samelias1 commited on
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e0e19b7
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1 Parent(s): 0900ba8

Update app.py

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  1. app.py +406 -401
app.py CHANGED
@@ -7,12 +7,10 @@ import time
7
  import sys
8
  import threading
9
  from typing import Dict, List, Optional, Any
 
10
  from fastapi import FastAPI, HTTPException
11
  from fastapi.responses import JSONResponse
12
  import uvicorn
13
- import torch
14
- import librosa
15
- from transformers import AutoModelForSpeechSeq2Seq, AutoProcessor, pipeline
16
 
17
  # Fix Unicode encoding for Windows
18
  if sys.platform == 'win32':
@@ -23,13 +21,9 @@ if sys.platform == 'win32':
23
  app = FastAPI(title="Audio Transcriber", description="Audio transcription and upload service")
24
 
25
  # ==== CONFIGURATION ====
26
- # The new backend URL for state management and transcription upload
27
- # It is now read from an environment variable, falling back to the default if not set.
28
- BACKEND_URL = os.environ.get("BACKEND_URL", "https://samfredoly-acp.hf.space")
29
- # The original Hugging Face repo IDs are still needed for fetching the audio files
30
- # and the reference file list, as the backend only handles transcription storage.
31
  SOURCE_REPO_ID = "Samfredoly/BG_Vid" # Fetch audio files from here
32
- TARGET_REPO_ID = "samfred2/A_Text" # Target repo ID is now a constant for the backend
33
  REFERENCE_REPO_ID = "Fred808/BG3" # Reference repo to match audio filenames
34
 
35
  # Path Configuration
@@ -41,55 +35,9 @@ os.makedirs(DOWNLOAD_FOLDER, exist_ok=True)
41
  os.makedirs(TRANSCRIPTIONS_FOLDER, exist_ok=True)
42
  os.makedirs(LOCAL_STATE_FOLDER, exist_ok=True)
43
 
44
- # Whisper Model Setup (using transformers)
45
- DEVICE = "cuda" if torch.cuda.is_available() else "cpu"
46
- TORCH_DTYPE = torch.float16 if torch.cuda.is_available() else torch.float32
47
- WHISPER_MODEL_ID = f"openai/whisper-small"
48
-
49
- # Global model cache
50
- _whisper_model = None
51
- _whisper_processor = None
52
- _whisper_pipeline = None
53
-
54
- def get_whisper_pipeline():
55
- """Get or initialize the Whisper pipeline."""
56
- global _whisper_model, _whisper_processor, _whisper_pipeline
57
-
58
- if _whisper_pipeline is not None:
59
- return _whisper_pipeline
60
-
61
- try:
62
- log_message(f"Loading Whisper model {WHISPER_MODEL_ID}...", "INFO")
63
-
64
- model = AutoModelForSpeechSeq2Seq.from_pretrained(
65
- WHISPER_MODEL_ID,
66
- torch_dtype=TORCH_DTYPE,
67
- low_cpu_mem_usage=True,
68
- use_safetensors=True
69
- )
70
- model = model.to(DEVICE)
71
-
72
- processor = AutoProcessor.from_pretrained(WHISPER_MODEL_ID)
73
-
74
- _whisper_pipeline = pipeline(
75
- "automatic-speech-recognition",
76
- model=model,
77
- tokenizer=processor.tokenizer,
78
- feature_extractor=processor.feature_extractor,
79
- torch_dtype=TORCH_DTYPE,
80
- device=DEVICE
81
- )
82
-
83
- log_message(f"βœ… Whisper model loaded successfully on {DEVICE.upper()}", "INFO")
84
- return _whisper_pipeline
85
-
86
- except Exception as e:
87
- log_message(f"❌ Failed to load Whisper model: {str(e)}", "ERROR")
88
- raise
89
-
90
  # State Files
91
  FAILED_FILES_LOG = "failed_audio_files.log"
92
- HF_STATE_FILE = "processing_audio_state.json" # This is the filename the backend uses
93
 
94
  # Processing Parameters
95
  PROCESSING_DELAY = 2
@@ -97,9 +45,7 @@ MAX_RETRIES = 3
97
  MIN_FREE_SPACE_GB = 1
98
  WHISPER_MODEL = "small" # Whisper model size
99
 
100
- # NOTE: The Hugging Face API is still required for listing files in SOURCE_REPO_ID and REFERENCE_REPO_ID
101
- from huggingface_hub import HfApi, hf_hub_url
102
- HF_TOKEN = os.environ.get("HF_TOKEN", "")
103
  hf_api = HfApi(token=HF_TOKEN)
104
 
105
  # Global State
@@ -158,127 +104,106 @@ def cleanup_temp_files():
158
  except:
159
  pass
160
 
161
- # Helper function to save state locally
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
162
  def save_json_state(file_path: str, data: Dict[str, Any]):
163
  """Save state to JSON file"""
164
  with open(file_path, "w") as f:
165
  json.dump(data, f, indent=2)
166
 
167
- # --- NEW API FUNCTIONS FOR STATE MANAGEMENT AND UPLOAD ---
168
-
169
- def download_state_from_api() -> Dict[str, Any]:
170
- """Downloads the state file from the backend API."""
171
- url = f"{BACKEND_URL}/state/"
172
  default_state = {"next_download_index": 0, "file_states": {}}
173
 
174
  try:
175
- response = requests.get(url, timeout=10)
176
- response.raise_for_status()
177
-
178
- # The API returns {"state": {...}}
179
- state_data = response.json().get("state", default_state)
 
 
 
 
 
 
 
 
180
 
181
- # Ensure the structure is correct (migration logic from original load_json_state)
182
- if "file_states" not in state_data or not isinstance(state_data["file_states"], dict):
183
- state_data["file_states"] = {}
184
- if "next_download_index" not in state_data:
185
- state_data["next_download_index"] = 0
186
-
187
- log_message(f"βœ… Successfully downloaded state from API.", "INFO")
188
- return state_data
189
 
190
- except requests.exceptions.RequestException as e:
191
- log_message(f"⚠️ Failed to download state from API ({url}): {str(e)}. Starting from default state.", "WARNING")
192
  return default_state
193
 
194
- def upload_state_to_api(state: Dict[str, Any]) -> bool:
195
- """
196
- Saves the state locally and uploads it to the backend API's /upload/ endpoint.
197
- This simulates the original HF state upload for locking/unlocking.
198
- """
199
- local_path = os.path.join(LOCAL_STATE_FOLDER, HF_STATE_FILE)
200
- url = f"{BACKEND_URL}/upload/"
201
 
202
  try:
203
- # 1. Save the current state locally
204
  save_json_state(local_path, state)
205
 
