calls, \"Expected no tool call chunks when tool_choice='none'\"\nE AssertionError: Expected no tool call chunks when tool_choice='none'\nE assert not [ChoiceDeltaToolCall(index=0, id='call_g85q6ysacljgjczgq8r30tjv', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]\nE + where [ChoiceDeltaToolCall(index=0, id='call_g85q6ysacljgjczgq8r30tjv', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')] = ChoiceDelta(content=None, function_call=None, refusal=None, role=None, tool_calls=[ChoiceDeltaToolCall(index=0, id='call_g85q6ysacljgjczgq8r30tjv', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:376: AssertionError" }, "teardown": { - "duration": 0.0004712918307632208, + "duration": 0.0003765234723687172, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_tool_choice_none[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", - "lineno": 331, + "lineno": 352, "outcome": "failed", "keywords": [ "test_chat_streaming_tool_choice_none[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-case0]", @@ -2261,34 +2291,34 @@ "case_id": "case0" }, "setup": { - "duration": 0.014073874801397324, + "duration": 0.07194581907242537, "outcome": "passed" }, "call": { - "duration": 0.6729549579322338, + "duration": 0.37374384608119726, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 355, - "message": "AssertionError: Expected no tool call chunks when tool_choice='none'\nassert not [ChoiceDeltaToolCall(index=0, id='call_ktw831i0p838mzvnnaylf6fp', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]\n + where [ChoiceDeltaToolCall(index=0, id='call_ktw831i0p838mzvnnaylf6fp', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')] = ChoiceDelta(content=None, function_call=None, refusal=None, role=None, tool_calls=[ChoiceDeltaToolCall(index=0, id='call_ktw831i0p838mzvnnaylf6fp', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]).tool_calls" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 376, + "message": "AssertionError: Expected no tool call chunks when tool_choice='none'\nassert not [ChoiceDeltaToolCall(index=0, id='call_zq6x10vfu9pkxme6pm9zxouk', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]\n + where [ChoiceDeltaToolCall(index=0, id='call_zq6x10vfu9pkxme6pm9zxouk', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')] = ChoiceDelta(content=None, function_call=None, refusal=None, role=None, tool_calls=[ChoiceDeltaToolCall(index=0, id='call_zq6x10vfu9pkxme6pm9zxouk', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 355, + "lineno": 376, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_none(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"none\",\n stream=True,\n )\n \n content = \"\"\n for chunk in stream:\n delta = chunk.choices[0].delta\n if delta.content:\n content += delta.content\n> assert not delta.tool_calls, \"Expected no tool call chunks when tool_choice='none'\"\nE AssertionError: Expected no tool call chunks when tool_choice='none'\nE assert not [ChoiceDeltaToolCall(index=0, id='call_ktw831i0p838mzvnnaylf6fp', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]\nE + where [ChoiceDeltaToolCall(index=0, id='call_ktw831i0p838mzvnnaylf6fp', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')] = ChoiceDelta(content=None, function_call=None, refusal=None, role=None, tool_calls=[ChoiceDeltaToolCall(index=0, id='call_ktw831i0p838mzvnnaylf6fp', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:355: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'input': {'messages': [{'content': 'You are a helpful assistant that can use tools to get information.', 'role': 'sys..., 'properties': {...}, 'required': [...], 'type': 'object'}}, 'type': 'function'}]}, 'output': 'get_weather_tool_call'}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases[\"test_tool_calling\"][\"test_params\"][\"case\"], # Reusing existing case for now\n ids=case_id_generator,\n )\n def test_chat_streaming_tool_choice_none(request, openai_client, model, provider, verification_config, case):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n stream = openai_client.chat.completions.create(\n model=model,\n messages=case[\"input\"][\"messages\"],\n tools=case[\"input\"][\"tools\"],\n tool_choice=\"none\",\n stream=True,\n )\n \n content = \"\"\n for chunk in stream:\n delta = chunk.choices[0].delta\n if delta.content:\n content += delta.content\n> assert not delta.tool_calls, \"Expected no tool call chunks when tool_choice='none'\"\nE AssertionError: Expected no tool call chunks when tool_choice='none'\nE assert not [ChoiceDeltaToolCall(index=0, id='call_zq6x10vfu9pkxme6pm9zxouk', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]\nE + where [ChoiceDeltaToolCall(index=0, id='call_zq6x10vfu9pkxme6pm9zxouk', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')] = ChoiceDelta(content=None, function_call=None, refusal=None, role=None, tool_calls=[ChoiceDeltaToolCall(index=0, id='call_zq6x10vfu9pkxme6pm9zxouk', function=ChoiceDeltaToolCallFunction(arguments='', name='get_weather'), type='function')]).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:376: AssertionError" }, "teardown": { - "duration": 0.000251916004344821, + "duration": 0.0003813542425632477, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-text_then_weather_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-text_then_weather_tool]", @@ -2307,34 +2337,34 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.009340125136077404, + "duration": 0.07330320309847593, "outcome": "passed" }, "call": { - "duration": 0.3328715830575675, + "duration": 0.4314677305519581, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, - "message": "AssertionError: Expected 0 tool calls, but got 1\nassert 1 == 0\n + where 1 = len(([ChatCompletionMessageToolCall(id='call_3rr948zuvun0533y4oyyep0z', function=Function(arguments='{\"location\":\"San Francisco, CA\"}', name='get_weather'), type='function', index=0)]))\n + where [ChatCompletionMessageToolCall(id='call_3rr948zuvun0533y4oyyep0z', function=Function(arguments='{\"location\":\"San Francisco, CA\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_3rr948zuvun0533y4oyyep0z', function=Function(arguments='{\"location\":\"San Francisco, CA\"}', name='get_weather'), type='function', index=0)]).tool_calls" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 439, + "message": "AssertionError: Expected 0 tool calls, but got 1\nassert 1 == 0\n + where 1 = len(([ChatCompletionMessageToolCall(id='call_l05cckdk5mooai2iyfucg4s8', function=Function(arguments='{\"location\":\"San Francisco, CA\"}', name='get_weather'), type='function', index=0)]))\n + where [ChatCompletionMessageToolCall(id='call_l05cckdk5mooai2iyfucg4s8', function=Function(arguments='{\"location\":\"San Francisco, CA\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_l05cckdk5mooai2iyfucg4s8', function=Function(arguments='{\"location\":\"San Francisco, CA\"}', name='get_weather'), type='function', index=0)]).tool_calls" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 439, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 0 tool calls, but got 1\nE assert 1 == 0\nE + where 1 = len(([ChatCompletionMessageToolCall(id='call_3rr948zuvun0533y4oyyep0z', function=Function(arguments='{\"location\":\"San Francisco, CA\"}', name='get_weather'), type='function', index=0)]))\nE + where [ChatCompletionMessageToolCall(id='call_3rr948zuvun0533y4oyyep0z', function=Function(arguments='{\"location\":\"San Francisco, CA\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_3rr948zuvun0533y4oyyep0z', function=Function(arguments='{\"location\":\"San Francisco, CA\"}', name='get_weather'), type='function', index=0)]).