Composable building blocks to build Llama Apps https://llama-stack.readthedocs.io
Find a file
Varsha 2e8054bede
Some checks failed
Integration Auth Tests / test-matrix (oauth2_token) (push) Failing after 1s
Integration Tests / test-matrix (http, 3.10, datasets) (push) Failing after 4s
Integration Tests / test-matrix (http, 3.10, providers) (push) Failing after 6s
Integration Tests / test-matrix (http, 3.10, scoring) (push) Failing after 6s
Integration Tests / test-matrix (http, 3.10, agents) (push) Failing after 8s
Integration Tests / test-matrix (http, 3.11, datasets) (push) Failing after 5s
Integration Tests / test-matrix (http, 3.10, inference) (push) Failing after 9s
Integration Tests / test-matrix (http, 3.11, inference) (push) Failing after 5s
Integration Tests / test-matrix (http, 3.11, inspect) (push) Failing after 8s
Integration Tests / test-matrix (http, 3.10, post_training) (push) Failing after 10s
Integration Tests / test-matrix (http, 3.11, tool_runtime) (push) Failing after 5s
Integration Tests / test-matrix (http, 3.10, vector_io) (push) Failing after 7s
Integration Tests / test-matrix (http, 3.11, agents) (push) Failing after 7s
Integration Tests / test-matrix (http, 3.10, inspect) (push) Failing after 9s
Integration Tests / test-matrix (http, 3.12, agents) (push) Failing after 10s
Integration Tests / test-matrix (http, 3.12, post_training) (push) Failing after 8s
Integration Tests / test-matrix (http, 3.12, providers) (push) Failing after 8s
Integration Tests / test-matrix (http, 3.10, tool_runtime) (push) Failing after 7s
Integration Tests / test-matrix (http, 3.11, post_training) (push) Failing after 6s
Integration Tests / test-matrix (http, 3.12, scoring) (push) Failing after 8s
Integration Tests / test-matrix (library, 3.10, agents) (push) Failing after 7s
Integration Tests / test-matrix (http, 3.11, scoring) (push) Failing after 6s
Integration Tests / test-matrix (http, 3.11, providers) (push) Failing after 8s
Integration Tests / test-matrix (http, 3.12, inference) (push) Failing after 7s
Integration Tests / test-matrix (http, 3.12, datasets) (push) Failing after 7s
Integration Tests / test-matrix (library, 3.10, inference) (push) Failing after 8s
Integration Tests / test-matrix (http, 3.12, vector_io) (push) Failing after 7s
Integration Tests / test-matrix (http, 3.12, inspect) (push) Failing after 10s
Integration Tests / test-matrix (library, 3.10, post_training) (push) Failing after 9s
Integration Tests / test-matrix (http, 3.12, tool_runtime) (push) Failing after 10s
Integration Tests / test-matrix (http, 3.11, vector_io) (push) Failing after 11s
Integration Tests / test-matrix (library, 3.10, inspect) (push) Failing after 11s
Integration Tests / test-matrix (library, 3.10, datasets) (push) Failing after 13s
Integration Tests / test-matrix (library, 3.10, providers) (push) Failing after 11s
Integration Tests / test-matrix (library, 3.10, scoring) (push) Failing after 10s
Integration Tests / test-matrix (library, 3.10, vector_io) (push) Failing after 9s
Integration Tests / test-matrix (library, 3.10, tool_runtime) (push) Failing after 12s
Integration Tests / test-matrix (library, 3.11, agents) (push) Failing after 8s
Integration Tests / test-matrix (library, 3.11, datasets) (push) Failing after 7s
Integration Tests / test-matrix (library, 3.11, inspect) (push) Failing after 15s
Integration Tests / test-matrix (library, 3.11, inference) (push) Failing after 16s
Integration Tests / test-matrix (library, 3.11, vector_io) (push) Failing after 10s
Integration Tests / test-matrix (library, 3.11, post_training) (push) Failing after 25s
Integration Tests / test-matrix (library, 3.11, providers) (push) Failing after 24s
Integration Tests / test-matrix (library, 3.11, scoring) (push) Failing after 22s
Integration Tests / test-matrix (library, 3.11, tool_runtime) (push) Failing after 14s
Integration Tests / test-matrix (library, 3.12, agents) (push) Failing after 6s
Integration Tests / test-matrix (library, 3.12, datasets) (push) Failing after 9s
Integration Tests / test-matrix (library, 3.12, inference) (push) Failing after 9s
Integration Tests / test-matrix (library, 3.12, inspect) (push) Failing after 7s
Integration Tests / test-matrix (library, 3.12, post_training) (push) Failing after 7s
Integration Tests / test-matrix (library, 3.12, providers) (push) Failing after 7s
Integration Tests / test-matrix (library, 3.12, scoring) (push) Failing after 9s
Integration Tests / test-matrix (library, 3.12, tool_runtime) (push) Failing after 7s
Integration Tests / test-matrix (library, 3.12, vector_io) (push) Failing after 41s
Test Llama Stack Build / generate-matrix (push) Successful in 37s
Test Llama Stack Build / build-single-provider (push) Failing after 37s
Test Llama Stack Build / build-custom-container-distribution (push) Failing after 35s
Test External Providers / test-external-providers (venv) (push) Failing after 5s
Update ReadTheDocs / update-readthedocs (push) Failing after 5s
Unit Tests / unit-tests (3.11) (push) Failing after 6s
Unit Tests / unit-tests (3.12) (push) Failing after 6s
Unit Tests / unit-tests (3.13) (push) Failing after 6s
Test Llama Stack Build / build (push) Failing after 7s
Test Llama Stack Build / build-ubi9-container-distribution (push) Failing after 18s
Unit Tests / unit-tests (3.10) (push) Failing after 17s
Pre-commit / pre-commit (push) Successful in 2m0s
feat: Implement hybrid search in SQLite-vec (#2312)
# What does this PR do?
Add support for hybrid search mode in SQLite-vec provider, which
combines
keyword and vector search for better results. The implementation:

