llama-stack-mirror/tests/integration
Ashwin Bharambe ddd32b187a fix(inference): enable routing of models with provider_data alone (#3928)
This PR enables routing of fully qualified model IDs of the form
`provider_id/model_id` even when the models are not registered with the
Stack.

Here's the situation: assume a remote inference provider which works
only when users provide their own API keys via
`X-LlamaStack-Provider-Data` header. By definition, we cannot list
models and hence update our routing registry. But because we _require_ a
provider ID in the models now, we can identify which provider to route
to and let that provider decide.

Note that we still try to look up our registry since it may have a
pre-registered alias. Just that we don't outright fail when we are not
able to look it up.

Also, updated inference router so that the responses have the _exact_
model that the request had.

Added an integration test

Closes #3929

---------

Co-authored-by: ehhuang <ehhuang@users.noreply.github.com>
2025-10-30 14:23:22 -07:00
..
agents feat: Add instructions parameter in response object (#3741) 2025-10-20 13:10:37 -07:00
batches fix(perf): make batches tests finish 30x faster (#3834) 2025-10-17 09:16:44 +02:00
common/recordings feat: Add instructions parameter in response object (#3741) 2025-10-20 13:10:37 -07:00
conversations feat: Add OpenAI Conversations API (#3429) 2025-10-03 08:47:18 -07:00
datasets fix: test_datasets HF scenario in CI (#2090) 2025-05-06 14:09:15 +02:00
eval fix(tests): ensure test isolation in server mode (#3737) 2025-10-08 12:03:36 -07:00
files fix(tests): ensure test isolation in server mode (#3737) 2025-10-08 12:03:36 -07:00
fixtures chore: remove build.py (#3869) 2025-10-20 16:28:15 -07:00
inference fix(inference): enable routing of models with provider_data alone (#3928) 2025-10-30 14:23:22 -07:00
inspect chore: default to pytest asyncio-mode=auto (#2730) 2025-07-11 13:00:24 -07:00
post_training chore(pre-commit): add pre-commit hook to enforce llama_stack logger usage (#3061) 2025-08-20 07:15:35 -04:00
providers feat(stores)!: use backend storage references instead of configs (#3697) 2025-10-20 13:20:09 -07:00
recordings refactor: replace default all-MiniLM-L6-v2 embedding model by nomic-embed-text-v1.5 in Llama Stack (#3183) 2025-10-14 10:44:20 -04:00
responses misc(tests): add recordings for responses tests 2025-10-21 16:39:08 -07:00
safety chore!: Safety api refactoring to use OpenAIMessageParam (#3796) 2025-10-12 08:01:00 -07:00
scoring feat: create HTTP DELETE API endpoints to unregister ScoringFn and Benchmark resources in Llama Stack (#3371) 2025-09-15 12:43:38 -07:00
telemetry fix(inference): enable routing of models with provider_data alone (#3928) 2025-10-30 14:23:22 -07:00
test_cases chore: remove test_cases/openai/responses.json (#3823) 2025-10-16 06:59:29 -07:00
tool_runtime fix(responses): fix subtle bugs in non-function tool calling (#3817) 2025-10-15 13:57:37 -07:00
tools fix: toolgroups unregister (#1704) 2025-03-19 13:43:51 -07:00
vector_io chore(cleanup)!: kill vector_db references as far as possible (#3864) 2025-10-20 20:06:16 -07:00
__init__.py fix: remove ruff N999 (#1388) 2025-03-07 11:14:04 -08:00
conftest.py misc(tests): add recordings for responses tests 2025-10-21 16:39:08 -07:00
README.md refactor: replace default all-MiniLM-L6-v2 embedding model by nomic-embed-text-v1.5 in Llama Stack (#3183) 2025-10-14 10:44:20 -04:00
suites.py refactor: replace default all-MiniLM-L6-v2 embedding model by nomic-embed-text-v1.5 in Llama Stack (#3183) 2025-10-14 10:44:20 -04:00
test_persistence_integration.py feat(stores)!: use backend storage references instead of configs (#3697) 2025-10-20 13:20:09 -07:00

Integration Testing Guide

Integration tests verify complete workflows across different providers using Llama Stack's record-replay system.

Quick Start

# Run all integration tests with existing recordings
uv run --group test \
  pytest -sv tests/integration/ --stack-config=starter

Configuration Options

You can see all options with:

cd tests/integration

# this will show a long list of options, look for "Custom options:"
pytest --help

Here are the most important options:

  • --stack-config: specify the stack config to use. You have four ways to point to a stack:
    • server:<config> - automatically start a server with the given config (e.g., server:starter). This provides one-step testing by auto-starting the server if the port is available, or reusing an existing server if already running.
    • server:<config>:<port> - same as above but with a custom port (e.g., server:starter:8322)
    • a URL which points to a Llama Stack distribution server
    • a distribution name (e.g., starter) or a path to a run.yaml file
    • a comma-separated list of api=provider pairs, e.g. inference=ollama,safety=llama-guard,agents=meta-reference. This is most useful for testing a single API surface.
  • --env: set environment variables, e.g. --env KEY=value. this is a utility option to set environment variables required by various providers.

Model parameters can be influenced by the following options:

  • --text-model: comma-separated list of text models.
  • --vision-model: comma-separated list of vision models.
  • --embedding-model: comma-separated list of embedding models.
  • --safety-shield: comma-separated list of safety shields.
  • --judge-model: comma-separated list of judge models.
  • --embedding-dimension: output dimensionality of the embedding model to use for testing. Default: 768

Each of these are comma-separated lists and can be used to generate multiple parameter combinations. Note that tests will be skipped if no model is specified.

