Bilibili Api Mcp Server

Created By
SMYB543110 months ago
Overview

what is Bilibili API MCP Server?

Bilibili API MCP Server is a Model Context Protocol (MCP) server designed to facilitate a wide range of operations with the Bilibili API, enabling users to interact with Bilibili's content programmatically.

how to use Bilibili API MCP Server?

To use the server, you can either install it from PyPI or run it locally for development. For installation, configure the server in any MCP client, and it will be downloaded and started automatically. For local development, clone the repository, install dependencies, and configure the server in your MCP client.

key features of Bilibili API MCP Server?

  • Intelligent video search and recommendation with filtering options.
  • User content retrieval including posts, videos, and collections.
  • Detailed error handling and user identification features.
  • Support for danmaku (bullet comments) retrieval for videos.

use cases of Bilibili API MCP Server?

  1. Searching and recommending videos based on user preferences.
  2. Fetching user dynamics and latest posts for content analysis.
  3. Retrieving detailed information about user-uploaded videos and collections.
  4. Analyzing video comments and interactions through danmaku data.

FAQ from Bilibili API MCP Server?

  • Is the Bilibili API MCP Server free to use?

Yes! The server is open-source and free to use for educational and research purposes.

  • What programming language is required to run the server?

The server is built using Python and requires the 'uv' dependency for management.

  • Can I use this server for commercial purposes?

No, the project is intended solely for educational and research use and complies with Bilibili’s Terms of Service.

Server Config

{
  "mcpServers": {
    "bilibili": {
      "type": "stdio",
      "isActive": true,
      "command": "uvx",
      "args": [
        "bilibili-api-mcp-server"
      ]
    }
  }
}
Project Info
Created At
10 months ago
Updated At
10 months ago
Author Name
SMYB5431
Star
-
Language
-
License
-

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