- Vibe Coder MCP Server - v4 Final Release
Vibe Coder MCP Server - v4 Final Release
Vibe Coder MCP Server - v4 Final Release
IMPORTANT NOTICE: This is the final v4 release of the Vibe Coder MCP Server, which includes the Automatic Contextual Retrieval System (ACRS) tools. Development has moved to v5 in a separate repository. This version is being made available to the community as a stable, feature-complete release.
New in v4: Automatic Contextual Retrieval System (ACRS)
The v4 release introduces the Automatic Contextual Retrieval System, which enhances AI assistant capabilities through:
- Contextual memory: Stores and retrieves relevant information based on the current context
- Advanced caching: Reduces redundant LLM calls and improves response times
- Semantic search: Finds related content based on meaning rather than exact text matching
- Sequential thinking: Breaks down complex problems into manageable steps
These tools enable more coherent, context-aware interactions with LLM-based assistants.
Getting Started with GitHub Version
Quick Installation
-
Clone the repository:
git clone https://github.com/jsscarfo/vibe-coder-mcp-v4.git cd vibe-coder-mcp-v4 -
Setup:
- For Windows:
setup.bat - For macOS/Linux:
chmod +x setup.sh ./setup.sh
- For Windows:
-
Configure OpenRouter API Key:
- Create a
.envfile by copying.env.example - Add your OpenRouter API key to the
.envfile
- Create a
-
Integrate with your AI Assistant:
- Update your AI assistant's MCP configuration to include Vibe Coder
- See the full Setup Guide below for detailed instructions
ACRS Tools Usage
To use the Automatic Contextual Retrieval System tools:
-
Add memory entries:
Add to memory: [content to remember] -
Process requests with contextual enhancement:
Process request [your request] with context -
Enhance prompts for LLMs:
Enhance prompt: [your prompt] -
Get performance metrics:
Get retrieval metrics
See the detailed documentation below for more information.