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!
関連サーバー
Scout Monitoring MCP
スポンサーPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
スポンサーAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
MCP Chain
A composable middleware framework for building sophisticated MCP server chains, inspired by Ruby Rack.
GraphQL API Explorer
Provides intelligent introspection and exploration capabilities for any GraphQL API.
Md2svg
Converts Markdown text to SVG images.
Dev/Infra
MCP server that gives LLMs full control over local Kubernetes dev environments via k3d, kubectl, Tilt, Helm, and kustomize
Tripwire
Context injection for AI agents via MCP. Define path-based policies in YAML — when an agent reads a matching file, relevant knowledge is auto-injected. Prevents mistakes before they happen. Works with Claude Code, Cursor, and any MCP client.
Untun
Create secure tunnels to expose local servers to the internet using untun.
MediaWiki MCP Server
Enables LLM clients to interact with any MediaWiki wiki using the Model Context Protocol.
Crates MCP Server
Query Rust crates from crates.io and docs.rs. Search for crates, get info, versions, dependencies, and documentation.
Shrike Security
AI agent security scanner — protect LLM-powered apps from prompt injection, SQL injection, data exfiltration, and adversarial attacks via MCP.
Matware E2E Runner
JSON-driven E2E test runner with parallel Chrome pool execution, visual verification, and 16 MCP tools.