Metasearch
A metasearch server that uses the Tavily API to perform searches based on specified queries.
metasearch MCP server
A MCP server for metasearch
Components
This server uses the Tavily API to perform searches based on specified queries.
- Search results are returned in text format.
- Search results include AI responses, URIs, and titles of the search results.
Tools
This server implements the following tools:
- search: Performs searches based on specified queries
- Required argument: "query"
- Optional argument: "search_depth" (basic or advanced)
Install
- Download the repository.
git clone https://github.com/YeonwooSung/metasearch-mcp.git
- Open the Claude Desktop configuration file.
On MacOS: `~/Library/Application\ Support/Claude/claude_desktop_config.json`
On Windows: `C:\Users\[username]\AppData\Roaming\Claude\claude_desktop_config.json`
- Edit the configuration file as follows:
"mcpServers": {
"tavily-search": {
"command": "uv",
"args": [
"--directory",
"C:\\your_path\\mcp-server-tavily",
"run",
"tavily-search"
],
"env": {
"TAVILY_API_KEY": "YOUR_TAVILY_API_KEY",
"PYTHONIOENCODING": "utf-8"
}
}
}
- Restart Claude Desktop.
Usage
In Claude Desktop, when you ask "Please search for something", you will receive search results.
Search example:
Please search in detail for today's events in Kamakura
Response example:
According to the search results, the following events start today, December 1st:
"Kamakura Promotion Photo Contest 2025"
Period: December 1, 2024 - January 31, 2025
A photo contest for those who love Kamakura
Applications start accepting from today
Also, as a related upcoming event:
On December 7th, an exhibition by 12 Kamakura artists will be held at the Seibu Press Inn Kamakura Ofuna Station East Exit Lounge.
Log Storage Location
Logs are stored in the following location:
For Windows:
C:\Users\[username]\AppData\Roaming\Claude\logs\mcp-server-tavily-search
Execution with Cursor
- Create a shell script (e.g.,
script.sh) as shown below:
#!/bin/bash
TARGET_DIR=/path/to/mcp-server-tavily
cd "${TARGET_DIR}"
export TAVILY_API_KEY="your-api-key"
export PYTHONIOENCODING=utf-8
uv --directory $PWD run tavily-search
- Configure Cursor's MCP Server settings as follows:
Name: tavily-search
Type: command
Command: /path/to/your/script.sh
-
Save the settings.
-
Once the settings are saved, you can ask Cursor's Composer-Agent to "search for something," and it will return the search results.
Running in Local Environment Using Docker Compose
Purpose
For operating systems other than Windows/MacOS where Claude Desktop cannot be used, this section explains how to set up and run an MCP server and client in a local environment using Docker compose.
Steps
- Install Docker.
- Download the repository.
git clone https://github.com/YeonwooSung/metasearch-mcp.git
- Run Docker compose.
docker compose up -d
- Execute the client.
docker exec mcp_server uv --directory /usr/src/app/mcp-server-tavily/src run client.py
- Execution Results
- After searching for available tools as shown below, a query will be issued to Tavily and a response will be returned
相關伺服器
mxHERO Multi-Account Email Search
Search across multiple email accounts using mxHERO's vector search service.
招投标大数据服务
Provides comprehensive information queries for enterprise qualification certificates, including honors, administrative licenses, and profiles.
Baidu Search
A search server for the Model Context Protocol (MCP) that uses the Baidu Wenxin API.
IP2Location.io
IP2Location.io API integration to retrieve the geolocation information for an IP address.
Qdrant MCP Server
Semantic code search using the Qdrant vector database and OpenAI embeddings.
SerpApi
Provides search capabilities and data retrieval from SerpAPI and YouTube for AI assistants.
Tavily
Search engine for AI agents (search + extract) powered by Tavily
Plex MCP Server
Search your Plex media library. Supports OAuth and static token authentication.
JinaAI Search
Efficient web search optimized for LLM-friendly content using the Jina AI API.
ContextMCP
A self-hosted MCP server that indexes documentation from various sources and serves it to AI Agents with semantic search.