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import openai

import time

# from elevenlabs import set_api_key

import requests
import whisper


import os


# from elevenlabs import generate, play , stream , save


import gradio as gr


from typing import Optional


from deta import Deta



deta = Deta("d0uj3nfpeok_kuCKpWGv4jeHCqKZVANdW8z37ksTJzUZ")



db1 = deta.Base("elevenlab")



openai.api_key = os.getenv("openaiapikey")


model = whisper.load_model("base")

os.environ['PATH'] += os.pathsep + '/path/to/mpv/'


class Chat:

    def __init__(self , system: Optional[str] = None):
        self.system = system
        self.messages = []

        if system is not None:
            self.messages.append({
                "role": "system",
                "content": system
            })

    def prompt(self, content: str) -> str:
        self.messages.append({
            "role": "user",
            "content": content
        })
        response = openai.ChatCompletion.create(
            model="gpt-3.5-turbo",
            messages=self.messages
        )
        response_content = response["choices"][0]["message"]["content"]
        self.messages.append({
            "role": "assistant",
            "content": response_content
        })
        return response_content



def read_and_print_file(file_path):
    with open(file_path, 'r') as file:
        return  file.read()


# Example usage:
file_path = 'the_interview_questions'
contents = read_and_print_file(file_path)


chat = Chat(system="""You have to take the annual financial review. To ensure the user have the most up-to-date information, you have to ask a few questions.
Make Sure the following information is being extracted after the Interview:(Ask the questions by one by one not in a big chunk, ask the question and wait for his response and then ask the second questions)
Ask question in your own way that we can know that (ask the questions one by one slowly don't rush and wait for user repsponse for first question and then ask the second question)
remember to ask the below questions one after one like a interview not all at a time.
wait for user response after one single questions until then don't ask next question
remember to not to include question number.
""" + contents + """
""")


from gradio_client import Client
API_URL = "https://sanchit-gandhi-whisper-jax.hf.space/"

# set up the Gradio client
client = Client(API_URL)


def transcribe_audio(audio_path, task="transcribe", return_timestamps=False):
    """Function to transcribe an audio file using the Whisper JAX endpoint."""
    if task not in ["transcribe", "translate"]:
        raise ValueError("task should be one of 'transcribe' or 'translate'.")

    text, runtime = client.predict(
        audio_path,
        task,
        return_timestamps,
        api_name="/predict_1",
    )
    return text
    

def convert_tuples_to_list(tuples_list):
    result = []
    conversation = ""
    for tuple_item in tuples_list:
        result.append(tuple_item[0])  # Append question
        result.append(tuple_item[1])  # Append answer
    for i in result:
        conversation = conversation + i + " \n"
    return conversation


def run_text_prompt(message, chat_history):
    bot_message = chat.prompt(content=message)
    
    db1.update(
        {"value": bot_message},
        "my-key",
    )
    # audio = generate(
    #     text=bot_message,
    #     voice="Antoni",
    # )

    # 
    # (audio)
    # save(audio, 'myvoice.mp3')
    
    chat_history.append((message, bot_message))
    time.sleep(3)
    return "", chat_history


def run_audio_prompt(audio, chat_history):
    if audio is None:
        return None, chat_history
    
    message_transcription = transcribe_audio(audio)


    # message_transcription = model.transcribe(audio)["text"]
    _, chat_history = run_text_prompt(message_transcription, chat_history)
    return None, chat_history

def process_text(conversation, text):
  # print(text)
  completion = openai.ChatCompletion.create(model="gpt-3.5-turbo",
                                            messages=[{
                                              "role":
                                              "user",
                                              "content":
                                              conversation + text
                                            }])
  # completion = text;
  # print(completion)
  print(completion.choices[0].message.content.strip())
  return completion.choices[0].message.content.strip()

with gr.Blocks(title="hi") as app2:
    chatbot = gr.Chatbot([(None, "Hello! It's time for your annual financial review. To ensure we have the most up-to-date information, I'll ask you a few questions. Have there been any major changes to your employment status or primary source of income in the past year?")] , label="Agent")

    msg = gr.Textbox(label="Write")
    msg.submit(run_text_prompt, [msg, chatbot], [msg, chatbot])

    with gr.Row():
        audio = gr.Audio(source="microphone", type="filepath", label="Speak")

        fn = run_audio_prompt,
        inputs = [audio, chatbot],
        outputs = [audio, chatbot]


        # fn = run_audio_prompt,
        # inputs = [audio, chatbot],
        # outputs = [audio, chatbot]
        audio.change(run_audio_prompt, [audio, chatbot], [audio, chatbot])
        # send_audio_button = gr.Button("Send Audio", interactive=True)
        # send_audio_button.click(run_audio_prompt, [audio, chatbot], [audio, chatbot])

demo = gr.TabbedInterface([app2], [ "Interview"])

demo.launch(share=False,
                        debug=False,
                         )