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# Getting Started
This guide will walk you though the steps to get started on end-to-end flow for LlamaStack. This guide mainly focuses on getting started with building a LlamaStack distribution, and starting up a LlamaStack server. Please see our [documentations](https://github.com/meta-llama/llama-stack/README.md) on what you can do with Llama Stack, and [llama-stack-apps](https://github.com/meta-llama/llama-stack-apps/tree/main) on examples apps built with Llama Stack.
## Installation
The `llama` CLI tool helps you setup and use the Llama toolchain & agentic systems. It should be available on your path after installing the `llama-stack` package.
You can install this repository as a [package](https://pypi.org/project/llama-stack/) with `pip install llama-stack`
If you want to install from source:
```bash
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 .
```
For what you can do with the Llama CLI, please refer to [CLI Reference](./cli_reference.md).
## Quick Starting Llama Stack Server
### Starting up server via docker
We provide 2 pre-built Docker image of Llama Stack distribution, which can be found in the following links.
- [llamastack-local-gpu](https://hub.docker.com/repository/docker/llamastack/llamastack-local-gpu/general)
- This is a packaged version with our local meta-reference implementations, where you will be running inference locally with downloaded Llama model checkpoints.
- [llamastack-local-cpu](https://hub.docker.com/repository/docker/llamastack/llamastack-local-cpu/general)
- This is a lite version with remote inference where you can hook up to your favourite remote inference framework (e.g. ollama, fireworks, together, tgi) for running inference without GPU.
> [!NOTE]
> For GPU inference, you need to set these environment variables for specifying local directory containing your model checkpoints, and enable GPU inference to start running docker container.
```
export LLAMA_CHECKPOINT_DIR=~/.llama
```
> [!NOTE]
> `~/.llama` should be the path containing downloaded weights of Llama models.
To download and start running a pre-built docker container, you may use the following commands:
```
docker run -it -p 5000:5000 -v ~/.llama:/root/.llama --gpus=all llamastack/llamastack-local-gpu
```
> [!TIP]
> Pro Tip: We may use `docker compose up` for starting up a distribution with remote providers (e.g. TGI) using [llamastack-local-cpu](https://hub.docker.com/repository/docker/llamastack/llamastack-local-cpu/general). You can checkout [these scripts](https://github.com/meta-llama/llama-stack/llama_stack/distribution/docker/README.md) to help you get started.
### Build->Configure->Run Llama Stack server via conda
You may also build a LlamaStack distribution from scratch, configure it, and start running the distribution. This is useful for developing on LlamaStack.
**`llama stack build`**
- You'll be prompted to enter build information interactively.
```
llama stack build
> Enter an unique name for identifying your Llama Stack build distribution (e.g. my-local-stack): my-local-stack
> Enter the image type you want your distribution to be built with (docker or conda): conda
Llama Stack is composed of several APIs working together. Let's configure the providers (implementations) you want to use for these APIs.
> Enter the API provider for the inference API: (default=meta-reference): meta-reference
> Enter the API provider for the safety API: (default=meta-reference): meta-reference
> Enter the API provider for the agents API: (default=meta-reference): meta-reference
> Enter the API provider for the memory API: (default=meta-reference): meta-reference
> Enter the API provider for the telemetry API: (default=meta-reference): meta-reference
> (Optional) Enter a short description for your Llama Stack distribution:
Build spec configuration saved at ~/.conda/envs/llamastack-my-local-stack/my-local-stack-build.yaml
You can now run `llama stack configure my-local-stack`
```
**`llama stack configure`**
- Run `llama stack configure <name>` with the name you have previously defined in `build` step.
```
llama stack configure <name>
```
- You will be prompted to enter configurations for your Llama Stack
```
$ llama stack configure my-local-stack
Could not find my-local-stack. Trying conda build name instead...
Configuring API `inference`...
=== Configuring provider `meta-reference` for API inference...
Enter value for model (default: Llama3.1-8B-Instruct) (required):
Do you want to configure quantization? (y/n): n
Enter value for torch_seed (optional):
Enter value for max_seq_len (default: 4096) (required):
Enter value for max_batch_size (default: 1) (required):
Configuring API `safety`...
