YouTube Vision
Interact with YouTube videos using the Google Gemini Vision API.
YouTube Vision MCP Server (youtube-vision)
MCP (Model Context Protocol) server that utilizes the Google Gemini Vision API to interact with YouTube videos. It allows users to get descriptions, summaries, answers to questions, and extract key moments from YouTube videos.
Features
- Analyzes YouTube videos using the Gemini Vision API.
- Provides multiple tools for different interactions:
- General description or Q&A (
ask_about_youtube_video) - Summarization (
summarize_youtube_video) - Key moment extraction (
extract_key_moments)
- General description or Q&A (
- Lists available Gemini models supporting
generateContent. - Configurable Gemini model via environment variable.
- Communicates via stdio (standard input/output).
Prerequisites
Before using this server, ensure you have the following:
- Node.js: Version 18 or higher recommended. You can download it from nodejs.org.
- Google Gemini API Key: Obtain your API key from Google AI Studio or Google Cloud Console.
Installation & Usage
There are two main ways to use this server:
Installing via Smithery
To install youtube-vision-mcp for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @minbang930/youtube-vision-mcp --client claude
Option 1: Using npx (Recommended for quick use)
The easiest way to run this server is using npx, which downloads and runs the package without needing a permanent installation.
You can configure it within your MCP client's settings file (Claude, VSCode .. ):
{
"mcpServers": {
"youtube-vision": {
"command": "npx",
"args": [
"-y",
"youtube-vision"
],
"env": {
"GEMINI_API_KEY": "YOUR_GEMINI_API_KEY",
"GEMINI_MODEL_NAME": "gemini-2.0-flash"
}
}
}
}
Replace "YOUR_GEMINI_API_KEY" with your actual Google Gemini API key.
Option 2: Manual Installation (from Source)
If you want to modify the code or run it directly from the source:
-
Clone the repository:
git clone https://github.com/minbang930/Youtube-Vision-MCP.git cd youtube-vision -
Install dependencies:
npm install -
Build the project:
npm run build -
Configure and run: You can then run the compiled code using
node dist/index.jsdirectly (ensureGEMINI_API_KEYis set as an environment variable) or configure your MCP client to run it using thenodecommand and the absolute path todist/index.js, passing the API key via theenvsetting as shown in the npx example.
Configuration
The server uses the following environment variables:
GEMINI_API_KEY(Required): Your Google Gemini API key.GEMINI_MODEL_NAME(Optional): The specific Gemini model to use (e.g.,gemini-1.5-flash). Defaults togemini-2.0-flash. Important: For production or commercial use, ensure you select a model version that is not marked as "Experimental" or "Preview".
Environment variables should be set in the env section of your MCP client's settings file (e.g., mcp_settings.json).
Available Tools
1. ask_about_youtube_video
Answers a question about the video or provides a general description if no question is asked.
- Input:
youtube_url(string, required): The URL of the YouTube video.question(string, optional): The specific question to ask about the video. If omitted, a general description is generated.
- Output: Text containing the answer or description.
2. summarize_youtube_video
Generates a summary of a given YouTube video.
- Input:
youtube_url(string, required): The URL of the YouTube video.summary_length(string, optional): Desired summary length ('short', 'medium', 'long'). Defaults to 'medium'.
- Output: Text containing the video summary.
3. extract_key_moments
Extracts key moments (timestamps and descriptions) from a given YouTube video.
- Input:
youtube_url(string, required): The URL of the YouTube video.number_of_moments(integer, optional): Number of key moments to extract. Defaults to 3.
- Output: Text describing the key moments with timestamps.
4. list_supported_models
Lists available Gemini models that support the generateContent method (fetched via REST API).
- Input: None
- Output: Text listing the supported model names.
Important Notes
- Model Selection for Production: When using this server for production or commercial purposes, please ensure the selected
GEMINI_MODEL_NAMEis a stable version suitable for production use. According to the Gemini API Terms of Service, models marked as "Experimental" or "Preview" are not permitted for production deployment. - API Terms of Service: Usage of this server relies on the Google Gemini API. Users are responsible for reviewing and complying with the Google APIs Terms of Service and the Gemini API Additional Terms of Service. Note that data usage policies may differ between free and paid tiers of the Gemini API. Do not submit sensitive or confidential information when using free tiers.
- Content Responsibility: The accuracy and appropriateness of content generated via the Gemini API are not guaranteed. Use discretion before relying on or publishing generated content.
License
This project is licensed under the MIT License. See the LICENSE file for details.
Похожие серверы
Gemini MCP Server
Access Google's Gemini AI through the gemini-cli command-line tool.
Free USDC Transfer
Enables free USDC transfers on the Base network using a Coinbase CDP MPC Wallet.
YouTube MCP
Manage YouTube videos, create Shorts, and get analytics using the YouTube API.
Salesforce MCP Server
Integrates Claude with Salesforce, enabling natural language interactions with your Salesforce data and metadata.
Render MCP Server
Interact with Render resources via LLMs using the Render API.
Forge MCP Server
Integrate with the Laravel Forge API to manage servers and deployments using MCP-compliant tools.
Shared Memory MCP
An example project for deploying a remote MCP server on Cloudflare Workers without authentication.
Ssemble AI Clipping
Create AI-powered short-form video clips from YouTube videos using any AI assistant
Elementary
Expose data observability, lineage, test results & incidents to AI agents via MCP
IOL MCP Tool
Interact with the Invertir Online (IOL) API to manage investments and access market data.