llama-swap

llama-swap

Docker app from grtgbln's Repository

Overview

Run multiple generative AI models on your machine and hot-swap between them on demand. llama-swap works with any OpenAI and Anthropic API compatible server and is used by thousands of people to power their local AI workflows.

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llama-swap

Run multiple generative AI models on your machine and hot-swap between them on demand. llama-swap works with any OpenAI and Anthropic API compatible server and is used by thousands of people to power their local AI workflows.

Built in Go for performance and simplicity, llama-swap has zero dependencies and is incredibly easy to set up. Get started in minutes - just one binary and one configuration file.

Features:

  • ✅ Easy to deploy and configure: one binary, one configuration file. no external dependencies
  • ✅ On-demand model switching
  • ✅ Use any local OpenAI compatible server (llama.cpp, vllm, tabbyAPI, stable-diffusion.cpp, etc.)
    • future proof, upgrade your inference servers at any time.
  • ✅ OpenAI API supported endpoints:
    • v1/completions
    • v1/chat/completions
    • v1/responses
    • v1/embeddings
    • v1/models - list available models
    • v1/audio/speech (#36)
    • v1/audio/transcriptions (docs)
    • v1/audio/voices
    • v1/images/generations
    • v1/images/edits
  • ✅ Anthropic API supported endpoints:
    • v1/messages
    • v1/messages/count_tokens
  • ✅ llama-server (llama.cpp) supported endpoints
    • v1/rerank, v1/reranking, /rerank
    • /infill - for code infilling
    • /completion - for completion endpoint
    • /props - requires ?model={model_id} query parameter to be provided. The autoload parameter is not supported and will be ignored.
  • ✅ SDAPI via stable-diffusion.cpp's server
    • /sdapi/v1/txt2img
    • /sdapi/v1/img2img
    • /sdapi/v1/loras - requires model in request body to fetch the correct loras
  • ✅ llama-swap API
    • /ui - web UI
    • /upstream/:model_id - direct access to upstream server (demo)
    • /running - list currently running models (#61)
    • POST /api/models/unload - manually unload all running models (#58)
    • POST /api/models/unload/:model_id - unload a specific model
    • /logs - remote log monitoring
      • GET /logs returns buffered plain text logs.
        • If Accept: text/html is sent, /logs redirects to /ui/.
      • GET /logs/stream keeps the connection open for live log streaming.
        • Stream endpoints send buffered history first by default; add ?no-history to stream only new lines.
      • GET /logs/stream/proxy streams proxy logs only.
      • GET /logs/stream/upstream streams upstream process logs only.
      • GET /logs/stream/{model_id} streams logs for one model (including IDs with slashes, like author/model).
    • /health - just returns "OK"
    • /metrics - system and GPU metrics for prometheus
  • ✅ API Key support - define keys to restrict access to API endpoints
  • ✅ Customizable
    • Run concurrent models with a custom DSL swap matrix (#643)
    • Automatic unloading of models after timeout by setting a ttl
    • Docker and Podman support using cmd and cmdStop together
    • Preload models on startup with hooks (#235)
    • Apply filters to requests to control inference with stripParams, setParams and setParamsByID

Web UI

llama-swap includes a real time web interface with a playground for testing out all sorts of local models:

image

View detailed token metrics:

image

Inspect request and responses:

image

Manually load and unload models:

image

Real time log streaming:

image

Installation

llama-swap can be installed in multiple ways

  1. Docker
  2. Homebrew (macOS and Linux)
  3. MacPorts (macOS)
  4. WinGet
  5. From release binaries
  6. From source

Docker Install (download images)

Two types of container images are built nightly for llama-swap:

  1. A unified container with llama-server, ik-llama-server, stable-diffusion.cpp, whisper.cpp and llama-swap built from source. This is only available for cuda and vulkan but has more capabilities. This one is recommended for use.
  2. A legacy image that is based on llama.cpp's images and llama-swap copied into the container. Use this one if you prefer to stay close to llama.cpp's container images.

Unified container (Recommended)

$ docker pull ghcr.io/mostlygeek/llama-swap:unified-cuda

# run with a custom configuration and models directory
$ docker run -it --rm --runtime nvidia -p 9292:8080 \
 -v /path/to/models:/models \
 -v /path/to/custom/config.yaml:/etc/llama-swap/config/config.yaml \
 ghcr.io/mostlygeek/llama-swap:unified-cuda

Legacy container

$ docker pull ghcr.io/mostlygeek/llama-swap:cuda

# run with a custom configuration and models directory
$ docker run -it --rm --runtime nvidia -p 9292:8080 \
 -v /path/to/models:/models \
 -v /path/to/custom/config.yaml:/app/config.yaml \
 ghcr.io/mostlygeek/llama-swap:cuda
more examples
# pull latest images per platform
docker pull ghcr.io/mostlygeek/llama-swap:cpu
docker pull ghcr.io/mostlygeek/llama-swap:cuda
docker pull ghcr.io/mostlygeek/llama-swap:vulkan
docker pull ghcr.io/mostlygeek/llama-swap:intel
docker pull ghcr.io/mostlygeek/llama-swap:musa

# tagged llama-swap, platform and llama-server version images
docker pull ghcr.io/mostlygeek/llama-swap:v166-cuda-b6795

# non-root cuda
docker pull ghcr.io/mostlygeek/llama-swap:cuda-non-root

Homebrew Install (macOS/Linux)

brew tap mostlygeek/llama-swap
brew install llama-swap
llama-swap --config path/to/config.yaml --listen localhost:8080

MacPorts (macOS)

[!NOTE] Maintained by MacPorts community - llama-swap port. It is not an official part of llama-swap.

sudo port install llama-swap
llama-swap --config path/to/config.yaml --listen localhost:8080

WinGet Install (Windows)

[!NOTE] WinGet is maintained by community contributor Dvd-Znf (#327). It is not an official part of llama-swap.