=== Configuring provider `meta-reference` for API safety...
Do you want to configure llama_guard_shield? (y/n): n
Do you want to configure prompt_guard_shield? (y/n): n
Configuring API `agents`...
=== Configuring provider `meta-reference` for API agents...
Enter `type` for persistence_store (options: redis, sqlite, postgres) (default: sqlite):
Configuring SqliteKVStoreConfig:
Enter value for namespace (optional):
Enter value for db_path (default: /home/xiyan/.llama/runtime/kvstore.db) (required):
Configuring API `memory`...
=== Configuring provider `meta-reference` for API memory...
> Please enter the supported memory bank type your provider has for memory: vector
Configuring API `telemetry`...
=== Configuring provider `meta-reference` for API telemetry...
> YAML configuration has been written to ~/.llama/builds/conda/my-local-stack-run.yaml.
You can now run `llama stack run my-local-stack --port PORT`
```
**`llama stack run`**
- Run `llama stack run <name>` with the name you have previously defined.
```
llama stack run my-local-stack
...
> initializing model parallel with size 1
> initializing ddp with size 1
> initializing pipeline with size 1
...
Finished model load YES READY
Serving POST /inference/chat_completion
Serving POST /inference/completion
Serving POST /inference/embeddings
Serving POST /memory_banks/create
Serving DELETE /memory_bank/documents/delete
Serving DELETE /memory_banks/drop
Serving GET /memory_bank/documents/get
Serving GET /memory_banks/get
Serving POST /memory_bank/insert
Serving GET /memory_banks/list
Serving POST /memory_bank/query
Serving POST /memory_bank/update
Serving POST /safety/run_shield
Serving POST /agentic_system/create
Serving POST /agentic_system/session/create
Serving POST /agentic_system/turn/create
Serving POST /agentic_system/delete
Serving POST /agentic_system/session/delete
Serving POST /agentic_system/session/get
Serving POST /agentic_system/step/get
Serving POST /agentic_system/turn/get
Serving GET /telemetry/get_trace
Serving POST /telemetry/log_event
Listening on :::5000
INFO: Started server process [587053]
INFO: Waiting for application startup.
INFO: Application startup complete.
INFO: Uvicorn running on http://[::]:5000 (Press CTRL+C to quit)
```
### End-to-end flow of building, configuring, running, and testing a Distribution
#### Step 1. Build
In the following steps, imagine we'll be working with a `Meta-Llama3.1-8B-Instruct` model. We will name our build `8b-instruct` to help us remember the config. We will start build our distribution (in the form of a Conda environment, or Docker image). In this step, we will specify:
- `name`: the name for our distribution (e.g. `8b-instruct`)
- `image_type`: our build image type (`conda | docker`)
- `distribution_spec`: our distribution specs for specifying API providers
- `description`: a short description of the configurations for the distribution
- `providers`: specifies the underlying implementation for serving each API endpoint
- `image_type`: `conda` | `docker` to specify whether to build the distribution in the form of Docker image or Conda environment.
At the end of build command, we will generate `<name>-build.yaml` file storing the build configurations.
After this step is complete, a file named `<name>-build.yaml` will be generated and saved at the output file path specified at the end of the command.
#### Building from scratch
- For a new user, we could start off with running `llama stack build` which will allow you to a interactively enter wizard where you will be prompted to enter build configurations.
```
llama stack build
```
Running the command above will allow you to fill in the configuration to build your Llama Stack distribution, you will see the following outputs.
```
> Enter an unique name for identifying your Llama Stack build distribution (e.g. my-local-stack): 8b-instruct
> Enter the image type you want your distribution to be built with (docker or conda): conda
Llama Stack is composed of several APIs working together. Let's configure the providers (implementations) you want to use for these APIs.
