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Llama Stack

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Llama Stack defines and standardizes the set of core building blocks needed to bring generative AI applications to market. These building blocks are presented in the form of interoperable APIs with a broad set of Service Providers providing their implementations.

<div style="text-align: center;"> <img src="https://github.com/user-attachments/assets/33d9576d-95ea-468d-95e2-8fa233205a50" width="480" title="Llama Stack" alt="Llama Stack" /> </div>

Our goal is to provide pre-packaged implementations which can be operated in a variety of deployment environments: developers start iterating with Desktops or their mobile devices and can seamlessly transition to on-prem or public cloud deployments. At every point in this transition, the same set of APIs and the same developer experience is available.

⚠️ Note The Stack APIs are rapidly improving, but still very much work in progress and we invite feedback as well as direct contributions.

APIs

We have working implementations of the following APIs today:

Alongside these APIs, we also related APIs for operating with associated resources (see Concepts):

We are also working on the following APIs which will be released soon:

Each of the APIs themselves is a collection of REST endpoints.

Philosophy

Service-oriented design

Unlike other frameworks, Llama Stack is built with a service-oriented, REST API-first approach. Such a design not only allows for seamless transitions from a local to remote deployments, but also forces the design to be more declarative. We believe this restriction can result in a much simpler, robust developer experience. This will necessarily trade-off against expressivity however if we get the APIs right, it can lead to a very powerful platform.

Composability

We expect the set of APIs we design to be composable. An Agent abstractly depends on { Inference, Memory, Safety } APIs but does not care about the actual implementation details. Safety itself may require model inference and hence can depend on the Inference API.

Turnkey one-stop solutions

We expect to provide turnkey solutions for popular deployment scenarios. It should be easy to deploy a Llama Stack server on AWS or on a private data center. Either of these should allow a developer to get started with powerful agentic apps, model evaluations or fine-tuning services in a matter of minutes. They should all result in the same uniform observability and developer experience.

Focus on Llama models

As a Meta initiated project, we have started by explicitly focusing on Meta's Llama series of models. Supporting the broad set of open models is no easy task and we want to start with models we understand best.

Supporting the Ecosystem

There is a vibrant ecosystem of Providers which provide efficient inference or scalable vector stores or powerful observability solutions. We want to make sure it is easy for developers to pick and choose the best implementations for their use cases. We also want to make sure it is easy for new Providers to onboard and participate in the ecosystem.

Additionally, we have designed every element of the Stack such that APIs as well as Resources (like Models) can be federated.

Supported Llama Stack Implementations

API Providers

API Provider BuilderEnvironmentsAgentsInferenceMemorySafetyTelemetry
Meta ReferenceSingle Node:heavy_check_mark::heavy_check_mark::heavy_check_mark::heavy_check_mark::heavy_check_mark:
CerebrasHosted:heavy_check_mark:
FireworksHosted:heavy_check_mark::heavy_check_mark::heavy_check_mark:
AWS BedrockHosted:heavy_check_mark::heavy_check_mark:
TogetherHosted:heavy_check_mark::heavy_check_mark::heavy_check_mark:
OllamaSingle Node:heavy_check_mark:
TGIHosted and Single Node:heavy_check_mark:
NVIDIA NIMHosted and Single Node:heavy_check_mark:
ChromaSingle Node:heavy_check_mark:
PG VectorSingle Node:heavy_check_mark:
PyTorch ExecuTorchOn-device iOS:heavy_check_mark::heavy_check_mark:
vLLMHosted and Single Node:heavy_check_mark:

Distributions

DistributionLlama Stack DockerStart This Distribution
Meta Referencellamastack/distribution-meta-reference-gpuGuide
Meta Reference Quantizedllamastack/distribution-meta-reference-quantized-gpuGuide
Cerebrasllamastack/distribution-cerebrasGuide
Ollamallamastack/distribution-ollamaGuide
TGIllamastack/distribution-tgiGuide
Togetherllamastack/distribution-togetherGuide
Fireworksllamastack/distribution-fireworksGuide
vLLMllamastack/distribution-remote-vllmGuide

Installation

You have two ways to install this repository:

  1. Install as a package: You can install the repository directly from PyPI by running the following command:

    pip install llama-stack
    
  2. Install from source: If you prefer to install from the source code, make sure you have conda installed. Then, follow these steps:

     mkdir -p ~/local
     cd ~/local
     git clone git@github.com:meta-llama/llama-stack.git
    
     conda create -n stack python=3.10
     conda activate stack
    
     cd llama-stack
     $CONDA_PREFIX/bin/pip install -e .
    

Documentation

Please checkout our Documentation page for more details.

Llama Stack Client SDKs

LanguageClient SDKPackage
Pythonllama-stack-client-pythonPyPI version
Swiftllama-stack-client-swiftSwift Package Index
Nodellama-stack-client-nodeNPM version
Kotlinllama-stack-client-kotlinMaven version

Check out our client SDKs for connecting to Llama Stack server in your preferred language, you can choose from python, node, 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.