The Movie Database (TMDB)
Integrates with The Movie Database (TMDB) API, allowing AI assistants to search for movies, retrieve details, and generate related content.
TMDB MCP Server
This project implements a Model Context Protocol (MCP) server that integrates with The Movie Database (TMDB) API. It enables AI assistants like Claude to interact with movie data, providing capabilities for searching, retrieving details, and generating content related to movies.
Features
Resources
-
Static Resources:
tmdb://info- Information about TMDB APItmdb://trending- Currently trending movies
-
Resource Templates:
tmdb://movie/{id}- Detailed information about a specific movie
Prompts
- Movie Review: Generate a customized movie review with specified style and rating
- Movie Recommendation: Get personalized movie recommendations based on genres and mood
Tools
- Search Movies: Find movies by title or keywords
- Get Trending Movies: Retrieve trending movies for day or week
- Get Similar Movies: Find movies similar to a specified movie
Setup Instructions
Prerequisites
- Node.js (v16 or later)
- npm or yarn
- TMDB API key
Installation
-
Clone this repository
git clone https://github.com/your-username/tmdb-mcp.git cd tmdb-mcp -
Install dependencies
npm install -
Configure your TMDB API key
- Create a
.envfile in the project root (alternative: editsrc/config.tsdirectly) - Add your TMDB API key:
TMDB_API_KEY=your_api_key_here
- Create a
-
Build the project
npm run build -
Start the server
npm start
Setup for Claude Desktop
- Open Claude Desktop
- Go to Settings > Developer tab
- Click "Edit Config" to open the configuration file
- Add the following to your configuration:
{
"mcpServers": {
"tmdb-mcp": {
"command": "node",
"args": ["/absolute/path/to/your/tmdb-mcp/build/index.js"]
}
}
}
- Restart Claude Desktop
Usage Examples
Using Static Resources
- "What is TMDB?"
- "Show me currently trending movies"
Using Resource Templates
- "Get details about movie with ID 550" (Fight Club)
- "Tell me about the movie with ID 155" (The Dark Knight)
Using Prompts
- "Write a detailed review for Inception with a rating of 9/10"
- "Recommend sci-fi movies for a thoughtful mood"
Using Tools
- "Search for movies about space exploration"
- "What are the trending movies today?"
- "Find movies similar to The Matrix"
Development
Project Structure
tmdb-mcp/
├── src/
│ ├── index.ts # Main server file
│ ├── config.ts # Configuration and API keys
│ ├── handlers.ts # Request handlers
│ ├── resources.ts # Static resources
│ ├── resource-templates.ts # Dynamic resource templates
│ ├── prompts.ts # Prompt definitions
│ ├── tools.ts # Tool implementations
│ └── tmdb-api.ts # TMDB API wrapper
├── package.json
├── tsconfig.json
└── README.md
Testing
Use the MCP Inspector to test your server during development:
npx @modelcontextprotocol/inspector node build/index.js
License
MIT
Acknowledgements
相關伺服器
Wttr Weather
Fetches weather data from the wttr.in service.
Ragie
An MCP server for accessing Ragie's knowledge base retrieval capabilities.
Zefix Search
Company search in Swiss Central Business Name Index (zefix.ch)
Fabric Marketplace
An agent-native marketplace API where any participant ("Node") can publish allocatable resources, search for what they need, negotiate structured offers, and exchange contact details after mutual acceptance.
Unified Docs Hub
Creates a massive, searchable knowledge base from numerous curated and auto-discovered GitHub projects.
OpenAI WebSearch
Provides web search functionality for AI assistants using the OpenAI API, enabling access to up-to-date information.
MCP Omnisearch
Unified access to multiple search providers and AI tools like Tavily, Perplexity, Kagi, Jina AI, Brave, and Firecrawl.
Bilibili API
Search for videos, users, and retrieve danmaku from the Bilibili API.
Enhanced Documentation Search
Provides real-time access to documentation, library popularity data, and career insights using the Serper API.
Google Search Console MCP Server
Google Search Console MCP Server