Ragie
An MCP server for accessing Ragie's knowledge base retrieval capabilities.
IMPORTANT!
This project is no longer needed. Ragie now supports MCP natively as a streamable HTTP server. See docs here: [https://docs.ragie.ai/docs/mcp-overview]
If you would like users within your company to be able to access you knowledge base in applications like Claude or ChatGPT, you may need MCP Bridge
Ragie Model Context Protocol Server
A Model Context Protocol (MCP) server that provides access to Ragie's knowledge base retrieval capabilities.
Description
This server implements the Model Context Protocol to enable AI models to retrieve information from a Ragie knowledge base. It provides a single tool called "retrieve" that allows querying the knowledge base for relevant information.
Prerequisites
- Node.js >= 18
- A Ragie API key
Installation
The server requires the following environment variable:
RAGIE_API_KEY(required): Your Ragie API authentication key
The server will start and listen on stdio for MCP protocol messages.
Install and run the server with npx:
RAGIE_API_KEY=your_api_key npx @ragieai/mcp-server
Command Line Options
The server supports the following command line options:
--description, -d <text>: Override the default tool description with custom text--partition, -p <id>: Specify the Ragie partition ID to query
Examples:
# With custom description
RAGIE_API_KEY=your_api_key npx @ragieai/mcp-server --description "Search the company knowledge base for information"
# With partition specified
RAGIE_API_KEY=your_api_key npx @ragieai/mcp-server --partition your_partition_id
# Using both options
RAGIE_API_KEY=your_api_key npx @ragieai/mcp-server --description "Search the company knowledge base" --partition your_partition_id
Cursor Configuration
To use this MCP server with Cursor:
Option 1: Create an MCP configuration file
- Save a file called
mcp.json
- For tools specific to a project, create a
.cursor/mcp.jsonfile in your project directory. This allows you to define MCP servers that are only available within that specific project. - For tools that you want to use across all projects, create a
~/.cursor/mcp.jsonfile in your home directory. This makes MCP servers available in all your Cursor workspaces.
Example mcp.json:
{
"mcpServers": {
"ragie": {
"command": "npx",
"args": [
"-y",
"@ragieai/mcp-server",
"--partition",
"optional_partition_id"
],
"env": {
"RAGIE_API_KEY": "your_api_key"
}
}
}
}
Option 2: Use a shell script
- Save a file called
ragie-mcp.shon your system:
#!/usr/bin/env bash
export RAGIE_API_KEY="your_api_key"
npx -y @ragieai/mcp-server --partition optional_partition_id
-
Give the file execute permissions:
chmod +x ragie-mcp.sh -
Add the MCP server script by going to Settings -> Cursor Settings -> MCP Servers in the Cursor UI.
Replace your_api_key with your actual Ragie API key and optionally set the partition ID if needed.
Claude Desktop Configuration
To use this MCP server with Claude desktop:
- Create the MCP config file
claude_desktop_config.json:
- For MacOS: Use
~/Library/Application Support/Claude/claude_desktop_config.json - For Windows: Use
%APPDATA%/Claude/claude_desktop_config.json
Example claude_desktop_config.json:
{
"mcpServers": {
"ragie": {
"command": "npx",
"args": [
"-y",
"@ragieai/mcp-server",
"--partition",
"optional_partition_id"
],
"env": {
"RAGIE_API_KEY": "your_api_key"
}
}
}
}
Replace your_api_key with your actual Ragie API key and optionally set the partition ID if needed.
- Restart Claude desktop for the changes to take effect.
The Ragie retrieval tool will now be available in your Claude desktop conversations.
Features
Retrieve Tool
The server provides a retrieve tool that can be used to search the knowledge base. It accepts the following parameters:
query(string): The search query to find relevant informationtopK(number, optional, default: 8): The maximum number of results to returnrerank(boolean, optional, default: true): Whether to try and find only the most relevant informationrecencyBias(boolean, optional, default: false): Whether to favor results towards more recent information
The tool returns:
- An array of content chunks containing matching text from the knowledge base
Development
This project is written in TypeScript and uses the following main dependencies:
@modelcontextprotocol/sdk: For implementing the MCP serverragie: For interacting with the Ragie APIzod: For runtime type validation
Development setup
Running the server in dev mode:
RAGIE_API_KEY=your_api_key npm run dev -- --partition optional_partition_id
Building the project:
npm run build
License
MIT License - See LICENSE.txt for details.
İlgili Sunucular
Companies House MCP
CLI and MCP server for the UK Companies House API — company search, profiles, officers, filings, ownership, and due diligence
EzBiz SEO & Marketing Analysis
AI-powered keyword research, SERP analysis, backlink checking, and content optimization for SEO.
Hermes Search
Provides full-text and semantic search over structured and unstructured data using Azure Cognitive Search.
GW_MCP
An MCP (Model Context Protocol) server providing tools to query Gravitational Wave (GW) data from GraceDB and GWOSC.
MCP Lucene Server
MCP Lucene Server is a Model Context Protocol (MCP) server that exposes Apache Lucene's full-text search capabilities through a conversational interface. It allows AI assistants (like Claude) to help users search, index, and manage document collections without requiring technical knowledge of Lucene or search engines.
Unified Docs Hub
Creates a massive, searchable knowledge base from numerous curated and auto-discovered GitHub projects.
Nexus
Web search server that integrates Perplexity Sonar models via OpenRouter API for real-time, context-aware search with citations
Brave Search
An MCP server for web and local search using the Brave Search API.
Splunk
Interact with Splunk Enterprise/Cloud using natural language queries.
Agora MCP
Search and buy products across thousands of online stores using the SearchAgora universal product search engine.