captions
About
This skill fetches timestamped captions from any YouTube video via the TranscriptAPI. Use it when working with video transcripts, such as for quoting content, translation, accessibility features, or language learning. It requires only an API key and internet access, but cannot upload subtitles or manage accounts.
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/captionsCopy and paste this command in Claude Code to install this skill
Documentation
Captions
Extract closed captions from YouTube 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=json&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 video ID |
format | no | json | json (structured), text (plain) |
include_timestamp | no | true | true, false |
send_metadata | no | false | true, false |
Response (format=json — best for accessibility/timing):
{
"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 }
],
"metadata": { "title": "...", "author_name": "...", "thumbnail_url": "..." }
}
start: seconds from video startduration: how long caption is displayed
Response (format=text — readable):
{
"video_id": "dQw4w9WgXcQ",
"language": "en",
"transcript": "[00:00:18] We're no strangers to love\n[00:00:21] You know the rules..."
}
Tips
- Use
format=jsonfor sync'd captions (accessibility tools, timing analysis). - Use
format=textwithinclude_timestamp=falsefor clean reading. - Auto-generated captions are available for most videos; manual CC is higher quality.
Errors
| Code | Meaning | Action |
|---|---|---|
| 401 | Bad API key | Check key |
| 402 | No credits | transcriptapi.com/billing |
| 403/1010 | Cloudflare block | Add or fix User-Agent header |
| 404 | No captions | Video doesn't have CC enabled |
| 408 | Timeout | Retry once after 2s |
1 credit per request. Free tier: 100 credits, 300 req/min.
GitHub Repository
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