Embeddings Searcher for Claude Code Documentation
A focused embeddings-based search system for navigating markdown documentation in code repositories.
Features
Semantic Search: Uses sentence transformers to find relevant documentation based on meaning, not just keywords
Markdown-Focused: Optimized for markdown documentation with intelligent chunking
Repository-Aware: Organizes and searches across multiple repositories
MCP Integration: Provides an MCP server for integration with Cursor/Claude
UV Package Management: Uses UV for fast dependency management
Quick Start for Claude Code
1. Clone and setup
2. Add your documentation
Place your documentation repositories in the repos/
directory.
3. Index your documentation
4. (Optional) Convert to ONNX for faster inference
5. Add MCP server to Claude Code
Replace
6. Use in Claude Code
Ask Claude Code questions like:
"Search for authentication patterns"
"Find API documentation"
"Look up configuration options"
The MCP server will automatically search through your indexed documentation and return relevant results.
Quick Start
1. Index Documentation
First, index all markdown documentation in your repositories:
This will:
Find all
.md
,.markdown
, and.txt
files in therepos/
directoryChunk them intelligently based on markdown structure
Generate embeddings using sentence transformers
Store everything in a SQLite database
2. Search Documentation
3. Get Statistics
MCP Server Integration
The project includes an MCP server for integration with Cursor/Claude:
MCP Tools Available
search_docs: Search through documentation using semantic similarity
list_repos: List all indexed repositories
get_stats: Get indexing statistics
get_document: Retrieve full document content by path
Project Structure
How It Works
Intelligent Chunking
The system chunks markdown documents based on:
Header structure (H1, H2, H3, etc.)
Content length (500 words per chunk)
Semantic boundaries
Embedding Generation
Uses
all-MiniLM-L6-v2
sentence transformer model by defaultSupports ONNX models for faster inference
Caches embeddings for efficient updates
Search Algorithm
Generates embedding for your query
Compares against all document chunks using cosine similarity
Returns ranked results with context and metadata
Supports repository-specific searches
CLI Options
embeddings_searcher.py
mcp_server.py
ONNX Model Conversion
For faster inference, you can convert the sentence transformer model to ONNX format:
Example Usage
Performance
Indexing: ~1400 documents in ~1 minute
Search: Sub-second response times
Storage: ~50MB for embeddings database with 6500+ chunks
Memory: ~500MB during indexing, ~200MB during search
Troubleshooting
Unicode Errors
Some files may have encoding issues. The system automatically falls back to latin-1 encoding for problematic files.
Large Files
Files larger than 1MB are automatically skipped to prevent memory issues.
Model Loading
If sentence-transformers is not available, the system will attempt to use ONNX models or fall back to dummy embeddings for testing.
This server cannot be installed
local-only server
The server can only run on the client's local machine because it depends on local resources.
Enables semantic search through markdown documentation in code repositories using AI embeddings. Provides intelligent document chunking and similarity-based search to help users find relevant documentation based on meaning rather than just keywords.