CodeCompass

Created By
alvinveroya year ago
CodeCompass: AI-powered Vibe Coding with MCP. Connects Git repositories to AI assistants like Claude, using Ollama for privacy or OpenAI for cloud. Integrates with VSCode, Cursor, and more.
Overview

what is CodeCompass?

CodeCompass is an AI-powered Node.js MCP server designed for Git repository analysis, transforming your codebase into an AI-driven knowledge base that enhances coding efficiency and reduces errors.

how to use CodeCompass?

To use CodeCompass, you can either clone the repository and install dependencies or run it directly using npx with your local Git repository path.

key features of CodeCompass?

  • Codebase Analysis: Indexes Git repositories and stores code/docs in Qdrant.
  • AI-Driven Context: Generates context-aware prompts with code summaries and documentation.
  • Diff Tracking: Keeps track of repository updates with timestamps.
  • Developer Tools: Provides resources and tools for searching code and generating suggestions.

use cases of CodeCompass?

  1. Streamlining coding processes for developers.
  2. Reducing errors in code by providing context-aware suggestions.
  3. Gaining insights into project structure and documentation.

FAQ from CodeCompass?

  • What are the prerequisites for using CodeCompass?

You need Node.js (v20+), Docker for Qdrant, and Ollama with specific models.

  • Is CodeCompass open-source?

Yes! CodeCompass is MIT-licensed and open-source.

  • How can I contribute to CodeCompass?

Contributions are welcome! Please refer to the CONTRIBUTING.md file in the repository.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
alvinveroy
Star
5
Language
TypeScript
License
MIT license

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