Suites and Setups

  • --suite: single named suite that narrows which tests are collected.
  • Available suites:
    • base: collects most tests (excludes responses and post_training)
    • responses: collects tests under tests/integration/responses (needs strong tool-calling models)
    • vision: collects only tests/integration/inference/test_vision_inference.py
  • --setup: global configuration that can be used with any suite. Setups prefill model/env defaults; explicit CLI flags always win.
    • Available setups:
      • ollama: Local Ollama provider with lightweight models (sets OLLAMA_URL, uses llama3.2:3b-instruct-fp16)
      • vllm: VLLM provider for efficient local inference (sets VLLM_URL, uses Llama-3.2-1B-Instruct)
      • gpt: OpenAI GPT models for high-quality responses (uses gpt-4o)
      • claude: Anthropic Claude models for high-quality responses (uses claude-3-5-sonnet)

Examples

# Fast responses run with a strong tool-calling model
pytest -s -v tests/integration --stack-config=server:starter --suite=responses --setup=gpt

# Fast single-file vision run with Ollama defaults
pytest -s -v tests/integration --stack-config=server:starter --suite=vision --setup=ollama

# Base suite with VLLM for performance
pytest -s -v tests/integration --stack-config=server:starter --suite=base --setup=vllm

# Override a default from setup
pytest -s -v tests/integration --stack-config=server:starter \
  --suite=responses --setup=gpt --embedding-model=text-embedding-3-small

Examples

Testing against a Server

Run all text inference tests by auto-starting a server with the starter config:

OLLAMA_URL=http://localhost:11434 \
  pytest -s -v tests/integration/inference/test_text_inference.py \
   --stack-config=server:starter \
   --text-model=ollama/llama3.2:3b-instruct-fp16 \
   --embedding-model=nomic-embed-text-v1.5

Run tests with auto-server startup on a custom port:

OLLAMA_URL=http://localhost:11434 \
  pytest -s -v tests/integration/inference/ \
   --stack-config=server:starter:8322 \
   --text-model=ollama/llama3.2:3b-instruct-fp16 \
   --embedding-model=nomic-embed-text-v1.5

Testing with Library Client

The library client constructs the Stack "in-process" instead of using a server. This is useful during the iterative development process since you don't need to constantly start and stop servers.

You can do this by simply using --stack-config=starter instead of --stack-config=server:starter.

Using ad-hoc distributions

Sometimes, you may want to make up a distribution on the fly. This is useful for testing a single provider or a single API or a small combination of providers. You can do so by specifying a comma-separated list of api=provider pairs to the --stack-config option, e.g. inference=remote::ollama,safety=inline::llama-guard,agents=inline::meta-reference.

pytest -s -v tests/integration/inference/ \
   --stack-config=inference=remote::ollama,safety=inline::llama-guard,agents=inline::meta-reference \
   --text-model=$TEXT_MODELS \
   --vision-model=$VISION_MODELS \
   --embedding-model=$EMBEDDING_MODELS

Another example: Running Vector IO tests for embedding models:

pytest -s -v tests/integration/vector_io/ \
   --stack-config=inference=inline::sentence-transformers,vector_io=inline::sqlite-vec \
   --embedding-model=nomic-embed-text-v1.5

Recording Modes

The testing system supports four modes controlled by environment variables:

REPLAY Mode (Default)

Uses cached responses instead of making API calls:

pytest tests/integration/

Records only when no recording exists, otherwise replays. This is the preferred mode for iterative development:

pytest tests/integration/inference/test_new_feature.py --inference-mode=record-if-missing

RECORD Mode

Force-records all API interactions, overwriting existing recordings. Use with caution as this will re-record everything:

pytest tests/integration/inference/test_new_feature.py --inference-mode=record

LIVE Mode

Tests make real API calls (not recorded):

pytest tests/integration/ --inference-mode=live

By default, the recording directory is tests/integration/recordings. You can override this by setting the LLAMA_STACK_TEST_RECORDING_DIR environment variable.

Managing Recordings

Viewing Recordings

# See what's recorded
sqlite3 recordings/index.sqlite "SELECT endpoint, model, timestamp FROM recordings;"

# Inspect specific response
cat recordings/responses/abc123.json | jq '.'

Re-recording Tests

Use the automated workflow script for easier re-recording:

./scripts/github/schedule-record-workflow.sh --subdirs "inference,agents"

See the main testing guide for full details.

Local Re-recording

# Re-record specific tests
pytest -s -v --stack-config=server:starter tests/integration/inference/test_modified.py --inference-mode=record

Note that when re-recording tests, you must use a Stack pointing to a server (i.e., server:starter). This subtlety exists because the set of tests run in server are a superset of the set of tests run in the library client.

Writing Tests

Basic Test Pattern

def test_basic_chat_completion(llama_stack_client, text_model_id):
    response = llama_stack_client.chat.completions.create(
        model=text_model_id,
        messages=[{"role": "user", "content": "Hello"}],
    )

    # Test structure, not AI output quality
    assert response.choices[0].message is not None
    assert isinstance(response.choices[0].message.content, str)
    assert len(response.choices[0].message.content) > 0

Provider-Specific Tests

def test_asymmetric_embeddings(llama_stack_client, embedding_model_id):
    if embedding_model_id not in MODELS_SUPPORTING_TASK_TYPE:
        pytest.skip(f"Model {embedding_model_id} doesn't support task types")

    query_response = llama_stack_client.inference.embeddings(
        model_id=embedding_model_id,
        contents=["What is machine learning?"],
        task_type="query",
    )

    assert query_response.embeddings is not None