Composable building blocks to build Llama Apps https://llama-stack.readthedocs.io
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Sam El-Borai 8f4c431370
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chore(ci): setup automated stainless builds (#3557)
# What does this PR do?
<!-- Provide a short summary of what this PR does and why. Link to
relevant issues if applicable. -->

This pull request adds a new workflow that does 2 things:

1. generate [SDK preview
builds](https://www.stainless.com/docs/guides/automate-updates#set-up-automatic-preview-builds)
whenever the OpenAPI spec file is modified in a PR
2. on PR merge, generate SDK builds that will be pushed to the different
SDK repos (i.e start the release process)

> [!NOTE]
> No repo secret `STAINLESS_API_KEY` is needed, the authentication is
done automatically via GitHub OIDC.


<!-- If resolving an issue, uncomment and update the line below -->
<!-- Closes #[issue-number] -->

## Test Plan
<!-- Describe the tests you ran to verify your changes with result
summaries. *Provide clear instructions so the plan can be easily
re-executed.* -->

I tested in my fork: https://github.com/stainless-api/llama-stack/pull/3
2025-11-07 12:15:26 -08:00
.github chore(ci): setup automated stainless builds (#3557) 2025-11-07 12:15:26 -08:00
benchmarking/k8s-benchmark feat(prompts): attach prompts to storage stores in run configs (#3893) 2025-10-27 11:12:12 -07:00
client-sdks/stainless chore(ci): setup automated stainless builds (#3557) 2025-11-07 12:15:26 -08:00
containers fix(ci): use --no-cache instead of --no-cache-dir (#4081) 2025-11-05 12:14:02 -08:00
docs feat(responses)!: Add web_search_2025_08_26 to the WebSearchToolTypes (#4103) 2025-11-07 10:01:12 -08:00
scripts ci: Temperarily disable Telemetry during tests (#4090) 2025-11-06 17:53:02 +01:00
src feat(responses)!: Add web_search_2025_08_26 to the WebSearchToolTypes (#4103) 2025-11-07 10:01:12 -08:00
tests fix(ci): add recordings for responses suite due to web search type changing (#4104) 2025-11-07 10:42:07 -08:00
.coveragerc chore: move src/llama_stack/ui to src/llama_stack_ui (#4068) 2025-11-04 15:21:49 -08:00
.dockerignore chore: use dockerfile for building containers (#3839) 2025-10-20 10:23:01 -07:00
.gitattributes chore: mark recordings as generated files (#3816) 2025-10-15 11:06:42 -07:00
.gitignore fix: typo in .gitignore (#3960) 2025-10-29 11:08:47 -04:00
.pre-commit-config.yaml chore: move src/llama_stack/ui to src/llama_stack_ui (#4068) 2025-11-04 15:21:49 -08:00
CHANGELOG.md docs: Update changelog (#3343) 2025-09-08 10:01:41 +02:00
CODE_OF_CONDUCT.md Initial commit 2024-07-23 08:32:33 -07:00
CONTRIBUTING.md fix(mypy): add fast and full mypy modes (#3975) 2025-10-29 19:02:32 -07:00
coverage.svg test: Measure and track code coverage (#2636) 2025-07-18 18:08:36 +02:00
LICENSE Update LICENSE (#47) 2024-08-29 07:39:50 -07:00
MANIFEST.in chore(package): migrate to src/ layout (#3920) 2025-10-27 12:02:21 -07:00
pyproject.toml chore: Stack server no longer depends on llama-stack-client (#4094) 2025-11-07 09:54:09 -08:00
README.md chore: update docs for telemetry api removal (#3900) 2025-10-24 13:57:28 -07:00
SECURITY.md Create SECURITY.md 2024-10-08 13:30:40 -04:00
uv.lock chore: Stack server no longer depends on llama-stack-client (#4094) 2025-11-07 09:54:09 -08:00

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
huggingface-cli download meta-llama/$MODEL --local-dir ~/.llama/$MODEL

# install dependencies for the distribution
llama stack list-deps meta-reference-gpu | xargs -L1 uv pip install

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

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

CLI

# Run a chat completion
MODEL="Llama-4-Scout-17B-16E-Instruct"

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"

OpenAIChatCompletion(
    ...
    choices=[
        OpenAIChatCompletionChoice(
            finish_reason='stop',
            index=0,
            message=OpenAIChatCompletionChoiceMessageOpenAIAssistantMessageParam(
                role='assistant',
                content='...**Silent minds awaken,**  \n**Whispers of billions of words,**  \n**Reasoning breaks the night.**  \n\n—  \n*This haiku blends the essence of LLaMA 4\'s capabilities with nature-inspired metaphor, evoking its vast training data and transformative potential.*',
                ...
            ),
            ...
        )
    ],
    ...
)

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.chat.completions.create(
    model=model_id,
    messages=[
        {"role": "system", "content": "You are a helpful assistant."},
        {"role": "user", "content": prompt},
    ],
)
print(f"Assistant> {response.choices[0].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/llamastack/llama-stack/raw/main/scripts/install.sh | bash

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.
  • 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. Please checkout for full list

API Provider Builder Environments Agents Inference VectorIO Safety Post Training Eval DatasetIO
Meta Reference Single Node
SambaNova Hosted
Cerebras Hosted
Fireworks Hosted
AWS Bedrock Hosted
Together Hosted
Groq Hosted
Ollama Single Node
TGI Hosted/Single Node
NVIDIA NIM Hosted/Single Node
ChromaDB Hosted/Single Node
Milvus Hosted/Single Node
Qdrant Hosted/Single Node
Weaviate Hosted/Single Node
SQLite-vec Single Node
PG Vector Single Node
PyTorch ExecuTorch On-device iOS
vLLM Single Node
OpenAI Hosted
Anthropic Hosted
Gemini Hosted
WatsonX Hosted
HuggingFace Single Node
TorchTune Single Node
NVIDIA NEMO Hosted
NVIDIA Hosted

Note

: Additional providers are available through external packages. See External Providers documentation.

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
Starter Distribution llamastack/distribution-starter Guide
Meta Reference llamastack/distribution-meta-reference-gpu Guide
PostgreSQL llamastack/distribution-postgres-demo

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.

🌟 GitHub Star History

Star History

Star History Chart

Contributors

Thanks to all of our amazing contributors!