import concurrent.futures as cf import glob import io import os import time from pathlib import Path from tempfile import NamedTemporaryFile from typing import List, Literal import gradio as gr from loguru import logger from openai import OpenAI from promptic import llm from pydantic import BaseModel, ValidationError from tenacity import retry, retry_if_exception_type import pymupdf # imports the pymupdf library import re import requests from dotenv import load_dotenv load_dotenv() # 现在你可以使用 os.getenv() 来获取环境变量 openai_api_key = os.getenv("OPENAI_API_KEY") # 新增函數,從 API 獲取可用的模型列表 def fetch_models(api_key): headers = {"Authorization": f"Bearer {api_key}"} response = requests.get("https://api.openai.com/v1/models", headers=headers) if response.status_code == 200: models = response.json()['data'] # 返回模型名稱列表,這裡過濾掉非 GPT 模型 return [model['id'] for model in models if 'gpt' in model['id']] else: return ["Error fetching models"] def read_readme(): readme_path = Path("README.md") if readme_path.exists(): with open(readme_path, "r") as file: content = file.read() # Use regex to remove metadata enclosed in -- ... -- content = re.sub(r'--.*?--', '', content, flags=re.DOTALL) return content else: return "README.md not found. Please check the repository for more information." # Define multiple sets of instruction templates INSTRUCTION_TEMPLATES = { ################# PODCAST ################## "podcast": { "intro": """Your task is to take the input text provided and turn it into an lively, engaging, informative podcast dialogue, in the style of NPR. The input text may be messy or unstructured, as it could come from a variety of sources like PDFs or web pages. Don't worry about the formatting issues or any irrelevant information; your goal is to extract the key points, identify definitions, and interesting facts that could be discussed in a podcast. Define all terms used carefully for a broad audience of listeners. """, "text_instructions": "First, carefully read through the input text and identify the main topics, key points, and any interesting facts or anecdotes. Think about how you could present this information in a fun, engaging way that would be suitable for a high quality presentation.", "scratch_pad": """Brainstorm creative ways to discuss the main topics and key points you identified in the input text. Consider using analogies, examples, storytelling techniques, or hypothetical scenarios to make the content more relatable and engaging for listeners. Keep in mind that your podcast should be accessible to a general audience, so avoid using too much jargon or assuming prior knowledge of the topic. If necessary, think of ways to briefly explain any complex concepts in simple terms. Use your imagination to fill in any gaps in the input text or to come up with thought-provoking questions that could be explored in the podcast. The goal is to create an informative and entertaining dialogue, so feel free to be creative in your approach. Define all terms used clearly and spend effort to explain the background. Write your brainstorming ideas and a rough outline for the podcast dialogue here. Be sure to note the key insights and takeaways you want to reiterate at the end. Make sure to make it fun and exciting. """, "prelude": """Now that you have brainstormed ideas and created a rough outline, it's time to write the actual podcast dialogue. Aim for a natural, conversational flow between the host and any guest speakers. Incorporate the best ideas from your brainstorming session and make sure to explain any complex topics in an easy-to-understand way. """, "dialog": """Write a very long, engaging, informative podcast dialogue here, based on the key points and creative ideas you came up with during the brainstorming session. Use a conversational tone and include any necessary context or explanations to make the content accessible to a general audience. Never use made-up names for the hosts and guests, but make it an engaging and immersive experience for listeners. Do not include any bracketed placeholders like [Host] or [Guest]. Design your output to be read aloud -- it will be directly converted into audio. Make the dialogue as long and detailed as possible, while still staying on topic and maintaining an engaging flow. Aim to use your full output capacity to create the longest podcast episode you can, while still communicating the key information from the input text in an entertaining way. At the end of the dialogue, have the host and guest speakers naturally summarize the main insights and takeaways from their discussion. This should flow organically from the conversation, reiterating the key points in a casual, conversational manner. Avoid making it sound like an obvious recap - the goal is to reinforce the central ideas one last time before signing off. The podcast should have around 3000 words. 輸出文字為繁體中文,請注意。 """, }, ################# MATERIAL DISCOVERY SUMMARY ################## "SciAgents material discovery summary": { "intro": """Your task is to take the input text provided and turn it into a lively, engaging conversation between a professor and a student in a panel discussion that describes a new material. The professor acts like Richard Feynman, but you never mention the name. The input text is the result of a design developed by SciAgents, an AI tool for scientific discovery that has come up with a detailed materials design. Don't worry about the formatting issues or any irrelevant information; your goal is to extract the key points, identify definitions, and interesting facts that could be discussed in a podcast. Define all terms used carefully for a broad audience of listeners. """, "text_instructions": "First, carefully read through the input text and identify the main topics, key points, and any interesting facts or anecdotes. Think about how you could present this information in a fun, engaging way that would be suitable for a high quality presentation.", "scratch_pad": """Brainstorm creative ways to discuss the main topics and key points you identified in the material design summary, especially paying attention to design features developed by SciAgents. Consider using analogies, examples, storytelling techniques, or hypothetical scenarios to make the content more relatable and engaging for listeners. Keep in mind that your description should be accessible to a general audience, so avoid using too much jargon or assuming prior knowledge of the topic. If necessary, think of ways to briefly explain any complex concepts in simple terms. Use your imagination to fill in any gaps in the input text or to come up with thought-provoking questions that could be explored in the podcast. The goal is to create an informative and entertaining dialogue, so feel free to be creative in your approach. Define all terms used clearly and spend effort to explain the background. Write your brainstorming ideas and a rough outline for the podcast dialogue here. Be sure to note the key insights and takeaways you want to reiterate at the end. Make sure to make it fun and exciting. You never refer to the podcast, you just discuss the discovery and you focus on the new material design only. """, "prelude": """Now that you have brainstormed ideas and created a rough outline, it's time to write the actual podcast dialogue. Aim for a natural, conversational flow between the host and any guest speakers. Incorporate the best ideas from your brainstorming session and make sure to explain any complex topics in an easy-to-understand way. """, "dialog": """Write a very long, engaging, informative dialogue here, based on the key points and creative ideas you came up with during the brainstorming session. The presentation must focus on the novel aspects of the material design, behavior, and all related aspects. Use a conversational tone and include any necessary context or explanations to make the content accessible to a general audience, but make it detailed, logical, and technical so that it has all necessary aspects for listeners to understand the material and its unexpected properties. Remember, this describes a design developed by SciAgents, and this must be explicitly stated for the listeners. Never use made-up names for the hosts and guests, but make it an engaging and immersive experience for listeners. Do not include any bracketed placeholders like [Host] or [Guest]. Design your output to be read aloud -- it will be directly converted into audio. Make the dialogue as long and detailed as possible with great scientific depth, while still staying on topic and maintaining an engaging flow. Aim to use your full output capacity to create the longest podcast episode you can, while still communicating the key information from the input text in an entertaining way. At the end of the dialogue, have the host and guest speakers naturally summarize the main insights and takeaways from their discussion. This should flow organically from the conversation, reiterating the key points in a casual, conversational manner. Avoid making it sound like an obvious recap - the goal is to reinforce the central ideas one last time before signing off. The conversation should have around 3000 words. 請用**繁體中文**輸出文稿 """ }, ################# LECTURE ################## "lecture": { "intro": """You are Professor Richard Feynman. Your task is to develop a script for a lecture. You never mention your name. The material covered in the lecture is based on the provided text. Don't worry about the formatting issues or any irrelevant information; your goal is to extract the key points, identify definitions, and interesting facts that need to be covered in the lecture. Define all terms used carefully for a broad audience of students. """, "text_instructions": "First, carefully read through the input text and identify the main topics, key points, and any interesting facts or anecdotes. Think about how you could present this information in a fun, engaging way that would be suitable for a high quality presentation.", "scratch_pad": """ Brainstorm creative ways to discuss the main topics and key points you identified in the input text. Consider using analogies, examples, storytelling techniques, or hypothetical scenarios to make the content more relatable and engaging for listeners. Keep in mind that your