NRTSearch
Exposes Lucene-based search indexes to AI assistants through the NRTSearch MCP server.
NRTSearch MCP Server
Production-ready Model Context Protocol (MCP) server for Lucene/NRTSearch, with first-class support for AI assistants like GitHub Copilot and Claude.
Features
- Exposes NRTSearch/Lucene search as a robust MCP server for AI tools
- Accepts any Lucene query (Boolean, phrase, range, wildcard, fuzzy, etc.)
- Structured logging, retries, and highlight support
- Pure unit-testable search logic with full test coverage
- Easy integration with GitHub Copilot, Claude Desktop, and other MCP clients
- Modern Python packaging and configuration (Pydantic, pyproject.toml)
Quick Start
git clone https://github.com/tvergilio/nrtsearch-mcp-server.git
cd nrtsearch-mcp-server
./quickstart.sh
This will:
- Install all dependencies (including MCP SDK)
- Start the server on the configured port
Usage
CLI / Manual
After installation, you can start the server with either:
# Using the Python module
python -m nrtsearch_mcp.server
# Or, if installed via pip/pipx, use the CLI entrypoint:
nrtsearch-mcp
With GitHub Copilot (VS Code)
- Install VS Code and GitHub Copilot
- Add
nrtsearch-mcpas a Model Context Provider in VS Code settings (see.vscode/settings.json) - Start the server (
./quickstart.shornrtsearch-mcp) - Use Copilot Chat to query your Lucene indexes in natural language
Configuration
The server is configured via environment variables and/or a JSON config file. By default, it looks for:
NRTSEARCH_MCP_CONFIGenv var (path to config)./config.jsonin the current directory~/nrtsearch-mcp-config.jsonin your home directory
Example config:
{
"nrtsearch_connection": {
"host": "localhost",
"port": 8000,
"use_https": false
},
"log_level": "INFO"
}
Key environment variables:
LOG_LEVEL(default: INFO)NRTSEARCH_MCP_CONFIG(optional config path)
API: Search Tool
The main tool is nrtsearch/search:
Parameters:
index(str): Index name (e.g.yelp_reviews_staging)queryText(str): Full Lucene query (e.g.text:(irish AND pub AND (texas OR tx)))topHits(int, default 10): Number of results (1-100)retrieveFields(list, optional): Fields to return (default:["text", "stars"])highlight(bool, optional): Highlight matches
Returns:
- List of hits:
{score, stars, text}
Lucene Query Examples:
text:(irish AND pub AND (texas OR tx))text:"great coffee"stars:[4 TO 5] AND text:(vegan AND brunch)
Testing
Run all tests (unit, no server needed):
pytest -v
Tests cover:
- Success, empty, and multiple hits
- Error handling (HTTP, network, malformed, missing fields)
- Retry logic
- Highlight and custom fields
- Input validation
Project Structure
nrtsearch-mcp-server/
├── nrtsearch_mcp/
│ ├── server.py # Main MCP server and search logic
│ ├── settings.py # Pydantic config
│ └── ...
├── tests/ # Unit tests
├── quickstart.sh # One-step install & run
├── requirements.txt # Python dependencies
├── pyproject.toml # Packaging/metadata
└── ...
License
Apache License 2.0. See LICENSE.
관련 서버
Panda3D Docs
Search and retrieve documentation for the Panda3D game engine.
Knowledge Raven
Make your knowledge agent-ready. Connect docs from Confluence, Notion, GitHub, Dropbox, or Google Drive — any AI agent searches them via MCP.
Reexpress
Enable Similarity-Distance-Magnitude statistical verification for your search, software, and data science workflows
Google Search
Perform Google searches and view web content with advanced bot detection avoidance.
SuperMCP
Reddit, Twitter, Google Trends, LinkedIn, Medium, Dev.to & News MCP server that uses your Chrome login session. 13 tools, fully local, pip install.
MCP Servers Search
Search and discover available MCP servers from the official repository.
ClinicalTrials MCP Server
Search and access clinical trial data from ClinicalTrials.gov.
Enhanced PubMed Search
A search server for PubMed, the biomedical literature database, using a pure Node.js implementation.
Simple Files Vectorstore
Provides semantic search across local files by creating vector embeddings from watched directories.
Recall Kitchen
Search product recalls and receive notifications