Files
speech/app/workers/faster_whisper_worker.py
du5t 56e637a300 Initial commit: ASR v2 with multi-venv isolation
- faster-whisper, Qwen3-ASR, gateway 각 컴포넌트별 Python venv 분리
- 기본언어 한국어(ko)
- 처리내역 탭: 목록/상세/원본파일 재생/삭제
- 백엔드별 동적 모델 드랍다운
- /history, /uploads API 추가
- 기존 인스턴스(port 18100) 보존, 신규 port 18101

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-23 00:24:36 +09:00

274 lines
9.1 KiB
Python

from __future__ import annotations
import argparse
import tempfile
from pathlib import Path
from typing import Any, Dict, List, Optional, Union
import uvicorn
from fastapi import FastAPI, File, Form, HTTPException, UploadFile
from faster_whisper import WhisperModel
import sys
sys.path.insert(0, "/app")
from common import (
COMPUTE_TYPE,
CUSTOM_MODEL_DIR,
DEFAULT_MODEL,
DEVICE,
MODEL_CACHE,
PYANNOTE_HF_TOKEN,
ensure_runtime_dirs,
resolve_custom_model_path,
)
app = FastAPI(title="ASR Faster-Whisper Worker")
_MODEL_CACHE: Dict[str, WhisperModel] = {}
_DIARIZATION_PIPELINE: Any = None
@app.on_event("startup")
def startup() -> None:
ensure_runtime_dirs()
@app.get("/health")
def health() -> Dict[str, Any]:
return {
"status": "ok",
"device": DEVICE,
"compute_type": COMPUTE_TYPE,
"diarization_available": bool(PYANNOTE_HF_TOKEN),
}
@app.post("/transcribe")
async def transcribe(
file: UploadFile = File(...),
model: str = Form(DEFAULT_MODEL),
custom_model_path: Optional[str] = Form(None),
language: Optional[str] = Form(None),
task: str = Form("transcribe"),
beam_size: int = Form(5),
temperature: float = Form(0.0),
word_timestamps: bool = Form(False),
diarize: bool = Form(False),
num_speakers: Optional[int] = Form(None),
min_speakers: Optional[int] = Form(None),
max_speakers: Optional[int] = Form(None),
no_repeat_ngram_size: int = Form(0),
repetition_penalty: float = Form(1.0),
compression_ratio_threshold: float = Form(2.4),
log_prob_threshold: float = Form(-1.0),
no_speech_threshold: float = Form(0.6),
condition_on_previous_text: bool = Form(True),
) -> Dict[str, Any]:
ensure_runtime_dirs()
suffix = Path(file.filename or "upload.bin").suffix or ".bin"
with tempfile.NamedTemporaryFile(delete=False, suffix=suffix) as tmp:
tmp.write(await file.read())
tmp_path = Path(tmp.name)
try:
resolved_model = resolve_custom_model_path(custom_model_path) or model
result = _transcribe(
audio_path=tmp_path,
model_name=resolved_model,
language=language or None,
task=task,
beam_size=beam_size,
temperature=temperature,
word_timestamps=word_timestamps,
no_repeat_ngram_size=no_repeat_ngram_size,
repetition_penalty=repetition_penalty,
compression_ratio_threshold=compression_ratio_threshold,
log_prob_threshold=log_prob_threshold,
no_speech_threshold=no_speech_threshold,
condition_on_previous_text=condition_on_previous_text,
)
if diarize:
result = _apply_diarization(
audio_path=tmp_path,
result=result,
num_speakers=num_speakers,
min_speakers=min_speakers,
max_speakers=max_speakers,
)
return result
except HTTPException:
raise
except Exception as exc:
raise HTTPException(status_code=500, detail=f"Worker failure: {exc}") from exc
finally:
tmp_path.unlink(missing_ok=True)
def _load_model(model_name: str) -> WhisperModel:
if model_name not in _MODEL_CACHE:
_MODEL_CACHE[model_name] = WhisperModel(
model_name,
device=DEVICE,
compute_type=COMPUTE_TYPE,
download_root=str(MODEL_CACHE),
)
return _MODEL_CACHE[model_name]
def _transcribe(
audio_path: Path,
model_name: str,
language: Optional[str],
task: str,
beam_size: int,
temperature: float,
word_timestamps: bool,
no_repeat_ngram_size: int,
repetition_penalty: float,
compression_ratio_threshold: float,
log_prob_threshold: float,
no_speech_threshold: float,
condition_on_previous_text: bool,
) -> Dict[str, Any]:
model = _load_model(model_name)
temperatures: Union[float, List[float]] = [0.0, 0.2, 0.4, 0.6, 0.8, 1.0] if temperature == 0.0 else temperature
segments_iter, info = model.transcribe(
str(audio_path),
language=language,
task=task,
beam_size=beam_size,
temperature=temperatures,
