oceansweep's picture
Upload 155 files
43cd37c verified
# Audio_Transcription_Lib.py
#########################################
# Transcription Library
# This library is used to perform transcription of audio files.
# Currently, uses faster_whisper for transcription.
#
####################
# Function List
#
# 1. convert_to_wav(video_file_path, offset=0, overwrite=False)
# 2. speech_to_text(audio_file_path, selected_source_lang='en', whisper_model='small.en', vad_filter=False)
#
####################
#
# Import necessary libraries to run solo for testing
import gc
import json
import logging
import multiprocessing
import os
import queue
import sys
import subprocess
import tempfile
import threading
import time
# DEBUG Imports
#from memory_profiler import profile
import pyaudio
from faster_whisper import WhisperModel as OriginalWhisperModel
from typing import Optional, Union, List, Dict, Any
#
# Import Local
from App_Function_Libraries.Utils.Utils import load_comprehensive_config
from App_Function_Libraries.Metrics.metrics_logger import log_counter, log_histogram
#
#######################################################################################################################
# Function Definitions
#
# Convert video .m4a into .wav using ffmpeg
# ffmpeg -i "example.mp4" -ar 16000 -ac 1 -c:a pcm_s16le "output.wav"
# https://www.gyan.dev/ffmpeg/builds/
#
whisper_model_instance = None
config = load_comprehensive_config()
processing_choice = config.get('Processing', 'processing_choice', fallback='cpu')
total_thread_count = multiprocessing.cpu_count()
class WhisperModel(OriginalWhisperModel):
tldw_dir = os.path.dirname(os.path.dirname(__file__))
default_download_root = os.path.join(tldw_dir, 'models', 'Whisper')
valid_model_sizes = [
"tiny.en", "tiny", "base.en", "base", "small.en", "small", "medium.en", "medium",
"large-v1", "large-v2", "large-v3", "large", "distil-large-v2", "distil-medium.en",
"distil-small.en", "distil-large-v3",
]
def __init__(
self,
model_size_or_path: str,
device: str = processing_choice,
device_index: Union[int, List[int]] = 0,
compute_type: str = "default",
cpu_threads: int = 0,#total_thread_count, FIXME - I think this should be 0
num_workers: int = 1,
download_root: Optional[str] = None,
local_files_only: bool = False,
files: Optional[Dict[str, Any]] = None,
**model_kwargs: Any
):
if download_root is None:
download_root = self.default_download_root
os.makedirs(download_root, exist_ok=True)
# FIXME - validate....
# Also write an integration test...
# Check if model_size_or_path is a valid model size
if model_size_or_path in self.valid_model_sizes:
# It's a model size, so we'll use the download_root
model_path = os.path.join(download_root, model_size_or_path)
if not os.path.isdir(model_path):
# If it doesn't exist, we'll let the parent class download it
model_size_or_path = model_size_or_path # Keep the original model size
else:
# If it exists, use the full path
model_size_or_path = model_path
else:
# It's not a valid model size, so assume it's a path
model_size_or_path = os.path.abspath(model_size_or_path)
super().__init__(
model_size_or_path,
device=device,
device_index=device_index,
compute_type=compute_type,
cpu_threads=cpu_threads,
num_workers=num_workers,
download_root=download_root,
local_files_only=local_files_only,
# Maybe? idk, FIXME
# files=files,
# **model_kwargs
)
def get_whisper_model(model_name, device):
global whisper_model_instance
if whisper_model_instance is None:
logging.info(f"Initializing new WhisperModel with size {model_name} on device {device}")
whisper_model_instance = WhisperModel(model_name, device=device)
return whisper_model_instance
# os.system(r'.\Bin\ffmpeg.exe -ss 00:00:00 -i "{video_file_path}" -ar 16000 -ac 1 -c:a pcm_s16le "{out_path}"')
#DEBUG
#@profile
def convert_to_wav(video_file_path, offset=0, overwrite=False):
log_counter("convert_to_wav_attempt", labels={"file_path": video_file_path})
start_time = time.time()
out_path = os.path.splitext(video_file_path)[0] + ".wav"
if os.path.exists(out_path) and not overwrite:
print(f"File '{out_path}' already exists. Skipping conversion.")
