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    Movie Mcp

    MCP server for querying the sample movies dataset on MongoDB Atlas

    0 stars
    Python
    Updated Jun 16, 2025
    mcp-server
    mongodb-atlas

    Table of Contents

    • Table of Contents
    • Features
    • Prerequisites
    • Optionally
    • MongoDB Setup
    • Installation
    • Usage
    • FastMCP Tools
    • find_movies
    • count_movies
    • get_average_rating
    • Contributing
    • License

    Table of Contents

    • Table of Contents
    • Features
    • Prerequisites
    • Optionally
    • MongoDB Setup
    • Installation
    • Usage
    • FastMCP Tools
    • find_movies
    • count_movies
    • get_average_rating
    • Contributing
    • License

    Documentation

    MongoDB Movie Database FastMCP Tools

    This project provides a Python script that exposes a set of powerful tools for querying and analyzing a MongoDB movie database (specifically the sample_mflix dataset) using the fastmcp library. These tools are designed to be easily integrated with large language models (LLMs), AI agents, or any other system requiring structured, programmatic access to movie data.

    Table of Contents

    • Features
    • Prerequisites
    • MongoDB Setup
    • Installation
    • Usage
    • FastMCP Tools
    • [find_movies](#find_movies)
    • [count_movies](#count_movies)
    • [get_average_rating](#get_average_rating)
    • Contributing
    • License

    Features

    • Comprehensive Movie Search: Find movies by title, genre, actors, directors, writers, year, or various rating thresholds.
    • Flexible Data Retrieval: Specify fields to return (projection_fields) and control sorting (sort_by, sort_order_asc).
    • Movie Counting: Quickly count movies matching specific criteria.
    • Average Rating Calculation: Compute average IMDb, Metacritic, or Rotten Tomatoes ratings for filtered movie sets.
    • LLM-Friendly: Designed with fastmcp to create a robust, self-documenting API easily consumable by LLMs. Includes special handling for stringified list arguments, addressing common LLM output formats.
    • Robust MongoDB Integration: Utilizes pymongo for efficient and reliable database operations.

    Prerequisites

    Before running this project, ensure you have the following:

    • Python 3.7+: Download Python
    • MongoDB Instance: A running MongoDB instance (local or cloud-hosted like MongoDB Atlas).
    • **sample_mflix Dataset**: The sample_mflix database and its movies collection must be loaded into your MongoDB instance.

    Optionally

    • Claude Desktop
    code
    {
      "mcpServers": {
        "Movie Database": {
          "command": "uv",
          "args": [
            "run",
            "--with",
            "fastmcp, pymongo",
            "fastmcp",
            "run",
            "/movie-mcp/movie-mcp.py",
            ""
          ]
        }
      }
    }

    MongoDB Setup

    This application connects to the sample_mflix database and specifically the movies collection.

    If you're using MongoDB Atlas:

    1. Log in to your MongoDB Atlas account.

    2. Navigate to your cluster.

    3. Go to the "..." (usually Data or Load Sample Data) tab.

    4. Click "Load Sample Dataset" and select sample_mflix. This will automatically import the necessary data.

    If you're using a local MongoDB instance:

    You can download the sample_mflix dataset from MongoDB's official resources (e.g., as part of the MongoDB University course materials or directly from their sample data repositories) and import it using mongoimport.

    Installation

    1. Clone the repository:

    bash
    git clone https://github.com/patw/movie-mcp.git
    cd movie-mcp

    2. Install dependencies:

    bash
    pip install -r requirements.txt

    Usage

    The script expects the MongoDB connection URI as a command-line argument.

    1. Run the script:

    bash
    python movie_tools.py "mongodb://localhost:27017/"

    Or, if using a MongoDB Atlas connection string:

    bash
    python movie_tools.py "mongodb+srv://user:pass@clusterdomain/?retryWrites=true&w=majority"

    Replace user, pass and clusterdomain with your actual MongoDB Atlas credentials and cluster details.

    2. FastMCP Server:

    Once running, the script will start a fastmcp server. This server exposes the defined tools (e.g., find_movies, count_movies) over a local HTTP endpoint (by default http://127.0.0.1:8000/tools). You can then interact with these tools programmatically, typically from an LLM agent or another Python script.

    Example of how an LLM or another program might call these tools (conceptually):

    python
    # This is pseudo-code representing how an LLM agent might interact
    # In a real scenario, you'd use a client library for fastmcp or direct HTTP requests.
    
    # Example: Find movies by Bill Murray
    tool_call = {
    "tool_name": "find_movies",
    "args": {
    "actors": ["Bill Murray"],
    "limit": 5,
    "projection_fields": ["title", "year", "imdb.rating"]
    }
    }
    # result = make_tool_call(tool_call)
    # print(result)
    
    # Example: Count romantic comedies from the 90s
    tool_call = {
    "tool_name": "count_movies",
    "args": {
    "genres": ["Comedy", "Romance"],
    "start_year": 1990,
    "end_year": 1999
    }
    }
    # result = make_tool_call(tool_call)
    # print(result)

    FastMCP Tools

    This section details the functions exposed as tools by fastmcp.

    find_movies

    Finds movies based on a variety of criteria, with options for sorting and limiting results.

