reaper-mcp-server
Language:
Python
Stars:
23
Forks:
4
Reaper MCP Server
This is a simple MCP server that connects a Reaper project to an MCP client like Claude Desktop and enables you to ask questions about the project.
Tools
find_reaper_projects
: Finds all Reaper projects in the directory you specified in the config.parse_reaper_project
: Parses a Reaper project and returns a JSON object.
These tools work in tandem. When you ask Claude a question about a specific Reaper project, it will use the find_reaper_projects
tool to find the project, then use the parse_reaper_project
tool to parse the project and answer your question. To see all data that is parsed from the project, check out the src/domains/reaper_dataclasses.py
file.
Setup
-
Install Dependencies
uv venv source .venv/bin/activate uv pip install .
-
Configure Claude Desktop
- Follow the instructions to configure Claude Desktop for use with a custom MCP server
- Find the sample config in
setup/claude_desktop_config.json
- Update the following paths in the config:
- Your
uv
installation path - Your Reaper project directory
- This server's directory
- Your
-
Launch and Configure
- Open Claude Desktop
- Look for the hammer icon in the bottom right of your chat box
- Click the hammer icon to verify you see two Reaper tools available:
find_reaper_projects
parse_reaper_project
-
Ask Away!
- Ask questions about your Reaper project
- Always include the name of the specific Reaper project you're asking about
- You can expand the tool boxes to see the raw project data being passed to Claude
Publisher info
More MCP servers built with Python
Create, backtest, and execute trades directly in one chat box. The Composer MCP Server gives LLMs the power to backtest investment ideas and execute automated trading strategies. Trade across stocks, ETFs, and crypto directly in Claude.
An MCP to generate presentations with AI. Create and edit PowerPoint presentations with AI.
The PaddleOCR MCP server brings enterprise-grade OCR and document parsing capabilities to AI applications. Built on PaddleOCR — a proven solution with 50,000+ GitHub stars, deeply integrated by leading projects like MinerU, RAGFlow, and OmniParser— with targeted optimizations based on the MCP concept.