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 0 tool calls, but got 1\nE assert 1 == 0\nE + where 1 = len(([ChatCompletionMessageToolCall(id='call_l05cckdk5mooai2iyfucg4s8', function=Function(arguments='{\"location\":\"San Francisco, CA\"}', name='get_weather'), type='function', index=0)]))\nE + where [ChatCompletionMessageToolCall(id='call_l05cckdk5mooai2iyfucg4s8', function=Function(arguments='{\"location\":\"San Francisco, CA\"}', name='get_weather'), type='function', index=0)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_l05cckdk5mooai2iyfucg4s8', function=Function(arguments='{\"location\":\"San Francisco, CA\"}', name='get_weather'), type='function', index=0)]).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:439: AssertionError" }, "teardown": { - "duration": 0.00042020808905363083, + "duration": 0.00040314625948667526, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-weather_tool_then_text]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-weather_tool_then_text]", @@ -2353,21 +2383,21 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.01490145898424089, + "duration": 0.07405277714133263, "outcome": "passed" }, "call": { - "duration": 0.8346118750050664, + "duration": 0.8350177155807614, "outcome": "passed" }, "teardown": { - "duration": 0.00034404080361127853, + "duration": 0.00023361947387456894, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-add_product_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-add_product_tool]", @@ -2386,21 +2416,21 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.014493625145405531, + "duration": 0.07361320778727531, "outcome": "passed" }, "call": { - "duration": 0.8973606249783188, + "duration": 1.0619212854653597, "outcome": "passed" }, "teardown": { - "duration": 0.00021345820277929306, + "duration": 0.0002395985648036003, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-get_then_create_event_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-get_then_create_event_tool]", @@ -2419,22 +2449,22 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.009358166949823499, + "duration": 0.07290417980402708, "outcome": "passed" }, "call": { - "duration": 4.5295154170598835, + "duration": 4.241749887354672, "outcome": "passed" }, "teardown": { - "duration": 0.0002461671829223633, + "duration": 0.00027841050177812576, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-compare_monthly_expense_tool]", - "lineno": 359, - "outcome": "failed", + "lineno": 380, + "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-compare_monthly_expense_tool]", "parametrize", @@ -2452,34 +2482,21 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.009552374947816133, + "duration": 0.07301546633243561, "outcome": "passed" }, "call": { - "duration": 0.34176899981684983, - "outcome": "failed", - "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 429, - "message": "AssertionError: Expected arguments '{'month': 1, 'year': 2025}', got '{'month': '1', 'year': '2025'}'\nassert {'month': '1', 'year': '2025'} == {'month': 1, 'year': 2025}\n \n Differing items:\n {'month': '1'} != {'month': 1}\n {'year': '2025'} != {'year': 2025}\n \n Full diff:\n {...\n \n ...Full output truncated (7 lines hidden), use '-vv' to show" - }, - "traceback": [ - { - "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 429, - "message": "AssertionError" - } - ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n tool_call = assistant_message.tool_calls[0]\n assert tool_call.function.name == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call.function.name}'\"\n )\n # Parse the JSON string arguments before comparing\n actual_arguments = json.loads(tool_call.function.arguments)\n> assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\nE AssertionError: Expected arguments '{'month': 1, 'year': 2025}', got '{'month': '1', 'year': '2025'}'\nE assert {'month': '1', 'year': '2025'} == {'month': 1, 'year': 2025}\nE \nE Differing items:\nE {'month': '1'} != {'month': 1}\nE {'year': '2025'} != {'year': 2025}\nE \nE Full diff:\nE {...\nE \nE ...Full output truncated (7 lines hidden), use '-vv' to show\n\ntests/verifications/openai_api/test_chat_completion.py:429: AssertionError" + "duration": 2.0520667918026447, + "outcome": "passed" }, "teardown": { - "duration": 0.000527665950357914, + "duration": 0.0002469858154654503, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-text_then_weather_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-text_then_weather_tool]", @@ -2498,34 +2515,34 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.012501416960731149, + "duration": 0.07405530381947756, "outcome": "passed" }, "call": { - "duration": 1.585734374821186, + "duration": 0.48041669093072414, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, - "message": "AssertionError: Expected 0 tool calls, but got 2\nassert 2 == 0\n + where 2 = len(([ChatCompletionMessageToolCall(id='call_4fm3kj059swz9no94n6fg54d', function=Function(arguments='{\"location\":\"Sun, NA\"}', name='get_weather'), type='function', index=0), ChatCompletionMessageToolCall(id='call_lzc5lo7y2p7wjyquvmvvzt64', function=Function(arguments='{\"name\":\"Sun\"}', name='get_latin_name'), type='function', index=1)]))\n + where [ChatCompletionMessageToolCall(id='call_4fm3kj059swz9no94n6fg54d', function=Function(arguments='{\"location\":\"Sun, NA\"}', name='get_weather'), type='function', index=0), ChatCompletionMessageToolCall(id='call_lzc5lo7y2p7wjyquvmvvzt64', function=Function(arguments='{\"name\":\"Sun\"}', name='get_latin_name'), type='function', index=1)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_4fm3kj059swz9no94n6fg54d', function=Function(arguments='{\"location\":\"Sun, NA\"}', name='get_weather'), type='function', index=0), ChatCompletionMessageToolCall(id='call_lzc5lo7y2p7wjyquvmvvzt64', function=Function(arguments='{\"name\":\"Sun\"}', name='get_latin_name'), type='function', index=1)]).tool_calls" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 467, + "message": "AssertionError: Expected one of ['sol'] in content, but got: 'I am not able to complete this task as it falls outside of the scope of the functions I have been given.'\nassert False\n + where False = any(. at 0x7f4274057610>)" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 418, + "lineno": 467, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n> assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\nE AssertionError: Expected 0 tool calls, but got 2\nE assert 2 == 0\nE + where 2 = len(([ChatCompletionMessageToolCall(id='call_4fm3kj059swz9no94n6fg54d', function=Function(arguments='{\"location\":\"Sun, NA\"}', name='get_weather'), type='function', index=0), ChatCompletionMessageToolCall(id='call_lzc5lo7y2p7wjyquvmvvzt64', function=Function(arguments='{\"name\":\"Sun\"}', name='get_latin_name'), type='function', index=1)]))\nE + where [ChatCompletionMessageToolCall(id='call_4fm3kj059swz9no94n6fg54d', function=Function(arguments='{\"location\":\"Sun, NA\"}', name='get_weather'), type='function', index=0), ChatCompletionMessageToolCall(id='call_lzc5lo7y2p7wjyquvmvvzt64', function=Function(arguments='{\"name\":\"Sun\"}', name='get_latin_name'), type='function', index=1)] = ChatCompletionMessage(content=None, refusal=None, role='assistant', annotations=None, audio=None, function_call=None, tool_calls=[ChatCompletionMessageToolCall(id='call_4fm3kj059swz9no94n6fg54d', function=Function(arguments='{\"location\":\"Sun, NA\"}', name='get_weather'), type='function', index=0), ChatCompletionMessageToolCall(id='call_lzc5lo7y2p7wjyquvmvvzt64', function=Function(arguments='{\"name\":\"Sun\"}', name='get_latin_name'), type='function', index=1)]).tool_calls\n\ntests/verifications/openai_api/test_chat_completion.py:418: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n tool_call = assistant_message.tool_calls[0]\n assert tool_call.function.name == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call.function.name}'\"\n )\n # Parse the JSON string arguments before comparing\n actual_arguments = json.loads(tool_call.function.arguments)\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call.id,\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n assert assistant_message.content is not None, \"Expected content, but none received.