mcp-semantic-search
Indexes codebases using semantic embeddings for natural language search, enabling developers to find code with queries like 'how does authentication work'.
README
MCP Semantic Search
A Model Context Protocol (MCP) server that indexes codebases using semantic embeddings for natural language search.
Features
- 🔍 Semantic Code Search – Find code using natural language queries instead of exact text matching
- ⚡ Fast Indexing – Efficient chunking and batch embedding with background processing
- 🧠 Smart Chunking – Language-aware code splitting:
- Python: Function/class boundary detection
- Others: Line-based with configurable overlap
- 🌐 Multi-language Support – Python, JavaScript, TypeScript, JSX, TSX, Markdown, YAML, JSON, HTML, CSS, Bash, SQL, and more
- 👀 Live Watch – Automatically re-index on file changes with debouncing
- 🔄 Incremental Updates – Reindex only changed files without full rebuild
- 🗑️ Deletion Handling – Automatically removes chunks for deleted files
- 📊 Status Tracking – Real-time indexing progress and queue monitoring
Quick Start
Prerequisites
- Python 3.12 or higher
- Qdrant vector database (running locally or remotely)
- Google Gemini API key
Installation
# Using uvx (recommended - no installation needed)
uvx mcp-semantic-search
# Or install with pip
pip install mcp-semantic-search
Configuration
Set environment variables:
export GEMINI_API_KEY="your_gemini_api_key"
export QDRANT_URL="http://localhost:6333"
Optional environment variables:
# Embedding model (default: text-embedding-004)
export GEMINI_EMBEDDING_MODEL="text-embedding-004"
# Chunk configuration (defaults: 50/10/5)
export CHUNK_MAX_LINES=50 # Max lines per chunk
export CHUNK_OVERLAP_LINES=10 # Overlap between chunks
export CHUNK_MIN_LINES=5 # Min lines for valid chunk
Or create a .env file:
GEMINI_API_KEY=your_gemini_api_key
QDRANT_URL=http://localhost:6333
Running Qdrant
# Using Docker
docker run -p 6333:6333 qdrant/qdrant
# Or using docker-compose
echo '
services:
qdrant:
image: qdrant/qdrant
ports:
- "6333:6333"
' | docker-compose -f - up
Usage with Claude Code
Method 1: Using MCP Config JSON (Recommended)
Edit your Claude Code MCP configuration file (~/.claude.json or ~/.config/claude/config.json):
{
"mcpServers": {
"semantic-search": {
"type": "stdio",
"command": "uvx",
"args": ["mcp-semantic-search"],
"env": {
"GEMINI_API_KEY": "your_gemini_api_key_here",
"QDRANT_URL": "http://localhost:6333"
}
}
}
}
For a local installation (after pip install mcp-semantic-search):
{
"mcpServers": {
"semantic-search": {
"type": "stdio",
"command": "mcp-semantic-search",
"env": {
"GEMINI_API_KEY": "your_gemini_api_key_here",
"QDRANT_URL": "http://localhost:6333"
}
}
}
}
With optional chunk configuration:
{
"mcpServers": {
"semantic-search": {
"type": "stdio",
"command": "uvx",
"args": ["mcp-semantic-search"],
"env": {
"GEMINI_API_KEY": "your_gemini_api_key_here",
"QDRANT_URL": "http://localhost:6333",
"CHUNK_MAX_LINES": "50",
"CHUNK_OVERLAP_LINES": "10",
"CHUNK_MIN_LINES": "5"
}
}
}
}
Method 2: Using CLI
claude mcp add semantic-search \
-e GEMINI_API_KEY="$GEMINI_API_KEY" \
-e QDRANT_URL="$QDRANT_URL" \
-- uvx mcp-semantic-search
Available Tools
| Tool | Description | Returns |
|---|---|---|
index_codebase(root_dir, force_reindex, max_files) |
Index the codebase | {"status": "success", "files_queued": N} |
search_code(query, limit, score_threshold) |
Semantic search across all files | {"query": "...", "count": N, "results": [...]} |
search_file(query, file_path, limit) |
Search within a specific file | {"query": "...", "file": "...", "results": [...]} |
get_status() |
Check indexing status | {"collection": {...}, "queue": {...}} |
start_live_watch(root_dir, debounce_seconds) |
Start file watching | {"status": "success", "running": true} |
stop_live_watch() |
Stop file watching | {"status": "stopped", "running": false} |
clear_index() |
Reset the entire index | {"status": "success", "message": "..."} |
Example Workflow
# Index your codebase (auto-starts on first use)
index_codebase(root_dir="/path/to/project")
# Returns: {"status": "success", "files_queued": 1234}
# Search for code using natural language
search_code("how does authentication work")
