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An MCP Server for analysing Github Repo Content with Gitingest
An MCP server for gitingest that provides access to Git repository analysis through the Model Context Protocol (MCP). This server leverages the gitingest library to analyze Git repositories and make their content available in a format optimized for LLMs.
[!WARNING] Private repo support in gitingest is not yet on PyPI as of June 25th 2025. Once that is pushed, this MCP will automatically support it.
This MCP server provides a single unified tool for accessing Git repository data. It automatically handles repository ingestion as needed, so users can immediately query repository content without an explicit ingestion step.
gitingestThe server provides a single tool called gitingest that can be used to analyze Git repositories. The tool accepts the following parameters:
repo_uri (required): URL or local path to the Git repositoryresource_type: Type of data to retrieve (summary, tree, content, or all). Default is summary.max_file_size: Maximum file size in bytes to include in the analysis. Default is 10MB.include_patterns: Comma-separated patterns of files to include in the analysis.exclude_patterns: Comma-separated patterns of files to exclude from the analysis.branch: Specific branch to analyze.output: File path to save the output to.max_tokens: Truncates the response to a specified number of tokens.You can ingest private GitHub repositories by providing a GitHub Personal Access Token (PAT).
Recommended: Set an Environment Variable in your MCP Config
This is the best approach for persistent configuration. Add an env block to your server definition in your MCP configuration file. The gitingest library will automatically use the GITHUB_TOKEN environment variable.
"mcpServers": {
"trelis-gitingest-mcp": {
"command": "uvx",
"args": [
"trelis-gitingest-mcp"
],
"env": {
"GITHUB_TOKEN": "github_pat_..."
}
}
}
For large repositories, it's recommended to first request only the summary (which is the default). After ingestion, you can access more detailed information through the resources:
tree resource to explore the repository structurecontent resource to access the full content (if not too large)If the repository is too large, consider using include_patterns and/or exclude_patterns to limit the scope of the ingestion.
After you call the gitingest tool for a repository, the server defines resources for that repository:
These resources can be accessed individually via the resources interface in any MCP-compatible client. This is useful for browsing or fetching specific aspects of a repository after ingestion.
To use this MCP server from PyPI, add the following to your MCP config:
"mcpServers": {
"trelis-gitingest-mcp": {
"command": "uvx",
"args": [
"trelis-gitingest-mcp"
]
}
}
To run directly from the GitHub repository:
"mcpServers": {
"trelis-gitingest-mcp": {
"command": "uvx",
"args": [
"git+https://github.com/TrelisResearch/trelis-gitingest-mcp"
]
}
}
To prepare the package for distribution:
uv sync
uv build
uv publish
The best way to debug MCP servers is with the MCP Inspector.
You can launch the Inspector with your local server using this command:
npx @modelcontextprotocol/inspector uv --directory /Users/RonanMcGovern/TR/trelis-gitingest-mcp run trelis-gitingest-mcp
or using uvx for the mcp server:
npx @modelcontextprotocol/inspector uvx https://github.com/TrelisResearch/trelis-gitingest-mcp.git
or using the PyPI package:
npx @modelcontextprotocol/inspector uvx trelis-gitingest-mcp
Upon launching, the Inspector will display a URL that you can access in your browser to begin debugging.
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