\"\n expected_answers = expected[\"answer\"] # This is now a list\n content_lower = assistant_message.content.lower()\n> assert any(ans.lower() in content_lower for ans in expected_answers), (\n f\"Expected one of {expected_answers} in content, but got: '{assistant_message.content}'\"\n )\nE AssertionError: Expected one of ['sol'] in content, but got: 'I am not able to complete this task as it falls outside of the scope of the functions I have been given.'\nE assert False\nE + where False = any(. at 0x7f4274057610>)\n\ntests/verifications/openai_api/test_chat_completion.py:467: AssertionError" }, "teardown": { - "duration": 0.0003941669128835201, + "duration": 0.00035319291055202484, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-weather_tool_then_text]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-weather_tool_then_text]", @@ -2544,21 +2561,21 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.014057958032935858, + "duration": 0.0724497502669692, "outcome": "passed" }, "call": { - "duration": 0.7121559998486191, + "duration": 0.832760401070118, "outcome": "passed" }, "teardown": { - "duration": 0.00048266700468957424, + "duration": 0.00026283878833055496, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-add_product_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-add_product_tool]", @@ -2577,21 +2594,21 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.02072141715325415, + "duration": 0.07180811651051044, "outcome": "passed" }, "call": { - "duration": 1.0424797078594565, + "duration": 1.4359142612665892, "outcome": "passed" }, "teardown": { - "duration": 0.0004878339823335409, + "duration": 0.0002761436626315117, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-get_then_create_event_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-get_then_create_event_tool]", @@ -2610,21 +2627,21 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.018570583080872893, + "duration": 0.07503274269402027, "outcome": "passed" }, "call": { - "duration": 3.4340267919469625, + "duration": 1.909641013480723, "outcome": "passed" }, "teardown": { - "duration": 0.00023016706109046936, + "duration": 0.0002613905817270279, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-compare_monthly_expense_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-compare_monthly_expense_tool]", @@ -2643,21 +2660,21 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.009570334106683731, + "duration": 0.07153380755335093, "outcome": "passed" }, "call": { - "duration": 2.2068665840197355, + "duration": 2.695867782458663, "outcome": "passed" }, "teardown": { - "duration": 0.00051837507635355, + "duration": 0.00032124295830726624, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-text_then_weather_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-text_then_weather_tool]", @@ -2676,34 +2693,34 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.01873366697691381, + "duration": 0.07275318540632725, "outcome": "passed" }, "call": { - "duration": 0.5193468749057502, + "duration": 0.34551760647445917, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 446, - "message": "AssertionError: Expected one of ['sol'] in content, but got: '{\"name\": null, \"parameters\": null}'\nassert False\n + where False = any(. at 0x10e4c0f90>)" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 467, + "message": "AssertionError: Expected one of ['sol'] in content, but got: '{\"name\": null, \"parameters\": null}'\nassert False\n + where False = any(. at 0x7f42742dd4d0>)" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 446, + "lineno": 467, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n tool_call = assistant_message.tool_calls[0]\n assert tool_call.function.name == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call.function.name}'\"\n )\n # Parse the JSON string arguments before comparing\n actual_arguments = json.loads(tool_call.function.arguments)\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call.id,\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n assert assistant_message.content is not None, \"Expected content, but none received.\"\n expected_answers = expected[\"answer\"] # This is now a list\n content_lower = assistant_message.content.lower()\n> assert any(ans.lower() in content_lower for ans in expected_answers), (\n f\"Expected one of {expected_answers} in content, but got: '{assistant_message.content}'\"\n )\nE AssertionError: Expected one of ['sol'] in content, but got: '{\"name\": null, \"parameters\": null}'\nE assert False\nE + where False = any(. at 0x10e4c0f90>)\n\ntests/verifications/openai_api/test_chat_completion.py:446: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n tool_call = assistant_message.tool_calls[0]\n assert tool_call.function.name == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call.function.name}'\"\n )\n # Parse the JSON string arguments before comparing\n actual_arguments = json.loads(tool_call.function.arguments)\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call.id,\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n assert assistant_message.content is not None, \"Expected content, but none received.\"\n expected_answers = expected[\"answer\"] # This is now a list\n content_lower = assistant_message.content.lower()\n> assert any(ans.lower() in content_lower for ans in expected_answers), (\n f\"Expected one of {expected_answers} in content, but got: '{assistant_message.content}'\"\n )\nE AssertionError: Expected one of ['sol'] in content, but got: '{\"name\": null, \"parameters\": null}'\nE assert False\nE + where False = any(. at 0x7f42742dd4d0>)\n\ntests/verifications/openai_api/test_chat_completion.py:467: AssertionError" }, "teardown": { - "duration": 0.0004933748859912157, + "duration": 0.0003842068836092949, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-weather_tool_then_text]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-weather_tool_then_text]", @@ -2722,21 +2739,21 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.014272749889642, + "duration": 0.07281951513141394, "outcome": "passed" }, "call": { - "duration": 1.911199334077537, + "duration": 1.008104412816465, "outcome": "passed" }, "teardown": { - "duration": 0.00043049990199506283, + "duration": 0.00026233773678541183, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-add_product_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-add_product_tool]", @@ -2755,21 +2772,21 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.031040542060509324, + "duration": 0.07155719958245754, "outcome": "passed" }, "call": { - "duration": 3.0026419160421938, + "duration": 2.3485742239281535, "outcome": "passed" }, "teardown": { - "duration": 0.00045104208402335644, + "duration": 0.0002629430964589119, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-get_then_create_event_tool]", - "lineno": 359, + "lineno": 380, "outcome": "failed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-get_then_create_event_tool]", @@ -2788,34 +2805,34 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.016529500018805265, + "duration": 0.07251190021634102, "outcome": "passed" }, "call": { - "duration": 2.7563346249517053, + "duration": 2.9882029946893454, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 429, - "message": "AssertionError: Expected arguments '{'name': 'Team Building', 'date': '2025-03-03', 'time': '10:00', 'location': 'Main Conference Room', 'participants': ['Alice', 'Bob', 'Charlie']}', got '{'participants': '[\"Alice\", \"Bob\", \"Charlie\"]', 'location': 'Main Conference Room', 'name': 'Team Building', 'date': '2025-03-03', 'time': '10:00'}'\nassert {'date': '202...arlie\"]', ...} == {'date': '202...harlie'], ...}\n \n Omitting 4 identical items, use -vv to show\n Differing items:\n {'participants': '[\"Alice\", \"Bob\", \"Charlie\"]'} != {'participants': ['Alice', 'Bob', 'Charlie']}\n \n Full diff:\n {...