- Adds hybrid search mode as a new option alongside vector and keyword
search
- Implements query_hybrid method in SQLiteVecIndex that:
  - First performs keyword search to get candidate matches
  - Then applies vector similarity search on those candidates
- Updates documentation to reflect the new search mode

This change improves search quality by leveraging both semantic
similarity
and keyword matching, while maintaining backward compatibility with
existing
vector and keyword search modes.

## Test Plan
```
pytest tests/unit/providers/vector_io/test_sqlite_vec.py -v -s --tb=short
/Users/vnarsing/miniconda3/envs/stack-client/lib/python3.10/site-packages/pytest_asyncio/plugin.py:217: PytestDeprecationWarning: The configuration option "asyncio_default_fixture_loop_scope" is unset.
The event loop scope for asynchronous fixtures will default to the fixture caching scope. Future versions of pytest-asyncio will default the loop scope for asynchronous fixtures to function scope. Set the default fixture loop scope explicitly in order to avoid unexpected behavior in the future. Valid fixture loop scopes are: "function", "class", "module", "package", "session"

  warnings.warn(PytestDeprecationWarning(_DEFAULT_FIXTURE_LOOP_SCOPE_UNSET))
=============================================================================================== test session starts ===============================================================================================
platform darwin -- Python 3.10.16, pytest-8.3.5, pluggy-1.5.0 -- /Users/vnarsing/miniconda3/envs/stack-client/bin/python
cachedir: .pytest_cache
metadata: {'Python': '3.10.16', 'Platform': 'macOS-14.7.6-arm64-arm-64bit', 'Packages': {'pytest': '8.3.5', 'pluggy': '1.5.0'}, 'Plugins': {'html': '4.1.1', 'json-report': '1.5.0', 'timeout': '2.4.0', 'metadata': '3.1.1', 'anyio': '4.8.0', 'asyncio': '0.26.0', 'nbval': '0.11.0', 'cov': '6.1.1'}}
rootdir: /Users/vnarsing/go/src/github/meta-llama/llama-stack
configfile: pyproject.toml
plugins: html-4.1.1, json-report-1.5.0, timeout-2.4.0, metadata-3.1.1, anyio-4.8.0, asyncio-0.26.0, nbval-0.11.0, cov-6.1.1
asyncio: mode=strict, asyncio_default_fixture_loop_scope=None, asyncio_default_test_loop_scope=function
collected 10 items                                                                                                                                                                                                

tests/unit/providers/vector_io/test_sqlite_vec.py::test_add_chunks PASSED
tests/unit/providers/vector_io/test_sqlite_vec.py::test_query_chunks_vector PASSED
tests/unit/providers/vector_io/test_sqlite_vec.py::test_query_chunks_full_text_search PASSED
tests/unit/providers/vector_io/test_sqlite_vec.py::test_query_chunks_hybrid PASSED
tests/unit/providers/vector_io/test_sqlite_vec.py::test_query_chunks_full_text_search_k_greater_than_results PASSED
tests/unit/providers/vector_io/test_sqlite_vec.py::test_chunk_id_conflict PASSED
tests/unit/providers/vector_io/test_sqlite_vec.py::test_generate_chunk_id PASSED
tests/unit/providers/vector_io/test_sqlite_vec.py::test_query_chunks_hybrid_no_keyword_matches PASSED
tests/unit/providers/vector_io/test_sqlite_vec.py::test_query_chunks_hybrid_score_threshold PASSED
tests/unit/providers/vector_io/test_sqlite_vec.py::test_query_chunks_hybrid_different_embedding PASSED
```

