Tavily
A comprehensive search API for real-time web search, data extraction, and crawling, requiring a Tavily API key.
Tavily MCP Server
Tavily MCP Server implementation that uses fastmcp and supports both sse and stdio transports. To use this server, you need a Tavily account and a Tavily API key, which must be loaded into the TAVILY_API_KEY environment variable.
The Tavily MCP server provides:
- search, extract, map, crawl tools
- Real-time web search capabilities through the tavily-search tool
- Intelligent data extraction from web pages via the tavily-extract tool
- Powerful web mapping tool that creates a structured map of website
- Web crawler that systematically explores websites
Prerequisites
- git installed. (To clone the repo)
- uv installed.
- docker installed (Optional: If you are planning to use the SSE server inside a docker container).
To install uv in Linux and MacOS type this in your terminal:
curl -LsSf https://astral.sh/uv/install.sh | sh
Environment Variables
Copy the .env.example file and rename that to .env. Then paste your TAVILY_API_KEY inside there
TAVILY_API_KEY=<YOUR-API-KEY>
Optional: You can also configure the port if you are planning to use SSE.
TAVILY_MCP_PORT=<PORT>
Running the SSE server
While inside the repo run:
uv run --env-file .env tavily-mcp-sse
Running on STDIO
{
"mcpServers": {
"tavily-mcp-server": {
"command": "uv",
"args": [
"run",
"--directory",
"<LOCATION-TO-THE-REPO>",
"tavily-mcp-stdio"
],
"env": {
"TAVILY_API_KEY": "<YOUR-API-KEY>"
}
}
}
}
Docker SSE Server
First you need to build the image using the Dockerfile inside this repository. Run this to build the image:
docker build -t tavily-mcp .
Then you can run the container using the environment variables inside the env file
docker run --name tavily-mcp \
-p 127.0.0.1:8000:8000 \
--env-file .env \
tavily-mcp
Or you can specify the environment variables yourself.
docker run --name tavily-mcp \
-p 127.0.0.1:8000:8000 \
-e TAVILY_API_KEY=<YOUR-API-KEY>
tavily-mcp
Related Servers
arXiv LaTeX
Fetches and processes arXiv papers using LaTeX source for accurate equation handling.
MCP Open Library
A Model Context Protocol (MCP) server for the Open Library API that enables AI assistants to search for book and author information.
ArXiv-MCP
Search and retrieve academic papers from arXiv based on keywords.
NRTSearch
Exposes Lucene-based search indexes to AI assistants through the NRTSearch MCP server.
Baidu Search
Provides web search capabilities using the Baidu Search API, with features for content fetching and parsing.
DeepResearch
Lightning-Fast, High-Accuracy Deep Research Agent 👉 8–10x faster 👉 Greater depth & accuracy 👉 Unlimited parallel runs
YouTube Data MCP
High-efficiency YouTube MCP server providing token-optimized, structured data for LLMs.
Wizzy TMDB
A wrapper for TMDB
Perplexity AI
Intelligent search, reasoning, and research capabilities powered by Perplexity's specialized AI models.
Bing Webmaster Tools
Access Bing Webmaster Tools data, including search performance, crawl statistics, URL submission, and keyword research.