\n \n ...Full output truncated (11 lines hidden), use '-vv' to show" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 450, + "message": "AssertionError: Expected arguments '{'name': 'Team Building', 'date': '2025-03-03', 'time': '10:00', 'location': 'Main Conference Room', 'participants': ['Alice', 'Bob', 'Charlie']}', got '{'date': '\"2025-03-03\"', 'location': '\"Main Conference Room\"', 'name': '\"Team Building\"', 'participants': ['Alice', 'Bob', 'Charlie'], 'time': '\"10:00\"'}'\nassert {'date': '\"20...harlie'], ...} == {'date': '202...harlie'], ...}\n \n Omitting 1 identical items, use -vv to show\n Differing items:\n {'date': '\"2025-03-03\"'} != {'date': '2025-03-03'}\n {'name': '\"Team Building\"'} != {'name': 'Team Building'}\n {'time': '\"10:00\"'} != {'time': '10:00'}\n {'location': '\"Main Conference Room\"'} != {'location': 'Main Conference Room'}...\n \n ...Full output truncated (21 lines hidden), use '-vv' to show" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 429, + "lineno": 450, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n tool_call = assistant_message.tool_calls[0]\n assert tool_call.function.name == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call.function.name}'\"\n )\n # Parse the JSON string arguments before comparing\n actual_arguments = json.loads(tool_call.function.arguments)\n> assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\nE AssertionError: Expected arguments '{'name': 'Team Building', 'date': '2025-03-03', 'time': '10:00', 'location': 'Main Conference Room', 'participants': ['Alice', 'Bob', 'Charlie']}', got '{'participants': '[\"Alice\", \"Bob\", \"Charlie\"]', 'location': 'Main Conference Room', 'name': 'Team Building', 'date': '2025-03-03', 'time': '10:00'}'\nE assert {'date': '202...arlie\"]', ...} == {'date': '202...harlie'], ...}\nE \nE Omitting 4 identical items, use -vv to show\nE Differing items:\nE {'participants': '[\"Alice\", \"Bob\", \"Charlie\"]'} != {'participants': ['Alice', 'Bob', 'Charlie']}\nE \nE Full diff:\nE {...\nE \nE ...Full output truncated (11 lines hidden), use '-vv' to show\n\ntests/verifications/openai_api/test_chat_completion.py:429: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_non_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\"\n Test cases for multi-turn tool calling.\n Tool calls are asserted.\n Tool responses are provided in the test case.\n Final response is asserted.\n \"\"\"\n \n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n # Create a copy of the messages list to avoid modifying the original\n messages = []\n tools = case[\"input\"][\"tools\"]\n # Use deepcopy to prevent modification across runs/parametrization\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n # keep going until either\n # 1. we have messages to test in multi-turn\n # 2. no messages but last message is tool response\n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n # do not take new messages if last message is tool response\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n # Ensure new_messages is a list of message objects\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n # If it's a single message object, add it directly\n messages.append(new_messages)\n \n # --- API Call ---\n response = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=False,\n )\n \n # --- Process Response ---\n assistant_message = response.choices[0].message\n messages.append(assistant_message.model_dump(exclude_unset=True))\n \n assert assistant_message.role == \"assistant\"\n \n # Get the expected result data\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n # --- Assertions based on expected result ---\n assert len(assistant_message.tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(assistant_message.tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n tool_call = assistant_message.tool_calls[0]\n assert tool_call.function.name == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call.function.name}'\"\n )\n # Parse the JSON string arguments before comparing\n actual_arguments = json.loads(tool_call.function.arguments)\n> assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\nE AssertionError: Expected arguments '{'name': 'Team Building', 'date': '2025-03-03', 'time': '10:00', 'location': 'Main Conference Room', 'participants': ['Alice', 'Bob', 'Charlie']}', got '{'date': '\"2025-03-03\"', 'location': '\"Main Conference Room\"', 'name': '\"Team Building\"', 'participants': ['Alice', 'Bob', 'Charlie'], 'time': '\"10:00\"'}'\nE assert {'date': '\"20...harlie'], ...} == {'date': '202...harlie'], ...}\nE \nE Omitting 1 identical items, use -vv to show\nE Differing items:\nE {'date': '\"2025-03-03\"'} != {'date': '2025-03-03'}\nE {'name': '\"Team Building\"'} != {'name': 'Team Building'}\nE {'time': '\"10:00\"'} != {'time': '10:00'}\nE {'location': '\"Main Conference Room\"'} != {'location': 'Main Conference Room'}...\nE \nE ...Full output truncated (21 lines hidden), use '-vv' to show\n\ntests/verifications/openai_api/test_chat_completion.py:450: AssertionError" }, "teardown": { - "duration": 0.0005542081780731678, + "duration": 0.0003328891471028328, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-compare_monthly_expense_tool]", - "lineno": 359, + "lineno": 380, "outcome": "passed", "keywords": [ "test_chat_non_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-compare_monthly_expense_tool]", @@ -2834,21 +2851,21 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.013607957866042852, + "duration": 0.07363704219460487, "outcome": "passed" }, "call": { - "duration": 3.0105869588442147, + "duration": 4.031332626007497, "outcome": "passed" }, "teardown": { - "duration": 0.0004793750122189522, + "duration": 0.0002817586064338684, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-text_then_weather_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-text_then_weather_tool]", @@ -2867,34 +2884,34 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.01806124998256564, + "duration": 0.07673048228025436, "outcome": "passed" }, "call": { - "duration": 0.3295827910769731, + "duration": 0.3994998000562191, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, - "message": "AssertionError: Expected 0 tool calls, but got 1\nassert 1 == 0\n + where 1 = len(([{'function': {'arguments': '{\"location\":\"San Francisco, CA\"}', 'name': 'get_weather'}, 'id': 'call_l066e8oey2i8exeodczlv1mh', 'type': 'function'}]))" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 521, + "message": "AssertionError: Expected 0 tool calls, but got 1\nassert 1 == 0\n + where 1 = len(([{'function': {'arguments': '{\"location\":\"San Francisco, CA\"}', 'name': 'get_weather'}, 'id': 'call_dqcu28a6iyxlobv36c23k0qp', 'type': 'function'}]))" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 500, + "lineno": 521, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 0 tool calls, but got 1\nE assert 1 == 0\nE + where 1 = len(([{'function': {'arguments': '{\"location\":\"San Francisco, CA\"}', 'name': 'get_weather'}, 'id': 'call_l066e8oey2i8exeodczlv1mh', 'type': 'function'}]))\n\ntests/verifications/openai_api/test_chat_completion.py:500: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n> assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\nE AssertionError: Expected 0 tool calls, but got 1\nE assert 1 == 0\nE + where 1 = len(([{'function': {'arguments': '{\"location\":\"San Francisco, CA\"}', 'name': 'get_weather'}, 'id': 'call_dqcu28a6iyxlobv36c23k0qp', 'type': 'function'}]))\n\ntests/verifications/openai_api/test_chat_completion.py:521: AssertionError" }, "teardown": { - "duration": 0.0002942080609500408, + "duration": 0.0003687366843223572, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-weather_tool_then_text]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-weather_tool_then_text]", @@ -2913,34 +2930,34 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.007637625094503164, + "duration": 0.07477510999888182, "outcome": "passed" }, "call": { - "duration": 2.021851292112842, + "duration": 0.918418399989605, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 526, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 547, "message": "AssertionError: Expected content, but none received.