One needed to specify record-replay related environment variables for running integration tests. We could not use defaults because integration tests could be run against Ollama instances which could be running different models. For example, text vs vision tests needed separate instances of Ollama because a single instance typically cannot serve both of these models if you assume the standard CI worker configuration on Github. As a result, `client.list()` as returned by the Ollama client would be different between these runs and we'd end up overwriting responses. This PR "solves" it by adding a small amount of complexity -- we store model list responses specially, keyed by the hashes of the models they return. At replay time, we merge all of them and pretend that we have the union of all models available. ## Test Plan Re-recorded all the tests using `scripts/integration-tests.sh --inference-mode record`, including the vision tests.
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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
LLAMA_STACK_TEST_INFERENCE_MODE=replay \
LLAMA_STACK_TEST_RECORDING_DIR=tests/integration/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 arun.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: 384
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.
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=sentence-transformers/all-MiniLM-L6-v2
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=sentence-transformers/all-MiniLM-L6-v2
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=sentence-transformers/all-MiniLM-L6-v2
Recording Modes
The testing system supports three modes controlled by environment variables:
REPLAY Mode (Default)
Uses cached responses instead of making API calls:
pytest tests/integration/
RECORD Mode
Captures API interactions for later replay:
LLAMA_STACK_TEST_INFERENCE_MODE=record \
pytest tests/integration/inference/test_new_feature.py
LIVE Mode
Tests make real API calls (but not recorded):
LLAMA_STACK_TEST_INFERENCE_MODE=live pytest tests/integration/
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
Remote Re-recording (Recommended)
Use the automated workflow script for easier re-recording:
./scripts/github/schedule-record-workflow.sh --test-subdirs "inference,agents"
See the main testing guide for full details.
Local Re-recording
# Re-record specific tests
LLAMA_STACK_TEST_INFERENCE_MODE=record \
pytest -s -v --stack-config=server:starter tests/integration/inference/test_modified.py
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_completion(llama_stack_client, text_model_id):
response = llama_stack_client.inference.completion(
model_id=text_model_id,
content=CompletionMessage(role="user", content="Hello"),
)
# Test structure, not AI output quality
assert response.completion_message is not None
assert isinstance(response.completion_message.content, str)
assert len(response.completion_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