lecture should be accessible to a general audience, so avoid using too much jargon or assuming prior knowledge of the topic. If necessary, think of ways to briefly explain any complex concepts in simple terms. Use your imagination to fill in any gaps in the input text or to come up with thought-provoking questions that could be explored in the podcast. The goal is to create an informative and entertaining dialogue, so feel free to be creative in your approach. Define all terms used clearly and spend effort to explain the background. Write your brainstorming ideas and a rough outline for the lecture here. Be sure to note the key insights and takeaways you want to reiterate at the end. Make sure to make it fun and exciting. """, "prelude": """Now that you have brainstormed ideas and created a rough outline, it's time to write the actual podcast dialogue. Aim for a natural, conversational flow between the host and any guest speakers. Incorporate the best ideas from your brainstorming session and make sure to explain any complex topics in an easy-to-understand way. """, "dialog": """Write a very long, engaging, informative script here, based on the key points and creative ideas you came up with during the brainstorming session. Use a conversational tone and include any necessary context or explanations to make the content accessible to the students. Include clear definitions and terms, and examples. Do not include any bracketed placeholders like [Host] or [Guest]. Design your output to be read aloud -- it will be directly converted into audio. There is only one speaker, you, the professor. Stay on topic and maintaining an engaging flow. Aim to use your full output capacity to create the longest lecture you can, while still communicating the key information from the input text in an engaging way. At the end of the lecture, naturally summarize the main insights and takeaways from the lecture. This should flow organically from the conversation, reiterating the key points in a casual, conversational manner. Avoid making it sound like an obvious recap - the goal is to reinforce the central ideas covered in this lecture one last time before class is over. The lecture should have around 3000 words.請用**繁體中文**輸出文稿 """, }, ################# SUMMARY ################## "summary": { "intro": """Your task is to develop a summary of a paper. You never mention your name. Don't worry about the formatting issues or any irrelevant information; your goal is to extract the key points, identify definitions, and interesting facts that need to be summarized. Define all terms used carefully for a broad audience. """, "text_instructions": "First, carefully read through the input text and identify the main topics, key points, and key facts. Think about how you could present this information in an accurate summary.", "scratch_pad": """Brainstorm creative ways to present the main topics and key points you identified in the input text. Consider using analogies, examples, or hypothetical scenarios to make the content more relatable and engaging for listeners. Keep in mind that your summary should be accessible to a general audience, so avoid using too much jargon or assuming prior knowledge of the topic. If necessary, think of ways to briefly explain any complex concepts in simple terms. Define all terms used clearly and spend effort to explain the background. Write your brainstorming ideas and a rough outline for the summary here. Be sure to note the key insights and takeaways you want to reiterate at the end. Make sure to make it engaging and exciting. """, "prelude": """Now that you have brainstormed ideas and created a rough outline, it is time to write the actual summary. Aim for a natural, conversational flow between the host and any guest speakers. Incorporate the best ideas from your brainstorming session and make sure to explain any complex topics in an easy-to-understand way. """, "dialog": """Write a a script here, based on the key points and creative ideas you came up with during the brainstorming session. Use a conversational tone and include any necessary context or explanations to make the content accessible to the the audience. Start your script by stating that this is a summary, referencing the title or headings in the input text. If the input text has no title, come up with a succinct summary of what is covered to open. Include clear definitions and terms, and examples, of all key issues. Do not include any bracketed placeholders like [Host] or [Guest]. Design your output to be read aloud -- it will be directly converted into audio. There is only one speaker, you. Stay on topic and maintaining an engaging flow. Naturally summarize the main insights and takeaways from the summary. This should flow organically from the conversation, reiterating the key points in a casual, conversational manner. The summary should have around 1024 words. 