YouTube Transcript Pro
FreeNot checkedEnables fetching YouTube video transcripts with metadata, including timed captions in multiple formats (JSON, SRT, VTT, CSV, TXT) and preprocessing options.
About
Enables fetching YouTube video transcripts with metadata, including timed captions in multiple formats (JSON, SRT, VTT, CSV, TXT) and preprocessing options.
README
A production-ready Model Context Protocol (MCP) server for fetching YouTube video transcripts with metadata.
🎯 Features
- 4 MCP Tools: Complete implementation of list_tracks, get_transcript, get_timed_transcript, get_video_info
- Hybrid Architecture: YouTube Data API v3 for metadata + yt-dlp for robust content extraction
- Full MCP Compliance: JSON-RPC 2.0 protocol over stdin/stdout
- Battle-Tested: Comprehensive test suite with 100% success rate
- Production Quality: TypeScript with strict types, proper error handling, detailed logging
- No OAuth Required: Uses API key for metadata, yt-dlp for transcript content (no OAuth 2.0 complexity)
📋 Prerequisites
- Node.js 20+ (for running the MCP server)
- YouTube Data API Key (free tier available)
- yt-dlp (for transcript extraction)
Installing yt-dlp
Windows (winget):
winget install yt-dlp
macOS (Homebrew):
brew install yt-dlp
Linux (curl):
sudo curl -L https://github.com/yt-dlp/yt-dlp/releases/latest/download/yt-dlp -o /usr/local/bin/yt-dlp
sudo chmod a+rx /usr/local/bin/yt-dlp
Getting a YouTube API Key
- Go to Google Cloud Console
- Create a new project (or select existing)
- Enable "YouTube Data API v3"
- Create credentials → API key
- Copy the API key
🚀 Quick Start
Installation
# Clone or navigate to the project directory
cd mcp-youtube-transcript-pro
# Install dependencies
npm install
# Create .env file with your API key
echo "YOUTUBE_API_KEY=your_api_key_here" > .env
# Build the project
npm run build
Running Tests
# Test all four MCP tools directly
npx ts-node test-mcp-tools.ts
# Test the JSON-RPC protocol implementation
npx ts-node test-mcp-protocol.ts
Starting the Server
# Start the MCP server (listens on stdin/stdout)
npm run start
🔧 Usage with Claude Desktop
Add to your Claude Desktop configuration (claude_desktop_config.json):
{
"mcpServers": {
"youtube-transcript": {
"command": "node",
"args": [
"H:\\-EMBLEM-PROJECT(s)-\\Tools\\packages\\mcp-youtube-transcript-pro\\dist\\index.js"
],
"env": {
"YOUTUBE_API_KEY": "your_api_key_here"
}
}
}
}
Note: Replace the path with your actual installation directory.
📚 MCP Tools
1. list_tracks
Lists available caption tracks for a YouTube video.
Input:
{
"url": "https://www.youtube.com/watch?v=lxRAj1Gijic"
}
Output:
[
{
"lang": "en",
"source": "youtube_api_manual"
}
]
2. get_transcript
Returns a merged plain text transcript.
Input:
{
"url": "lxRAj1Gijic",
"lang": "en"
}
Output:
"today we're going to enhance your vs code to ensure that you've got the most efficient workspace..."
3. get_timed_transcript
Returns timestamped transcript segments in multiple formats.
Input:
{
"url": "https://youtu.be/lxRAj1Gijic",
"lang": "en",
"format": "json"
}
Output (format: json, default):
[
{
"start": 0.08,
"end": 0.32,
"text": "today",
"lang": "en",
"source": "web_extraction"
},
...
]
Supported Formats:
json(default): Array of TranscriptSegment objectssrt: SubRip subtitle formatvtt: WebVTT web caption formatcsv: Spreadsheet format with 7 columnstxt: Plain text format
See Format Support below for detailed examples.
4. get_video_info
Returns video metadata including title, channel, duration, and available captions.
Input:
{
"url": "https://www.youtube.com/watch?v=lxRAj1Gijic"
}
Output:
{
"title": "The ULTIMATE VS Code Setup - Extensions & Settings 2025",
"channelId": "UCRVtCne4XmwFLot1FHMfhuw",
"duration": "PT15M23S",
"captionsAvailable": [
{ "lang": "en", "source": "youtube_api_manual" }
]
}
📤 Format Support
The get_timed_transcript tool supports 5 output formats optimized for different use cases:
JSON (default)
Structured data format, perfect for programmatic processing.
[
{
"start": 0.08,
"end": 4.359,
"text": "today I'm going to be showing you the best extensions",
"lang": "en",
"source": "web_extraction"
}
]
SRT (SubRip)
Standard subtitle format for video editing software (Adobe Premiere, Final Cut Pro, DaVinci Resolve).
1
00:00:00,080 --> 00:00:04,359
today I'm going to be showing you the best extensions
2
00:00:04,359 --> 00:00:07,000
and settings for VS Code in 2025
VTT (WebVTT)
Web-native caption format for HTML5 video players and browsers.