\nassert ('' is not None and '' != '')" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 526, + "lineno": 547, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n # Use the first accumulated tool call for assertion\n tool_call = accumulated_tool_calls[0]\n assert tool_call[\"function\"][\"name\"] == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call['function']['name']}'\"\n )\n # Parse the accumulated arguments string for comparison\n actual_arguments = json.loads(tool_call[\"function\"][\"arguments\"])\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call[\"id\"],\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n> assert accumulated_content is not None and accumulated_content != \"\", \"Expected content, but none received.\"\nE AssertionError: Expected content, but none received.\nE assert ('' is not None and '' != '')\n\ntests/verifications/openai_api/test_chat_completion.py:526: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n # Use the first accumulated tool call for assertion\n tool_call = accumulated_tool_calls[0]\n assert tool_call[\"function\"][\"name\"] == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call['function']['name']}'\"\n )\n # Parse the accumulated arguments string for comparison\n actual_arguments = json.loads(tool_call[\"function\"][\"arguments\"])\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call[\"id\"],\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n> assert accumulated_content is not None and accumulated_content != \"\", \"Expected content, but none received.\"\nE AssertionError: Expected content, but none received.\nE assert ('' is not None and '' != '')\n\ntests/verifications/openai_api/test_chat_completion.py:547: AssertionError" }, "teardown": { - "duration": 0.00036791712045669556, + "duration": 0.00036141276359558105, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-add_product_tool]", - "lineno": 450, + "lineno": 471, "outcome": "passed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-add_product_tool]", @@ -2959,21 +2976,21 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.013031583046540618, + "duration": 0.07217607088387012, "outcome": "passed" }, "call": { - "duration": 0.8596610419917852, + "duration": 1.2676455974578857, "outcome": "passed" }, "teardown": { - "duration": 0.00042829103767871857, + "duration": 0.00024215038865804672, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-get_then_create_event_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-get_then_create_event_tool]", @@ -2992,34 +3009,34 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.015244666952639818, + "duration": 0.0713065592572093, "outcome": "passed" }, "call": { - "duration": 1.0227877080906183, + "duration": 1.0453352769836783, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 526, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 547, "message": "AssertionError: Expected content, but none received.\nassert ('' is not None and '' != '')" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 526, + "lineno": 547, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n # Use the first accumulated tool call for assertion\n tool_call = accumulated_tool_calls[0]\n assert tool_call[\"function\"][\"name\"] == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call['function']['name']}'\"\n )\n # Parse the accumulated arguments string for comparison\n actual_arguments = json.loads(tool_call[\"function\"][\"arguments\"])\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call[\"id\"],\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n> assert accumulated_content is not None and accumulated_content != \"\", \"Expected content, but none received.\"\nE AssertionError: Expected content, but none received.\nE assert ('' is not None and '' != '')\n\ntests/verifications/openai_api/test_chat_completion.py:526: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n # Use the first accumulated tool call for assertion\n tool_call = accumulated_tool_calls[0]\n assert tool_call[\"function\"][\"name\"] == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call['function']['name']}'\"\n )\n # Parse the accumulated arguments string for comparison\n actual_arguments = json.loads(tool_call[\"function\"][\"arguments\"])\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call[\"id\"],\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n> assert accumulated_content is not None and accumulated_content != \"\", \"Expected content, but none received.\"\nE AssertionError: Expected content, but none received.\nE assert ('' is not None and '' != '')\n\ntests/verifications/openai_api/test_chat_completion.py:547: AssertionError" }, "teardown": { - "duration": 0.00024933391250669956, + "duration": 0.00030668359249830246, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-compare_monthly_expense_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-3.3-70B-Instruct-Turbo-compare_monthly_expense_tool]", @@ -3038,34 +3055,34 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.008626125054433942, + "duration": 0.07108221855014563, "outcome": "passed" }, "call": { - "duration": 0.3212552920449525, + "duration": 1.034472893923521, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 512, - "message": "AssertionError: Expected arguments '{'month': 1, 'year': 2025}', got '{'month': '1', 'year': '2025'}'\nassert {'month': '1', 'year': '2025'} == {'month': 1, 'year': 2025}\n \n Differing items:\n {'month': '1'} != {'month': 1}\n {'year': '2025'} != {'year': 2025}\n \n Full diff:\n {...\n \n ...Full output truncated (7 lines hidden), use '-vv' to show" + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 547, + "message": "AssertionError: Expected content, but none received.\nassert ('' is not None and '' != '')" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 512, + "lineno": 547, "message": "AssertionError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n # Use the first accumulated tool call for assertion\n tool_call = accumulated_tool_calls[0]\n assert tool_call[\"function\"][\"name\"] == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call['function']['name']}'\"\n )\n # Parse the accumulated arguments string for comparison\n actual_arguments = json.loads(tool_call[\"function\"][\"arguments\"])\n> assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\nE AssertionError: Expected arguments '{'month': 1, 'year': 2025}', got '{'month': '1', 'year': '2025'}'\nE assert {'month': '1', 'year': '2025'} == {'month': 1, 'year': 2025}\nE \nE Differing items:\nE {'month': '1'} != {'month': 1}\nE {'year': '2025'} != {'year': 2025}\nE \nE Full diff:\nE {...\nE \nE ...Full output truncated (7 lines hidden), use '-vv' to show\n\ntests/verifications/openai_api/test_chat_completion.py:512: AssertionError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-3.3-70B-Instruct-Turbo', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n \n # --- Construct Assistant Message for History ---\n assistant_message_dict = {\"role\": \"assistant\"}\n if accumulated_content:\n assistant_message_dict[\"content\"] = accumulated_content\n if accumulated_tool_calls:\n assistant_message_dict[\"tool_calls\"] = accumulated_tool_calls\n \n messages.append(assistant_message_dict)\n \n # --- Assertions ---\n expected = expected_results.pop(0)\n num_tool_calls = expected[\"num_tool_calls\"]\n \n assert len(accumulated_tool_calls or []) == num_tool_calls, (\n f\"Expected {num_tool_calls} tool calls, but got {len(accumulated_tool_calls or [])}\"\n )\n \n if num_tool_calls > 0:\n # Use the first accumulated tool call for assertion\n tool_call = accumulated_tool_calls[0]\n assert tool_call[\"function\"][\"name\"] == expected[\"tool_name\"], (\n f\"Expected tool '{expected['tool_name']}', got '{tool_call['function']['name']}'\"\n )\n # Parse the accumulated arguments string for comparison\n actual_arguments = json.loads(tool_call[\"function\"][\"arguments\"])\n assert actual_arguments == expected[\"tool_arguments\"], (\n f\"Expected arguments '{expected['tool_arguments']}', got '{actual_arguments}'\"\n )\n \n # Prepare and append the tool response for the next turn\n tool_response = tool_responses.pop(0)\n messages.append(\n {\n \"role\": \"tool\",\n \"tool_call_id\": tool_call[\"id\"],\n \"content\": tool_response[\"response\"],\n }\n )\n else:\n> assert accumulated_content is not None and accumulated_content != \"\", \"Expected content, but none received.