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#################################################################################################
# Taking code from https://huggingface.co/spaces/vumichien/Whisper_speaker_diarization/blob/main/app.py

from faster_whisper import WhisperModel
#import datetime
#import subprocess
import gradio as gr
from pathlib import Path
import pandas as pd
#import re
import time
import os 
import numpy as np
from sklearn.cluster import AgglomerativeClustering
from sklearn.metrics import silhouette_score

from pytube import YouTube
#import yt_dlp
import torch
#import pyannote.audio
from pyannote.audio.pipelines.speaker_verification import PretrainedSpeakerEmbedding
from pyannote.audio import Audio
from pyannote.core import Segment

from gpuinfo import GPUInfo

import wave
import contextlib
from transformers import pipeline
import psutil

embedding_model = PretrainedSpeakerEmbedding( 
    "speechbrain/spkrec-ecapa-voxceleb",
    device=torch.device("cuda" if torch.cuda.is_available() else "cpu"))

def fast_transcription(audio_file, whisper_model, language):
    """
    # Transcribe youtube link using OpenAI Whisper
    1. Using Open AI's Whisper model to seperate audio into segments and generate transcripts.
    2. Generating speaker embeddings for each segments.
    3. Applying agglomerative clustering on the embeddings to identify the speaker for each segment.
    
    Speech Recognition is based on models from OpenAI Whisper https://github.com/openai/whisper
    Speaker diarization model and pipeline from by https://github.com/pyannote/pyannote-audio
    """
    
    # model = whisper.load_model(whisper_model)
    # model = WhisperModel(whisper_model, device="cuda", compute_type="int8_float16")
    model = WhisperModel(whisper_model, compute_type="int8")
    time_start = time.time()
    # if(video_file_path == None):
    #     raise ValueError("Error no video input")
    # print(video_file_path)

    try:
        # Get duration
        with contextlib.closing(wave.open(audio_file,'r')) as f:
            frames = f.getnframes()
            rate = f.getframerate()
            duration = frames / float(rate)
        print(f"conversion to wav ready, duration of audio file: {duration}")

        # Transcribe audio
        options = dict(language=language, beam_size=5, best_of=5)
        transcribe_options = dict(task="transcribe", **options)
        segments_raw, info = model.transcribe(audio_file, **transcribe_options)

        # Convert back to original openai format
        segments = []
        i = 0
        for segment_chunk in segments_raw:
            chunk = {}
            chunk["start"] = segment_chunk.start
            chunk["end"] = segment_chunk.end
            chunk["text"] = segment_chunk.text
            segments.append(chunk)
            i += 1
        print("transcribe audio done with fast whisper")
    except Exception as e:
        raise RuntimeError("Error converting video to audio")
    
    #text from the list
    
    return [str(s["start"]) + " " + s["text"] for s in segments] #pd.DataFrame(segments)

import datetime

def convert_time(secs):
    return datetime.timedelta(seconds=round(secs))

def speech_to_text(audio_file, selected_source_lang, whisper_model, num_speakers):
    """
    # Transcribe youtube link using OpenAI Whisper
    1. Using Open AI's Whisper model to seperate audio into segments and generate transcripts.
    2. Generating speaker embeddings for each segments.
    3. Applying agglomerative clustering on the embeddings to identify the speaker for each segment.
    
    Speech Recognition is based on models from OpenAI Whisper https://github.com/openai/whisper
    Speaker diarization model and pipeline from by https://github.com/pyannote/pyannote-audio
    """
    
    # model = whisper.load_model(whisper_model)
    # model = WhisperModel(whisper_model, device="cuda", compute_type="int8_float16")
    model = WhisperModel(whisper_model, compute_type="int8")
    time_start = time.time()
    # if(video_file_path == None):
    #     raise ValueError("Error no video input")
    # print(video_file_path)

    try:
        # # Read and convert youtube video
        # _,file_ending = os.path.splitext(f'{video_file_path}')
        # print(f'file enging is {file_ending}')
        # audio_file = video_file_path.replace(file_ending, ".wav")
        # print("starting conversion to wav")
        # os.system(f'ffmpeg -i "{video_file_path}" -ar 16000 -ac 1 -c:a pcm_s16le "{audio_file}"')
        