206
- # 2. Upload the state file to the backend
207
- with open(local_path, "rb") as f:
208
- files = {'file': (HF_STATE_FILE, f, 'application/json')}
209
-
210
- response = requests.post(url, files=files, timeout=30)
211
- response.raise_for_status()
212
-
213
- log_message(f"βœ… Successfully uploaded state file to API: {HF_STATE_FILE}", "INFO")
214
- return True
215
-
216
- except requests.exceptions.RequestException as e:
217
- log_message(f"❌ Failed to upload state file to API ({url}): {str(e)}", "ERROR")
218
- # 409 Conflict means the file already exists, which is fine for state updates
219
- if response.status_code == 409:
220
- log_message(f"⚠️ State file already exists on server (409 Conflict). Proceeding.", "WARNING")
221
- return True
222
- return False
223
- except Exception as e:
224
- log_message(f"❌ An unexpected error occurred during API state upload: {str(e)}", "ERROR")
225
- return False
226
-
227
- def upload_transcription_to_api(json_output_path: str, matched_filename: str) -> bool:
228
- """Uploads the transcription JSON file to the backend API's /upload/ endpoint."""
229
- url = f"{BACKEND_URL}/upload/"
230
-
231
- try:
232
- with open(json_output_path, "rb") as f:
233
- files = {'file': (os.path.basename(json_output_path), f, 'application/json')}
234
-
235
- response = requests.post(url, files=files, timeout=30)
236
- response.raise_for_status()
237
-
238
- log_message(f"βœ… Successfully uploaded transcription to API: {os.path.basename(json_output_path)}", "INFO")
239
- return True
240
-
241
- except requests.exceptions.RequestException as e:
242
- log_message(f"❌ Failed to upload transcription to API ({url}): {str(e)}", "ERROR")
243
- if response.status_code == 409:
244
- log_message(f"⚠️ File already exists on server (409 Conflict).", "WARNING")
245
- return False
246
  except Exception as e:
247
- log_message(f"❌ An unexpected error occurred during API upload: {str(e)}", "ERROR")
248
  return False
249
 
250
  def lock_file_for_processing(wav_filename: str, state: Dict[str, Any]) -> bool:
251
- """Marks a file as 'processing' in the state file and uploads the lock via API."""
252
  log_message(f"πŸ”’ Attempting to lock file: {wav_filename} (Marking as 'processing')", "INFO")
253
 
254
  state["file_states"][wav_filename] = "processing"
255
 
256
- if upload_state_to_api(state):
257
- log_message(f"βœ… Successfully locked file: {wav_filename} via API state upload", "INFO")
258
  return True
259
  else:
260
  log_message(f"❌ Failed to upload lock for file: {wav_filename}. Aborting processing.", "ERROR")
261
- # Revert local state change if upload fails
262
  if wav_filename in state["file_states"]:
263
  del state["file_states"][wav_filename]
264
  return False
265
 
266
  def unlock_file_as_processed(wav_filename: str, state: Dict[str, Any], next_index: int) -> bool:
267
- """Marks a file as 'processed', updates the index, and uploads the state via API."""
268
  log_message(f"πŸ”“ Attempting to unlock file: {wav_filename} (Marking as 'processed')", "INFO")
269
 
270
  state["file_states"][wav_filename] = "processed"
271
  state["next_download_index"] = next_index
272
 
273
- if upload_state_to_api(state):
274
- log_message(f"βœ… Successfully unlocked and marked as processed: {wav_filename} via API state upload", "INFO")
275
  return True
276
  else:
277
  log_message(f"❌ Failed to upload final state for file: {wav_filename}.", "ERROR")
278
  return False
279
 
280
- # --- END NEW API FUNCTIONS ---
281
-
282
  def download_with_retry(url: str, dest_path: str, max_retries: int = 3) -> bool:
283
  """Download file with retry logic and disk space checking"""
284
  if not check_disk_space():
@@ -293,8 +218,6 @@ def download_with_retry(url: str, dest_path: str, max_retries: int = 3) -> bool:
293
  log_message(f"❌ Failed to create directory for download path {os.path.dirname(dest_path)}: {str(e)}", "ERROR")
294
  return False
295
 
296
- # The original code used HF_TOKEN for authorization headers, which is only needed
297
- # if the source repo is private. We keep it for compatibility.
298
  headers = {"Authorization": f"Bearer {HF_TOKEN}"}
299
  for attempt in range(max_retries):
300
  try:
@@ -306,262 +229,255 @@ def download_with_retry(url: str, dest_path: str, max_retries: int = 3) -> bool:
306
  if chunk:
307
  f.write(chunk)
308
 
309
- log_message(f"βœ… Download successful: {os.path.basename(dest_path)}", "INFO")
310
  return True
 
311
  except requests.exceptions.RequestException as e:
312
- log_message(f"⚠️ Download attempt {attempt + 1}/{max_retries} failed for {url}: {str(e)}", "WARNING")
313
- if attempt < max_retries - 1:
314
- time.sleep(2 ** attempt) # Exponential backoff
315
- else:
316
- log_message(f"❌ Download failed after {max_retries} attempts for {url}", "ERROR")
317
- return False
318
  except Exception as e:
319
  log_message(f"❌ An unexpected error occurred during download: {str(e)}", "ERROR")
320
  return False
 
 
321
  return False
322
 
323
- def get_reference_map(reference_repo_id: str) -> Dict[str, str]:
324
- """
325
- Downloads the reference file list from the Hugging Face repo and creates a map
326
- from audio filename (without extension) to the reference filename.
327
- """
328
- log_message(f"Fetching reference file list from {reference_repo_id}...", "INFO")
329
-
330
- # This is a placeholder for the actual logic to get the file list.
331
- # Assuming the reference repo contains a list of files that match the audio files.
332
- # In a real scenario, this would involve listing files in the repo.
333
- # For now, we'll assume a simple list of files can be retrieved.
334
 
335
  try:
336
- # Use HfApi to list files in the reference repo
337
- repo_files = hf_api.list_repo_files(repo_id=reference_repo_id, repo_type="dataset")
338
-
339
- reference_map = {}
340
- for file in repo_files:
341
- # Assuming the reference files are named like 'audio_file_name.txt'
342
- # and we want to map the audio file name (e.g., 'audio_file_name.wav') to it.
343
- base_name, ext = os.path.splitext(file)
344
- if ext.lower() in ['.txt', '.json']: # Only consider text/json files as reference
345
- # The key is the audio file name without extension
346
- reference_map[base_name] = file
347
-
348
- log_message(f"βœ… Successfully created reference map with {len(reference_map)} entries.", "INFO")
349
- return reference_map
350
 
351
  except Exception as e:
352
- log_message(f"❌ Failed to fetch reference map from Hugging Face: {str(e)}", "ERROR")
353
  return {}
354
 
