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whisper-local/whisper_local/transcriber.py
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"""Whisper-Transkription via faster-whisper."""
import logging
import sys
from pathlib import Path
import numpy as np
from faster_whisper import WhisperModel
logger = logging.getLogger(__name__)
def _model_cache_dir() -> str | None:
"""Im gebündelten Modus: Modell neben der EXE cachen (portable).
Im Entwicklungsmodus: None → HuggingFace-Standard-Cache."""
if getattr(sys, "frozen", False):
cache = Path(sys.executable).parent / "models"
try:
cache.mkdir(exist_ok=True)
return str(cache)
except OSError:
return None # Fallback auf HuggingFace-Standard-Cache
return None
class Transcriber:
def __init__(self, model_name: str = "small", compute_type: str = "int8", language: str = "de"):
self.language = language
logger.info("Lade Whisper-Modell '%s' (compute_type=%s)...", model_name, compute_type)
self.model = WhisperModel(model_name, compute_type=compute_type, download_root=_model_cache_dir())
logger.info("Modell geladen")
def transcribe(self, audio: np.ndarray) -> str:
"""Transkribiert Audio-Array zu Text."""
segments, _ = self.model.transcribe(audio, language=self.language)
text = " ".join(segment.text.strip() for segment in segments if segment.text.strip())
if text:
logger.info("Transkribiert: %s", text)
else:
logger.info("Keine Sprache erkannt")
return text