# Returns:
# {
# "query": "...",
# "count": 5,
# "results": [
# {
# "file": "src/auth/middleware.py",
# "lines": "10-25",
# "score": 0.876,
# "content": "..."
# },
# ...
# ]
# }
# Check indexing status
get_status()
# Returns:
# {
# "collection": {"total_chunks": 12345, "files_indexed": 1234},
# "queue": {"running": true, "queued": 0, "pending": 0}
# }
# Enable live watching (auto-index on file changes)
start_live_watch(root_dir="/path/to/project")
Configuration
Chunking Configuration
Control how code is split into searchable chunks:
# Smaller chunks = more precise results, more storage
export CHUNK_MAX_LINES=30
# Larger chunks = more context per result
export CHUNK_MAX_LINES=100
# Adjust overlap for context continuity
export CHUNK_OVERLAP_LINES=15
| Variable | Default | Description |
|---|---|---|
CHUNK_MAX_LINES |
50 | Maximum lines per chunk |
CHUNK_OVERLAP_LINES |
10 | Overlap between chunks |
CHUNK_MIN_LINES |
5 | Minimum lines for valid chunk |
Search Configuration
# Adjust search parameters
search_code(
query="your query",
limit=20, # More results (default: 10)
score_threshold=0.3 # Lower threshold = more results (default: 0.5)
)
Development
Setup
# Clone the repository
git clone https://github.com/yourusername/mcp-semantic-search.git
cd mcp-semantic-search
# Install in development mode
pip install -e .
Testing
# Test with a small subset
python -c "
from mcp_semantic_search import GeminiEmbedder, QdrantCodeStore, index_repository
embedder = GeminiEmbedder()
store = QdrantCodeStore()
# Test with just 5 files
stats = index_repository(
root_dir='.',
embedder=embedder,
store=store,
max_files=5
)
print(stats)
"
# Test semantic search
python -c "
from mcp_semantic_search import GeminiEmbedder, QdrantCodeStore
embedder = GeminiEmbedder()
store = QdrantCodeStore()
query_embedding = embedder.embed_query('authentication')
results = store.search(query_embedding, limit=5)
for r in results:
print(f'{r[\"file_path\"]}:{r[\"start_line\"]} ({r[\"score\"]:.2f})')
print(r['content'][:200])
print('---')
"
Technical Details
- Embedding Model: Google
text-embedding-004(768 dimensions) - Vector Database: Qdrant with cosine similarity
- Chunking Strategy:
- Python: AST-based function/class boundary detection
- Others: Line-based with configurable chunk size and overlap
- File Watching: Watchdog with 3-second debouncing
- Deduplication: SHA256 hash-based, unchanged files are skipped
- Background Processing: FIFO queue for incremental reindexing
Supported Languages
| Extension | Language |
|---|---|
.py |
Python |
.js |
JavaScript |
.ts |
TypeScript |
.jsx |
JSX |
.tsx |
TSX |
.md |
Markdown |
.yaml, .yml |
YAML |
.json |
JSON |
.html |
HTML |
.css |
CSS |
.sh |
Bash |
.sql |
SQL |
.txt |
Text |
License
MIT License - see LICENSE for details.
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
Acknowledgments
- Model Context Protocol by Anthropic
- Qdrant - Vector Database
- Google Gemini - Embedding API
- fastmcp - MCP framework
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