Rubber Duck MCP
A tool that applies rubber duck debugging techniques to AI development environments.
Rubber Duck MCP
Description
Rubber Duck MCP is a Model Context Protocol (MCP) tool that brings the power of rubber duck debugging to your AI development environment. Rubber duck debugging is a proven technique in software engineering, where articulating a problem in natural language—often to an inanimate object like a rubber duck—can illuminate solutions and clarify thought processes. This method, first popularized in The Pragmatic Programmer (Hunt & Thomas, 1999), is widely recognized for its effectiveness in:
- Revealing hidden assumptions and logical errors
- Encouraging step-by-step reasoning
- Facilitating deeper understanding through explanation
- Reducing cognitive load by externalizing thought
"In describing what the code is supposed to do and observing what it actually does, any incongruity between these two becomes apparent." — Wikipedia: Rubber Duck Debugging
By integrating this method into an LLM-powered IDE, Rubber Duck MCP enables developers and AI agents to:
- Debug more effectively by explaining problems to a non-judgmental, always-available listener
- Enhance LLM reasoning by prompting the model to articulate and reflect on its own logic
- Accelerate problem-solving by surfacing solutions through structured self-explanation
For further reading:
- Rubber Duck Debugging (rubberduckdebugging.com)
- The Psychology Underlying the Power of Rubber Duck Debugging
Installation
Prerequisites
- Python 3.8+
- fastmcp (install via pip)
Steps
- Clone the repository:
git clone https://github.com/Omer-Sadeh/RubberDuckMCP.git cd RubberDuckMCP - Create and activate a virtual environment (recommended):
python3 -m venv .venv source .venv/bin/activate - Install dependencies:
pip install -r requirements.txt - Add Rubber Duck MCP to Cursor (or another AI IDE supporting MCP):
- Open your
.cursor/mcp.jsonfile (or the equivalent configuration for your IDE). - Add an entry for Rubber Duck MCP, specifying the venv's Python executable and the path to
RubberMCP.py. For example:{ "mcpServers": { "rubber-duck": { "command": "/absolute/path/to/RubberDuckMCP/.venv/bin/python", "args": [ "/absolute/path/to/RubberDuckMCP/RubberMCP.py" ] } } } - Adjust the
commandandargsfields to match your virtual environment's Python executable and the path toRubberMCP.pyon your system. - Save the file and restart Cursor (or your IDE) to load the new MCP server.
- Open your
Usage
Once configured, use the explain_to_duck tool to articulate your problem or code issue. The Rubber Duck MCP will listen and respond, helping you clarify your thinking and uncover solutions.
License
This project is licensed under the MIT License. Everyone is welcome to contribute, fork, and copy this repository. Collaboration and open-source contributions are highly encouraged!
Máy chủ liên quan
Scout Monitoring MCP
nhà tài trợPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
nhà tài trợAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
MCP-Compose
Orchestration tool for managing multiple MCP servers with a Docker Compose-style interface and a unified HTTP proxy.
MCP Agent Orchestration System
A state-based agent orchestration system using the Model Context Protocol (MCP).
LaTeX to MathML MCP Server
Converts LaTeX mathematical expressions to MathML format using MathJax-node.
repomemory
Persistent, structured memory for AI coding agents. Your repo never forgets.
XRPL MCP
An MCP server for the XRP Ledger blockchain, offering tools for wallet operations, token management, NFTs, and DEX trading.
Dart MCP
An example MCP server built with Dart and deployed on Cloudflare Workers.
Trading Simulator
An MCP server for interacting with the Trading Simulator API to simulate trading activities.
Qwen-Agent
A framework for developing LLM applications with capabilities like tool usage, planning, and memory, based on the Qwen model.
Unified MCP & A2A Server
A Google Apps Script server that unifies Model Context Protocol (MCP) and Agent2Agent (A2A) for Google Workspace users.
Universal Infinite Loop MCP Server
A goal-agnostic parallel orchestration framework implementing Infinite Agentic Loop patterns as a Model Context Protocol (MCP) server.