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import gradio as gr
import os
import allin1
import time
import json
import torch
import librosa
import numpy as np

from pathlib import Path

HEADER = """
<header style="text-align: center;">
  <h1>
    All-In-One Music Structure Analyzer 🔮
  </h1>
  <p>
    <a href="https://github.com/mir-aidj/all-in-one">[Python Package]</a>
    <a href="https://arxiv.org/abs/2307.16425">[Paper]</a>
    <a href="https://taejun.kim/music-dissector/">[Visual Demo]</a>
  </p>
</header>
<main
  style="display: flex; justify-content: center;"
>
  <div
    style="display: inline-block;"
  >
    <p>
      This Space demonstrates the music structure analyzer predicts:
      <ul
        style="padding-left: 1rem;"
      >
        <li>BPM</li>
        <li>Beats</li>
        <li>Downbeats</li>
        <li>Functional segment boundaries</li>
        <li>Functional segment labels (e.g. intro, verse, chorus, bridge, outro)</li>
      </ul>
    </p>
    <p>
      For more information, please visit the links above ✨🧸
    </p>
  </div>
</main>
"""

CACHE_EXAMPLES = os.getenv('CACHE_EXAMPLES', '1') == '1'

base_dir = "/tmp/gradio/"

# Defining sample rate for voice activity detection (must use multiple of 8k)
SAMPLING_RATE = 32000
torch.set_num_threads(1)

# Import of models to do voice detection
model, utils = torch.hub.load(repo_or_dir='snakers4/silero-vad',
                              model='silero_vad',
                              force_reload=True)

(get_speech_timestamps,
 save_audio,
 read_audio,
 VADIterator,
 collect_chunks) = utils

def analyze(path):
  #Measure time for inference
  start = time.time()
  string_path = path
  path = Path(path)
  result= allin1.analyze(
    path,
    out_dir='./struct',
    multiprocess=False,
    keep_byproducts=True,  # TODO: remove this
  )

  json_structure_output = None
  for root, dirs, files in os.walk(f"./struct"):
    for file_path in files:
      json_structure_output = os.path.join(root, file_path)
      print(json_structure_output)

  add_voice_labelv2(json_structure_output, string_path)
    
  fig = allin1.visualize(
    result,
    multiprocess=False,
  )
  fig.set_dpi(300)

  #allin1.sonify(
  #  result,
  #  out_dir='./sonif',
  #  multiprocess=False,
  #)
  #sonif_path = Path(f'./sonif/{path.stem}.sonif{path.suffix}').resolve().as_posix()

  #Measure time for inference
  end = time.time()
  elapsed_time = end-start

  # Get the base name of the file
  file_name = os.path.basename(path)
    
  # Remove the extension from the file name
  file_name_without_extension = os.path.splitext(file_name)[0]
  print(file_name_without_extension)
  bass_path, drums_path, other_path, vocals_path = None, None, None, None
  for root, dirs, files in os.walk(f"./demix/htdemucs/{file_name_without_extension}"):
    for file_path in files:
      file_path = os.path.join(root, file_path)
      print(file_path)
      if "bass.wav" in file_path:
        bass_path = file_path
      if "vocals.wav" in file_path:
        vocals_path = file_path
      if "other.wav" in file_path:
        other_path = file_path
      if "drums.wav" in file_path:
        drums_path = file_path

  #return result.bpm, fig, sonif_path, elapsed_time
  return result.bpm, fig, elapsed_time, json_structure_output, bass_path, drums_path, other_path, vocals_path

def add_voice_label(json_file, audio_path):
    # Load the JSON file
    with open(json_file, 'r') as f:
        data = json.load(f)

    # Create VAD object
    vad_iterator = VADIterator(model)

    # Read input audio file
    wav, _ = librosa.load(audio_path, sr=SAMPLING_RATE, mono=True)
    
    # Access the segments
    segments = data['segments']

    times = []
    for segment in segments:
        start = segment['start']
        end = segment['end']

        start_sample = int(start*SAMPLING_RATE)
        end_sample = int(end*SAMPLING_RATE)
        
        speech_probs = []
        window_size_samples = 1536
        for i in range(start_sample, end_sample, window_size_samples):
            chunk = torch.from_numpy(wav[i: i+ window_size_samples])
            if len(chunk) < window_size_samples:
              break
            speech_prob = model(chunk, SAMPLING_RATE).item()
            speech_probs.append(speech_prob)
        vad_iterator.reset_states() # reset model states after each audio

        mean_probability = np.mean(speech_probs)
        print(mean_probability)

        if mean_probability >= 0.7 :
            segment['voice'] = "Yes"
        else:
            segment['voice'] = "No"
            
    with open(json_file, 'w') as f:
        json.dump(data, f, indent=4)
    
def add_voice_labelv2(json_file, audio_path):
    # Load the JSON file
    with open(json_file, 'r') as f:
        data = json.load(f)

