Self-hosted Opus Clip alternative — reels.biba.live
Pipeline:
- New transcribe_with_groq() function uses Groq's whisper-large-v3-turbo
- 30s audio transcribed in ~0.5s (vs 30s+ on CPU)
- Same quality as local Whisper (it's the same OpenAI model)
- Cloudflare bypass via custom User-Agent header
- 24MB upload limit guard with auto-fallback to local
- Language auto-detect works (Groq returns full lang name, mapped to ISO codes)
Default whisper_provider='auto':
- If GROQ_API_KEY is set → use Groq (200x faster)
- Otherwise → fallback to local faster-whisper
- Strict 'groq' mode: no fallback (returns empty if Groq fails)
- Strict 'local' mode: skip Groq entirely
CLI: --whisper-provider {auto,groq,local}
API: whisper_provider field in StartJobIn
Cost: $0.04/h with whisper-large-v3-turbo ($0.002 per 200s song)
|
||
|---|---|---|
| app | ||
| scripts | ||
| templates | ||
| .env.example | ||
| .gitignore | ||
| docker-compose.yml | ||
| Dockerfile | ||
| README.md | ||
| requirements.txt | ||
Reels Clipper · biba.live
Self-hosted Opus Clip alternativa za FOLX TV / PTC. Pretvori 16:9 video v 9:16 reels/shorts/tiktok format z auto face tracking, podnapisi (sl/de/en) in avto-detekcijo refrena v glasbenih pesmih.
Features
- 📤 Drag & drop upload (do 2 GB)
- 📺 YouTube URL paste (yt-dlp)
- 🎯 Smart reframe: track (face follow), center, blur (za glasbo)
- 🎵 Auto-chorus detection (Whisper + energy hibrid)
- 📝 Burned-in podnapisi (faster-whisper, multi-jezik)
- 🎨 3 stili podnapisov: reels, yellow (MrBeast), minimal
- 🔐 HTTP Basic Auth
- 📊 Real-time progress (Server-Sent Events)
- 📦 Docker / Coolify ready
Quick start (lokalno)
docker compose up --build
# odpri http://localhost:8000
Default login: sebastjan / nastavi AUTH_PASS v .env.
Coolify deploy
- V Coolify ustvari nov projekt → Docker Compose iz tega repoja
- Domena:
reels.biba.live - Env vars:
AUTH_USER=sebastjan AUTH_PASS=<močno geslo> MAX_UPLOAD_MB=2000 - Volume
reels_datase ustvari avtomatsko - Deploy → Coolify postavi Traefik reverse proxy + SSL via Let's Encrypt
Pipeline
Upload / YouTube
↓
[ yt_download.py ] ← samo če YouTube
↓
[ find_chorus.py ] ← samo če auto_chorus=true (Whisper + RMS analiza)
↓
[ reframe.py ] ← 16:9 → 9:16 (track / center / blur)
↓
[ subtitle.py ] ← Whisper transkripcija + burn-in
↓
reel.mp4
API
POST /api/upload— multipart file upload, vrnejob_idPOST /api/youtube— JSON{url, mode, lang, ...}POST /api/process— start processing za uploaded jobGET /api/jobs— list vsehGET /api/jobs/{id}— statusGET /api/stream/{id}— SSE stream progressGET /api/download/{id}— final reelDELETE /api/jobs/{id}— pobriši
Dependencies
- FFmpeg (system)
- faster-whisper (transkripcija)
- OpenCV (face detection)
- yt-dlp (YouTube)
- FastAPI + uvicorn (server)