logging.info(f"Skipping conversion as file already exists: {out_path}")
log_counter("convert_to_wav_skipped", labels={"file_path": video_file_path})
return out_path
print("Starting conversion process of .m4a to .WAV")
out_path = os.path.splitext(video_file_path)[0] + ".wav"
try:
if os.name == "nt":
logging.debug("ffmpeg being ran on windows")
if sys.platform.startswith('win'):
ffmpeg_cmd = ".\\Bin\\ffmpeg.exe"
logging.debug(f"ffmpeg_cmd: {ffmpeg_cmd}")
else:
ffmpeg_cmd = 'ffmpeg' # Assume 'ffmpeg' is in PATH for non-Windows systems
command = [
ffmpeg_cmd, # Assuming the working directory is correctly set where .\Bin exists
"-ss", "00:00:00", # Start at the beginning of the video
"-i", video_file_path,
"-ar", "16000", # Audio sample rate
"-ac", "1", # Number of audio channels
"-c:a", "pcm_s16le", # Audio codec
out_path
]
try:
# Redirect stdin from null device to prevent ffmpeg from waiting for input
with open(os.devnull, 'rb') as null_file:
result = subprocess.run(command, stdin=null_file, text=True, capture_output=True)
if result.returncode == 0:
logging.info("FFmpeg executed successfully")
logging.debug("FFmpeg output: %s", result.stdout)
else:
logging.error("Error in running FFmpeg")
logging.error("FFmpeg stderr: %s", result.stderr)
raise RuntimeError(f"FFmpeg error: {result.stderr}")
except Exception as e:
logging.error("Error occurred - ffmpeg doesn't like windows")
raise RuntimeError("ffmpeg failed")
elif os.name == "posix":
os.system(f'ffmpeg -ss 00:00:00 -i "{video_file_path}" -ar 16000 -ac 1 -c:a pcm_s16le "{out_path}"')
else:
raise RuntimeError("Unsupported operating system")
logging.info("Conversion to WAV completed: %s", out_path)
log_counter("convert_to_wav_success", labels={"file_path": video_file_path})
except Exception as e:
logging.error("speech-to-text: Error transcribing audio: %s", str(e))
log_counter("convert_to_wav_error", labels={"file_path": video_file_path, "error": str(e)})
return {"error": str(e)}
conversion_time = time.time() - start_time
log_histogram("convert_to_wav_duration", conversion_time, labels={"file_path": video_file_path})
gc.collect()
return out_path
# Transcribe .wav into .segments.json
#DEBUG
#@profile
# FIXME - I feel like the `vad_filter` shoudl be enabled by default....
def speech_to_text(audio_file_path, selected_source_lang='en', whisper_model='medium.en', vad_filter=False, diarize=False):
log_counter("speech_to_text_attempt", labels={"file_path": audio_file_path, "model": whisper_model})
time_start = time.time()
if audio_file_path is None:
log_counter("speech_to_text_error", labels={"error": "No audio file provided"})
raise ValueError("speech-to-text: No audio file provided")
logging.info("speech-to-text: Audio file path: %s", audio_file_path)
try:
_, file_ending = os.path.splitext(audio_file_path)
out_file = audio_file_path.replace(file_ending, "-whisper_model-"+whisper_model+".segments.json")
prettified_out_file = audio_file_path.replace(file_ending, "-whisper_model-"+whisper_model+".segments_pretty.json")
if os.path.exists(out_file):
logging.info("speech-to-text: Segments file already exists: %s", out_file)
with open(out_file) as f:
global segments
segments = json.load(f)
return segments
logging.info('speech-to-text: Starting transcription...')