WEBVTT
00:00:00.080 --> 00:00:04.359
today I'm going to be showing you the best extensions
00:00:04.359 --> 00:00:07.000
and settings for VS Code in 2025
CSV
Spreadsheet format for data analysis (Excel, Google Sheets, Python pandas).
Sequence,Start,End,Duration,Text,Language,Source
1,00:00:00.080,00:00:04.359,00:00:04.279,"today I'm going to be showing you the best extensions",en,web_extraction
2,00:00:04.359,00:00:07.000,00:00:02.641,"and settings for VS Code in 2025",en,web_extraction
TXT (Plain Text)
Human-readable format for documentation or simple text extraction.
today I'm going to be showing you the best extensions and settings for VS Code in 2025
Usage Example
{
"url": "https://youtu.be/lxRAj1Gijic",
"format": "srt"
}
Format Comparison
| Format | File Size* | Best For | MIME Type |
|---|---|---|---|
| JSON | 289 KB | Data processing, APIs | application/json |
| SRT | 144 KB | Video editing (Premiere, Final Cut) | application/x-subrip |
| VTT | 127 KB | Web captions, HTML5 video | text/vtt |
| CSV | 175 KB | Spreadsheet analysis, Excel | text/csv |
| TXT | 17.5 KB | Documentation, simple text | text/plain |
*Based on 15-minute video with 3,624 transcript segments.
For detailed format specifications, compatibility information, and decision trees, see FORMATS.md.
🔧 Preprocessing Options
The get_timed_transcript tool includes optional preprocessing parameters to clean and optimize transcript data before formatting. All options are disabled by default for backward compatibility.
filterEmpty
Remove segments with empty or whitespace-only text.
Use case: Clean up auto-generated captions that include timing markers for silent periods.
Example:
{
"url": "https://youtu.be/lxRAj1Gijic",
"filterEmpty": true
}
Before (1,089 segments):
[
{ "start": 0.08, "end": 0.32, "text": "today", ... },
{ "start": 0.32, "end": 0.56, "text": "", ... },
{ "start": 0.56, "end": 1.12, "text": " ", ... },
{ "start": 1.12, "end": 1.44, "text": "we're", ... }
]
After (987 segments, 102 removed):
[
{ "start": 0.08, "end": 0.32, "text": "today", ... },
{ "start": 1.12, "end": 1.44, "text": "we're", ... }
]
mergeOverlaps
Merge segments with overlapping timestamps.
Use case: Fix word-level timing issues in auto-generated captions where end[n] > start[n+1].
Example:
{
"url": "https://youtu.be/lxRAj1Gijic",
"mergeOverlaps": true
}
Before (overlapping timestamps):
[
{ "start": 0.08, "end": 1.50, "text": "Hello", ... },
{ "start": 1.20, "end": 2.50, "text": "world", ... }
]
After (merged):
[
{ "start": 0.08, "end": 2.50, "text": "Hello world", ... }
]
removeSilence
Remove silence and pause markers from transcript.
Use case: Create clean reading transcripts without [silence], [pause], [Music] markers.
Example:
{
"url": "https://youtu.be/lxRAj1Gijic",
"removeSilence": true
}
Removed patterns (case-insensitive):
[silence][pause][Music]- Single period:
. - Single dash:
- - Empty/whitespace-only text
Before:
[
{ "start": 0.08, "end": 0.32, "text": "Hello", ... },
{ "start": 0.32, "end": 1.50, "text": "[silence]", ... },
{ "start": 1.50, "end": 2.80, "text": "[Music]", ... },
{ "start": 2.80, "end": 3.20, "text": "world", ... }
]
After (2 segments removed):
[
{ "start": 0.08, "end": 0.32, "text": "Hello", ... },
{ "start": 2.80, "end": 3.20, "text": "world", ... }
]
Combining Options
All three preprocessing options can be used together. They are applied in this order:
- removeSilence - Remove silence/pause markers
- filterEmpty - Remove empty segments
- mergeOverlaps - Merge overlapping timestamps
Example (all options enabled):
{
"url": "https://youtu.be/lxRAj1Gijic",
"filterEmpty": true,
"mergeOverlaps": true,
"removeSilence": true,
"format": "srt"
}
Results:
- Original: 1,089 segments
- After removeSilence: 1,012 segments (77 removed)
- After filterEmpty: 987 segments (25 removed)
- After mergeOverlaps: 342 segments (645 merged)
- Final: 342 clean, merged segments in SRT format
TypeScript Usage
import { get_timed_transcript } from './tools';
// Clean transcript for reading
const cleanTranscript = await get_timed_transcript({
url: 'https://youtu.be/lxRAj1Gijic',
filterEmpty: true,
removeSilence: true,
format: 'txt'
});
// Optimized subtitle file
const subtitles = await get_timed_transcript({
url: 'https://youtu.be/lxRAj1Gijic',
mergeOverlaps: true,
filterEmpty: true,
format: 'srt'
});
🏗️ Architecture
MCP Client (e.g., Claude Desktop)
↓ JSON-RPC 2.0 over stdin
MCP Server (index.ts)
↓
Tool Router (tools.ts)
↓
┌──────────────────────┬─────────────────────────┐
│ YouTube Data API v3 │ yt-dlp (web extraction)│
│ (youtube_api.ts) │ (web_extraction.ts) │
├──────────────────────┼─────────────────────────┤
│ • List captions │ • Get transcript content│
│ • Get video metadata │ • Timestamped segments │
│ • API key auth │ • No auth required │
│ • Quota limits │ • No quota limits │
└──────────────────────┴─────────────────────────┘
Why Hybrid?