355
- def find_matching_filename(audio_filename: str, reference_map: Dict[str, str]) -> Optional[str]:
356
- """Finds the matching reference filename for a given audio filename."""
357
- base_name, _ = os.path.splitext(audio_filename)
358
- return reference_map.get(base_name)
359
-
360
- def get_next_file_to_process(source_repo_id: str, state: Dict[str, Any]) -> Optional[Dict[str, Any]]:
361
- """
362
- Determines the next file to process based on the current state and the file list
363
- from the source Hugging Face repository.
364
- """
365
- log_message(f"Determining next file to process from {source_repo_id}...", "INFO")
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
366
 
367
  try:
368
- # 1. Get the list of all files in the source repo
369
- repo_files = hf_api.list_repo_files(repo_id=source_repo_id, repo_type="dataset")
370
 
371
- # Filter for audio files (e.g., .wav, .mp3)
372
- audio_files = sorted([f for f in repo_files if f.lower().endswith(('.wav', '.mp3'))])
 
373
 
374
- processing_status["total_files"] = len(audio_files)
 
 
 
 
 
 
375
 
376
- if not audio_files:
377
- log_message("No audio files found in the source repository.", "INFO")
378
- return None
379
-
380
- # 2. Get the next index from the state
381
- next_index = state.get("next_download_index", 0)
382
- file_states = state.get("file_states", {})
383
-
384
- # 3. Find the next file that hasn't been processed or is not currently being processed
385
- for i in range(next_index, len(audio_files)):
386
- filename = audio_files[i]
387
- status = file_states.get(filename, "unprocessed")
388
-
389
- # Skip files that are already processed or currently being processed
390
- if status in ["processed", "processing"]:
391
- continue
392
-
393
- # Found an unprocessed file
394
- file_url = hf_hub_url(repo_id=source_repo_id, filename=filename, repo_type="dataset")
395
-
396
- log_message(f"Found next file at index {i}: {filename}", "INFO")
397
- return {
398
- "filename": filename,
399
- "url": file_url,
400
- "index": i
401
- }
402
-
403
- log_message("All files up to the current index have been processed or are locked.", "INFO")
404
 
405
- # If we reach the end, check from the beginning for any failed files
406
- for i in range(0, next_index):
407
- filename = audio_files[i]
408
- status = file_states.get(filename, "unprocessed")
409
-
410
- if status == "failed":
411
- file_url = hf_hub_url(repo_id=source_repo_id, filename=filename, repo_type="dataset")
412
- log_message(f"Found failed file for retry at index {i}: {filename}", "INFO")
413
- return {
414
- "filename": filename,
415
- "url": file_url,
416
- "index": i
417
- }
418
-
419
- return None
420
 
 
 
 
 
 
421
  except Exception as e:
422
- log_message(f"❌ Failed to get next file to process: {str(e)}", "ERROR")
423
  return None
424
 
425
- def run_whisper_transcription(audio_path: str, output_dir: str, model: str) -> Optional[str]:
426
  """
427
- Runs Whisper transcription using the transformers library.
428
- Returns the path to the generated JSON file on success.
429
- No ffmpeg dependency required.
 
 
430
  """
431
- log_message(f"πŸŽ™οΈ Starting transcription for {os.path.basename(audio_path)} with model {model}...", "INFO")
 
 
 
 
 
 
 
 
 
 
432
 
433
  try:
434
- # Get the Whisper pipeline
435
- pipe = get_whisper_pipeline()
436
-
437
- # Load audio using librosa
438
- log_message(f"Loading audio file: {audio_path}", "INFO")
439
- audio_data, sample_rate = librosa.load(audio_path, sr=16000)
440
-
441
- # Run transcription
442
- log_message(f"Running transcription...", "INFO")
443
- result = pipe(
444
- audio_data,
445
- chunk_length_s=30,
446
- batch_size=8,
447
- return_timestamps=True
448
- )
449
-
450
- # Extract text and chunks
451
- transcription_text = result.get("text", "")
452
- chunks = result.get("chunks", [])
453
-
454
- log_message(f"βœ… Transcription successful: {len(transcription_text)} characters", "INFO")
455
-
456
- # Prepare output JSON structure
457
- output_json = {
458
- "text": transcription_text,
459
- "chunks": chunks,
460
- "language": result.get("language", "en")
461
- }
462
-
463
- # Save to JSON file
464
- base_name, _ = os.path.splitext(os.path.basename(audio_path))
465
- json_output_path = os.path.join(output_dir, f"{base_name}.json")
466
 
467
  with open(json_output_path, "w", encoding="utf-8") as f:
468
- json.dump(output_json, f, indent=2, ensure_ascii=False)
469
 
470
- log_message(f"βœ… Saved transcription to: {json_output_path}", "INFO")
471
- return json_output_path
472
 
473
  except Exception as e:
474
- log_message(f"❌ An error occurred during transcription: {str(e)}", "ERROR")
475
- import traceback
476
- log_message(f"Traceback: {traceback.format_exc()}", "ERROR")
477
- return None
478
-
479
- def process_audio_file(audio_path: str, reference_map: Dict[str, str], output_filename: str) -> bool:
480
- """
481
- Transcribes the audio file, renames the output JSON to match the reference,
482
- and uploads the result to the API.
483
- """
484
-
485
- # 1. Run transcription
486
- json_output_path = run_whisper_transcription(audio_path, TRANSCRIPTIONS_FOLDER, WHISPER_MODEL)
487
-
488
- if not json_output_path:
489
  return False
490
-
491
- # 2. Rename the JSON file to the matched filename
492
- # The output_filename already includes the correct extension (e.g., .txt or .json)
493
- # We assume the reference map provides the full target filename.
494
-
495
- # The whisper output is a JSON file named after the audio file.
496
- # We need to rename it to the target filename (which should be a JSON file for the backend).
497
 
498
- # The output_filename is the matched filename from the reference map (e.g., 'audio_file_name.txt')
499
- # The backend expects a JSON file. Let's assume the matched filename should be used as the base
500
- # but with a .json extension for the upload.
501
-
502
- # Let's stick to the original logic: the backend expects a JSON file with the name
503
- # of the audio file (or the matched reference file) with a .json extension.
504
-
505
- # Since the whisper output is already a JSON file, we just need to rename it
506
- # to the desired final name.
507
-
508
- # The output_filename passed here is the base name of the audio file or the matched reference file.
509
- # If it's a reference file name (e.g., 'file.txt'), we should probably use 'file.json'.
 
 
 
 
 
 
 
510
 
511
- # For simplicity and to match the backend's expectation (which handles JSON),
512
- # we will rename the whisper output JSON to the base name of the audio file
513
- # and ensure it has a .json extension.
 
