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import os
import gradio as gr
import whisper
import requests 
import tempfile
from neon_tts_plugin_coqui import CoquiTTS

# Language common in all three multilingual models - English, Chinese, Spanish, and French
# So it would make sense to test the App on these four prominently

# Whisper: Speech-to-text
model = whisper.load_model("base")
model_med = whisper.load_model("medium")
# Languages covered in Whisper - (exhaustive list) :
#"en": "english", "zh": "chinese", "de": "german", "es": "spanish", "ru": "russian", 
#"ko": "korean", "fr": "french", "ja": "japanese", "pt": "portuguese", "tr": "turkish", 
#"pl": "polish", "ca": "catalan", "nl": "dutch", "ar": "arabic", "sv": "swedish", 
#"it": "italian", "id": "indonesian", "hi": "hindi", "fi": "finnish", "vi": "vietnamese", 
#"iw": "hebrew", "uk": "ukrainian", "el": "greek", "ms": "malay", "cs": "czech", 
#"ro": "romanian", "da": "danish", "hu": "hungarian", "ta": "tamil", "no": "norwegian", 
#"th": "thai", "ur": "urdu", "hr": "croatian", "bg": "bulgarian", "lt": "lithuanian", 
#"la": "latin", "mi": "maori", "ml": "malayalam", "cy": "welsh", "sk": "slovak", 
#"te": "telugu", "fa": "persian", "lv": "latvian", "bn": "bengali", "sr": "serbian", 
#"az": "azerbaijani", "sl": "slovenian", "kn": "kannada", "et": "estonian", 
#"mk": "macedonian", "br": "breton", "eu": "basque", "is": "icelandic", "hy": "armenian", 
#"ne": "nepali", "mn": "mongolian", "bs": "bosnian", "kk": "kazakh", "sq": "albanian", 
#"sw": "swahili", "gl": "galician", "mr": "marathi", "pa": "punjabi", "si": "sinhala", 
#"km": "khmer", "sn": "shona", "yo": "yoruba", "so": "somali", "af": "afrikaans", 
#"oc": "occitan", "ka": "georgian", "be": "belarusian", "tg": "tajik", "sd": "sindhi", 
#"gu": "gujarati", "am": "amharic", "yi": "yiddish", "lo": "lao", "uz": "uzbek", 
#"fo": "faroese", "ht": "haitian creole", "ps": "pashto", "tk": "turkmen", "nn": "nynorsk", 
#"mt": "maltese", "sa": "sanskrit", "lb": "luxembourgish", "my": "myanmar", "bo": "tibetan", 
#"tl": "tagalog", "mg": "malagasy", "as": "assamese", "tt": "tatar", "haw": "hawaiian", 
#"ln": "lingala", "ha": "hausa", "ba": "bashkir", "jw": "javanese", "su": "sundanese",


# LLM : Bloom as inference
API_URL = "https://api-inference.huggingface.co/models/bigscience/bloom"
HF_TOKEN = os.environ["HF_TOKEN"]
headers = {"Authorization": f"Bearer {HF_TOKEN}"}
# Main Languages covered in Bloom are (not exhaustive list): 
# English, Chinese, French, Spanish, Portuguese, Arabic, Hindi, Vietnamese, Indonesian, Bengali, Tamil, Telugu


# Text-to-Speech
LANGUAGES = list(CoquiTTS.langs.keys())
coquiTTS = CoquiTTS()
print(f"Languages for Coqui are: {LANGUAGES}")
#Languages for Coqui are: ['en', 'es', 'fr', 'de', 'pl', 'uk', 'ro', 'hu', 'el', 'bg', 'nl', 'fi', 'sl', 'lv', 'ga']
# en - Engish, es - Spanish, fr -  French, de - German, pl - Polish
# uk - Ukrainian, ro - Romanian, hu - Hungarian, el - Greek, bg - Bulgarian,
# nl - dutch, fi - finnish, sl - slovenian, lv - latvian, ga - ??  