\"\nE AssertionError: Expected content, but none received.\nE assert ('' is not None and '' != '')\n\ntests/verifications/openai_api/test_chat_completion.py:547: AssertionError" }, "teardown": { - "duration": 0.00020562508143484592, + "duration": 0.00035398639738559723, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-text_then_weather_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-text_then_weather_tool]", @@ -3084,39 +3101,39 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.007338125025853515, + "duration": 0.07186305243521929, "outcome": "passed" }, "call": { - "duration": 0.4175920831039548, + "duration": 1.8766405330970883, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 485, + "lineno": 506, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:485: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:506: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.00023462506942451, + "duration": 0.0003088880330324173, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-weather_tool_then_text]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-weather_tool_then_text]", @@ -3135,39 +3152,39 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.007788832997903228, + "duration": 0.0846314700320363, "outcome": "passed" }, "call": { - "duration": 0.45610866602510214, + "duration": 0.40889575984328985, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 485, + "lineno": 506, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:485: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:506: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.00021450011990964413, + "duration": 0.0003652172163128853, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-add_product_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-add_product_tool]", @@ -3186,39 +3203,39 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.006751166889443994, + "duration": 0.07273881137371063, "outcome": "passed" }, "call": { - "duration": 0.7053082089405507, + "duration": 2.251293654553592, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 485, + "lineno": 506, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:485: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:506: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.00021783309057354927, + "duration": 0.00030664633959531784, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-get_then_create_event_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-get_then_create_event_tool]", @@ -3237,39 +3254,39 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.008729791967198253, + "duration": 0.071181770414114, "outcome": "passed" }, "call": { - "duration": 0.5665898330044001, + "duration": 0.5708655547350645, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 485, + "lineno": 506, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:485: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:506: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.0002288338728249073, + "duration": 0.00036500580608844757, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-compare_monthly_expense_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Scout-17B-16E-Instruct-compare_monthly_expense_tool]", @@ -3288,39 +3305,39 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.009526000125333667, + "duration": 0.06934114638715982, "outcome": "passed" }, "call": { - "duration": 1.1714977910742164, + "duration": 0.5055103581398726, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 485, + "lineno": 506, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:485: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:506: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.00032483390532433987, + "duration": 0.00035354867577552795, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-text_then_weather_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-text_then_weather_tool]", @@ -3339,39 +3356,39 @@ "case_id": "text_then_weather_tool" }, "setup": { - "duration": 0.010107750073075294, + "duration": 0.07129869516938925, "outcome": "passed" }, "call": { - "duration": 0.26202141703106463, + "duration": 1.5799349313601851, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 485, + "lineno": 506, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:485: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'text_then_weather_tool', 'expected': [{'answer': ['sol'], 'num_tool_calls': 0}, {'num_tool_calls': 1, 'to...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:506: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.00022558285854756832, + "duration": 0.00033699069172143936, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-weather_tool_then_text]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-weather_tool_then_text]", @@ -3390,39 +3407,39 @@ "case_id": "weather_tool_then_text" }, "setup": { - "duration": 0.008256082888692617, + "duration": 0.07074506860226393, "outcome": "passed" }, "call": { - "duration": 0.3466235001105815, + "duration": 0.5245106862857938, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 485, + "lineno": 506, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:485: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'weather_tool_then_text', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'location': 'San Francisco...], 'type': 'object'}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': '70 degrees and foggy'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:506: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.000535458093509078, + "duration": 0.00042015407234430313, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-add_product_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-add_product_tool]", @@ -3441,39 +3458,39 @@ "case_id": "add_product_tool" }, "setup": { - "duration": 0.0180504999589175, + "duration": 0.07020766660571098, "outcome": "passed" }, "call": { - "duration": 1.8803812500555068, + "duration": 0.6389470677822828, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 485, + "lineno": 506, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:485: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'add_product_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'inStock': True, 'name': 'Widget...