Production-ready audio. Zero plugin chains.
Upload a raw recording. Get a broadcast-standard file back in under 8 minutes. Podvynt auto-levels, de-noises, removes filler words, and masters to your spec.
From raw recording to publish-ready in four steps.
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01
Upload or connect
Drop files via dashboard, push via our API, or auto-pull from connected cloud storage (S3, Dropbox, Google Drive). Supports MP3, WAV, FLAC, M4A up to 4GB.
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02
AI processes your audio
Our model classifies noise type, removes background hum and breath noise, balances multi-track host levels, and strips filler words — with no quality artifacts.
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03
Master to LUFS spec
Choose -14 LUFS (Spotify standard), -16 LUFS (Apple Podcasts), or a custom target. Final limiter applied to prevent clipping. Metadata tags preserved.
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04
Retrieve and publish
Download processed files, or push directly to Buzzsprout, Transistor, Libsyn, or Megaphone via our native connectors. Average processing time: 6 minutes for a 60-minute episode.
Every audio tool your network needs, unified.
Adaptive noise reduction
Identifies and removes hum, HVAC noise, reverb, and background crowd noise without affecting voice clarity.
Multi-host level balancing
Up to 8 speaker channels per episode. Each voice balanced to the same perceived loudness so no host overpowers another.
Filler word removal
Detects and removes um, uh, like, you know, and custom-defined words. Transcript-aligned so timestamps stay accurate.
LUFS mastering
Integrated loudness normalization with configurable targets. True Peak limiter prevents clipping across all distribution channels.
Auto-transcription
Word-level transcript generated alongside audio. Speaker-diarized with confidence scores. Export SRT, VTT, or JSON.
Batch processing
Submit a full show backlog. Our pipeline scales horizontally — no queue delays even when processing hundreds of episodes simultaneously.
Built for production-grade audio pipelines.
- Formats: MP3, WAV, FLAC, M4A, OGG (export: MP3 or WAV)
- File size limit: 4 GB per file
- Speaker channels: Mono, stereo, up to 8-track
- Processing latency: < 8 min for 60-min episode
- LUFS targets: -14 (Spotify), -16 (Apple), -18 (YouTube), custom
- Transcript output: SRT, VTT, JSON (word-level, speaker-diarized)
- API: REST (async callbacks) + Webhooks
- Storage: Processed files retained 30 days (Enterprise: 1 year)
Content-Type: application/json
Authorization: Bearer pvnt_sk_...
{
"source_url": "s3://my-bucket/ep42-raw.wav",
"lufs_target": -14,
"remove_fillers": true,
"filler_words": ["um", "uh", "like"],
"output_format": "mp3",
"webhook_url": "https://yourapp.com/hooks/pvnt"
}
→ 201 Accepted: production_id "prod_abc123"
A note on what Podvynt does — and doesn't — replace. Our processing pipeline handles the mechanical work: leveling, noise suppression, filler removal, LUFS mastering. It does not replace a sound engineer's ear for narrative pacing, music bed decisions, or creative post-production choices. Think of Podvynt as handling the production floor so your audio team can focus on the creative layer.
Ready to cut post-production time by 60%?
Free trial. No card required. 14 days of full production access.