 
 
514
 
515
- base_name, _ = os.path.splitext(output_filename)
516
- final_json_filename = f"{base_name}.json"
517
- final_json_path = os.path.join(TRANSCRIPTIONS_FOLDER, final_json_filename)
 
 
 
 
 
518
 
519
  try:
520
- if json_output_path != final_json_path:
521
- shutil.move(json_output_path, final_json_path)
522
- log_message(f"βœ… Renamed transcription to: {final_json_filename}", "INFO")
523
- except Exception as e:
524
- log_message(f"❌ Failed to rename transcription file: {str(e)}", "ERROR")
525
- return False
526
 
527
- # 3. Upload transcription to API
528
- if upload_transcription_to_api(final_json_path, final_json_filename):
529
- processing_status["transcribed_files"] += 1
530
- # Clean up the local transcription file after successful upload
531
- try:
532
- os.remove(final_json_path)
533
- log_message(f"πŸ—‘οΈ Cleaned up local transcription file: {final_json_path}", "INFO")
534
- except Exception as e:
535
- log_message(f"❌ Failed to clean up transcription file: {str(e)}", "ERROR")
536
- return True
537
- else:
538
- log_message(f"❌ Failed to upload transcription to API: {final_json_filename}", "ERROR")
539
- return False
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
540
 
541
  def main_processing_loop():
542
- """The main loop that continuously checks for and processes new audio files."""
543
- global processing_status
544
 
545
  if processing_status["is_running"]:
546
- log_message("Processing loop is already running.", "WARNING")
547
  return
548
 
549
  processing_status["is_running"] = True
550
- log_message("πŸš€ Audio transcription processing loop started.", "INFO")
551
 
552
- # 1. Get the reference map once
553
- reference_map = get_reference_map(REFERENCE_REPO_ID)
554
- if not reference_map:
555
- log_message("❌ Could not get reference map. Stopping loop.", "CRITICAL")
556
- processing_status["is_running"] = False
557
- return
558
-
559
  try:
 
 
 
 
 
 
 
 
 
560
  while processing_status["is_running"]:
561
- time.sleep(PROCESSING_DELAY)
562
 
563
- # 1. Download state from the new API
564
- current_state = download_state_from_api()
565
  next_file_info = get_next_file_to_process(SOURCE_REPO_ID, current_state)
566
 
567
  if next_file_info is None:
@@ -578,7 +494,6 @@ def main_processing_loop():
578
  matched_filename = None
579
 
580
  try:
581
- # 2. Lock file by updating state on the API
582
  if not lock_file_for_processing(target_file, current_state):
583
  log_message(f"❌ Failed to lock file {target_file}. Skipping.", "ERROR")
584
  time.sleep(PROCESSING_DELAY)
@@ -596,7 +511,6 @@ def main_processing_loop():
596
  # Use matched filename if found, otherwise use original filename
597
  output_filename = matched_filename if matched_filename else base_filename
598
 
599
- # 3. Process and Upload transcription to API
600
  if process_audio_file(local_wav_path, reference_map, output_filename):
601
  success = True
602
  log_message(f"βœ… Finished processing: {target_file}", "INFO")
@@ -610,89 +524,180 @@ def main_processing_loop():
610
  log_failed_file(target_file, str(e))
611
 
612
  finally:
613
- # 4. Unlock/Mark as processed by updating state on the API
614
  next_index_to_save = target_index + 1
615
-
616
- # Re-download the state to ensure we have the latest index/state
617
- # before marking as processed, in case another server updated it.
618
- current_state = download_state_from_api()
619
 
620
  if success:
621
- # Mark as processed and update index, then upload state
622
  unlock_file_as_processed(target_file, current_state, next_index_to_save)
623
  processing_status["processed_files"] += 1
624
  else:
625
- # Mark as failed and upload state
626
- log_message(f"⚠️ File {target_file} failed. Marking as 'failed' and updating state.", "WARNING")
627
  current_state["file_states"][target_file] = "failed"
628
- upload_state_to_api(current_state)
629
-
630
- # Clean up the downloaded audio file regardless of success
631
- try:
632
- if os.path.exists(local_wav_path):
633
- os.remove(local_wav_path)
634
- log_message(f"πŸ—‘οΈ Cleaned up local audio file: {local_wav_path}", "INFO")
635
- except Exception as e:
636
- log_message(f"❌ Failed to clean up audio file: {str(e)}", "ERROR")
637
-
638
- processing_status["current_file"] = None
639
- time.sleep(PROCESSING_DELAY)
640
-
641
- except Exception as e:
642
- log_message(f"πŸ”₯ Critical error in main processing loop: {str(e)}", "CRITICAL")
643
 
 
 
 
 
644
  finally:
645
  processing_status["is_running"] = False
646
- log_message("πŸ›‘ Audio transcription processing loop stopped.", "INFO")
647
-
648
- # --- FastAPI Endpoints (Unchanged) ---
649
 
650
- # Add to configuration section
651
- AUTO_START_PROCESSING = os.environ.get("AUTO_START_PROCESSING", "true").lower() == "true"
652
 
653
- @app.on_event("startup")
654
- async def startup_event():
655
- """Conditionally start processing based on environment variable."""
656
- if AUTO_START_PROCESSING:
657
- log_message("πŸš€ AUTO_START_PROCESSING enabled - Starting processing loop...", "INFO")
658
- thread = threading.Thread(target=main_processing_loop, daemon=True)
659
- thread.start()
660
- log_message("βœ… Background processing thread started", "INFO")
661
- else:
662
- log_message("⏸️ AUTO_START_PROCESSING disabled - Use /start endpoint to begin", "INFO")
663
 
664
  @app.get("/")
665
  async def root():
666
- """Root endpoint to check service status."""
667
- return {"message": "Audio Transcriber Service is running", "status": processing_status}
 
 
 
 
 
 
 
 
 
 
 
668
 
669
  @app.get("/status")
670
  async def get_status():
671
- """Get the current processing status."""
672
- return processing_status
 
 
 
 
 
 
 
 
 
673
 
674
  @app.post("/start")
675
  async def start_processing():
676
- """Start the background processing loop."""
677
  if processing_status["is_running"]:
678
- return JSONResponse(status_code=200, content={"message": "Processing already running."})
679
 
680
- thread = threading.Thread(target=main_processing_loop)
 
681
  thread.start()
682
- return JSONResponse(status_code=200, content={"message": "Processing started in background."})
 
 
 
 
683
 
684
  @app.post("/stop")
685
  async def stop_processing():
686
- """Stop the background processing loop."""
687
  if not processing_status["is_running"]:
688
- return JSONResponse(status_code=200, content={"message": "Processing is not running."})
689
 
690
  processing_status["is_running"] = False
691
- return JSONResponse(status_code=200, content={"message": "Processing stop requested. Will stop after current file."})
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
692
 
