MCP Tavily
Advanced web search and content extraction using the Tavily API.
MCP Tavily
中文文档
A Model Context Protocol (MCP) server implementation for Tavily API, providing advanced search and content extraction capabilities.
Features
- Multiple Search Tools:
search: Basic search functionality with customizable optionssearchContext: Context-aware search for better relevancesearchQNA: Question and answer focused search
- Content Extraction: Extract content from URLs with configurable options
- Rich Configuration Options: Extensive options for search depth, filtering, and content inclusion
Usage with MCP
Add the Tavily MCP server to your MCP configuration:
{ "mcpServers": { "tavily": { "command": "npx", "args": ["-y", "@mcptools/mcp-tavily"], "env": { "TAVILY_API_KEY": "your-api-key" } } } }
Note: Make sure to replace
your-api-keywith your actual Tavily API key. You can also set it as an environment variableTAVILY_API_KEYbefore running the server.
API Reference
Search Tools
The server provides three search tools that can be called through MCP:
1. Basic Search
// Tool name: search { query: "artificial intelligence", options: { searchDepth: "advanced", topic: "news", maxResults: 10 } }
2. Context Search
// Tool name: searchContext { query: "latest developments in AI", options: { topic: "news", timeRange: "week" } }
3. Q&A Search
// Tool name: searchQNA { query: "What is quantum computing?", options: { includeAnswer: true, maxResults: 5 } }
Extract Tool
// Tool name: extract { urls: ["https://example.com/article1", "https://example.com/article2"], options: { extractDepth: "advanced", includeImages: true } }
Search Options
All search tools share these options:
interface SearchOptions { searchDepth?: "basic" | "advanced"; // Search depth level topic?: "general" | "news" | "finance"; // Search topic category days?: number; // Number of days to search maxResults?: number; // Maximum number of results includeImages?: boolean; // Include images in results includeImageDescriptions?: boolean; // Include image descriptions includeAnswer?: boolean; // Include answer in results includeRawContent?: boolean; // Include raw content includeDomains?: string[]; // List of domains to include excludeDomains?: string[]; // List of domains to exclude maxTokens?: number; // Maximum number of tokens timeRange?: "year" | "month" | "week" | "day" | "y" | "m" | "w" | "d"; // Time range for search }
Extract Options
interface ExtractOptions { extractDepth?: "basic" | "advanced"; // Extraction depth level includeImages?: boolean; // Include images in results }
Response Format
All tools return responses in the following format:
{ content: Array<{ type: "text", text: string }> }
For search results, each item includes:
- Title
- Content
- URL
For extracted content, each item includes:
- URL
- Raw content
- Failed URLs list (if any)
Error Handling
All tools include proper error handling and will throw descriptive error messages if something goes wrong.
Installation
Installing via Smithery
To install Tavily API Server for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @kshern/mcp-tavily --client claude
Manual Installation
npm install @mcptools/mcp-tavily
Or use it directly with npx:
npx @mcptools/mcp-tavily
Prerequisites
- Node.js 16 or higher
- npm or yarn
- Tavily API key (get one from Tavily)
Setup
- Clone the repository
- Install dependencies:
npm install
- Set your Tavily API key:
export TAVILY_API_KEY=your_api_key
Building
npm run build
Debugging with MCP Inspector
For development and debugging, we recommend using MCP Inspector, a powerful development tool for MCP servers.
The Inspector provides a user interface for:
- Testing tool calls
- Viewing server responses
- Debugging tool execution
- Monitoring server state
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
- Fork the repository
- Create your feature branch (
git checkout -b feature/AmazingFeature) - Commit your changes (
git commit -m 'Add some AmazingFeature') - Push to the branch (
git push origin feature/AmazingFeature) - Open a Pull Request
License
This project is licensed under the MIT License.
Support
For any questions or issues:
- Tavily API: refer to the Tavily documentation
- MCP integration: refer to the MCP documentation
Server Terkait
Unsloth AI Documentation
Search and retrieve content from the Unsloth AI documentation.
Genji MCP Server
Search and analyze classical Japanese literature using the Genji API, with advanced normalization features.
Lancelot-MCP
A containerized MCP server for LanceDB vector search, featuring hybrid processing with Gemini and Ollama.
stooq-mcp
MCP server to fetch stock prices from stooq.com (Rust)
Brave Search
An MCP server for the Brave Search API, providing web and local search capabilities via a streaming SSE interface.
Crossref MCP Server
Search and access academic paper metadata from Crossref.
CoolPC MCP Server
Query computer component prices from Taiwan's CoolPC website to generate AI-assisted price quotes.
Ubersuggest
Perform AI-assisted SEO analysis using Neil Patel's Ubersuggest platform.
PaperMCP 智能学术论文检索系统
An academic paper search server powered by the OpenAlex API.
Rememberizer MCP Server for Common Knowledge
Access and search personal or team knowledge repositories, including documents and Slack discussions, using semantic search and retrieval tools.