        # Get duration
        with contextlib.closing(wave.open(audio_file,'r')) as f:
            frames = f.getnframes()
            rate = f.getframerate()
            duration = frames / float(rate)
        print(f"conversion to wav ready, duration of audio file: {duration}")

        # Transcribe audio
        options = dict(language=selected_source_lang, beam_size=5, best_of=5)
        transcribe_options = dict(task="transcribe", **options)
        segments_raw, info = model.transcribe(audio_file, **transcribe_options)

        # Convert back to original openai format
        segments = []
        i = 0
        for segment_chunk in segments_raw:
            chunk = {}
            chunk["start"] = segment_chunk.start
            chunk["end"] = segment_chunk.end
            chunk["text"] = segment_chunk.text
            segments.append(chunk)
            i += 1
        print("transcribe audio done with fast whisper")
    except Exception as e:
        raise RuntimeError("Error converting video to audio")

    try:
        # Create embedding
        def segment_embedding(segment):
            audio = Audio()
            start = segment["start"]
            # Whisper overshoots the end timestamp in the last segment
            end = min(duration, segment["end"])
            clip = Segment(start, end)
            waveform, sample_rate = audio.crop(audio_file, clip)
            return embedding_model(waveform[None])

        embeddings = np.zeros(shape=(len(segments), 192))
        for i, segment in enumerate(segments):
            embeddings[i] = segment_embedding(segment)
        embeddings = np.nan_to_num(embeddings)
        print(f'Embedding shape: {embeddings.shape}')

        if num_speakers == 0:
        # Find the best number of speakers
            score_num_speakers = {}
    
            for num_speakers in range(2, 10+1):
                clustering = AgglomerativeClustering(num_speakers).fit(embeddings)
                score = silhouette_score(embeddings, clustering.labels_, metric='euclidean')
                score_num_speakers[num_speakers] = score

            best_num_speaker = max(score_num_speakers, key=lambda x:score_num_speakers[x])
            print(f"The best number of speakers: {best_num_speaker} with {score_num_speakers[best_num_speaker]} score")
        else:
            best_num_speaker = num_speakers
            
        # Assign speaker label   
        clustering = AgglomerativeClustering(best_num_speaker).fit(embeddings)
        labels = clustering.labels_
        for i in range(len(segments)):
            segments[i]["speaker"] = 'SPEAKER ' + str(labels[i] + 1)

        # Make output
        objects = {
            'Start' : [],
            'End': [],
            'Speaker': [],
            'Text': []
        }
        text = ''
        for (i, segment) in enumerate(segments):
            if i == 0 or segments[i - 1]["speaker"] != segment["speaker"]:
                objects['Start'].append(str(convert_time(segment["start"])))
                objects['Speaker'].append(segment["speaker"])
                if i != 0:
                    objects['End'].append(str(convert_time(segments[i - 1]["end"])))
                    objects['Text'].append(text)
                    text = ''
            text += segment["text"] + ' '
        objects['End'].append(str(convert_time(segments[i - 1]["end"])))
        objects['Text'].append(text)
        
        time_end = time.time()
        time_diff = time_end - time_start
        memory = psutil.virtual_memory()
        gpu_utilization, gpu_memory = GPUInfo.gpu_usage()
        gpu_utilization = gpu_utilization[0] if len(gpu_utilization) > 0 else 0
        gpu_memory = gpu_memory[0] if len(gpu_memory) > 0 else 0
        system_info = f"""
        *Memory: {memory.total / (1024 * 1024 * 1024):.2f}GB, used: {memory.percent}%, available: {memory.available / (1024 * 1024 * 1024):.2f}GB.* 
        *Processing time: {time_diff:.5} seconds.*
        *GPU Utilization: {gpu_utilization}%, GPU Memory: {gpu_memory}MiB.*
        """
        save_path = "transcript_result.csv"
        df_results = pd.DataFrame(objects)
        #df_results.to_csv(save_path)
        return df_results, system_info, save_path
    
    except Exception as e:
        raise RuntimeError("Error Running inference with local model", e)