693
- # --- Main Execution ---
 
 
 
694
 
695
  if __name__ == "__main__":
696
- # This block is for local testing and won't be used in the final sandbox execution
697
- # but is good practice for a runnable script.
698
- uvicorn.run(app, host="0.0.0.0", port=8000)
 
7
  import sys
8
  import threading
9
  from typing import Dict, List, Optional, Any
10
+ from huggingface_hub import HfApi, hf_hub_url
11
  from fastapi import FastAPI, HTTPException
12
  from fastapi.responses import JSONResponse
13
  import uvicorn
 
 
 
14
 
15
  # Fix Unicode encoding for Windows
16
  if sys.platform == 'win32':
 
21
  app = FastAPI(title="Audio Transcriber", description="Audio transcription and upload service")
22
 
23
  # ==== CONFIGURATION ====
24
+ HF_TOKEN = os.environ.get("HF_TOKEN", "")
 
 
 
 
25
  SOURCE_REPO_ID = "Samfredoly/BG_Vid" # Fetch audio files from here
26
+ TARGET_REPO_ID = "samfred2/A_Text" # Upload transcriptions here
27
  REFERENCE_REPO_ID = "Fred808/BG3" # Reference repo to match audio filenames
28
 
29
  # Path Configuration
 
35
  os.makedirs(TRANSCRIPTIONS_FOLDER, exist_ok=True)
36
  os.makedirs(LOCAL_STATE_FOLDER, exist_ok=True)
37
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
38
  # State Files
39
  FAILED_FILES_LOG = "failed_audio_files.log"
40
+ HF_STATE_FILE = "processing_audio_state.json"
41
 
42
  # Processing Parameters
43
  PROCESSING_DELAY = 2
 
45
  MIN_FREE_SPACE_GB = 1
46
  WHISPER_MODEL = "small" # Whisper model size
47
 
48
+ # Initialize HF API
 
 
49
  hf_api = HfApi(token=HF_TOKEN)
50
 
51
  # Global State
 
104
  except:
105
  pass
106
 
107
+ def load_json_state(file_path: str, default_value: Dict[str, Any]) -> Dict[str, Any]:
108
+ """Load state from JSON file with migration logic for new structure."""
109
+ if os.path.exists(file_path):
110
+ try:
111
+ with open(file_path, "r") as f:
112
+ data = json.load(f)
113
+
114
+ if "file_states" not in data or not isinstance(data["file_states"], dict):
115
+ log_message("ℹ️ Initializing 'file_states' dictionary.", "INFO")
116
+ data["file_states"] = {}
117
+
118
+ if "next_download_index" not in data:
119
+ data["next_download_index"] = 0
120
+
121
+ return data
122
+ except json.JSONDecodeError:
123
+ log_message(f"⚠️ Corrupted state file: {file_path}", "WARNING")
124
+ return default_value
125
+
126
  def save_json_state(file_path: str, data: Dict[str, Any]):
127
  """Save state to JSON file"""
128
  with open(file_path, "w") as f:
129
  json.dump(data, f, indent=2)
130
 
131
+ def download_hf_state(repo_id: str, filename: str) -> Dict[str, Any]:
132
+ """Downloads the state file from Hugging Face or returns a default state."""
133
+ local_path = os.path.join(LOCAL_STATE_FOLDER, filename)
 
 
134
  default_state = {"next_download_index": 0, "file_states": {}}
135
 
136
  try:
137
+ files = hf_api.list_repo_files(repo_id=repo_id, repo_type="dataset")
138
+ if filename not in files:
139
+ log_message(f"ℹ️ State file {filename} not found in {repo_id}. Starting from default state.", "INFO")
140
+ return default_state
141
+
142
+ from huggingface_hub import hf_hub_download
143
+ hf_hub_download(
144
+ repo_id=repo_id,
145
+ filename=filename,
146
+ repo_type="dataset",
147
+ local_dir=LOCAL_STATE_FOLDER,
148
+ local_dir_use_symlinks=False
149
+ )
150
 
151
+ log_message(f"βœ… Successfully downloaded state file from {repo_id}.", "INFO")
152
+ return load_json_state(local_path, default_state)
 
 
 
 
 
 
153
 
154
+ except Exception as e:
155
+ log_message(f"⚠️ Failed to download state file from Hugging Face: {str(e)}. Starting from default state.", "WARNING")
156
  return default_state
157
 
158
+ def upload_hf_state(repo_id: str, filename: str, state: Dict[str, Any]) -> bool:
159
+ """Uploads the state file to Hugging Face."""
160
+ local_path = os.path.join(LOCAL_STATE_FOLDER, filename)
 
 
 
 
161
 
162
  try:
 
163
  save_json_state(local_path, state)
164
 
165
+ hf_api.upload_file(
166
+ path_or_fileobj=local_path,
167
+ path_in_repo=filename,
168
+ repo_id=repo_id,
169
+ repo_type="dataset",
170
+ commit_message=f"Update audio processing state: next_index={state['next_download_index']}"
171
+ )
172
+ log_message(f"βœ… Successfully uploaded updated state file to {repo_id}", "INFO")
173
+ return True
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
174
  except Exception as e:
175
+ log_message(f"❌ Failed to upload state file to Hugging Face: {str(e)}", "ERROR")
176
  return False
177
 
178
  def lock_file_for_processing(wav_filename: str, state: Dict[str, Any]) -> bool:
179
+ """Marks a file as 'processing' in the state file and uploads the lock."""
180
  log_message(f"πŸ”’ Attempting to lock file: {wav_filename} (Marking as 'processing')", "INFO")
181
 
182
  state["file_states"][wav_filename] = "processing"
183
 
184
+ if upload_hf_state(TARGET_REPO_ID, HF_STATE_FILE, state):
185
+ log_message(f"βœ… Successfully locked file: {wav_filename}", "INFO")
186
  return True
187
  else:
188
  log_message(f"❌ Failed to upload lock for file: {wav_filename}. Aborting processing.", "ERROR")
 
189
  if wav_filename in state["file_states"]:
190
  del state["file_states"][wav_filename]
191
  return False
192
 
193
  def unlock_file_as_processed(wav_filename: str, state: Dict[str, Any], next_index: int) -> bool:
194
+ """Marks a file as 'processed', updates the index, and uploads the state."""
195
  log_message(f"πŸ”“ Attempting to unlock file: {wav_filename} (Marking as 'processed')", "INFO")
196
 
197
  state["file_states"][wav_filename] = "processed"
198
  state["next_download_index"] = next_index
199
 
200
+ if upload_hf_state(TARGET_REPO_ID, HF_STATE_FILE, state):
201
+ log_message(f"βœ… Successfully unlocked and marked as processed: {wav_filename}", "INFO")
202
  return True
203
  else:
204
  log_message(f"❌ Failed to upload final state for file: {wav_filename}.", "ERROR")
205
  return False
206
 
