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Running
on
Zero
import whisperx | |
import torch | |
import numpy as np | |
from scipy.signal import resample | |
from pyannote.audio import Pipeline | |
import os | |
from dotenv import load_dotenv | |
load_dotenv() | |
import logging | |
import time | |
from difflib import SequenceMatcher | |
hf_token = os.getenv("HF_TOKEN") | |
CHUNK_LENGTH=30 | |
OVERLAP=0 | |
import whisperx | |
import torch | |
import numpy as np | |
logging.basicConfig(level=logging.INFO, format='%(asctime)s - %(name)s - %(levelname)s - %(message)s') | |
logger = logging.getLogger(__name__) | |
import spaces | |
def preprocess_audio(audio, chunk_size=CHUNK_LENGTH*16000, overlap=OVERLAP*16000): # 2 seconds overlap | |
chunks = [] | |
for i in range(0, len(audio), chunk_size - overlap): | |
chunk = audio[i:i+chunk_size] | |
if len(chunk) < chunk_size: | |
chunk = np.pad(chunk, (0, chunk_size - len(chunk))) | |
chunks.append(chunk) | |
return chunks | |
def process_audio(audio_file, translate=False, model_size="small"): | |
start_time = time.time() | |
try: | |
device = "cuda" if torch.cuda.is_available() else "cpu" | |
print(f"Using device: {device}") | |
compute_type = "int8" if torch.cuda.is_available() else "float32" | |
audio = whisperx.load_audio(audio_file) | |
model = whisperx.load_model(model_size, device, compute_type=compute_type) | |
diarization_pipeline = Pipeline.from_pretrained("pyannote/speaker-diarization", use_auth_token=hf_token) | |
diarization_pipeline = diarization_pipeline.to(torch.device(device)) | |
diarization_result = diarization_pipeline({"waveform": torch.from_numpy(audio).unsqueeze(0), "sample_rate": 16000}) | |
chunks = preprocess_audio(audio) | |
language_segments = [] | |
final_segments = [] | |
overlap_duration = OVERLAP # 2 seconds overlap | |
for i, chunk in enumerate(chunks): | |
chunk_start_time = i * (CHUNK_LENGTH - overlap_duration) | |
chunk_end_time = chunk_start_time + CHUNK_LENGTH | |
logger.info(f"Processing chunk {i+1}/{len(chunks)}") | |
lang = model.detect_language(chunk) | |
result_transcribe = model.transcribe(chunk, language=lang) | |
if translate: | |
result_translate = model.transcribe(chunk, task="translate") | |
chunk_start_time = i * (CHUNK_LENGTH - overlap_duration) | |
for j, t_seg in enumerate(result_transcribe["segments"]): | |
segment_start = chunk_start_time + t_seg["start"] | |
segment_end = chunk_start_time + t_seg["end"] | |
# Skip segments in the overlapping region of the previous chunk | |
if i > 0 and segment_end <= chunk_start_time + overlap_duration: | |
print(f"Skipping segment in overlap with previous chunk: {segment_start:.2f} - {segment_end:.2f}") | |
continue | |
# Skip segments in the overlapping region of the next chunk | |
if i < len(chunks) - 1 and segment_start >= chunk_end_time - overlap_duration: | |
print(f"Skipping segment in overlap with next chunk: {segment_start:.2f} - {segment_end:.2f}") | |
continue | |
speakers = [] | |
for turn, track, speaker in diarization_result.itertracks(yield_label=True): | |
if turn.start <= segment_end and turn.end >= segment_start: | |
speakers.append(speaker) | |
segment = { | |
"start": segment_start, | |
"end": segment_end, | |
"language": lang, | |
"speaker": max(set(speakers), key=speakers.count) if speakers else "Unknown", | |
"text": t_seg["text"], | |
} | |
if translate: | |
segment["translated"] = result_translate["segments"][j]["text"] | |
final_segments.append(segment) | |
language_segments.append({ | |
"language": lang, | |
"start": chunk_start_time, | |
"end": chunk_start_time + CHUNK_LENGTH | |
}) | |
chunk_end_time = time.time() | |
logger.info(f"Chunk {i+1} processed in {chunk_end_time - chunk_start_time:.2f} seconds") | |
final_segments.sort(key=lambda x: x["start"]) | |
merged_segments = merge_nearby_segments(final_segments) | |
end_time = time.time() | |
logger.info(f"Total processing time: {end_time - start_time:.2f} seconds") | |
return language_segments, final_segments | |
except Exception as e: | |
logger.error(f"An error occurred during audio processing: {str(e)}") | |
raise | |
def merge_nearby_segments(segments, time_threshold=0.5, similarity_threshold=0.9): | |
merged = [] | |
for segment in segments: | |
if not merged or segment['start'] - merged[-1]['end'] > time_threshold: | |
merged.append(segment) | |
else: | |
# Find the overlap | |
matcher = SequenceMatcher(None, merged[-1]['text'], segment['text']) | |
match = matcher.find_longest_match(0, len(merged[-1]['text']), 0, len(segment['text'])) | |
if match.size / len(segment['text']) > similarity_threshold: | |
# Merge the segments | |
merged_text = merged[-1]['text'] + segment['text'][match.b + match.size:] | |
merged_translated = merged[-1]['translated'] + segment['translated'][match.b + match.size:] | |
merged[-1]['end'] = segment['end'] | |
merged[-1]['text'] = merged_text | |
merged[-1]['translated'] = merged_translated | |
else: | |
# If no significant overlap, append as a new segment | |
merged.append(segment) | |
return merged | |
def print_results(segments): | |
for segment in segments: | |
print(f"[{segment['start']:.2f}s - {segment['end']:.2f}s] ({segment['language']}) {segment['speaker']}:") | |
print(f"Original: {segment['text']}") | |
if 'translated' in segment: | |
print(f"Translated: {segment['translated']}") | |
print() |