A favicon of Solr Integration

Solr Integration

A Python package for accessing Solr indexes via Claude Code

Installation

Installing for Claude Desktop

Manual Configuration Required

This MCP server requires manual configuration. Run the command below to open your configuration file:

npx mcpbar@latest edit -c claude

This will open your configuration file where you can add the Solr Integration MCP server manually.

Solr MCP

A Python package for accessing Apache Solr indexes via Model Context Protocol (MCP). This integration allows AI assistants like Claude to perform powerful search queries against your Solr indexes, combining both keyword and vector search capabilities.

Features

  • MCP Server: Implements the Model Context Protocol for integration with AI assistants
  • Hybrid Search: Combines keyword search precision with vector search semantic understanding
  • Vector Embeddings: Generates embeddings for documents using Ollama with nomic-embed-text
  • Unified Collections: Store both document content and vector embeddings in the same collection
  • Docker Integration: Easy setup with Docker and docker-compose
  • Optimized Vector Search: Efficiently handles combined vector and SQL queries by pushing down SQL filters to the vector search stage, ensuring optimal performance even with large result sets and pagination

Architecture

Vector Search Optimization

The system employs an important optimization for combined vector and SQL queries. When executing a query that includes both vector similarity search and SQL filters:

  1. SQL filters (WHERE clauses) are pushed down to the vector search stage
  2. This ensures that vector similarity calculations are only performed on documents that will match the final SQL criteria
  3. Significantly improves performance for queries with:
    • Selective WHERE clauses
    • Pagination (LIMIT/OFFSET)
    • Large result sets

This optimization reduces computational overhead and network transfer by minimizing the number of vector similarity calculations needed.

Quick Start

  1. Clone this repository
  2. Start SolrCloud with Docker:
    docker-compose up -d
    
  3. Install dependencies:
    python -m venv venv
    source venv/bin/activate  # On Windows: venv\Scripts\activate
    pip install poetry
    poetry install
    
  4. Process and index the sample document:
    python scripts/process_markdown.py data/bitcoin-whitepaper.md --output data/processed/bitcoin_sections.json
    python scripts/create_unified_collection.py unified
    python scripts/unified_index.py data/processed/bitcoin_sections.json --collection unified
    
  5. Run the MCP server:
    poetry run python -m solr_mcp.server
    

For more detailed setup and usage instructions, see the QUICKSTART.md guide.

Requirements

  • Python 3.10 or higher
  • Docker and Docker Compose
  • SolrCloud 9.x
  • Ollama (for embedding generation)

License

This project is licensed under the MIT License - see the LICENSE file for details.

Contributing

Contributions are welcome! Please see CONTRIBUTING.md for guidelines.

Share:
Details:
  • Stars


    8
  • Forks


    4
  • Last commit


    4 months ago
  • Repository age


    4 months
  • License


    MIT
View Repository

Auto-fetched from GitHub .

MCP servers similar to Solr Integration:

 

 
 
  • Stars


  • Forks


  • Last commit


 

 
 
  • Stars


  • Forks


  • Last commit


 

 
 
  • Stars


  • Forks


  • Last commit


Solr Integration: MCP Server – MCP.Bar