word_timestamps=word_timestamps,
no_repeat_ngram_size=no_repeat_ngram_size,
repetition_penalty=repetition_penalty,
compression_ratio_threshold=compression_ratio_threshold,
log_prob_threshold=log_prob_threshold,
no_speech_threshold=no_speech_threshold,
condition_on_previous_text=condition_on_previous_text,
)
segment_list = []
full_text = []
for seg in segments_iter:
seg_dict: Dict[str, Any] = {
"id": seg.id,
"start": round(float(seg.start), 3),
"end": round(float(seg.end), 3),
"text": seg.text,
"avg_logprob": round(float(seg.avg_logprob), 4) if seg.avg_logprob is not None else None,
"compression_ratio": round(float(seg.compression_ratio), 4) if seg.compression_ratio is not None else None,
"no_speech_prob": round(float(seg.no_speech_prob), 4) if seg.no_speech_prob is not None else None,
}
if word_timestamps and getattr(seg, "words", None):
seg_dict["words"] = [
{
"start": round(float(w.start), 3),
"end": round(float(w.end), 3),
"word": w.word,
"probability": round(float(w.probability), 4),
}
for w in seg.words
]
segment_list.append(seg_dict)
full_text.append(seg.text.strip())
duration = None
try:
duration = round(float(info.duration), 3)
except Exception:
pass
return {
"backend": "faster-whisper",
"model": model_name,
"language": getattr(info, "language", language),
"language_probability": round(float(getattr(info, "language_probability", 0) or 0), 4),
"duration": duration,
"text": " ".join(x for x in full_text if x),
"segments": segment_list,
"diarized": False,
}
def _get_diarization_pipeline():
global _DIARIZATION_PIPELINE
if _DIARIZATION_PIPELINE is None:
try:
from pyannote.audio import Pipeline
import torch
except ImportError as exc:
raise RuntimeError("pyannote.audio가 설치되지 않았습니다.") from exc
if not PYANNOTE_HF_TOKEN:
raise RuntimeError("화자 분리를 사용하려면 PYANNOTE_HF_TOKEN 환경변수를 설정하세요.")
_DIARIZATION_PIPELINE = Pipeline.from_pretrained(
"pyannote/speaker-diarization-3.1",
use_auth_token=PYANNOTE_HF_TOKEN,
)
if DEVICE == "cuda":
import torch
_DIARIZATION_PIPELINE = _DIARIZATION_PIPELINE.to(torch.device("cuda"))
return _DIARIZATION_PIPELINE
def _apply_diarization(
audio_path: Path,
result: Dict[str, Any],
num_speakers: Optional[int],
min_speakers: Optional[int],
max_speakers: Optional[int],
) -> Dict[str, Any]:
pipeline = _get_diarization_pipeline()
kwargs: Dict[str, Any] = {}
if num_speakers is not None:
kwargs["num_speakers"] = num_speakers
else:
if min_speakers is not None:
kwargs["min_speakers"] = min_speakers
if max_speakers is not None:
kwargs["max_speakers"] = max_speakers
diarization = pipeline(str(audio_path), **kwargs)
segments = result.get("segments", [])
for seg in segments:
seg_start = float(seg.get("start", 0))
seg_end = float(seg.get("end", 0))
speaker_times: Dict[str, float] = {}
for turn, _, speaker in diarization.itertracks(yield_label=True):
overlap_start = max(seg_start, turn.start)
overlap_end = min(seg_end, turn.end)
if overlap_end > overlap_start:
speaker_times[speaker] = speaker_times.get(speaker, 0.0) + (overlap_end - overlap_start)
seg["speaker"] = max(speaker_times, key=speaker_times.get) if speaker_times else "UNKNOWN"
lines = []
current_speaker: Optional[str] = None
current_texts: list = []
for seg in segments:
speaker = seg.get("speaker", "UNKNOWN")
text = seg.get("text", "").strip()
if not text:
continue
if speaker != current_speaker:
if current_texts and current_speaker is not None:
lines.append(f"[{current_speaker}]: {' '.join(current_texts)}")
current_speaker = speaker
current_texts = [text]
else:
current_texts.append(text)
if current_texts and current_speaker is not None:
lines.append(f"[{current_speaker}]: {' '.join(current_texts)}")
result["text"] = "\n".join(lines)
result["diarized"] = True
return result
if __name__ == "__main__":
parser = argparse.ArgumentParser()
parser.add_argument("--host", default="0.0.0.0")
parser.add_argument("--port", type=int, default=8001)
args = parser.parse_args()
ensure_runtime_dirs()
uvicorn.run(app, host=args.host, port=args.port)