# install
C:\> winget install llama-swap

# upgrade
C:\> winget upgrade llama-swap

Pre-built Binaries

Binaries are available on the release page for Linux, Mac, Windows and FreeBSD.

Building from source

  1. Building requires Go and Node.js (for UI).
  2. git clone https://github.com/mostlygeek/llama-swap.git
  3. make clean all
  4. look in the build/ subdirectory for the llama-swap binary

Configuration

# minimum viable config.yaml

models:
  model1:
    cmd: llama-server --port ${PORT} --model /path/to/model.gguf

That's all you need to get started:

  1. models - holds all model configurations
  2. model1 - the ID used in API calls
  3. cmd - the command to run to start the server.
  4. ${PORT} - an automatically assigned port number

Almost all configuration settings are optional and can be added one step at a time:

  • Advanced features
    • matrix to run concurrent models with a custom swap logic DSL
    • hooks to run things on startup
    • macros reusable snippets
  • Model customization
    • ttl to automatically unload models
    • aliases to use familiar model names (e.g., "gpt-4o-mini")
    • env to pass custom environment variables to inference servers
    • cmdStop gracefully stop Docker/Podman containers
    • useModelName to override model names sent to upstream servers
    • ${PORT} automatic port variables for dynamic port assignment
    • filters rewrite parts of requests before sending to the upstream server

See the configuration documentation for all options.

How does llama-swap work?

When a request is made to an OpenAI compatible endpoint, llama-swap will extract the model value and load the appropriate server configuration to serve it. If the wrong upstream server is running, it will be replaced with the correct one. This is where the "swap" part comes in. The upstream server is automatically swapped to handle the request correctly.

In the most basic configuration llama-swap handles one model at a time. For more advanced use cases, using a matrix allows multiple models to be loaded at the same time. You have complete control over how your system resources are used.

Reverse Proxy Configuration (nginx)

If you deploy llama-swap behind nginx, disable response buffering for streaming endpoints. By default, nginx buffers responses which breaks Server‑Sent Events (SSE) and streaming chat completion. (#236)

Recommended nginx configuration snippets:

# SSE for UI events/logs
location /api/events {
    proxy_pass http://your-llama-swap-backend;
    proxy_buffering off;
    proxy_cache off;
}

# Streaming chat completions (stream=true)
location /v1/chat/completions {
    proxy_pass http://your-llama-swap-backend;
    proxy_buffering off;
    proxy_cache off;
}

As a safeguard, llama-swap also sets X-Accel-Buffering: no on SSE responses. However, explicitly disabling proxy_buffering at your reverse proxy is still recommended for reliable streaming behavior.

Monitoring Logs on the CLI

# sends up to the last 10KB of logs
$ curl http://host/logs

# streams combined logs
curl -Ns http://host/logs/stream

# stream llama-swap's proxy status logs
curl -Ns http://host/logs/stream/proxy

# stream logs from upstream processes that llama-swap loads
curl -Ns http://host/logs/stream/upstream

# stream logs only from a specific model
curl -Ns http://host/logs/stream/{model_id}

# stream and filter logs with linux pipes
curl -Ns http://host/logs/stream | grep 'eval time'

# appending ?no-history will disable sending buffered history first
curl -Ns 'http://host/logs/stream?no-history'

Do I need to use llama.cpp's server (llama-server)?

Any OpenAI compatible server would work. llama-swap was originally designed for llama-server and it is the best supported.

For Python based inference servers like vllm or tabbyAPI it is recommended to run them via podman or docker. This provides clean environment isolation as well as responding correctly to SIGTERM signals for proper shutdown.

Star History

[!NOTE] Thank you to everyone who has given this project a ⭐️!

Star History

Star History Chart

Install llama-swap on Unraid in a few clicks.

Find llama-swap in Community Apps on your Unraid server, review the template, and click Install. Unraid handles the Docker app or plugin setup from the published template.

Open the Apps tab on your Unraid server Search Community Apps for llama-swap Review the template variables and paths Click Install

Requirements


        Expects a `config.yaml` file at the Config File path BEFORE starting the container.
    

Related apps

Details

Repository
ghcr.io/mostlygeek/llama-swap:unified-cuda
Last Updated2026-07-07
First Seen2026-06-29

Runtime arguments

Web UI
http://[IP]:[PORT:8080]/
Network
bridge
Privileged
false
Extra Params
--runtime=nvidia --gpus all

Template configuration

Web UI PortPorttcp

Container Port: 8080

Target
8080
Default
9292
Value
9292
Config File

Path to the config file

Target
/etc/llama-swap/config/config.yaml
Default
/mnt/user/appdata/llama_swap/config.yaml
Value
/mnt/user/appdata/llama_swap/config.yaml
Models StoragePath

Path to models

Target
/models
Default
/mnt/user/appdata/llama_swap/models
Value
/mnt/user/appdata/llama_swap/models