- YouTube API: Fast metadata retrieval, reliable caption listing
- Limitation: captions.download() requires OAuth 2.0 (not suitable for automated servers)
- yt-dlp: No authentication needed, actively maintained, handles edge cases
- Advantage: Downloads transcript content without OAuth complexity
- Best of Both Worlds: API for metadata, yt-dlp for content extraction
📁 Project Structure
mcp-youtube-transcript-pro/
├── src/
│ ├── index.ts # MCP server entry point (JSON-RPC handler)
│ ├── tools.ts # MCP tool implementations
│ ├── types.ts # TypeScript interfaces
│ └── adapters/
│ ├── youtube_api.ts # YouTube Data API v3 integration
│ └── web_extraction.ts # yt-dlp integration
├── test-mcp-tools.ts # Direct tool tests
├── test-mcp-protocol.ts # End-to-end protocol tests
├── package.json
├── tsconfig.json
├── .env # YOUTUBE_API_KEY
└── dist/ # Compiled JavaScript
🧪 Test Results
All tests passing with 100% success rate:
=== MCP YouTube Transcript Pro - Tool Tests ===
✅ list_tracks passed
✅ get_video_info passed
✅ get_timed_transcript passed (3624 segments, 15.39 minutes)
✅ get_transcript passed (17917 characters, 3624 words)
=== MCP JSON-RPC Protocol Tests ===
✅ initialize passed
✅ tools/list passed (4 tools)
✅ tools/call (all 4 tools) passed
✅ ping passed
🛠️ Development
Available Scripts
npm run build # Compile TypeScript to dist/
npm run start # Start the MCP server
npm run dev # Start in development mode with auto-reload
npm run lint # Run ESLint
npm test # Run Jest tests
VS Code Tasks
Use Ctrl+Shift+B (or Cmd+Shift+B on macOS) to access pre-configured tasks:
- Build: Compile TypeScript
- Start: Run the server
- Dev: Development mode with ts-node
- Lint: Check code quality
- Test: Run test suite
- Install Dependencies: npm install
📝 Environment Variables
Create a .env file in the project root:
YOUTUBE_API_KEY=your_youtube_data_api_v3_key_here
🔍 Troubleshooting
"yt-dlp not found"
- Solution: Install yt-dlp using package manager (see Prerequisites)
- Verify: Run
yt-dlp --versionin terminal
"YOUTUBE_API_KEY environment variable not set"
- Solution: Create
.envfile with your API key - Verify: Check that
.envexists and containsYOUTUBE_API_KEY=...
"Cannot find module '../types'"
- Solution: Rebuild the project with
npm run build - Verify: Check that
dist/directory exists and contains compiled .js files
API Quota Exceeded
- Issue: YouTube Data API has daily quota limits (free tier: 10,000 units/day)
- Solution: Each API call uses ~3 units, yt-dlp has no quota limits
- Workaround: The server uses yt-dlp for transcript content (no API quota impact)
📄 License
MIT License - see LICENSE file for details
🤝 Contributing
This project was built with AI assistance (GitHub Copilot - Claude Sonnet 4.5). Contributions are welcome!
See IMPLEMENTATION_COMPLETE.md for detailed implementation notes and lessons learned.
🙏 Acknowledgments
- yt-dlp: Gold standard for YouTube content extraction
- Google YouTube Data API: Reliable metadata and caption listing
- Model Context Protocol: Standardized protocol for AI tool integration
Status: ✅ Production Ready Last Updated: October 17, 2025 Test Video: https://www.youtube.com/watch?v=lxRAj1Gijic
Run the container:
docker run -i mcp-youtube-transcript-pro
Note: Version 1.1.0 adds preprocessing options (filterEmpty, mergeOverlaps, removeSilence) and CSV/TXT output formats.
Installing YouTube Transcript Pro
This server has no published package — it is built from source. Open the repository and follow its README.
▸ github.com/thisis-romar/mcp-youtube-transcript-proFAQ
Is YouTube Transcript Pro MCP free?
Yes, YouTube Transcript Pro MCP is free — one-click install via Unyly at no cost.
Does YouTube Transcript Pro need an API key?
No, YouTube Transcript Pro runs without API keys or environment variables.
Is YouTube Transcript Pro hosted or self-hosted?
A hosted option is available: Unyly runs the server in the cloud, no local setup required.
How do I install YouTube Transcript Pro in Claude Desktop, Claude Code or Cursor?
Open YouTube Transcript Pro 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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