}}, 'type': 'function'}]}, 'tool_responses': [{'response': \"{'response': 'Successfully added product with id: 123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:506: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.00025062495842576027, + "duration": 0.00035757478326559067, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-get_then_create_event_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-get_then_create_event_tool]", @@ -3492,39 +3509,39 @@ "case_id": "get_then_create_event_tool" }, "setup": { - "duration": 0.00993091706186533, + "duration": 0.07121358439326286, "outcome": "passed" }, "call": { - "duration": 0.5258524999953806, + "duration": 0.5222592242062092, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 485, + "lineno": 506, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:485: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'get_then_create_event_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'date': '2025-03-03', ...ents found for 2025-03-03 at 10:00'}\"}, {'response': \"{'response': 'Successfully created new event with id: e_123'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:506: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.0002823749091476202, + "duration": 0.0003436664119362831, "outcome": "passed" } }, { "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-compare_monthly_expense_tool]", - "lineno": 450, + "lineno": 471, "outcome": "failed", "keywords": [ "test_chat_streaming_multi_turn_tool_calling[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-compare_monthly_expense_tool]", @@ -3543,36 +3560,262 @@ "case_id": "compare_monthly_expense_tool" }, "setup": { - "duration": 0.047535917023196816, + "duration": 0.07017400953918695, "outcome": "passed" }, "call": { - "duration": 0.4426498331595212, + "duration": 1.7245550760999322, "outcome": "failed", "crash": { - "path": "/Users/erichuang/projects/llama-stack/tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 688, "message": "IndexError: list index out of range" }, "traceback": [ { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 485, + "lineno": 506, "message": "" }, { "path": "tests/verifications/openai_api/test_chat_completion.py", - "lineno": 587, + "lineno": 688, "message": "IndexError" } ], - "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:485: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:587: IndexError" + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\ncase = {'case_id': 'compare_monthly_expense_tool', 'expected': [{'num_tool_calls': 1, 'tool_arguments': {'month': 1, 'year': ... 'Total expenses for January 2025: $1000'}\"}, {'response': \"{'response': 'Total expenses for February 2024: $2000'}\"}]}\n\n @pytest.mark.parametrize(\n \"case\",\n chat_completion_test_cases.get(\"test_chat_multi_turn_tool_calling\", {}).get(\"test_params\", {}).get(\"case\", []),\n ids=case_id_generator,\n )\n def test_chat_streaming_multi_turn_tool_calling(request, openai_client, model, provider, verification_config, case):\n \"\"\" \"\"\"\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages = []\n tools = case[\"input\"][\"tools\"]\n expected_results = copy.deepcopy(case[\"expected\"])\n tool_responses = copy.deepcopy(case.get(\"tool_responses\", []))\n input_messages_turns = copy.deepcopy(case[\"input\"][\"messages\"])\n \n while len(input_messages_turns) > 0 or (len(messages) > 0 and messages[-1][\"role\"] == \"tool\"):\n if len(messages) == 0 or messages[-1][\"role\"] != \"tool\":\n new_messages = input_messages_turns.pop(0)\n if isinstance(new_messages, list):\n messages.extend(new_messages)\n else:\n messages.append(new_messages)\n \n # --- API Call (Streaming) ---\n stream = openai_client.chat.completions.create(\n model=model,\n messages=messages,\n tools=tools,\n stream=True,\n )\n \n # --- Process Stream ---\n> accumulated_content, accumulated_tool_calls = _accumulate_streaming_tool_calls(stream)\n\ntests/verifications/openai_api/test_chat_completion.py:506: \n_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ \n\nstream = \n\n def _accumulate_streaming_tool_calls(stream):\n \"\"\"Accumulates tool calls and content from a streaming ChatCompletion response.\"\"\"\n tool_calls_buffer = {}\n current_id = None\n full_content = \"\" # Initialize content accumulator\n # Process streaming chunks\n for chunk in stream:\n> choice = chunk.choices[0]\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:688: IndexError" }, "teardown": { - "duration": 0.0010368749499320984, + "duration": 0.0003162780776619911, + "outcome": "passed" + } + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[meta-llama/Llama-3.3-70B-Instruct-Turbo-stream=False]", + "lineno": 554, + "outcome": "skipped", + "keywords": [ + "test_chat_multi_turn_multiple_images[meta-llama/Llama-3.3-70B-Instruct-Turbo-stream=False]", + "parametrize", + "pytestmark", + "meta-llama/Llama-3.3-70B-Instruct-Turbo-stream=False", + "test_chat_completion.py", + "openai_api", + "verifications", + "tests", + "llama-stack", + "" + ], + "metadata": { + "model": "meta-llama/Llama-3.3-70B-Instruct-Turbo", + "case_id": "stream=False" + }, + "setup": { + "duration": 0.07253758516162634, + "outcome": "passed" + }, + "call": { + "duration": 0.00021537486463785172, + "outcome": "skipped", + "longrepr": "('/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py', 561, 'Skipped: Skipping test_chat_multi_turn_multiple_images for model meta-llama/Llama-3.3-70B-Instruct-Turbo on provider together based on config.')" + }, + "teardown": { + "duration": 0.0004162406548857689, + "outcome": "passed" + } + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[meta-llama/Llama-3.3-70B-Instruct-Turbo-stream=True]", + "lineno": 554, + "outcome": "skipped", + "keywords": [ + "test_chat_multi_turn_multiple_images[meta-llama/Llama-3.3-70B-Instruct-Turbo-stream=True]", + "parametrize", + "pytestmark", + "meta-llama/Llama-3.3-70B-Instruct-Turbo-stream=True", + "test_chat_completion.py", + "openai_api", + "verifications", + "tests", + "llama-stack", + "" + ], + "metadata": { + "model": "meta-llama/Llama-3.3-70B-Instruct-Turbo", + "case_id": "stream=True" + }, + "setup": { + "duration": 0.07268107868731022, + "outcome": "passed" + }, + "call": { + "duration": 0.0002132616937160492, + "outcome": "skipped", + "longrepr": "('/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py', 561, 'Skipped: Skipping test_chat_multi_turn_multiple_images for model meta-llama/Llama-3.3-70B-Instruct-Turbo on provider together based on config.')" + }, + "teardown": { + "duration": 0.00021094270050525665, + "outcome": "passed" + } + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[meta-llama/Llama-4-Scout-17B-16E-Instruct-stream=False]", + "lineno": 554, + "outcome": "passed", + "keywords": [ + "test_chat_multi_turn_multiple_images[meta-llama/Llama-4-Scout-17B-16E-Instruct-stream=False]", + "parametrize", + "pytestmark", + "meta-llama/Llama-4-Scout-17B-16E-Instruct-stream=False", + "test_chat_completion.py", + "openai_api", + "verifications", + "tests", + "llama-stack", + "" + ], + "metadata": { + "model": "meta-llama/Llama-4-Scout-17B-16E-Instruct", + "case_id": "stream=False" + }, + "setup": { + "duration": 0.07398672867566347, + "outcome": "passed" + }, + "call": { + "duration": 4.383559702895582, + "outcome": "passed" + }, + "teardown": { + "duration": 0.0002781357616186142, + "outcome": "passed" + } + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[meta-llama/Llama-4-Scout-17B-16E-Instruct-stream=True]", + "lineno": 554, + "outcome": "failed", + "keywords": [ + "test_chat_multi_turn_multiple_images[meta-llama/Llama-4-Scout-17B-16E-Instruct-stream=True]", + "parametrize", + "pytestmark", + "meta-llama/Llama-4-Scout-17B-16E-Instruct-stream=True", + "test_chat_completion.py", + "openai_api", + "verifications", + "tests", + "llama-stack", + "" + ], + "metadata": { + "model": "meta-llama/Llama-4-Scout-17B-16E-Instruct", + "case_id": "stream=True" + }, + "setup": { + "duration": 0.08006586041301489, + "outcome": "passed" + }, + "call": { + "duration": 2.16784877050668, + "outcome": "failed", + "crash": { + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 596, + "message": "IndexError: list index out of range" + }, + "traceback": [ + { + "path": "tests/verifications/openai_api/test_chat_completion.py", + "lineno": 596, + "message": "IndexError" + } + ], + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Scout-17B-16E-Instruct', provider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\nmulti_image_data = ['data:image/jpeg;base64,/9j/4AAQSkZJRgABAQAAAQABAAD/2wBDAAIBAQEBAQIBAQECAgICAgQDAgICAgUEBAMEBgUGBgYFBgYGBwkIBgcJBwYGC...6pH9jaTzNv7vfRRXzubfxj9f8Pv8AkTz/AMX/ALbEz5Ly38lfMk/5Z/u64PxhqEZh+z/6rzvn2UUV5EvgPuzy/wAc6p5dt5ccibJpNkkdFFFec27mZ//Z']\nstream = True\n\n @pytest.mark.parametrize(\"stream\", [False, True], ids=[\"stream=False\", \"stream=True\"])\n def test_chat_multi_turn_multiple_images(\n request, openai_client, model, provider, verification_config, multi_image_data, stream\n ):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages_turn1 = [\n {\n \"role\": \"user\",\n \"content\": [\n {\n \"type\": \"image_url\",\n \"image_url\": {\n \"url\": multi_image_data[0],\n },\n },\n {\n \"type\": \"image_url\",\n \"image_url\": {\n \"url\": multi_image_data[1],\n },\n },\n {\n \"type\": \"text\",\n \"text\": \"What furniture is in the first image that is not in the second image?