A Python project that creates a Model Context Protocol (MCP) server for accessing MLB statistics data through the MLB Stats API and pybaseball library for statcast, fangraphs, and baseball reference statistics. This server provides structured API access to baseball statistics that can be used with MCP-compatible clients.
mlb_stats_mcp/- Main package directoryserver.py- Core MCP server implementationtools/- MCP tool implementationsmlb_statsapi_tools.py- MLB StatsAPI tool definitionsstatcast_tools.py- Statcast data tool definitionspybaseball_plotting_tools.py- Additionalpybaseballtools provided for generating matplotlib plots and returning base64 encoded imagespybaseball_supp_tools.py- Supplementalpybaseballfunctions for interfacing with fangraphs, baseball reference, and other data sources
utils/- Utility moduleslogging_config.py- Logging configurationimages.py- functions related to handling plot images
tests/- Test suite for verifying server functionality
pyproject.toml- Project configuration and dependencies.pre-commit-config.yaml- Pre-commit hooks configuration.github/- GitHub Actions workflows
- Install uv if you haven't already:
curl -LsSf https://astral.sh/uv/install.sh | sh- Create and activate a virtual environment:
uv venv
source .venv/bin/activate # On Unix/macOS
# or
.venv\Scripts\activate # On Windows- Install dependencies:
uv pip install -e .To install MLB Stats Server for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @etweisberg/mlb-mcp --client claudeThe project includes comprehensive pytest tests for the MCP server functionality:
uv run pytest -vTests verify all MLB StatsAPI tools work correctly with the MCP protocol, establishing connections, making API calls, and processing responses.
The project uses environment variables stored in .env to configure settings.
Use ANTHROPIC_API_KEY to enable MCP Server.
The MLB Stats MCP Server supports configurable logging via environment variables:
MLB_STATS_LOG_LEVEL- Sets the logging level (DEBUG, INFO, WARNING, ERROR, CRITICAL)MLB_STATS_LOG_FILE- Path to log file (if not set, logs to stdout)
To connect this MCP server to Claude Desktop, add a configuration to your claude_desktop_config.json file. Here's a template configuration:
"mcp-baseball-stats": {
"command": "{PATH_TO_UV}",
"args": [
"--directory",
"{PROJECT_DIRECTORY}",
"run",
"python",
"-m",
"mlb_stats_mcp.server"
],
"env": {
"MLB_STATS_LOG_FILE": "{LOG_FILE_PATH}",
"MLB_STATS_LOG_LEVEL": "DEBUG"
}
}Replace the following placeholders:
{PATH_TO_UV}: Path to your uv installation (e.g.,~/.local/bin/uv){PROJECT_DIRECTORY}: Path to your project directory{LOG_FILE_PATH}: Path where you want to store the log file
mcp[cli]- Machine-Learning Chat Protocol for tool definitionmlb-statsapi- Python wrapper for the MLB Stats APIhttpx- HTTP client for making API requestspytestandpytest-asyncio- Test frameworksuv- Fast Python package manager and installer
This project uses Ruff for linting and code formatting, with pre-commit hooks to ensure code quality.
- Install pre-commit:
pip install pre-commit- Initialize pre-commit hooks:
pre-commit installNow, the linting checks will run automatically whenever you commit code. You can also run them manually:
pre-commit run --all-filesLinting rules are configured in the pyproject.toml file under the [tool.ruff] section. The project follows PEP 8 style guidelines with some customizations.
GitHub Actions workflows automatically run tests, linting, and pre-commit checks on all pull requests and pushes to the main branch.