# Driver function
def driver_fun(audio) : 
  transcribe, translation, lang = whisper_stt(audio)
  #text1 = model.transcribe(audio)["text"]
  
  #For now only taking in English text for Bloom prompting as inference model is not high spec
  text_generated = lang_model_response(transcribe, lang)
  text_generate_en = lang_model_response(translation, 'en')
  
  if lang in ['es', 'fr']:
    speech = tts(text_generated, lang)
  else:
    speech = tts(text_generated_en, 'en') #'en')
  return transcribe, translation, text_generate, text_generate_en, speech


# Whisper - speech-to-text
def whisper_stt(audio):
  print("Inside Whisper TTS")
  # load audio and pad/trim it to fit 30 seconds
  audio = whisper.load_audio(audio)
  audio = whisper.pad_or_trim(audio)
  
  # make log-Mel spectrogram and move to the same device as the model
  mel = whisper.log_mel_spectrogram(audio).to(model.device)
  
  # detect the spoken language
  _, probs = model.detect_language(mel)
  lang = max(probs, key=probs.get)
  print(f"Detected language: {max(probs, key=probs.get)}")
  
  # decode the audio
  options_transc = whisper.DecodingOptions(fp16 = False, language=lang, task='transcribe') #lang
  options_transl = whisper.DecodingOptions(fp16 = False, language='en', task='translate') #lang
  result_transc = whisper.decode(model_med, mel, options_transc)
  result_transl = whisper.decode(model_med, mel, options_transl)
  
  # print the recognized text
  print(f"transcript is : {result_transc.text}")
  print(f"translation is : {result_transl.text}")
  
  # decode the audio
  #options = whisper.DecodingOptions(fp16 = False, language='en') #lang
  #result = whisper.decode(model, mel, options)
  
  # print the recognized text
  # print(f"transcript is : {result.text}")
  # return result.text, lang
  return result_transc.text, result_transl.text, lang


# LLM - Bloom Response  
def lang_model_response(prompt, language): 
  print(f"Inside lang_model_response - Prompt is :{prompt}")
  p = """Question: How are you doing today?
  Answer: I am doing good, thanks.
  Question: """
  if len(prompt) == 0:
    prompt = """Question: Can you help me please?
    Answer: Sure, I am here for you.
    Question: """
  
  if language == 'en':
    prompt = p + prompt + "\n" + "Answer: "
  #else:
    
  json_ = {"inputs": prompt,
            "parameters":
            {
          "top_p": 0.90, #0.90 default
          "max_new_tokens": 64,
          "temperature": 1.1, #1.1 default
          "return_full_text": False,
          "do_sample": True,
          }, 
          "options": 
          {"use_cache": True,
          "wait_for_model": True, 
          },}
  response = requests.post(API_URL, headers=headers, json=json_)
  #print(f"Response  is : {response}")
  output = response.json()
  output_tmp = output[0]['generated_text']
  print(f"Bloom API Response is : {output_tmp}")
  if language == 'en':
    solution = output_tmp.split("Answer: ")[2].split("\n")[0]
  else:
    output_tmp.split(".")[1]
  print(f"Final Bloom Response after splits is: {solution}")
  return solution

# Coqui - Text-to-Speech
def tts(text, language):
  print(f"Inside tts - language is : {language}")
  coqui_langs = ['en' ,'es' ,'fr' ,'de' ,'pl' ,'uk' ,'ro' ,'hu' ,'bg' ,'nl' ,'fi' ,'sl' ,'lv' ,'ga']
  if language not in coqui_langs:
    language = 'en'
  with tempfile.NamedTemporaryFile(suffix=".wav", delete=False) as fp:
      coquiTTS.get_tts(text, fp, speaker = {"language" : language})
      return fp.name

#demo = gr.Blocks()
#with demo:
#  gr.Markdown("<h1><center>Testing</center></h1>")
  
    
gr.Interface(
    title = 'Testing Whisper', 
    fn=driver_fun, 
    inputs=[
        gr.Audio(source="microphone",  type="filepath"), #streaming = True,
       # "state"
    ],
    outputs=[
        "textbox",  "textbox", "textbox", "textbox", "audio",
    ],
    live=True).launch()