Yt Media Info
FreeNot checkedAn MCP server that extracts rich metadata (title, description, duration, chapters, subtitles, statistics, etc.) from media URLs across thousands of sites using
About
An MCP server that extracts rich metadata (title, description, duration, chapters, subtitles, statistics, etc.) from media URLs across thousands of sites using yt-dlp, and also provides transcript fetching and search capabilities.
README
License: MIT MCP yt-dlp Docker Node.js
Extract rich metadata, transcripts, and search from any yt-dlp-supported media URL — for Claude, Anthropic, and any MCP-compatible AI assistant.
yt-media-info MCP is a Model Context Protocol (MCP) server that lets AI assistants extract structured metadata from media URLs across 1800+ sites using yt-dlp — YouTube, Vimeo, Twitch, podcasts, and more. Given a URL (video, playlist, channel, podcast), it returns title, description, duration, chapters, subtitles/captions, formats, and statistics that models can reason over.
Built to sit alongside web-search tools as a media-enrichment step in an information-gathering pipeline. Works with Claude Desktop, Claude Code, LiteLLM, and any MCP client over stdio or SSE.
Works with
Compatible with any client that speaks the Model Context Protocol:
- Claude Desktop — via stdio transport
- Claude Code — via SSE transport
- LiteLLM — as an
mcpmodel in the gateway config - Open WebUI and any MCP-aware agent framework
- Custom apps — via the MCP SDK (SSE) or the plain JSON
POST /apishortcut
Table of Contents
- Features
- Use Cases
- Prerequisites
- Installation
- Configuration
- Usage with Claude Desktop, Claude Code, LiteLLM, and the Direct API
- Docker Compose
- Available MCP Tools
- Available Prompts
- Output Conventions: snake_case fields and ISO 8601 dates
- Cookie Management and Authentication
- Scope: metadata and transcripts only, no downloads
- Development
- License: MIT
Features
- Extract rich metadata from any yt-dlp-supported URL (YouTube, Vimeo, Twitch, and ~1800 more sites)
- Fetch transcripts with timestamps or as full text
- Search for media across supported platforms (supplementary discovery)
- Curated + raw output: focused summary at the top level, full yt-dlp info dict nested under
raw - Snake_case fields, ISO 8601 dates — matches yt-dlp's native format
- Optional two-layer auth: yt-dlp site credentials + bearer API key for your own endpoints
- Multiple transport options: stdio for Claude Desktop, SSE for web clients
- Direct API endpoint (
POST /api) for quick testing without MCP protocol - Persistent Python backend: no cold-start per call (imports yt-dlp once at startup)
Use Cases
- RAG over video — pull a video's transcript and metadata into a retrieval pipeline so an LLM can answer questions about the content without watching it.
- Summarize lectures, talks, and podcasts — feed the transcript to a model for key points, notable quotes, and takeaways (see the
summarize_transcriptprompt). - Podcast & lecture indexing — extract titles, descriptions, chapters, and durations to build searchable catalogs of audio/video content.
- Accessibility via captions — retrieve subtitles (manual or auto-generated) in any available language for transcription and translation workflows.
- Channel & playlist research — expand a playlist or channel into structured per-video metadata for analysis, deduplication, or ranking.
- Media enrichment in search pipelines — pair with a web-search tool: discover candidate URLs, then enrich each one with full metadata and transcripts before summarization.
- Content discovery — use
search_mediato find videos on YouTube or Google Video by query, then drill into the ones that matter.