    python
    def find_movies(
    title: Optional[str] = None,
    genres: Optional[Union[List[str], str]] = None,
    actors: Optional[Union[List[str], str]] = None,
    directors: Optional[Union[List[str], str]] = None,
    writers: Optional[Union[List[str], str]] = None,
    year: Optional[int] = None,
    start_year: Optional[int] = None,
    end_year: Optional[int] = None,
    min_imdb_rating: Optional[float] = None,
    min_metacritic_rating: Optional[int] = None,
    min_tomatoes_viewer_rating: Optional[float] = None,
    min_tomatoes_critic_rating: Optional[float] = None,
    rated_mpaa: Optional[str] = None,
    sort_by: Optional[str] = "imdb.rating",
    sort_order_asc: bool = False,
    limit: int = 10,
    projection_fields: Optional[List[str]] = None
    ) -> List[Dict[str, Any]]:

    Args:

    • title (str, optional): Movie title (case-insensitive partial match).
    • genres (List[str] or str, optional): List of genres; movie must match all specified genres. If a single string is passed (e.g., "Comedy"), it's treated as a list of one.
    • actors (List[str] or str, optional): List of actor names; movie must feature all specified actors (case-insensitive partial match for each name within the cast list). If a single string is passed, it's treated as a list of one.
    • directors (List[str] or str, optional): List of director names; movie must be directed by all specified directors (case-insensitive partial match for each name). If a single string is passed, it's treated as a list of one.
    • writers (List[str] or str, optional): List of writer names; movie must include all specified writers (case-insensitive partial match for each name). If a single string is passed, it's treated as a list of one.
    • year (int, optional): Exact release year.
    • start_year (int, optional): Start of a release year range (inclusive).
    • end_year (int, optional): End of a release year range (inclusive).
    • min_imdb_rating (float, optional): Minimum IMDb rating (e.g., 7.5).
    • min_metacritic_rating (int, optional): Minimum Metacritic score (e.g., 70).
    • min_tomatoes_viewer_rating (float, optional): Minimum Rotten Tomatoes viewer rating (e.g., 3.5).
    • min_tomatoes_critic_rating (float, optional): Minimum Rotten Tomatoes critic rating (e.g., 7.0).
    • rated_mpaa (str, optional): MPAA rating (e.g., "R", "PG-13"). Case-insensitive exact match.
    • sort_by (str, optional): Field to sort results by. Can be a MongoDB path (e.g., "imdb.rating", "year", "title") or a short key ("imdb", "metacritic", "tomatoes_viewer", "tomatoes_critic", "imdb_votes", "tomatoes_viewer_num_reviews", "tomatoes_critic_num_reviews"). Defaults to 'imdb.rating'.
    • sort_order_asc (bool, optional): Sort order. False for descending (default, e.g., highest rated first), True for ascending (e.g., lowest rated first).
    • limit (int, optional): Maximum number of results to return. Defaults to 10. Use 0 for no limit.
    • projection_fields (List[str], optional): Specific fields to return for each movie (e.g., ["title", "year"]). Defaults to a standard set (title, year, plot, imdb.rating, genres).

    Returns:

    • List[Dict[str, Any]]: A list of movie documents (or specified fields). Returns an empty list if no movies match the criteria or an error occurs.

    count_movies

    Counts movies based on the specified criteria.

    python
    def count_movies(
    title: Optional[str] = None,
    genres: Optional[Union[List[str], str]] = None,
    actors: Optional[Union[List[str], str]] = None,
    directors: Optional[Union[List[str], str]] = None,
    writers: Optional[Union[List[str], str]] = None,
    year: Optional[int] = None,
    start_year: Optional[int] = None,
    end_year: Optional[int] = None,
    min_imdb_rating: Optional[float] = None,
    min_metacritic_rating: Optional[int] = None,
    min_tomatoes_viewer_rating: Optional[float] = None,
    min_tomatoes_critic_rating: Optional[float] = None,
    rated_mpaa: Optional[str] = None
    ) -> int:

    Args:

    (Same as the filtering arguments for the find_movies tool)

    Returns:

    • int: The number of movies matching the criteria. Returns 0 if an error occurs.

    get_average_rating

    Calculates the average rating for movies matching the criteria, for a specific rating type.

    python
    def get_average_rating(
    rating_field_key: str,
    genres: Optional[Union[List[str], str]] = None,
    actors: Optional[Union[List[str], str]] = None,
    directors: Optional[Union[List[str], str]] = None,
    writers: Optional[Union[List[str], str]] = None,
    year: Optional[int] = None,
    start_year: Optional[int] = None,
    end_year: Optional[int] = None
    ) -> Optional[Dict[str, Any]]:

    Args:

    • rating_field_key (str): The key for the rating source (e.g., "imdb", "metacritic", "tomatoes_viewer", "tomatoes_critic").
    • (Other filtering arguments are similar to those in find_movies/count_movies, excluding title, min_ratings, and rated_mpaa as they are less common for broad average calculations).

    Returns:

    • Optional[Dict[str, Any]]: A dictionary containing 'average_rating' (float, rounded to 2 decimal places) and 'movie_count' (int). Returns None if the rating_field_key is invalid, or a dict with None average_rating and 0 count if no movies match or an error occurs.

    Contributing

    Contributions are welcome! If you have suggestions for improvements, new features, or bug fixes, please open an issue or submit a pull request.

    License

    This project is open-sourced under the MIT License. See the LICENSE file for more details.

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