# What does this PR do? Adds a write worker queue for writes to inference store. This avoids overwhelming request processing with slow inference writes. ## Test Plan Benchmark: ``` cd /docs/source/distributions/k8s-benchmark # start mock server python openai-mock-server.py --port 8000 # start stack server uv run --with llama-stack python -m llama_stack.core.server.server docs/source/distributions/k8s-benchmark/stack_run_config.yaml # run benchmark script uv run python3 benchmark.py --duration 120 --concurrent 50 --base-url=http://localhost:8321/v1/openai/v1 --model=vllm-inference/meta-llama/Llama-3.2-3B-Instruct ``` Before: ============================================================ BENCHMARK RESULTS Response Time Statistics: Mean: 1.111s Median: 0.982s Min: 0.466s Max: 15.190s Std Dev: 1.091s Percentiles: P50: 0.982s P90: 1.281s P95: 1.439s P99: 5.476s Time to First Token (TTFT) Statistics: Mean: 0.474s Median: 0.347s Min: 0.175s Max: 15.129s Std Dev: 0.819s TTFT Percentiles: P50: 0.347s P90: 0.661s P95: 0.762s P99: 2.788s Streaming Statistics: Mean chunks per response: 67.2 Total chunks received: 122154 ============================================================ Total time: 120.00s Concurrent users: 50 Total requests: 1919 Successful requests: 1819 Failed requests: 100 Success rate: 94.8% Requests per second: 15.16 Errors (showing first 5): Request error: Request error: Request error: Request error: Request error: Benchmark completed. Stopping server (PID: 679)... Server stopped. After: ============================================================ BENCHMARK RESULTS Response Time Statistics: Mean: 1.085s Median: 1.089s Min: 0.451s Max: 2.002s Std Dev: 0.212s Percentiles: P50: 1.089s P90: 1.343s P95: 1.409s P99: 1.617s Time to First Token (TTFT) Statistics: Mean: 0.407s Median: 0.361s Min: 0.182s Max: 1.178s Std Dev: 0.175s TTFT Percentiles: P50: 0.361s P90: 0.644s P95: 0.744s P99: 0.932s Streaming Statistics: Mean chunks per response: 66.8 Total chunks received: 367240 ============================================================ Total time: 120.00s Concurrent users: 50 Total requests: 5495 Successful requests: 5495 Failed requests: 0 Success rate: 100.0% Requests per second: 45.79 Benchmark completed. Stopping server (PID: 97169)... Server stopped. |
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integration | ||
unit | ||
__init__.py | ||
README.md |
There are two obvious types of tests:
Type | Location | Purpose |
---|---|---|
Unit | tests/unit/ |
Fast, isolated component testing |
Integration | tests/integration/ |
End-to-end workflows with record-replay |
Both have their place. For unit tests, it is important to create minimal mocks and instead rely more on "fakes". Mocks are too brittle. In either case, tests must be very fast and reliable.
Record-replay for integration tests
Testing AI applications end-to-end creates some challenges:
- API costs accumulate quickly during development and CI
- Non-deterministic responses make tests unreliable
- Multiple providers require testing the same logic across different APIs
Our solution: Record real API responses once, replay them for fast, deterministic tests. This is better than mocking because AI APIs have complex response structures and streaming behavior. Mocks can miss edge cases that real APIs exhibit. A single test can exercise underlying APIs in multiple complex ways making it really hard to mock.
This gives you:
- Cost control - No repeated API calls during development
- Speed - Instant test execution with cached responses
- Reliability - Consistent results regardless of external service state
- Provider coverage - Same tests work across OpenAI, Anthropic, local models, etc.
Testing Quick Start
You can run the unit tests with:
uv run --group unit pytest -sv tests/unit/
For running integration tests, you must provide a few things:
-
A stack config. This is a pointer to a stack. You have a few 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=fireworks,safety=llama-guard,agents=meta-reference
. This is most useful for testing a single API surface.
-
Any API keys you need to use should be set in the environment, or can be passed in with the --env option.
You can run the integration tests in replay mode with:
# Run all tests with existing recordings
uv run --group test \
pytest -sv tests/integration/ --stack-config=starter
Re-recording tests
Local Re-recording (Manual Setup Required)
If you want to re-record tests locally, you can do so with:
LLAMA_STACK_TEST_INFERENCE_MODE=record \
uv run --group test \
pytest -sv tests/integration/ --stack-config=starter -k "<appropriate test name>"
This will record new API responses and overwrite the existing recordings.
You must be careful when re-recording. CI workflows assume a specific setup for running the replay-mode tests. You must re-record the tests in the same way as the CI workflows. This means
- you need Ollama running and serving some specific models.
- you are using the `starter` distribution.
Remote Re-recording (Recommended)
For easier re-recording without local setup, use the automated recording workflow:
# Record tests for specific test subdirectories
./scripts/github/schedule-record-workflow.sh --test-subdirs "agents,inference"
# Record with vision tests enabled
./scripts/github/schedule-record-workflow.sh --test-suite vision
# Record with specific provider
./scripts/github/schedule-record-workflow.sh --test-subdirs "agents" --test-provider vllm
This script:
- 🚀 Runs in GitHub Actions - no local Ollama setup required
- 🔍 Auto-detects your branch and associated PR
- 🍴 Works from forks - handles repository context automatically
- ✅ Commits recordings back to your branch
Prerequisites:
- GitHub CLI:
brew install gh && gh auth login
- jq:
brew install jq
- Your branch pushed to a remote
Supported providers: vllm
, ollama
Next Steps
- Integration Testing Guide - Detailed usage and configuration
- Unit Testing Guide - Fast component testing