Prerequisites
- Node.js 18+
- Python 3.12+ (for standalone development)
- Docker + Docker Compose (for recommended deployment)
Installation
# Clone the repository
cd yt-media-info-mcp
# Install Node dependencies
npm install
# Build the Python service Docker image
docker compose build yt-dlp-service
Standalone Python service (without Docker)
If you want to run the Python service directly:
cd service
pip install -r requirements.txt
uvicorn main:app --host 0.0.0.0 --port 8000
Then in another terminal:
YT_MEDIA_INFO_SERVICE_URL=http://localhost:8000 npm start
Configuration
Environment Variables
| Variable | Description | Default |
|---|---|---|
ENABLE_SSE |
Use SSE transport (vs stdio) | 0 |
YT_MEDIA_INFO_PORT |
HTTP server port (SSE mode) | 9423 |
YT_MEDIA_INFO_HOST |
HTTP server host (SSE mode) | 0.0.0.0 |
YT_MEDIA_INFO_SERVICE_URL |
URL of the Python yt-dlp service | http://yt-media-info-service:8000 |
YT_MEDIA_INFO_API_KEY |
Optional bearer API key for HTTP endpoints | (empty = no auth) |
YT_MEDIA_INFO_USERNAME |
Default username for yt-dlp site auth | (empty) |
YT_MEDIA_INFO_PASSWORD |
Default password for yt-dlp site auth | (empty) |
LOG_LEVEL |
Winston log level (error, warn, info, debug) | info |
Copy .env.example to .env and customize. .env is gitignored — use .env.local for per-machine secrets not tracked by git.
Usage with Claude Desktop, Claude Code, LiteLLM, and the Direct API
Claude Desktop (stdio)
{
"mcpServers": {
"yt-dlp": {
"command": "node",
"args": ["/path/to/yt-media-info-mcp/src/index.js"],
"env": {
"ENABLE_SSE": "0"
}
}
}
}
Claude Code (SSE)
{
"mcpServers": {
"yt-dlp": {
"type": "sse",
"url": "http://localhost:9423/sse"
}
}
}
LiteLLM
# config.yaml
model_list:
- model_name: yt-dlp
litellm_params:
model: mcp
mcp_servers:
yt-dlp:
transport: sse
url: http://host.docker.internal:9423/sse
Direct API
The POST /api endpoint bypasses the MCP protocol and returns results directly:
# Extract info
curl -X POST http://localhost:9423/api \
-H "Content-Type: application/json" \
-d '{
"tool": "extract_info",
"args": {
"url": "https://www.youtube.com/watch?v=YE7VzlLtp-4"
}
}'
# Get transcript
curl -X POST http://localhost:9423/api \
-H "Content-Type: application/json" \
-d '{
"tool": "get_transcript",
"args": {
"url": "https://www.youtube.com/watch?v=YE7VzlLtp-4",
"language": "en"
}
}'
# Search media
curl -X POST http://localhost:9423/api \
-H "Content-Type: application/json" \
-d '{
"tool": "search_media",
"args": {
"query": "python tutorial",
"limit": 5
}
}'
Web clients (MCP SSE)
The server exposes standard MCP SSE endpoints:
| Endpoint | Purpose |
|---|---|
GET /sse |
SSE connection stream (MCP transport) |
POST /messages |
Send MCP JSON-RPC messages to the server |
POST /api |
Direct JSON API (bypasses MCP) |
GET /health |
Health check |
// Connect via MCP SDK
import { Client } from '@modelcontextprotocol/sdk/client/index.js';
import { SSEClientTransport } from '@modelcontextprotocol/sdk/client/sse.js';
const transport = new SSEClientTransport(new URL('http://localhost:9423/sse'));
const client = new Client({ name: 'web-app', version: '1.0' });
await client.connect(transport);
const result = await client.request(
{ method: 'tools/call', params: { name: 'extract_info', arguments: { url: 'https://www.youtube.com/watch?v=YE7VzlLtp-4' } } },
resultSchema
);
Docker Compose
docker compose up -d # start both services
docker compose logs -f # tail logs
docker compose down # stop
docker compose build # rebuild after changes
The yt-dlp-service container is persistent and stays warm. The yt-media-info-mcp container waits for the health check on the Python service before accepting connections.
Available MCP Tools
extract_info
Extracts rich metadata from a media URL.
Parameters:
| Parameter | Type | Description | Default |
|---|---|---|---|
url |
string | Media URL to extract information from | (required) |
include_raw |
boolean | Include the full yt-dlp sanitized info_dict under raw |
true |
username |
string? | Username for site authentication | null |
password |
string? | Password for site authentication | null |
Output: Curated metadata (title, description, duration, uploader, statistics, chapters, thumbnails, formats summary, subtitles available, playlist info) + optional raw info dict.
get_transcript
Fetches subtitles or transcript text for a media URL.