    # Create VAD object
    vad_iterator = VADIterator(model)

    # Read input audio file
    wav, _ = librosa.load(audio_path, sr=SAMPLING_RATE, mono=True)

    speech_probs = []
    # Size of the window we compute the probability on
    window_size_samples = int(SAMPLING_RATE/4)
    for i in range(0, len(wav), window_size_samples):
        chunk = torch.from_numpy(wav[i: i+ window_size_samples])
        if len(chunk) < window_size_samples:
          break
        speech_prob = model(chunk, SAMPLING_RATE).item()
        speech_probs.append(speech_prob)
    vad_iterator.reset_states() # reset model states after each audio
    
    voice_idxs = np.where(np.array(speech_probs) >= 0.7)[0]
    print(len(voice_idxs))

    if len(voice_idxs) == 0:
        print("NO VOICE SEGMENTS DETECTED!")
    try:
        begin_seq = True
        start_idx = 0
        vocal_times=[]
        for i in range(len(voice_idxs)-1):
            if begin_seq:
                start_idx = voice_idxs[i]
                begin_seq = False
            if voice_idxs[i+1] == voice_idxs[i]+1:
                continue
            
            start_time = float((start_idx*window_size_samples)/SAMPLING_RATE)
            end_time = float((voice_idxs[i]*window_size_samples)/SAMPLING_RATE)

            start_minutes = int(start_time)
            end_minutes = int(end_time)
            start_seconds = (start_time - start_minutes) * 60
            end_seconds = (end_time - end_minutes) * 60

            print("modifying json data... \n")
            vocal_times.append( {
            "start_time": f"{start_minutes}.{start_seconds:.0f}",
            "end_time": f"{end_minutes}.{end_seconds:.0f}"
            })

            begin_seq = True

        data['vocal_times'] = vocal_times
               
    except Exception as e:
        print(f"An exception occurred: {e}")

    with open(json_file, 'w') as f:
        print("writing_to_json...")
        json.dump(data, f, indent=4)
    
with gr.Blocks() as demo:
  gr.HTML(HEADER)

  input_audio_path = gr.Audio(
    label='Input',
    type='filepath',
    format='mp3',
    show_download_button=False,
  )
  button = gr.Button('Analyze', variant='primary')
  output_viz = gr.Plot(label='Visualization')
  with gr.Row():
    output_bpm = gr.Textbox(label='BPM', scale=1)
    #output_sonif = gr.Audio(
    #  label='Sonification',
    #  type='filepath',
    #  format='mp3',
    #  show_download_button=False,
    #  scale=9,
    #)
    elapsed_time = gr.Textbox(label='Overall inference time', scale=1)
    json_structure_output = gr.File(label="Json structure")
  with gr.Column():
    bass = gr.Audio(label='bass', show_share_button=False)
    vocals =gr.Audio(label='vocals', show_share_button=False)
    other = gr.Audio(label='other', show_share_button=False)
    drums =gr.Audio(label='drums', show_share_button=False)
    #bass_path = gr.Textbox(label='bass_path', scale=1)
    #drums_path = gr.Textbox(label='drums_path', scale=1)
    #other_path = gr.Textbox(label='other_path', scale=1)
    #vocals_path = gr.Textbox(label='vocals_path', scale=1)
  #gr.Examples(
  #  examples=[
  #    './assets/NewJeans - Super Shy.mp3',
  #    './assets/Bruno Mars - 24k Magic.mp3'
  #  ],
  #  inputs=input_audio_path,
  #  outputs=[output_bpm, output_viz, output_sonif],
  #  fn=analyze,
  #  cache_examples=CACHE_EXAMPLES,
  #)
  
  button.click(
    fn=analyze,
    inputs=input_audio_path,
    #outputs=[output_bpm, output_viz, output_sonif, elapsed_time],
    outputs=[output_bpm, output_viz, elapsed_time, json_structure_output, bass, drums, other, vocals],
    api_name='analyze',
  )

if __name__ == '__main__':
  demo.launch()