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YouTube video analysis and content generation pipeline exposed as MCP tools

Project description

mcp-content-pipeline

PyPI version Downloads License: MIT Python

A YouTube video analysis and content generation pipeline exposed as MCP tools. Extract transcripts, generate key takeaways, TLDRs, and Twitter/X hook drafts — all callable by any MCP-compatible AI client like Claude Desktop.

Why?

Manually copying YouTube transcripts into AI tools, crafting prompts, and formatting output is tedious and error-prone. This MCP server turns the entire workflow into chainable tools that any AI agent can call. List videos from a channel, analyse them in batch, and sync the results to GitHub — all in a single conversation.

Quick Start

uvx mcp-content-pipeline

Or install explicitly:

uv tool install mcp-content-pipeline
mcp-content-pipeline

Claude Desktop Configuration

Add to your Claude Desktop MCP config (~/Library/Application Support/Claude/claude_desktop_config.json):

{
  "mcpServers": {
    "content-pipeline": {
      "command": "/usr/local/bin/uvx",
      "args": ["mcp-content-pipeline"],
      "env": {
        "MCP_CP_ANTHROPIC_API_KEY": "sk-ant-...",
        "MCP_CP_GITHUB_TOKEN": "ghp_...",
        "MCP_CP_GITHUB_REPO": "your-username/your-repo",
        "MCP_CP_GEMINI_API_KEY": "your-gemini-api-key"
      }
    }
  }
}

Usage

Once configured in Claude Desktop, chain the tools in a single conversation:

Step 1 — Analyse

"Analyse this video: https://www.youtube.com/watch?v=..."

Step 2 — Generate image

"Generate an image for this analysis"

Step 3 — Sync to GitHub

"Sync the analysis and image to GitHub"

Or do it all in one prompt:

"Analyse this video, generate the image, and sync to GitHub: https://www.youtube.com/watch?v=..."

Tools

Tool Description Requires
analyse_video Analyse a single YouTube video — transcript, takeaways, TLDR, Twitter hook ANTHROPIC_API_KEY
batch_analyse Analyse multiple videos from a URL list or config file ANTHROPIC_API_KEY
list_channel_videos Fetch recent videos from a YouTube channel YOUTUBE_API_KEY
sync_to_github Push analyses as markdown files to a GitHub repo GITHUB_TOKEN, GITHUB_REPO
generate_image Generate comic-book infographic from analysis result GEMINI_API_KEY

Environment Variables

All prefixed with MCP_CP_:

Variable Required Description
MCP_CP_ANTHROPIC_API_KEY Yes Anthropic API key for Claude analysis
MCP_CP_YOUTUBE_API_KEY No YouTube Data API v3 key (only for list_channel_videos)
MCP_CP_GITHUB_TOKEN For sync GitHub personal access token
MCP_CP_GITHUB_REPO For sync Target repo in owner/repo format
MCP_CP_GITHUB_BRANCH No Branch to push to (default: main)
MCP_CP_GITHUB_OUTPUT_DIR No Output directory in repo (default: content/videos)
MCP_CP_CLAUDE_MODEL No Claude model to use (default: claude-sonnet-4-20250514)
MCP_CP_MAX_TRANSCRIPT_TOKENS No Max transcript length in tokens (default: 100000)
MCP_CP_GEMINI_API_KEY For image Google AI Studio API key for image generation
MCP_CP_GEMINI_MODEL No Gemini model for images (default: gemini-3.1-flash-image-preview)

Development

git clone https://github.com/your-username/mcp-content-pipeline.git
cd mcp-content-pipeline
uv sync
uv run pytest -v --cov=src/mcp_content_pipeline
uv run ruff check src/ tests/

Security

  • All credentials are configured via local environment variables — never committed to the repo
  • The tool is open source but your API keys, YouTube key, and GitHub token stay on your machine
  • Never create a .env file in the repo — use shell exports or Claude Desktop config instead

Contributing

  1. Fork the repository
  2. Create a feature branch (git checkout -b feat/my-feature)
  3. Commit using Conventional Commits (feat: add new feature)
  4. Push and open a Pull Request

License

MIT

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