\",\n },\n ],\n },\n ]\n \n # First API call\n response1 = openai_client.chat.completions.create(\n model=model,\n messages=messages_turn1,\n stream=stream,\n )\n if stream:\n message_content1 = \"\"\n for chunk in response1:\n> message_content1 += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:596: IndexError" + }, + "teardown": { + "duration": 0.0003619194030761719, + "outcome": "passed" + } + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-stream=False]", + "lineno": 554, + "outcome": "passed", + "keywords": [ + "test_chat_multi_turn_multiple_images[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-stream=False]", + "parametrize", + "pytestmark", + "meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-stream=False", + "test_chat_completion.py", + "openai_api", + "verifications", + "tests", + "llama-stack", + "" + ], + "metadata": { + "model": "meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8", + "case_id": "stream=False" + }, + "setup": { + "duration": 0.0709412069991231, + "outcome": "passed" + }, + "call": { + "duration": 6.110534753650427, + "outcome": "passed" + }, + "teardown": { + "duration": 0.0002450142055749893, + "outcome": "passed" + } + }, + { + "nodeid": "tests/verifications/openai_api/test_chat_completion.py::test_chat_multi_turn_multiple_images[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-stream=True]", + "lineno": 554, + "outcome": "failed", + "keywords": [ + "test_chat_multi_turn_multiple_images[meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-stream=True]", + "parametrize", + "pytestmark", + "meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8-stream=True", + "test_chat_completion.py", + "openai_api", + "verifications", + "tests", + "llama-stack", + "" + ], + "metadata": { + "model": "meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8", + "case_id": "stream=True" + }, + "setup": { + "duration": 0.0725309094414115, + "outcome": "passed" + }, + "call": { + "duration": 2.291131243109703, + "outcome": "failed", + "crash": { + "path": "/home/erichuang/llama-stack/tests/verifications/openai_api/test_chat_completion.py", + "lineno": 596, + "message": "IndexError: list index out of range" + }, + "traceback": [ + { + "path": "tests/verifications/openai_api/test_chat_completion.py", + "lineno": 596, + "message": "IndexError" + } + ], + "longrepr": "request = >\nopenai_client = \nmodel = 'meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8'\nprovider = 'together'\nverification_config = {'providers': {'cerebras': {'api_key_var': 'CEREBRAS_API_KEY', 'base_url': 'https://api.cerebras.ai/v1', 'model_displa...-versatile', 'meta-llama/llama-4-scout-17b-16e-instruct', 'meta-llama/llama-4-maverick-17b-128e-instruct'], ...}, ...}}\nmulti_image_data = ['data:image/jpeg;base64,/9j/4AAQSkZJRgABAQAAAQABAAD/2wBDAAIBAQEBAQIBAQECAgICAgQDAgICAgUEBAMEBgUGBgYFBgYGBwkIBgcJBwYGC...6pH9jaTzNv7vfRRXzubfxj9f8Pv8AkTz/AMX/ALbEz5Ly38lfMk/5Z/u64PxhqEZh+z/6rzvn2UUV5EvgPuzy/wAc6p5dt5ccibJpNkkdFFFec27mZ//Z']\nstream = True\n\n @pytest.mark.parametrize(\"stream\", [False, True], ids=[\"stream=False\", \"stream=True\"])\n def test_chat_multi_turn_multiple_images(\n request, openai_client, model, provider, verification_config, multi_image_data, stream\n ):\n test_name_base = get_base_test_name(request)\n if should_skip_test(verification_config, provider, model, test_name_base):\n pytest.skip(f\"Skipping {test_name_base} for model {model} on provider {provider} based on config.\")\n \n messages_turn1 = [\n {\n \"role\": \"user\",\n \"content\": [\n {\n \"type\": \"image_url\",\n \"image_url\": {\n \"url\": multi_image_data[0],\n },\n },\n {\n \"type\": \"image_url\",\n \"image_url\": {\n \"url\": multi_image_data[1],\n },\n },\n {\n \"type\": \"text\",\n \"text\": \"What furniture is in the first image that is not in the second image?\",\n },\n ],\n },\n ]\n \n # First API call\n response1 = openai_client.chat.completions.create(\n model=model,\n messages=messages_turn1,\n stream=stream,\n )\n if stream:\n message_content1 = \"\"\n for chunk in response1:\n> message_content1 += chunk.choices[0].delta.content or \"\"\nE IndexError: list index out of range\n\ntests/verifications/openai_api/test_chat_completion.py:596: IndexError" + }, + "teardown": { + "duration": 0.0018906639888882637, "outcome": "passed" } } ], - "run_timestamp": 1744679294 + "run_timestamp": 1744918065 } diff --git a/uv.lock b/uv.lock index 97dc37693..e6368f131 100644 --- a/uv.lock +++ b/uv.lock @@ -1,4 +1,5 @@ version = 1 +revision = 1 requires-python = ">=3.10" resolution-markers = [ "(python_full_version < '3.11' and platform_machine != 'aarch64' and sys_platform == 'linux') or (python_full_version < '3.11' and sys_platform != 'darwin' and sys_platform != 'linux')", @@ -1410,6 +1411,7 @@ dev = [ { name = "pytest-asyncio" }, { name = "pytest-cov" }, { name = "pytest-html" }, + { name = "pytest-json-report" }, { name = "ruamel-yaml" }, { name = "ruff" }, { name = "types-requests" }, @@ -1456,6 +1458,7 @@ unit = [ { name = "aiosqlite" }, { name = "chardet" }, { name = "openai" }, + { name = "opentelemetry-exporter-otlp-proto-http" }, { name = "pypdf" }, { name = "qdrant-client" }, { name = "sqlite-vec" }, @@ -1489,6 +1492,7 @@ requires-dist = [ { name = "openai", marker = "extra == 'test'" }, { name = "openai", marker = "extra == 'unit'" }, { name = "opentelemetry-exporter-otlp-proto-http", marker = "extra == 'test'" }, + { name = "opentelemetry-exporter-otlp-proto-http", marker = "extra == 'unit'" }, { name = "opentelemetry-sdk", marker = "extra == 'test'" }, { name = "pandas", marker = "extra == 'ui'" }, { name = "pillow" }, @@ -1502,6 +1506,7 @@ requires-dist = [ { name = "pytest-asyncio", marker = "extra == 'dev'" }, { name = "pytest-cov", marker = "extra == 'dev'" }, { name = "pytest-html", marker = "extra == 'dev'" }, + { name = "pytest-json-report", marker = "extra == 'dev'" }, { name = "python-dotenv" }, { name = "qdrant-client", marker = "extra == 'unit'" }, { name = "requests" }, @@ -1531,6 +1536,7 @@ requires-dist = [ { name = "types-setuptools", marker = "extra == 'dev'" }, { name = "uvicorn", marker = "extra == 'dev'" }, ] +provides-extras = ["dev", "unit", "test", "docs", "codegen", "ui"] [[package]] name = "llama-stack-client" @@ -2740,6 +2746,19 @@ wheels = [ { url = "https://files.pythonhosted.org/packages/c8/c7/c160021cbecd956cc1a6f79e5fe155f7868b2e5b848f1320dad0b3e3122f/pytest_html-4.1.1-py3-none-any.whl", hash = "sha256:c8152cea03bd4e9bee6d525573b67bbc6622967b72b9628dda0ea3e2a0b5dd71", size = 23491 }, ] +[[package]] +name = "pytest-json-report" +version = "1.5.0" +source = { registry = "https://pypi.org/simple" } +dependencies = [ + { name = "pytest" }, + { name = "pytest-metadata" }, +] +sdist = { url = "https://files.pythonhosted.org/packages/4f/d3/765dae9712fcd68d820338908c1337e077d5fdadccd5cacf95b9b0bea278/pytest-json-report-1.5.0.tar.gz", hash = "sha256:2dde3c647851a19b5f3700729e8310a6e66efb2077d674f27ddea3d34dc615de", size = 21241 } +wheels = [ + { url = "https://files.pythonhosted.org/packages/81/35/d07400c715bf8a88aa0c1ee9c9eb6050ca7fe5b39981f0eea773feeb0681/pytest_json_report-1.5.0-py3-none-any.whl", hash = "sha256:9897b68c910b12a2e48dd849f9a284b2c79a732a8a9cb398452ddd23d3c8c325", size = 13222 }, +] + [[package]] name = "pytest-metadata" version = "3.1.1"