ai-distiller-mcp
Provides filesystem access to Claude via the MCP protocol, enabling local file operations through natural language.
README
My MCP for Filesystem Access for Claude
References
TL;DR
Only works in local Claude for now.
TODO: dxt package is too big to be added as an extension. Fix this
To test it locally:
uv pip compile pyproject.toml > requirements.txtuv run mcp-server --debug
To run it in Claude, add this to your claude_config.json file:
"ai_distiller": {
"command": "uv",
"args": [
"--directory", "/Users/fperez/dev/ai-distiller-mcp",
"run",
"mcp-server"
]
},
Dev
Requirements
pixiuv
Install dev env
pixi clean ; pixi install
Run local server for dev purposes
pixi run python -m server.main --debug
Testing it with Anthropic MCP Inspector
NOTE: Shutdown the local server if you started it
Open the inspector:
DANGEROUSLY_OMIT_AUTH=true npx @modelcontextprotocol/inspector
And then:
- go to the URL specified
- select stdio as connection method
- put
pixiinCommandinput box - put
run python server/main.py --debugin theArgumentsinput box - click connect
- go to tools and list them
NOTE For testing the server as extension is run when added to Claude try:
PYTHONPATH="/Users/fperez/Library/Application Support/Claude/Claude Extensions/local.dxt.francisco-perez-sorrosal.ai-distiler-mcp/server/lib" python /Users/fperez/Library/Application\ Support/Claude/Claude\ Extensions/local.dxt.francisco-perez-sorrosal.ai-distiler-mcp/server/main.py --debug
Packaging MCP server as DXT
TODO!!!
Init the dxt
TODO This does not implemented yet
Init dxt project with a manifest
npx @anthropic-ai/dxt init --yes
Note When creating the manifest, in the mpc_config section, put the full path to the python interpreter -> "command": "/Users/fperez/.pyenv/shims/python"
Bundle Python libs and Package Project
TODO This is not implemented yet
pixi install
pixi run bundle
pixi run pack
The output .dxt file is created on the dxt-package directory. Once the .dxt file is created you can drag and drop it to Claude (in the Settings/Extensions section.)
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