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docs: add KNOWLEDGE.md with lessons learned and improvement notes
Co-authored-by: Copilot <223556219+Copilot@users.noreply.github.com>
2026-05-06 10:09:27 +02:00

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Whisper RTX2080 — Lessons Learned & Improvement Notes

Quality Baseline (as of 2026-05-06)

Audio: 101-minute YouTube conference talk (Unblocked — Peter Werry) Model: ggml-large-v3, chunking at 60s on silence boundaries

Metric Score
WER 9.3%
Word coverage 93.1%
1-gram F1 94.9%
3-gram F1 84.7%
5-gram F1 77.5%

Critical Bugs Found & Fixed

set_detect_language(true) is NOT "auto-detect and transcribe"

  • whisper.cpp source: if (params.detect_language) { return 0; } — it exits immediately after language detection, returns 0 segments
  • Correct API: fp.set_language(None) → passes language = NULL to whisper.cpp, which auto-detects AND transcribes
  • set_detect_language(true) is only for language identification workflows, not transcription
  • This caused 0-segment regressions on every job submitted without an explicit language= param

VAD filter causes hallucinations

  • vad_filter=true silences quiet audience speech → whisper fills the void with "Okay." hallucinations at ~1s intervals
  • Fix: Remove vad_filter entirely

Remaining Known Issues

1. Short-token hallucination loops (unfixable by entropy_thold)

  • entropy_thold is only evaluated when result_len > 32 output tokens
  • Short loops like kas, sick, Bye. (each 1 token) are never caught, no matter how low you set the threshold
  • Current occurrences: 'kas' ×12 at ~2801s, 'sick' ×4 at ~4540s, 'Bye.' ×10 at ~6070s
  • Possible future fix: post-process to collapse consecutive identical segments (user declined this for now — raw output only)
  • compression_ratio_thold may also help but wasn't tested

2. Five significant content gaps (~1600 words total)

  • Largest: 439 words at ~68 min, 328 words at ~80 min, then 3 × ~293-250 word gaps
  • These are chunks where whisper produced off-topic or repetitive output instead of real content
  • Likely caused by: speaker overlap, audience noise, or poor audio quality in those windows
  • Possible future fix: retry failed chunks at smaller scope (30s), detect by low-confidence score or segment density

3. CUDA device ordering inversion

  • nvidia-smi: GPU0=RTX 2080 SUPER, GPU1=RTX 3060
  • whisper.cpp on host: Device 0=RTX 3060, Device 1=RTX 2080 SUPER (inverted vs nvidia-smi)
  • Inside Docker: matches nvidia-smi order
  • Health endpoint uses nvml (nvidia-smi ordering) → reports wrong GPU name when running on host
  • Workaround: CUDA_DEVICE=1 on host to target RTX 2080 SUPER

Whisper Parameter Tuning Notes

Current values in src/transcriber.rs:

beam_size = 5, patience = 1.0
entropy_thold = 3.5        (catches ~9-word phrase loops, theoretical entropy ≈ log₂(9) ≈ 3.17)
logprob_thold = -1.0       (rejects very low confidence segments)
temperature_inc = 0.2      (fallback temperature increment on failure)
no_context = true          (prevents context from one chunk poisoning the next)
suppress_non_speech_tokens = true
suppress_blank = true
language = None            (auto-detect + transcribe)

What NOT to set:

  • vad_filter=true → hallucination loops on quiet speech
  • detect_language=true → returns 0 segments, transcription never runs

Audio Pre-Processing Pipeline

  1. Download: yt-dlp → MP3
  2. Convert: ffmpeg → 16kHz mono WAV (whisper native format)
  3. Silence detection: ffmpeg silencedetect filter at -35dB / 0.4s min duration
  4. Chunking: target 60s, snap to nearest silence midpoint within ±30s window, fallback to hard cut
  5. Trim trailing silence per chunk: -35dB threshold, 0.5s padding (applied before whisper)
  6. Transcribe each chunk independently, offset timestamps, concatenate

Why chunking helps: Whisper hallucinations compound over time. Starting each chunk fresh limits how far a bad segment can spread.

Chunk size trade-off:

  • Smaller (60s): less hallucination spread, but short isolated sections (e.g. someone spelling a name) lose context
  • Larger (180s): more context, handles short sections better, but hallucinations can corrupt more content
  • Current sweet spot: 60s. If 'KAS'-type issues are a priority, try 90-120s.

Potential Future Improvements (Prioritized)

  1. Retry bad chunks at smaller scope — detect low-quality output (by segment density or avg logprob) and re-run the chunk at 30s windows
  2. Increase chunk size to 90-120s — better context for short proper nouns / name spelling; test if hallucination spread stays acceptable
  3. compression_ratio_thold — may catch short-token loops that entropy_thold misses; test values around 2.0-2.4
  4. Adaptive snap window — if no silence in ±30s, try ±45s before hard-cutting; reduces long unbroken speech chunks
  5. Per-segment confidence scoring — expose avg_logprob per segment in the JSON output for downstream filtering
  6. Multiple model support — medium model for speed, large-v3 for quality; selectable per job