> Enter the API provider for the inference API: (default=meta-reference): meta-reference
> Enter the API provider for the safety API: (default=meta-reference): meta-reference
> Enter the API provider for the agents API: (default=meta-reference): meta-reference
> Enter the API provider for the memory API: (default=meta-reference): meta-reference
> Enter the API provider for the telemetry API: (default=meta-reference): meta-reference
> (Optional) Enter a short description for your Llama Stack distribution:
Build spec configuration saved at ~/.conda/envs/llamastack-my-local-llama-stack/8b-instruct-build.yaml
```
**Ollama (optional)**
If you plan to use Ollama for inference, you'll need to install the server [via these instructions](https://ollama.com/download).
#### Building from templates
- To build from alternative API providers, we provide distribution templates for users to get started building a distribution backed by different providers.
The following command will allow you to see the available templates and their corresponding providers.
```
llama stack build --list-templates
```
![alt text](https://github.com/meta-llama/llama-stack/docs/resources/list-templates.png)
You may then pick a template to build your distribution with providers fitted to your liking.
```
llama stack build --template local-tgi --name my-tgi-stack
```
```
$ llama stack build --template local-tgi --name my-tgi-stack
...
...
Build spec configuration saved at ~/.conda/envs/llamastack-my-tgi-stack/my-tgi-stack-build.yaml
You may now run `llama stack configure my-tgi-stack` or `llama stack configure ~/.conda/envs/llamastack-my-tgi-stack/my-tgi-stack-build.yaml`
```
#### Building from config file
- In addition to templates, you may customize the build to your liking through editing config files and build from config files with the following command.
- The config file will be of contents like the ones in `llama_stack/distributions/templates/`.
```
$ cat llama_stack/distribution/templates/local-ollama-build.yaml
name: local-ollama
distribution_spec:
description: Like local, but use ollama for running LLM inference
providers:
inference: remote::ollama
memory: meta-reference
safety: meta-reference
agents: meta-reference
telemetry: meta-reference
image_type: conda
```
```
llama stack build --config llama_stack/distribution/templates/local-ollama-build.yaml
```
#### How to build distribution with Docker image
> [!TIP]
> Podman is supported as an alternative to Docker. Set `DOCKER_BINARY` to `podman` in your environment to use Podman.
To build a docker image, you may start off from a template and use the `--image-type docker` flag to specify `docker` as the build image type.
```
llama stack build --template local --image-type docker --name docker-0
```
Alternatively, you may use a config file and set `image_type` to `docker` in our `<name>-build.yaml` file, and run `llama stack build <name>-build.yaml`. The `<name>-build.yaml` will be of contents like:
```
name: local-docker-example
distribution_spec:
description: Use code from `llama_stack` itself to serve all llama stack APIs
docker_image: null
providers:
inference: meta-reference
memory: meta-reference-faiss
safety: meta-reference
agentic_system: meta-reference
telemetry: console
image_type: docker
```
The following command allows you to build a Docker image with the name `<name>`
```
llama stack build --config <name>-build.yaml
Dockerfile created successfully in /tmp/tmp.I0ifS2c46A/DockerfileFROM python:3.10-slim
WORKDIR /app
...
...
You can run it with: podman run -p 8000:8000 llamastack-docker-local
Build spec configuration saved at ~/.llama/distributions/docker/docker-local-build.yaml
```
### Step 2. Configure
After our distribution is built (either in form of docker or conda environment), we will run the following command to
```
llama stack configure [ <name> | <docker-image-name> | <path/to/name.build.yaml>]
```
- For `conda` environments: <path/to/name.build.yaml> would be the generated build spec saved from Step 1.
- For `docker` images downloaded from Dockerhub, you could also use <docker-image-name> as the argument.
- Run `docker images` to check list of available images on your machine.