---------

Signed-off-by: Varsha Prasad Narsing <varshaprasad96@gmail.com>
2025-06-13 15:54:06 -04:00
.github feat(auth): allow token to be provided for use against jwks endpoint (#2394) 2025-06-13 10:13:41 +02:00
docs feat: Implement hybrid search in SQLite-vec (#2312) 2025-06-13 15:54:06 -04:00
llama_stack feat: Implement hybrid search in SQLite-vec (#2312) 2025-06-13 15:54:06 -04:00
rfcs chore: remove straggler references to llama-models (#1345) 2025-03-01 14:26:03 -08:00
scripts chore: remove dead code (#2403) 2025-06-05 21:17:54 +02:00
tests feat: Implement hybrid search in SQLite-vec (#2312) 2025-06-13 15:54:06 -04:00
.coveragerc chore: exclude test, provider, and template directories from coverage (#2028) 2025-04-25 12:16:57 -07:00
.gitignore feat: enable MCP execution in Responses impl (#2240) 2025-05-24 14:20:42 -07:00
.pre-commit-config.yaml chore: use dependency-groups for dev (#2287) 2025-05-27 23:00:17 +02:00
.readthedocs.yaml fix: build docs without requirements.txt (#2294) 2025-05-27 16:27:57 -07:00
CHANGELOG.md docs: Add recent releases (#2424) 2025-06-10 08:43:02 +05:30
CODE_OF_CONDUCT.md Initial commit 2024-07-23 08:32:33 -07:00
CONTRIBUTING.md docs: update contributing guidance around uv python versions (#2398) 2025-06-04 23:12:03 -07:00
install.sh feat: Allow to print usage information for install script (#2171) 2025-05-15 16:50:56 +02:00
LICENSE Update LICENSE (#47) 2024-08-29 07:39:50 -07:00
MANIFEST.in chore: remove dependencies.json (#2281) 2025-05-27 10:26:57 -07:00
pyproject.toml fix(faiss): handle case where distance is 0 by setting d to minimum positive… (#2387) 2025-06-07 16:09:46 -04:00
README.md docs: add post training to providers list (#2280) 2025-05-28 09:32:00 -04:00
requirements.txt fix(security): Upgrade requests to 2.32.4. Fixes CVE-2024-47081 (#2425) 2025-06-10 08:33:28 +05:30
SECURITY.md Create SECURITY.md 2024-10-08 13:30:40 -04:00
uv.lock fix(security): Upgrade requests to 2.32.4. Fixes CVE-2024-47081 (#2425) 2025-06-10 08:33:28 +05:30

Llama Stack

PyPI version PyPI - Downloads License Discord Unit Tests Integration Tests

Quick Start | Documentation | Colab Notebook | Discord

🎉 Llama 4 Support 🎉

We released Version 0.2.0 with support for the Llama 4 herd of models released by Meta.

👋 Click here to see how to run Llama 4 models on Llama Stack


Note you need 8xH100 GPU-host to run these models

pip install -U llama_stack

MODEL="Llama-4-Scout-17B-16E-Instruct"
# get meta url from llama.com
llama model download --source meta --model-id $MODEL --meta-url <META_URL>

# start a llama stack server
INFERENCE_MODEL=meta-llama/$MODEL llama stack build --run --template meta-reference-gpu

# install client to interact with the server
pip install llama-stack-client

CLI

# Run a chat completion
llama-stack-client --endpoint http://localhost:8321 \
inference chat-completion \
--model-id meta-llama/$MODEL \
--message "write a haiku for meta's llama 4 models"

