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rajatk10

FILM-FINDER MCP Server

by rajatk10

FILM-FINDER MCP Server

A simple MCP (Model Context Protocol) server for fetching movie and TV show data from TMDB and OMDB APIs. Provides natural language capability for users to search, compare, and analyze movies through AI assistants.

What is Model Context Protocol?

MCP allows AI assistants (like Claude in Cursor) to access external tools and data sources. This server exposes movie databases as MCP tools.

Related MCP server: Movie Search MCP Server

What it does

  • Get popular movies and TV shows

  • Search movie details by ID or title

  • Compare ratings across TMDB and OMDB

  • Basic caching for faster responses

Setup

  1. Get API keys:

  2. Add keys to .cursor/mcp.json:

{
  "mcpServers": {
    "film-finder": {
      "command": "uv",
      "args": ["run", "--directory", "/path/to/film-finder-mcp/tmdb-mcp", "python", "src/server.py"],
      "env": {
        "TMDB_API_KEY": "your_tmdb_key",
        "OMDB_API_KEY": "your_omdb_key"
      }
    }
  }
}
  1. Install dependencies:

uv sync

Testing

Use MCP Inspector for testing:

npx @modelcontextprotocol/inspector uv run python src/server.py

Then open http://localhost:5173 (or the URL shown in terminal).

What is MCP Inspector?
A web-based developer tool for testing MCP servers during development. You can call tools, test prompts, and view resources without needing a full AI assistant setup.

Available Tools

Movies:

  • get_popular_movies - Popular movies by language/page

  • get_top_rated_movies - Highest rated movies

  • get_movie_details - TMDB details by movie ID

  • get_movie_details_by_title - OMDB search by title

  • get_movie_recommendation - Discover movies by genre/language

TV Shows:

  • get_popular_tv_shows - Popular TV shows

  • get_top_rated_tv_shows - Highest rated shows

  • get_tv_show_details - Details for specific show

Other:

  • authenticate_api_key - Validate TMDB API key

  • generate_recommendation_explanation - AI-powered movie recommendations

Prompts

Pre-configured prompts to guide AI responses:

  • movie_recommendation_prompt - Guide for recommending movies

  • tv_show_recommendation_prompt - Guide for TV show suggestions

  • movie_analysis_prompt - Compare and analyze movies

  • compare_movie_sources_prompt - Compare TMDB vs OMDB data

Resources

Static and dynamic data exposed by the server:

  • tmdb://config - TMDB API configuration (languages, genres)

  • omdb://config - OMDB API configuration

  • tmdb://movie/{movie_id} - Dynamic movie details by ID

  • tmdb://movie/top_rated - Top rated movies list

Use MCP Inspector's Resources tab to explore these.

Caching

Results are cached using Python's cachetools with TTL (Time To Live):

Data Type

Cache Duration

Reason

Popular movies/shows

3 hours

Changes daily

Movie details

24 hours

Static metadata

Top rated

6 hours

Rarely changes

Example Usage in Cursor

Once configured in .cursor/mcp.json, ask Claude or any other LLM:

  • "What are the top rated movies right now?"

  • "Compare The Godfather ratings on TMDB vs OMDB"

  • "Recommend me some movies similar to Inception"

The AI will automatically use your MCP tools to fetch and analyze movie data.

Here is an example

Troubleshooting

Server won't start:

  • Check that API keys are set in .cursor/mcp.json

  • Verify uv sync ran successfully

  • Look for errors in terminal logs

  • Run from terminal uv run python src/server.py and check for logging.

Project Structure

film-finder-mcp/
├── src/
│   ├── server.py           # Main MCP server
│   └── tools/
│       ├── tmdb_client.py  # TMDB API client with caching
│       ├── omdb_client.py  # OMDB API client
│       └── base_config.py  # Configuration and logging
├── test_my_http_client.py  # Test file
├── pyproject.toml           # Dependencies
├── images/                  # Screenshots
└── README.md                # You are here

Notes

This is a learning project to understand MCP server development. The code works but could be improved with better error handling, more comprehensive tests, and additional features!

A
license - permissive license
-
quality - not tested
D
maintenance

Maintenance

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Release cycle
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