 
 
207
  def download_with_retry(url: str, dest_path: str, max_retries: int = 3) -> bool:
208
  """Download file with retry logic and disk space checking"""
209
  if not check_disk_space():
 
218
  log_message(f"❌ Failed to create directory for download path {os.path.dirname(dest_path)}: {str(e)}", "ERROR")
219
  return False
220
 
 
 
221
  headers = {"Authorization": f"Bearer {HF_TOKEN}"}
222
  for attempt in range(max_retries):
223
  try:
 
229
  if chunk:
230
  f.write(chunk)
231
 
232
+ log_message(f"βœ… Download successful: {dest_path}", "INFO")
233
  return True
234
+
235
  except requests.exceptions.RequestException as e:
236
+ log_message(f"❌ Download attempt {attempt + 1} failed for {url}: {str(e)}", "WARNING")
237
+ time.sleep(PROCESSING_DELAY)
 
 
 
 
238
  except Exception as e:
239
  log_message(f"❌ An unexpected error occurred during download: {str(e)}", "ERROR")
240
  return False
241
+
242
+ log_message(f"❌ Failed to download {url} after {max_retries} attempts.", "ERROR")
243
  return False
244
 
245
+ def fetch_reference_files(repo_id: str) -> Dict[str, str]:
246
+ """Fetch all files from Fred808/BG3 repo to match with audio filenames."""
247
+ log_message(f"πŸ“‹ Fetching file list from {repo_id}...", "INFO")
 
 
 
 
 
 
 
 
248
 
249
  try:
250
+ files_list = hf_api.list_repo_files(repo_id=repo_id, repo_type="dataset")
251
+
252
+ # Include all file types (zip, rar, wav, mp3, etc.)
253
+ all_files = [f for f in files_list]
254
+
255
+ # Create a mapping of base filename (without extension) to full path
256
+ filename_map = {}
257
+ for file_path in all_files:
258
+ base_name = os.path.splitext(os.path.basename(file_path))[0]
259
+ filename_map[base_name] = file_path
260
+
261
+ log_message(f"βœ… Found {len(filename_map)} files in reference repo", "INFO")
262
+ return filename_map
 
263
 
264
  except Exception as e:
265
+ log_message(f"❌ Failed to fetch reference files: {str(e)}", "ERROR")
266
  return {}
267
 
268
+ def find_matching_filename(transcribed_filename: str, reference_map: Dict[str, str]) -> Optional[str]:
269
+ """Find matching filename in reference map from Fred808/BG3."""
270
+ base_name = os.path.splitext(transcribed_filename)[0]
271
+
272
+ # Exact match first
273
+ if base_name in reference_map:
274
+ full_path = reference_map[base_name]
275
+ print(f"\nβœ… EXACT MATCH FOUND:")
276
+ print(f" Audio: {transcribed_filename}")
277
+ print(f" File: {full_path}")
278
+ log_message(f"βœ… Found exact match: {transcribed_filename} -> {full_path}", "INFO")
279
+ return full_path
280
+
281
+ # Partial/fuzzy match (check if reference contains transcribed as substring)
282
+ matches = []
283
+ for ref_base, ref_full_path in reference_map.items():
284
+ if base_name.lower() in ref_base.lower() or ref_base.lower() in base_name.lower():
285
+ matches.append((ref_base, ref_full_path))
286
+
287
+ # Return first partial match if found
288
+ if matches:
289
+ ref_base, ref_full_path = matches[0]
290
+ print(f"\nβœ… PARTIAL MATCH FOUND:")
291
+ print(f" Audio: {transcribed_filename}")
292
+ print(f" File: {ref_full_path}")
293
+ log_message(f"βœ… Found partial match: {transcribed_filename} -> {ref_full_path}", "INFO")
294
+ return ref_full_path
295
+
296
+ print(f"\n⚠️ NO EXACT/PARTIAL MATCH FOUND (will still process):")
297
+ print(f" Audio: {transcribed_filename}")
298
+ log_message(f"⚠️ No matching filename found for: {transcribed_filename}. Will use original filename.", "WARNING")
299
+ return None
300
+
301
+ def transcribe_audio(wav_path: str) -> Optional[Dict[str, Any]]:
302
+ """Transcribe audio file using Whisper from Transformers."""
303
+ log_message(f"🎀 Transcribing audio file: {wav_path}", "INFO")
304
 
305
  try:
306
+ from transformers import pipeline
307
+ import librosa
308
 
309
+ # Load audio with librosa
310
+ log_message(f"Loading audio file: {wav_path}", "INFO")
311
+ audio, sr = librosa.load(wav_path, sr=16000)
312
 
313
+ # Initialize Whisper pipeline
314
+ log_message(f"Loading Whisper {WHISPER_MODEL} model from Transformers...", "INFO")
315
+ pipe = pipeline(
316
+ "automatic-speech-recognition",
317
+ model=f"openai/whisper-{WHISPER_MODEL}",
318
+ device=0 if __import__('torch').cuda.is_available() else -1 # GPU if available, else CPU
319
+ )
320
 
321
+ # Transcribe
322
+ log_message("Transcribing audio...", "INFO")
323
+ result = pipe(audio)
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
324
 
325
+ # Format result to match openai-whisper format
326
+ formatted_result = {
327
+ "text": result["text"],
328
+ "segments": [{"text": result["text"]}]
329
+ }
330
+
331
+ log_message(f"βœ… Successfully transcribed: {wav_path}", "INFO")
332
+ return formatted_result
 
 
 
 
 
 
 
333
 
334
+ except ImportError as e:
335
+ missing_lib = str(e)
336
+ log_message(f"❌ Missing library. Install with: pip install transformers librosa torch torchaudio", "ERROR")
337
+ log_message(f" Error: {missing_lib}", "ERROR")
338
+ return None
339
  except Exception as e:
340
+ log_message(f"❌ Failed to transcribe {wav_path}: {str(e)}", "ERROR")
341
  return None
342
 
343
+ def process_audio_file(wav_path: str, reference_map: Dict[str, str], matched_filename: str) -> bool:
344
  """
345
+ Main processing logic for a single audio file:
346
+ 1. Transcribe using Whisper
347
+ 2. Save transcription as JSON
348
+ 3. Upload to HF dataset
349
+ 4. Clean up local files
350
  """
351
+ wav_filename = os.path.basename(wav_path)
352
+
353
+ # 1. Transcribe audio
354
+ transcription = transcribe_audio(wav_path)
355
+ if transcription is None:
356
+ log_failed_file(wav_filename, "Transcription failed")
357
+ return False
358
+
359
+ # 2. Save transcription as JSON
360
+ json_filename = os.path.splitext(matched_filename)[0] + "_transcription.json"
361
+ json_output_path = os.path.join(TRANSCRIPTIONS_FOLDER, json_filename)
362
 