ChatCompletionResponse(
    completion_message=CompletionMessage(content="Whispers in code born\nLlama's gentle, wise heartbeat\nFuture's soft unfold", role='assistant', stop_reason='end_of_turn', tool_calls=[]),
    logprobs=None,
    metrics=[Metric(metric='prompt_tokens', value=21.0, unit=None), Metric(metric='completion_tokens', value=28.0, unit=None), Metric(metric='total_tokens', value=49.0, unit=None)]
)

Python SDK

from llama_stack_client import LlamaStackClient

client = LlamaStackClient(base_url=f"http://localhost:8321")

model_id = "meta-llama/Llama-4-Scout-17B-16E-Instruct"
prompt = "Write a haiku about coding"

print(f"User> {prompt}")
response = client.inference.chat_completion(
    model_id=model_id,
    messages=[
        {"role": "system", "content": "You are a helpful assistant."},
        {"role": "user", "content": prompt},
    ],
)
print(f"Assistant> {response.completion_message.content}")

As more providers start supporting Llama 4, you can use them in Llama Stack as well. We are adding to the list. Stay tuned!

🚀 One-Line Installer 🚀

To try Llama Stack locally, run:

curl -LsSf https://github.com/meta-llama/llama-stack/raw/main/install.sh | sh

Overview

Llama Stack standardizes the core building blocks that simplify AI application development. It codifies best practices across the Llama ecosystem. More specifically, it provides

  • Unified API layer for Inference, RAG, Agents, Tools, Safety, Evals, and Telemetry.
  • Plugin architecture to support the rich ecosystem of different API implementations in various environments, including local development, on-premises, cloud, and mobile.
  • Prepackaged verified distributions which offer a one-stop solution for developers to get started quickly and reliably in any environment.
  • Multiple developer interfaces like CLI and SDKs for Python, Typescript, iOS, and Android.
  • Standalone applications as examples for how to build production-grade AI applications with Llama Stack.
Llama Stack

Llama Stack Benefits

  • Flexible Options: Developers can choose their preferred infrastructure without changing APIs and enjoy flexible deployment choices.
  • Consistent Experience: With its unified APIs, Llama Stack makes it easier to build, test, and deploy AI applications with consistent application behavior.
  • Robust Ecosystem: Llama Stack is already integrated with distribution partners (cloud providers, hardware vendors, and AI-focused companies) that offer tailored infrastructure, software, and services for deploying Llama models.

By reducing friction and complexity, Llama Stack empowers developers to focus on what they do best: building transformative generative AI applications.

API Providers

Here is a list of the various API providers and available distributions that can help developers get started easily with Llama Stack.

API Provider Builder Environments Agents Inference Memory Safety Telemetry Post Training
Meta Reference Single Node
SambaNova Hosted
Cerebras Hosted
Fireworks Hosted
AWS Bedrock Hosted
Together Hosted
Groq Hosted
Ollama Single Node
TGI Hosted and Single Node
NVIDIA NIM Hosted and Single Node
Chroma Single Node
PG Vector Single Node
PyTorch ExecuTorch On-device iOS
vLLM Hosted and Single Node
OpenAI Hosted
Anthropic Hosted
Gemini Hosted
watsonx Hosted
HuggingFace Single Node
TorchTune Single Node
NVIDIA NEMO Hosted

Distributions

A Llama Stack Distribution (or "distro") is a pre-configured bundle of provider implementations for each API component. Distributions make it easy to get started with a specific deployment scenario - you can begin with a local development setup (eg. ollama) and seamlessly transition to production (eg. Fireworks) without changing your application code. Here are some of the distributions we support:

Distribution Llama Stack Docker Start This Distribution
Meta Reference llamastack/distribution-meta-reference-gpu Guide
SambaNova llamastack/distribution-sambanova Guide
Cerebras llamastack/distribution-cerebras Guide
Ollama llamastack/distribution-ollama Guide
TGI llamastack/distribution-tgi Guide
Together llamastack/distribution-together Guide
Fireworks llamastack/distribution-fireworks Guide
vLLM llamastack/distribution-remote-vllm Guide

Documentation

Please checkout our Documentation page for more details.

Llama Stack Client SDKs

Language Client SDK Package
Python llama-stack-client-python PyPI version
Swift llama-stack-client-swift Swift Package Index
Typescript llama-stack-client-typescript NPM version
Kotlin llama-stack-client-kotlin Maven version

Check out our client SDKs for connecting to a Llama Stack server in your preferred language, you can choose from python, typescript, swift, and kotlin programming languages to quickly build your applications.

You can find more example scripts with client SDKs to talk with the Llama Stack server in our llama-stack-apps repo.