Chess UCI
Connect to UCI-compatible chess engines like Stockfish to play and analyze games. Requires a local chess engine binary.
chess-uci-mcp
An MCP bridge that provides an interface to UCI chess engines (such as Stockfish).
Dependencies
You need to have Python 3.10 or newer, and also uv/uvx installed.
Usage
To function, it requires an installed UCI-compatible chess engine, like Stockfish (has been tested with Stockfish 17).
In case of Stockfish, you can download it from https://stockfishchess.org/download/.
On macOS, you can use brew install stockfish.
You need to find out the path to your UCI-capable engine binary; for further example configuration, the path is e.g. /usr/local/bin/stockfish (which is default for Stockfish installed on macOS using Brew).
The further configuration should be done in your MCP setup;
for Claude Desktop, this is the file claude_desktop_config.json (find it in Settings menu, Developer, then Edit Config).
The full path on different OSes
- macOS:
~/Library/Application\ Support/Claude/claude_desktop_config.json - Windows:
%APPDATA%/Claude/claude_desktop_config.json - Linux:
~/.config/Claude/claude_desktop_config.json
Add the following settings to your MCP configuration (depending on the way to run it you prefer):
Uvx (recommended)
Uvx is able to directly run the Python application by its name, ensuring all the dependencies, in a automatically-created virtual environment.
This is the preferred way to run the chess-uci-mcp bridge.
Set up your MCP server configuration (e.g. Claude Desktop configuration) file as following:
"mcpServers": {
"chess-uci-mcp": {
"command": "uvx",
"args": ["chess-uci-mcp@latest", "/usr/local/bin/stockfish"]
}
}
To pass options to the engine, add them to the args array. For example, to set the Threads and Hash options for Stockfish:
"mcpServers": {
"chess-uci-mcp": {
"command": "uvx",
"args": [
"chess-uci-mcp@latest",
"/usr/local/bin/stockfish",
"-o", "Threads", "4",
"-o", "Hash", "128"
]
}
}
Uv
Use it if you have the repository cloned locally and run from it:
"mcpServers": {
"chess-uci-mcp": {
"command": "uv",
"args": ["run", "chess-uci-mcp", "/usr/local/bin/stockfish"]
}
}
Similarly, to pass options when running with uv:
"mcpServers": {
"chess-uci-mcp": {
"command": "uv",
"args": [
"run",
"chess-uci-mcp",
"/usr/local/bin/stockfish",
"-o", "Threads", "4",
"-o", "Hash", "128"
]
}
}
Command-line Options
The application accepts the following command-line options:
ENGINE_PATH: (Required) The path to the UCI-compatible chess engine executable.--uci-optionor-o: Set a UCI option. This option can be used multiple times. It takes two arguments: the option name and its value (e.g.,-o Threads 4).--think-time: The default thinking time for the engine in milliseconds. Defaults to1000.--debug: Enable debug logging.
Available MCP Commands
The bridge provides the following MCP commands:
analyze- Analyze a chess position specified by FEN stringget_best_move- Get the best move for a chess positionset_position- Set the current chess positionengine_info- Get information about the chess engine
Development
# Clone the repository
git clone https://github.com/AnglerfishChess/chess-uci-mcp.git
# ... or
# git clone [email protected]:AnglerfishChess/chess-uci-mcp.git
cd chess-uci-mcp
# Create a virtual environment
uv venv --python python3.10
# Activate the virtual environment
source .venv/bin/activate # On Unix/macOS
# or
.venv\Scripts\activate # On Windows
# Install the package in development mode
# uv pip install -e .
# or, with development dependencies
uv pip install -e ".[dev]"
# Resync the packages:
uv sync --extra=dev
# Run tests
pytest
# Check code style
ruff check
Release process
- Bump version in
pyproject.toml,chess_uci_mcp/__init__.pyanduv.lock. - Build and publish:
uv build
uv-publish
We use uv-publish (install via uvx uv-publish or as dev dependency) because it automatically reads PyPI credentials from ~/.pypirc.
- Tag and push:
git tag v0.x.x
git push && git push --tags
Related sites
İlgili Sunucular
mcp-swiss
Swiss open data MCP server — transport, weather, geodata, companies, etc,. Zero API keys.
Minecraft MCP
Control a Minecraft character to build, explore, and interact with the game world using natural language.
Decompose
Decompose text into classified semantic units — authority, risk, attention, entities. No LLM. Deterministic.
Frase.io
SEO, GEO & AI Visibility — research, write, optimize, publish & monitor content. 95 tools, 9 agent skills, 11 prompts, 7 workflows. Built-in CMS hosting.
Interior Design 3D MCP
7 tools for interior design 3D visualization — room planner, AR furniture placement, material switcher, lighting design, virtual room tours with SceneView.
TikTok Ads MCP
Connect TikTok Ads to Claude or ChatGPT via Two Minute Reports MCP and get accurate insights on top-performing campaigns, videos, watch time, CTR, CPA, and conversions.
AstraCipher
Cryptographic identity MCP server for AI agents using W3C DIDs, Verifiable Credentials, and NIST post-quantum cryptography (ML-DSA-65 FIPS 204).
Chart Library
Pattern intelligence API for AI agents. Search 24M historical chart patterns, get forward returns, market regime analysis, and AI summaries for any stock ticker.
xmcp.dev
The TypeScript framework for building & shipping MCP servers
SO-ARM100 Robot Control with MCP
Control SO-ARM100 and LeKiwi robot arms using LLM-based AI agents.