YouTube MCP Server
A Model Context Protocol server that provides tools to interact with YouTube videos, primarily for retrieving video subtitles. This server enables LLMs to extract content from YouTube videos for analysis and processing.
Available Tools
watch_youtube_video- Downloads and processes subtitles for a YouTube video.- Required arguments:
url(string): The URL of the YouTube video to watch.sub_lang(string): The language of the subtitles to download.
- Required arguments:
Installation
Prerequisites
This server requires:
- Python 3.11 or later
- yt-dlp (must be installed and available in your PATH)
Using uv
uv run src/server.py
Integration
- Start the server:
docker build -t youtube-mcp:latest .
docker run --rm -i --name youtube-mcp youtube-mcp:latest
- On cursor, add the following to your
mcp.jsonfile:
{
"mcpServers": {
"youtube-mcp": {
"transport": "sse",
"url": "http://localhost:8000/sse",
"description": "A simple MCP server to watch YouTube videos and download subtitles"
}
}
}
Examples of Questions for Cursor
- "What does this YouTube video talk about?" (provide URL)
- "Can you summarize this YouTube video for me?" (provide URL)
- "Extract the key points from this YouTube lecture" (provide URL)
- "Watch this YouTube tutorial and explain the steps" (provide URL)
Recommend MCP Servers 💡
fastapi-mcp-workshop
A sample code repository for implementing Model Context Protocol (MCP) with FastAPI.
zhsama/duckduckgo-mcp-server
A TypeScript-based MCP server providing DuckDuckGo search functionality with rate limiting and error handling.
openapi-to-mcp
An MCP server that exposes API endpoints as strongly typed tools using OpenAPI specifications.
akr4/claude-code-mcp-docker
A Dockerized Claude Code MCP server designed for secure code execution, providing an isolated development environment for AI interactions.
wavespeed-mcp
A Model Control Protocol (MCP) server for WaveSpeed AI, providing a standardized interface for image and video generation capabilities.
project-mem-mcp
An MCP server for AI agents to store and retrieve project information persistently via a memory file.