Cover image
nvkanirudh_yt-to-linkedIn-MCP-Server
Public

nvkanirudh_yt-to-linkedIn-MCP-Server

Try Now
2025-04-02

镜像://github.com/nvkanirudh/yt-to-linkedin-mcp-server

3 years

Works with Finder

0

Github Watches

0

Github Forks

0

Github Stars

YouTube to LinkedIn MCP Server

A Model Context Protocol (MCP) server that automates generating LinkedIn post drafts from YouTube videos. This server provides high-quality, editable content drafts based on YouTube video transcripts.

Features

  • YouTube Transcript Extraction: Extract transcripts from YouTube videos using video URLs
  • Transcript Summarization: Generate concise summaries of video content using OpenAI GPT
  • LinkedIn Post Generation: Create professional LinkedIn post drafts with customizable tone and style
  • Modular API Design: Clean FastAPI implementation with well-defined endpoints
  • Containerized Deployment: Ready for deployment on Smithery

Setup Instructions

Prerequisites

  • Python 3.8+
  • Docker (for containerized deployment)
  • OpenAI API Key
  • YouTube Data API Key (optional, but recommended for better metadata)

Local Development

  1. Clone the repository:

    git clone <repository-url>
    cd yt-to-linkedin
    
  2. Create a virtual environment and install dependencies:

    python -m venv venv
    source venv/bin/activate  # On Windows: venv\Scripts\activate
    pip install -r requirements.txt
    
  3. Create a .env file in the project root with your API keys:

    OPENAI_API_KEY=your_openai_api_key
    YOUTUBE_API_KEY=your_youtube_api_key
    
  4. Run the application:

    uvicorn app.main:app --reload
    
  5. Access the API documentation at http://localhost:8000/docs

Docker Deployment

  1. Build the Docker image:

    docker build -t yt-to-linkedin-mcp .
    
  2. Run the container:

    docker run -p 8000:8000 --env-file .env yt-to-linkedin-mcp
    

Smithery Deployment

  1. Ensure you have the Smithery CLI installed and configured.

  2. Deploy to Smithery:

    smithery deploy
    

API Endpoints

1. Transcript Extraction

Endpoint: /api/v1/transcript
Method: POST
Description: Extract transcript from a YouTube video

Request Body:

{
  "youtube_url": "https://www.youtube.com/watch?v=VIDEO_ID",
  "language": "en",
  "youtube_api_key": "your_youtube_api_key"  // Optional, provide your own YouTube API key
}

Response:

{
  "video_id": "VIDEO_ID",
  "video_title": "Video Title",
  "transcript": "Full transcript text...",
  "language": "en",
  "duration_seconds": 600,
  "channel_name": "Channel Name",
  "error": null
}

2. Transcript Summarization

Endpoint: /api/v1/summarize
Method: POST
Description: Generate a summary from a video transcript

Request Body:

{
  "transcript": "Video transcript text...",
  "video_title": "Video Title",
  "tone": "professional",
  "audience": "general",
  "max_length": 250,
  "min_length": 150,
  "openai_api_key": "your_openai_api_key"  // Optional, provide your own OpenAI API key
}

Response:

{
  "summary": "Generated summary text...",
  "word_count": 200,
  "key_points": [
    "Key point 1",
    "Key point 2",
    "Key point 3"
  ]
}

3. LinkedIn Post Generation

Endpoint: /api/v1/generate-post
Method: POST
Description: Generate a LinkedIn post from a video summary

Request Body:

{
  "summary": "Video summary text...",
  "video_title": "Video Title",
  "video_url": "https://www.youtube.com/watch?v=VIDEO_ID",
  "speaker_name": "Speaker Name",
  "hashtags": ["ai", "machinelearning"],
  "tone": "professional",
  "voice": "first_person",
  "audience": "technical",
  "include_call_to_action": true,
  "max_length": 1200,
  "openai_api_key": "your_openai_api_key"  // Optional, provide your own OpenAI API key
}

Response:

{
  "post_content": "Generated LinkedIn post content...",
  "character_count": 800,
  "estimated_read_time": "About 1 minute",
  "hashtags_used": ["#ai", "#machinelearning"]
}

4. Output Formatting

Endpoint: /api/v1/output
Method: POST
Description: Format the LinkedIn post for output

Request Body:

{
  "post_content": "LinkedIn post content...",
  "format": "json"
}

Response:

{
  "content": {
    "post_content": "LinkedIn post content...",
    "character_count": 800
  },
  "format": "json"
}

Environment Variables

Variable Description Required
OPENAI_API_KEY OpenAI API key for summarization and post generation No (can be provided in requests)
YOUTUBE_API_KEY YouTube Data API key for fetching video metadata No (can be provided in requests)
PORT Port to run the server on (default: 8000) No

Note: While environment variables for API keys are optional (as they can be provided in each request), it's recommended to set them for local development and testing. When deploying to Smithery, users will need to provide their own API keys in the requests.

License

MIT

相关推荐

  • Joshua Armstrong
  • Confidential guide on numerology and astrology, based of GG33 Public information

  • https://suefel.com
  • Latest advice and best practices for custom GPT development.

  • Alexandru Strujac
  • Efficient thumbnail creator for YouTube videos

  • Emmet Halm
  • Converts Figma frames into front-end code for various mobile frameworks.

  • Elijah Ng Shi Yi
  • Advanced software engineer GPT that excels through nailing the basics.

  • lumpenspace
  • Take an adjectivised noun, and create images making it progressively more adjective!

  • https://maiplestudio.com
  • Find Exhibitors, Speakers and more

  • Lists Tailwind CSS classes in monospaced font

  • https://appia.in
  • Siri Shortcut Finder – your go-to place for discovering amazing Siri Shortcuts with ease

  • Carlos Ferrin
  • Encuentra películas y series en plataformas de streaming.

  • Yusuf Emre Yeşilyurt
  • I find academic articles and books for research and literature reviews.

  • tomoyoshi hirata
  • Sony α7IIIマニュアルアシスタント

  • apappascs
  • 发现市场上最全面,最新的MCP服务器集合。该存储库充当集中式枢纽,提供了广泛的开源和专有MCP服务器目录,并提供功能,文档链接和贡献者。

  • ShrimpingIt
  • MCP系列GPIO Expander的基于Micropython I2C的操作,源自ADAFRUIT_MCP230XX

  • jae-jae
  • MCP服务器使用剧作《无头浏览器》获取网页内容。

  • HiveNexus
  • 一个适用于中小型团队的AI聊天机器人,支持DeepSeek,Open AI,Claude和Gemini等车型。 专为中小团队设计的ai聊天应用,支持deepSeek,打开ai,claude,双子座等模型。

  • ravitemer
  • 一个功能强大的Neovim插件,用于管理MCP(模型上下文协议)服务器

  • patruff
  • Ollama和MCP服务器之间的桥梁,使本地LLMS可以使用模型上下文协议工具

  • pontusab
  • 光标与风浪冲浪社区,查找规则和MCP

  • JackKuo666
  • 🔍使AI助手可以通过简单的MCP接口搜索和访问PYPI软件包信息。

    Reviews

    4 (1)
    Avatar
    user_L2KwppDQ
    2025-04-17

    I've been using the NvkAnirudh_YT-to-LinkedIn-MCP-Server for a while now, and it has significantly streamlined my social media strategy. The seamless integration between YouTube and LinkedIn is impressive, and the automated features save a lot of time. Kudos to MCP-Mirror for developing such a user-friendly and efficient tool! Highly recommend checking it out on GitHub.