Parameters:
| Parameter | Type | Description | Default |
|---|---|---|---|
url |
string | Media URL to fetch transcript from | (required) |
language |
string | Preferred subtitle language code | "en" |
timestamps |
boolean | Include timestamp segments in response | true |
username |
string? | Username for site authentication | null |
password |
string? | Password for site authentication | null |
Output: Language, duration, subtitle segments (with timestamps if requested), and concatenated full_text.
search_media
Supplementary discovery tool. Searches for media using yt-dlp's search prefixes (e.g. ytsearch:). This is a companion to general-purpose web search — it finds candidate URLs for further enrichment.
Parameters:
| Parameter | Type | Description | Default |
|---|---|---|---|
query |
string | Search query | (required) |
limit |
integer | Maximum number of results (max 50) | 10 |
platform |
string | Platform to search. Supported: youtube, google_videos |
"youtube" |
Output: Results array with url, title, duration_seconds, uploader, upload_date, thumbnail, view_count.
Available Prompts
- analyze_video: Analyze a video/media item from its available metadata (title, description, duration, uploader, categories, optional transcript summary).
- summarize_transcript: Summarize a video transcript to extract key points, notable quotes, and practical takeaways.
Output Conventions: snake_case fields and ISO 8601 dates
- snake_case field names (matches yt-dlp's native format)
- ISO 8601 date strings (e.g.
"2024-01-15"for upload_date,"2024-01-15T14:30:00Z"for timestamps) - Best-effort error handling: complete failures return an error response; missing fields are
null; playlist entries that fail are collected in afailuresarray
Cookie Management and Authentication
When running in SSE mode, the server provides a web-based cookie upload form at http://<host>:<port>/ (default http://localhost:9423/) for uploading Netscape-format cookie files.
Web Upload Flow
Export cookies from your browser using yt-dlp:
yt-dlp --cookies-from-browser chrome --cookies cookies.txtOr use a browser extension like Get cookies.txt LOCALLY.
Open the form at
http://localhost:9423/in your browser.Upload the
cookies.txtfile — the form validates the file format, writes it atomically to the shared Docker volume at/data/cookies.txt, and displays parsed cookie info (domains, count, earliest expiry).Delete cookies via the form's delete button when needed.
Endpoints
| Method | Path | Description |
|---|---|---|
GET |
/ |
HTML upload form |
POST |
/upload-cookies |
Upload a cookies.txt file (multipart/form-data, field name cookies) |
POST |
/delete-cookies |
Delete the cookie file |
All endpoints are protected by the same YT_MEDIA_INFO_API_KEY bearer auth as the other HTTP endpoints (when configured).
Cookie File Format
The file must:
- Start with
# Netscape HTTP Cookie File - Be under 1 MB
- Use tab-separated Netscape cookie format
Cookie-bot Sidecar
If you have the cookie-bot sidecar running (opt-in via docker compose --profile cookies up -d), it will periodically refresh cookies from the shared volume. The web upload form is a convenient way to seed the initial cookie file — the cookie-bot then takes over automated refreshes.
Note: The cookie-bot's automated refresh will overwrite a manually uploaded file. Use the web form for initial seeding, then let the bot handle refreshes.
Scope: metadata and transcripts only, no downloads
This server does NOT download media files. It is a metadata enrichment and transcript extraction tool designed to work alongside other search and retrieval tools. No ffmpeg is required.
Development
npm run dev # nodemon auto-restart
npm run lint # ESLint
npm run lint:fix # ESLint auto-fix
License: MIT
This project is licensed under the MIT License.
Installing Yt Media Info
This server has no published package — it is built from source. Open the repository and follow its README.
▸ github.com/bartivs/yt-media-info-mcpFAQ
Is Yt Media Info MCP free?
Yes, Yt Media Info MCP is free — one-click install via Unyly at no cost.
Does Yt Media Info need an API key?
No, Yt Media Info runs without API keys or environment variables.
Is Yt Media Info hosted or self-hosted?
A hosted option is available: Unyly runs the server in the cloud, no local setup required.
How do I install Yt Media Info in Claude Desktop, Claude Code or Cursor?
Open Yt Media Info on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
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