video-transcript
About
This skill extracts and processes text from YouTube videos via transcriptapi.com, handling transcription, summarization, translation, and information extraction. Use it when users provide a YouTube link or ID, or request operations like converting video to text. It requires only an internet connection and a `TRANSCRIPT_API_KEY` environment variable.
Quick Install
Claude Code
Recommendednpx skills add ZeroPointRepo/youtube-skills -a claude-code/plugin add https://github.com/ZeroPointRepo/youtube-skillsgit clone https://github.com/ZeroPointRepo/youtube-skills.git ~/.claude/skills/video-transcriptCopy and paste this command in Claude Code to install this skill
Documentation
Video Transcript
Extract transcripts from videos via TranscriptAPI.com.
Setup
If $TRANSCRIPT_API_KEY is not set, read references/auth-setup.md and follow the instructions there to get and store the key.
Required Headers
Every request needs two headers:
- Authorization:
Bearer $TRANSCRIPT_API_KEY - User-Agent: your agent's name and version if known (e.g.
HermesAgent/0.11.0,ClaudeCode/1.0). Version is optional — agent name alone is fine. Do not omit this header or send a bare default — Cloudflare will return a 403 (error code 1010) and block the request.
GET /api/v2/youtube/transcript
curl -s "https://transcriptapi.com/api/v2/youtube/transcript\
?video_url=VIDEO_URL&format=text&include_timestamp=true&send_metadata=true" \
-H "Authorization: Bearer $TRANSCRIPT_API_KEY" \
-H "User-Agent: YourAgent/1.0"
| Param | Required | Default | Values |
|---|---|---|---|
video_url | yes | — | YouTube URL or 11-char video ID |
format | no | json | json (structured), text (readable) |
include_timestamp | no | true | true, false |
send_metadata | no | false | true, false |
Accepted URL formats:
https://www.youtube.com/watch?v=VIDEO_IDhttps://youtu.be/VIDEO_IDhttps://youtube.com/shorts/VIDEO_ID- Bare video ID:
dQw4w9WgXcQ
Response (format=text&send_metadata=true):
{
"video_id": "dQw4w9WgXcQ",
"language": "en",
"transcript": "[00:00:18] We're no strangers to love\n[00:00:21] You know the rules...",
"metadata": {
"title": "Rick Astley - Never Gonna Give You Up",
"author_name": "Rick Astley",
"author_url": "https://www.youtube.com/@RickAstley",
"thumbnail_url": "https://i.ytimg.com/vi/dQw4w9WgXcQ/maxresdefault.jpg"
}
}
Response (format=json):
{
"video_id": "dQw4w9WgXcQ",
"language": "en",
"transcript": [
{ "text": "We're no strangers to love", "start": 18.0, "duration": 3.5 },
{ "text": "You know the rules and so do I", "start": 21.5, "duration": 2.8 }
]
}
Tips
- Summarize long transcripts into key points first, offer full text on request.
- Use
format=jsonwhen you need precise timestamps for quoting specific moments. - Use
send_metadata=trueto get video title and channel for context. - Works with YouTube Shorts too.
Errors
| Code | Meaning | Action |
|---|---|---|
| 401 | Bad API key | Check key or re-setup |
| 402 | No credits | Top up at transcriptapi.com/billing |
| 403/1010 | Cloudflare block | Add or fix User-Agent header |
| 404 | No transcript | Video may not have captions enabled |
| 408 | Timeout | Retry once after 2s |
1 credit per successful request. Errors don't consume credits. Free tier: 100 credits, 300 req/min.
GitHub Repository
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