363
  try:
364
+ os.makedirs(os.path.dirname(json_output_path), exist_ok=True)
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
365
 
366
  with open(json_output_path, "w", encoding="utf-8") as f:
367
+ json.dump(transcription, f, indent=2, ensure_ascii=False)
368
 
369
+ log_message(f"βœ… Saved transcription: {json_output_path}", "INFO")
 
370
 
371
  except Exception as e:
372
+ log_message(f"❌ Failed to save transcription JSON: {str(e)}", "ERROR")
373
+ log_failed_file(wav_filename, f"Failed to save JSON: {str(e)}")
 
 
 
 
 
 
 
 
 
 
 
 
 
374
  return False
 
 
 
 
 
 
 
375
 
376
+ # 3. Upload to HF dataset
377
+ try:
378
+ path_in_repo = f"transcriptions/{json_filename}"
379
+ commit_message = f"Add transcription for: {matched_filename}"
380
+
381
+ hf_api.upload_file(
382
+ path_or_fileobj=json_output_path,
383
+ path_in_repo=path_in_repo,
384
+ repo_id=TARGET_REPO_ID,
385
+ repo_type="dataset",
386
+ commit_message=commit_message
387
+ )
388
+ log_message(f"βœ… Successfully uploaded transcription: {json_filename}", "INFO")
389
+ processing_status["transcribed_files"] += 1
390
+
391
+ except Exception as e:
392
+ log_message(f"❌ Failed to upload transcription to HF: {str(e)}", "ERROR")
393
+ log_failed_file(wav_filename, f"Failed to upload: {str(e)}")
394
+ return False
395
 
396
+ # 4. Clean up local files
397
+ try:
398
+ os.remove(json_output_path)
399
+ log_message(f"πŸ—‘οΈ Cleaned up local transcription file: {json_output_path}", "INFO")
400
+ except:
401
+ pass
402
 
403
+ return True
404
+
405
+ def get_next_file_to_process(repo_id: str, state: Dict[str, Any]) -> Optional[Dict[str, Any]]:
406
+ """
407
+ Finds the next audio file to process from the source repo in reverse order (oldest to newest).
408
+ Returns: { 'filename': str, 'url': str, 'index': int } or None
409
+ """
410
+ log_message(f"πŸ” Searching for next audio file to process in {repo_id}", "INFO")
411
 
412
  try:
413
+ files_list = hf_api.list_repo_files(repo_id=repo_id, repo_type="dataset")
 
 
 
 
 
414
 
415
+ # Filter for audio files and sort in reverse order (descending)
416
+ audio_files = sorted([f for f in files_list if f.endswith(('.wav', '.mp3'))], reverse=True)
417
+
418
+ if not audio_files:
419
+ log_message("ℹ️ No audio files found in the source repository.", "INFO")
420
+ return None
421
+
422
+ processing_status["total_files"] = len(audio_files)
423
+
424
+ start_index = state.get("next_download_index", 0)
425
+
426
+ for index in range(start_index, len(audio_files)):
427
+ filename = audio_files[index]
428
+ file_state = state["file_states"].get(filename)
429
+
430
+ if file_state is None or file_state == "failed":
431
+ url = hf_hub_url(repo_id=repo_id, filename=filename, repo_type="dataset", subfolder=None)
432
+
433
+ log_message(f"βœ… Found next audio file: {filename} at index {index}", "INFO")
434
+ return {
435
+ 'filename': filename,
436
+ 'url': url,
437
+ 'index': index
438
+ }
439
+
440
+ elif file_state == "processing":
441
+ log_message(f"⚠️ File {filename} is currently marked as 'processing'. Skipping for now.", "WARNING")
442
+
443
+ elif file_state == "processed":
444
+ log_message(f"ℹ️ File {filename} already processed. Skipping.", "INFO")
445
+
446
+ log_message("ℹ️ All files up to the current index have been processed or skipped.", "INFO")
447
+
448
+ if start_index >= len(audio_files):
449
+ log_message("ℹ️ Reached end of file list. Resetting index to 0 for next loop.", "INFO")
450
+ state["next_download_index"] = 0
451
+ upload_hf_state(TARGET_REPO_ID, HF_STATE_FILE, state)
452
+
453
+ return None
454
+
455
+ except Exception as e:
456
+ log_message(f"❌ Failed to list files from Hugging Face: {str(e)}", "ERROR")
457
+ return None
458
 
459
  def main_processing_loop():
460
+ """The main loop that orchestrates the download, transcription, and upload cycle."""
 
461
 
462
  if processing_status["is_running"]:
463
+ log_message("⚠️ Processing loop is already running.", "WARNING")
464
  return
465
 
466
  processing_status["is_running"] = True
 
467
 
 
 
 
 
 
 
 
468
  try:
469
+ log_message("πŸš€ Starting audio transcription processing loop...", "INFO")
470
+
471
+ # Fetch reference files from BG_Vid repo once at the start
472
+ reference_map = fetch_reference_files(REFERENCE_REPO_ID)
473
+
474
+ if not reference_map:
475
+ log_message("❌ No reference files found. Cannot proceed.", "ERROR")
476
+ return
477
+
478
  while processing_status["is_running"]:
 
479
 
480
+ current_state = download_hf_state(TARGET_REPO_ID, HF_STATE_FILE)
 
481
  next_file_info = get_next_file_to_process(SOURCE_REPO_ID, current_state)
482
 
483
  if next_file_info is None:
 
494
  matched_filename = None
495
 
496
  try:
 
497
  if not lock_file_for_processing(target_file, current_state):
498
  log_message(f"❌ Failed to lock file {target_file}. Skipping.", "ERROR")
499
  time.sleep(PROCESSING_DELAY)
 
511
  # Use matched filename if found, otherwise use original filename
512
  output_filename = matched_filename if matched_filename else base_filename
513
 
 
514
  if process_audio_file(local_wav_path, reference_map, output_filename):
515
  success = True
516
  log_message(f"βœ… Finished processing: {target_file}", "INFO")
 
524
  log_failed_file(target_file, str(e))
525
 
526
  finally:
 
527
  next_index_to_save = target_index + 1
528
+ current_state = download_hf_state(TARGET_REPO_ID, HF_STATE_FILE)
 
 
 
529
 
530
  if success:
 
531
  unlock_file_as_processed(target_file, current_state, next_index_to_save)
532
  processing_status["processed_files"] += 1
533
  else:
534
+ log_message(f"⚠️ Processing failed for {target_file}. Marking as 'failed' and advancing index.", "WARNING")
 
