""" utils.py Functions: - get_script: Get the dialogue from the LLM. - call_llm: Call the LLM with the given prompt and dialogue format. - get_audio: Get the audio from the TTS model from HF Spaces. """ import os import requests from gradio_client import Client from openai import OpenAI from pydantic import ValidationError MODEL_ID = "accounts/fireworks/models/llama-v3p1-405b-instruct" JINA_URL = "https://r.jina.ai/" client = OpenAI( base_url="https://api.fireworks.ai/inference/v1", api_key=os.getenv("FIREWORKS_API_KEY"), ) hf_client = Client("mrfakename/MeloTTS") def generate_script(system_prompt: str, input_text: str, output_model): """Get the dialogue from the LLM.""" # Load as python object try: response = call_llm(system_prompt, input_text, output_model) dialogue = output_model.model_validate_json( response.choices[0].message.content ) except ValidationError as e: error_message = f"Failed to parse dialogue JSON: {e}" system_prompt_with_error = f"{system_prompt}\n\nPlease return a VALID JSON object. This was the earlier error: {error_message}" response = call_llm(system_prompt_with_error, input_text, output_model) dialogue = output_model.model_validate_json( response.choices[0].message.content ) return dialogue def call_llm(system_prompt: str, text: str, dialogue_format): """Call the LLM with the given prompt and dialogue format.""" response = client.chat.completions.create( messages=[ {"role": "system", "content": system_prompt}, {"role": "user", "content": text}, ], model=MODEL_ID, max_tokens=16_384, temperature=0.1, response_format={ "type": "json_object", "schema": dialogue_format.model_json_schema(), }, ) return response def parse_url(url: str) -> str: """Parse the given URL and return the text content.""" full_url = f"{JINA_URL}{url}" response = requests.get(full_url, timeout=60) return response.text def generate_audio(text: str, speaker: str, language: str) -> bytes: """Get the audio from the TTS model from HF Spaces and adjust pitch if necessary.""" if speaker == "Guest": accent = "EN-US" if language == "EN" else language speed = 0.9 else: # host accent = "EN-Default" if language == "EN" else language speed = 1 if language != "EN" and speaker != "Guest": speed = 1.1 # Generate audio result = hf_client.predict( text=text, language=language, speaker=accent, speed=speed, api_name="/synthesize" ) return result