```
$ llama stack configure 8b-instruct
Configuring API: inference (meta-reference)
Enter value for model (existing: Meta-Llama3.1-8B-Instruct) (required):
Enter value for quantization (optional):
Enter value for torch_seed (optional):
Enter value for max_seq_len (existing: 4096) (required):
Enter value for max_batch_size (existing: 1) (required):
Configuring API: memory (meta-reference-faiss)
Configuring API: safety (meta-reference)
Do you want to configure llama_guard_shield? (y/n): y
Entering sub-configuration for llama_guard_shield:
Enter value for model (default: Llama-Guard-3-1B) (required):
Enter value for excluded_categories (default: []) (required):
Enter value for disable_input_check (default: False) (required):
Enter value for disable_output_check (default: False) (required):
Do you want to configure prompt_guard_shield? (y/n): y
Entering sub-configuration for prompt_guard_shield:
Enter value for model (default: Prompt-Guard-86M) (required):
Configuring API: agentic_system (meta-reference)
Enter value for brave_search_api_key (optional):
Enter value for bing_search_api_key (optional):
Enter value for wolfram_api_key (optional):
Configuring API: telemetry (console)
YAML configuration has been written to ~/.llama/builds/conda/8b-instruct-run.yaml
```
After this step is successful, you should be able to find a run configuration spec in `~/.llama/builds/conda/8b-instruct-run.yaml` with the following contents. You may edit this file to change the settings.
As you can see, we did basic configuration above and configured:
- inference to run on model `Meta-Llama3.1-8B-Instruct` (obtained from `llama model list`)
- Llama Guard safety shield with model `Llama-Guard-3-1B`
- Prompt Guard safety shield with model `Prompt-Guard-86M`
For how these configurations are stored as yaml, checkout the file printed at the end of the configuration.
Note that all configurations as well as models are stored in `~/.llama`
### Step 3. Run
Now, let's start the Llama Stack Distribution Server. You will need the YAML configuration file which was written out at the end by the `llama stack configure` step.
```
llama stack run 8b-instruct
```
You should see the Llama Stack server start and print the APIs that it is supporting
```
$ llama stack run 8b-instruct
> initializing model parallel with size 1
> initializing ddp with size 1
> initializing pipeline with size 1
Loaded in 19.28 seconds
NCCL version 2.20.5+cuda12.4
Finished model load YES READY
Serving POST /inference/batch_chat_completion
Serving POST /inference/batch_completion
Serving POST /inference/chat_completion
Serving POST /inference/completion
Serving POST /safety/run_shield
Serving POST /agentic_system/memory_bank/attach
Serving POST /agentic_system/create
Serving POST /agentic_system/session/create
Serving POST /agentic_system/turn/create
Serving POST /agentic_system/delete
Serving POST /agentic_system/session/delete
Serving POST /agentic_system/memory_bank/detach
Serving POST /agentic_system/session/get
Serving POST /agentic_system/step/get
Serving POST /agentic_system/turn/get
Listening on :::5000
INFO: Started server process [453333]
INFO: Waiting for application startup.
INFO: Application startup complete.
INFO: Uvicorn running on http://[::]:5000 (Press CTRL+C to quit)
```
> [!NOTE]
> Configuration is in `~/.llama/builds/local/conda/8b-instruct-run.yaml`. Feel free to increase `max_seq_len`.
> [!IMPORTANT]
> The "local" distribution inference server currently only supports CUDA. It will not work on Apple Silicon machines.
> [!TIP]
> You might need to use the flag `--disable-ipv6` to Disable IPv6 support
This server is running a Llama model locally.
### Step 4. Test with Client
Once the server is setup, we can test it with a client to see the example outputs.
```
cd /path/to/llama-stack
conda activate <env> # any environment containing the llama-stack pip package will work
python -m llama_stack.apis.inference.client localhost 5000
```
This will run the chat completion client and query the distributions /inference/chat_completion API.
Here is an example output:
```
User>hello world, write me a 2 sentence poem about the moon
Assistant> Here's a 2-sentence poem about the moon:
The moon glows softly in the midnight sky,
A beacon of wonder, as it passes by.
```
Similarly you can test safety (if you configured llama-guard and/or prompt-guard shields) by:
```
python -m llama_stack.apis.safety.client localhost 5000
```
Check out our client SDKs for connecting to Llama Stack server in your preferred language, you can choose from [python](https://github.com/meta-llama/llama-stack-client-python), [node](https://github.com/meta-llama/llama-stack-client-node), [swift](https://github.com/meta-llama/llama-stack-client-swift), and [kotlin](https://github.com/meta-llama/llama-stack-client-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](https://github.com/meta-llama/llama-stack-apps/tree/main/examples) repo.