535
  current_state["file_states"][target_file] = "failed"
536
+ current_state["next_download_index"] = next_index_to_save
537
+ upload_hf_state(TARGET_REPO_ID, HF_STATE_FILE, current_state)
538
+ processing_status["failed_files"] += 1
539
+
540
+ if os.path.exists(local_wav_path):
541
+ os.remove(local_wav_path)
542
+ log_message(f"πŸ—‘οΈ Cleaned up local file: {local_wav_path}", "INFO")
543
+
544
+ time.sleep(PROCESSING_DELAY)
545
+
546
+ log_message("πŸŽ‰ Processing complete!", "INFO")
547
+ log_message(f"πŸ“Š Final stats: {processing_status['transcribed_files']} audio files transcribed, {processing_status['processed_files']} files processed", "INFO")
 
 
 
548
 
549
+ except KeyboardInterrupt:
550
+ log_message("⏹️ Processing interrupted by user", "WARNING")
551
+ except Exception as e:
552
+ log_message(f"❌ Fatal error: {str(e)}", "ERROR")
553
  finally:
554
  processing_status["is_running"] = False
555
+ cleanup_temp_files()
 
 
556
 
557
+ if __name__ == "__main__":
558
+ main_processing_loop()
559
 
560
+ # ===== FASTAPI ENDPOINTS =====
 
 
 
 
 
 
 
 
 
561
 
562
  @app.get("/")
563
  async def root():
564
+ """Root endpoint with service info"""
565
+ return {
566
+ "service": "Audio Transcriber",
567
+ "status": "running",
568
+ "version": "1.0.0",
569
+ "endpoints": {
570
+ "status": "/status",
571
+ "start": "/start",
572
+ "stop": "/stop",
573
+ "process": "/process/{filename}",
574
+ "logs": "/logs"
575
+ }
576
+ }
577
 
578
  @app.get("/status")
579
  async def get_status():
580
+ """Get current processing status"""
581
+ return {
582
+ "is_running": processing_status["is_running"],
583
+ "current_file": processing_status["current_file"],
584
+ "total_files": processing_status["total_files"],
585
+ "processed_files": processing_status["processed_files"],
586
+ "transcribed_files": processing_status["transcribed_files"],
587
+ "failed_files": processing_status["failed_files"],
588
+ "last_update": processing_status["last_update"],
589
+ "recent_logs": processing_status["logs"][-10:]
590
+ }
591
 
592
  @app.post("/start")
593
  async def start_processing():
594
+ """Start the main processing loop"""
595
  if processing_status["is_running"]:
596
+ raise HTTPException(status_code=400, detail="Processing already running")
597
 
598
+ # Start processing in a separate thread
599
+ thread = threading.Thread(target=main_processing_loop, daemon=True)
600
  thread.start()
601
+
602
+ return {
603
+ "message": "Processing started",
604
+ "status": "started"
605
+ }
606
 
607
  @app.post("/stop")
608
  async def stop_processing():
609
+ """Stop the main processing loop"""
610
  if not processing_status["is_running"]:
611
+ raise HTTPException(status_code=400, detail="Processing not running")
612
 
613
  processing_status["is_running"] = False
614
+
615
+ return {
616
+ "message": "Processing stopped",
617
+ "status": "stopped"
618
+ }
619
+
620
+ @app.get("/logs")
621
+ async def get_logs(limit: int = 50):
622
+ """Get recent logs"""
623
+ logs = processing_status["logs"][-limit:]
624
+ return {
625
+ "total_logs": len(processing_status["logs"]),
626
+ "recent_logs": logs
627
+ }
628
+
629
+ @app.post("/process/{filename}")
630
+ async def process_single_file(filename: str):
631
+ """Process a single audio file manually"""
632
+ try:
633
+ log_message(f"🎯 Manual processing requested for: {filename}", "INFO")
634
+
635
+ # Download and process the file
636
+ reference_map = fetch_reference_files(REFERENCE_REPO_ID)
637
+ if not reference_map:
638
+ raise HTTPException(status_code=500, detail="Could not fetch reference files")
639
+
640
+ # Get file URL
641
+ audio_url = hf_hub_url(repo_id=SOURCE_REPO_ID, filename=filename, repo_type="dataset", subfolder=None)
642
+ local_wav_path = os.path.join(DOWNLOAD_FOLDER, os.path.basename(filename))
643
+
644
+ # Download
645
+ if not download_with_retry(audio_url, local_wav_path):
646
+ raise HTTPException(status_code=500, detail="Failed to download file")
647
+
648
+ # Find match
649
+ base_filename = os.path.basename(filename)
650
+ matched_filename = find_matching_filename(base_filename, reference_map)
651
+
652
+ if not matched_filename:
653
+ os.remove(local_wav_path)
654
+ raise HTTPException(status_code=404, detail="No matching filename found")
655
+
656
+ # Process
657
+ if process_audio_file(local_wav_path, reference_map, matched_filename):
658
+ processing_status["transcribed_files"] += 1
659
+
660
+ if os.path.exists(local_wav_path):
661
+ os.remove(local_wav_path)
662
+
663
+ return {
664
+ "status": "success",
665
+ "file": filename,
666
+ "matched": matched_filename,
667
+ "message": "Audio transcribed and uploaded successfully"
668
+ }
669
+ else:
670
+ if os.path.exists(local_wav_path):
671
+ os.remove(local_wav_path)
672
+ raise HTTPException(status_code=500, detail="Processing failed")
673
+
674
+ except Exception as e:
675
+ log_message(f"❌ Manual processing error: {str(e)}", "ERROR")
676
+ raise HTTPException(status_code=500, detail=str(e))
677
+
678
+ @app.on_event("startup")
679
+ async def startup_event():
680
+ """Auto-start processing when server starts"""
681
+ log_message("πŸš€ Server startup: Checking dependencies...", "INFO")
682
+
683
+ try:
684
+ import transformers
685
+ log_message("βœ… Transformers found", "INFO")
686
+ except ImportError:
687
+ log_message("⚠️ WARNING: Transformers not installed!", "WARNING")
688
+ log_message(" Install with: pip install transformers librosa torch torchaudio", "WARNING")
689
+
690
+ log_message("πŸš€ Server startup: Auto-starting processing loop", "INFO")
691
+
692
+ # Start processing in a separate thread
693
+ thread = threading.Thread(target=main_processing_loop, daemon=True)
694
+ thread.start()
695
 
696
+ def run_api(host: str = "0.0.0.0", port: int = 8000):
697
+ """Run the FastAPI server"""
698
+ log_message(f"πŸš€ Starting FastAPI server on {host}:{port}", "INFO")
699
+ uvicorn.run(app, host=host, port=port)
700
 
701
  if __name__ == "__main__":
702
+ # Run API server (processing will auto-start via startup event)
703
+ run_api()