# FIXME - revisit this
options = dict(language=selected_source_lang, beam_size=10, best_of=10, vad_filter=vad_filter)
transcribe_options = dict(task="transcribe", **options)
# use function and config at top of file
logging.debug("speech-to-text: Using whisper model: %s", whisper_model)
whisper_model_instance = get_whisper_model(whisper_model, processing_choice)
# faster_whisper transcription right here - FIXME -test batching - ha
segments_raw, info = whisper_model_instance.transcribe(audio_file_path, **transcribe_options)
segments = []
for segment_chunk in segments_raw:
chunk = {
"Time_Start": segment_chunk.start,
"Time_End": segment_chunk.end,
"Text": segment_chunk.text
}
logging.debug("Segment: %s", chunk)
segments.append(chunk)
# Print to verify its working
logging.info(f"{segment_chunk.start:.2f}s - {segment_chunk.end:.2f}s | {segment_chunk.text}")
# Log it as well.
logging.debug(
f"Transcribed Segment: {segment_chunk.start:.2f}s - {segment_chunk.end:.2f}s | {segment_chunk.text}")
if segments:
segments[0]["Text"] = f"This text was transcribed using whisper model: {whisper_model}\n\n" + segments[0]["Text"]
if not segments:
log_counter("speech_to_text_error", labels={"error": "No transcription produced"})
raise RuntimeError("No transcription produced. The audio file may be invalid or empty.")
transcription_time = time.time() - time_start
logging.info("speech-to-text: Transcription completed in %.2f seconds", transcription_time)
log_histogram("speech_to_text_duration", transcription_time, labels={"file_path": audio_file_path, "model": whisper_model})
log_counter("speech_to_text_success", labels={"file_path": audio_file_path, "model": whisper_model})
# Save the segments to a JSON file - prettified and non-prettified
# FIXME refactor so this is an optional flag to save either the prettified json file or the normal one
save_json = True
if save_json:
logging.info("speech-to-text: Saving segments to JSON file")
output_data = {'segments': segments}
logging.info("speech-to-text: Saving prettified JSON to %s", prettified_out_file)
with open(prettified_out_file, 'w') as f:
json.dump(output_data, f, indent=2)
logging.info("speech-to-text: Saving JSON to %s", out_file)
with open(out_file, 'w') as f:
json.dump(output_data, f)
logging.debug(f"speech-to-text: returning {segments[:500]}")
gc.collect()
return segments
except Exception as e:
logging.error("speech-to-text: Error transcribing audio: %s", str(e))
log_counter("speech_to_text_error", labels={"file_path": audio_file_path, "model": whisper_model, "error": str(e)})
raise RuntimeError("speech-to-text: Error transcribing audio")
def record_audio(duration, sample_rate=16000, chunk_size=1024):
log_counter("record_audio_attempt", labels={"duration": duration})
p = pyaudio.PyAudio()
stream = p.open(format=pyaudio.paInt16,
channels=1,
rate=sample_rate,
input=True,
frames_per_buffer=chunk_size)
print("Recording...")
frames = []
stop_recording = threading.Event()
audio_queue = queue.Queue()
def audio_callback():
for _ in range(0, int(sample_rate / chunk_size * duration)):
if stop_recording.is_set():
break
data = stream.read(chunk_size)
audio_queue.put(data)
audio_thread = threading.Thread(target=audio_callback)
audio_thread.start()
return p, stream, audio_queue, stop_recording, audio_thread
def stop_recording(p, stream, audio_queue, stop_recording_event, audio_thread):
log_counter("stop_recording_attempt")
start_time = time.time()
stop_recording_event.set()
audio_thread.join()
frames = []
while not audio_queue.empty():
frames.append(audio_queue.get())
print("Recording finished.")
stream.stop_stream()
stream.close()
p.terminate()
stop_time = time.time() - start_time
log_histogram("stop_recording_duration", stop_time)
log_counter("stop_recording_success")
return b''.join(frames)
def save_audio_temp(audio_data, sample_rate=16000):
log_counter("save_audio_temp_attempt")
with tempfile.NamedTemporaryFile(suffix=".wav", delete=False) as temp_file:
import wave
wf = wave.open(temp_file.name, 'wb')
wf.setnchannels(1)
wf.setsampwidth(2)
wf.setframerate(sample_rate)
wf.writeframes(audio_data)
wf.close()
log_counter("save_audio_temp_success")
return temp_file.name
#
#
#######################################################################################################################