請用**繁體中文**輸出文稿 """, }, ################# SHORT SUMMARY ################## "short summary": { "intro": """Your task is to develop a summary of a paper. You never mention your name. Don't worry about the formatting issues or any irrelevant information; your goal is to extract the key points, identify definitions, and interesting facts that need to be summarized. Define all terms used carefully for a broad audience. """, "text_instructions": "First, carefully read through the input text and identify the main topics, key points, and key facts. Think about how you could present this information in an accurate summary.", "scratch_pad": """Brainstorm creative ways to present the main topics and key points you identified in the input text. Consider using analogies, examples, or hypothetical scenarios to make the content more relatable and engaging for listeners. Keep in mind that your summary should be accessible to a general audience, so avoid using too much jargon or assuming prior knowledge of the topic. If necessary, think of ways to briefly explain any complex concepts in simple terms. Define all terms used clearly and spend effort to explain the background. Write your brainstorming ideas and a rough outline for the summary here. Be sure to note the key insights and takeaways you want to reiterate at the end. Make sure to make it engaging and exciting. """, "prelude": """Now that you have brainstormed ideas and created a rough outline, it is time to write the actual summary. Aim for a natural, conversational flow between the host and any guest speakers. Incorporate the best ideas from your brainstorming session and make sure to explain any complex topics in an easy-to-understand way. """, "dialog": """Write a a script here, based on the key points and creative ideas you came up with during the brainstorming session. Keep it concise, and use a conversational tone and include any necessary context or explanations to make the content accessible to the the audience. Start your script by stating that this is a summary, referencing the title or headings in the input text. If the input text has no title, come up with a succinct summary of what is covered to open. Include clear definitions and terms, and examples, of all key issues. Do not include any bracketed placeholders like [Host] or [Guest]. Design your output to be read aloud -- it will be directly converted into audio. There is only one speaker, you. Stay on topic and maintaining an engaging flow. Naturally summarize the main insights and takeaways from the short summary. This should flow organically from the conversation, reiterating the key points in a casual, conversational manner. The summary should have around 256 words. 請用**繁體中文**輸出文稿 """, }, } # Function to update instruction fields based on template selection def update_instructions(template): return ( INSTRUCTION_TEMPLATES[template]["intro"], INSTRUCTION_TEMPLATES[template]["text_instructions"], INSTRUCTION_TEMPLATES[template]["scratch_pad"], INSTRUCTION_TEMPLATES[template]["prelude"], INSTRUCTION_TEMPLATES[template]["dialog"] ) # Define standard values STANDARD_AUDIO_MODELS = [ "tts-1", "tts-1-hd", ] STANDARD_VOICES = [ "alloy", "echo", "fable", "onyx", "nova", "shimmer", ] class DialogueItem(BaseModel): text: str speaker: Literal["speaker-1", "speaker-2"] class Dialogue(BaseModel): scratchpad: str dialogue: List[DialogueItem] def get_mp3(text: str, voice: str, audio_model: str, api_key: str = None) -> bytes: client = OpenAI( api_key=api_key or os.getenv("OPENAI_API_KEY"), ) with client.audio.speech.with_streaming_response.create( model=audio_model, voice=voice, input=text, ) as response: with io.BytesIO() as file: for chunk in response.iter_bytes(): file.write(chunk) return file.getvalue() from functools import wraps def conditional_llm(model, api_base=None, api_key=None): """ Conditionally apply the @llm decorator based on the api_base parameter. If api_base is provided, it applies the @llm decorator with api_base. Otherwise, it applies the @llm decorator without api_base. """ def decorator(func): if api_base: return llm(model=model, api_base=api_base)(func) else: return llm(model=model, api_key=api_key)(func) return decorator def generate_audio( files: list, openai_api_key: str = None, text_model: str = "o1-preview-2024-09-12", audio_model: str = "tts-1", speaker_1_voice: str = "alloy", speaker_2_voice: str = "echo", api_base: str = None, intro_instructions: str = '', text_instructions: str = '', scratch_pad_instructions: str = '', prelude_dialog: str = '', podcast_dialog_instructions: str = '', edited_transcript: str = None, user_feedback: str = None, original_text: str = None, debug = False, ) -> tuple: # 讀取環境變數中 OpenAI API Key if not openai_api_key: openai_api_key = os.getenv("OPENAI_API_KEY") if not openai_api_key: raise gr.Error("OpenAI API key is required") combined_text = original_text or "" # If there's no original text, extract it from the uploaded files if not combined_text: for file in files: # 用 PyMuPDF 打開 PDF 檔案 doc = pymupdf.open(file.name) # 使用 file.name 打開文件 text = "" # 直接遍歷每個頁面 for page in doc: text += page.get_text() # 提取每頁文字 combined_text += text + "\n\n" print(combined_text) # 確認是否成功提取到內容 # for file in files: # with Path(file).open("rb") as f: # reader = PdfReader(f) # text = "\n\n".join([page.extract_text() for page in reader.pages if page.extract_text()]) # combined_text += text + "\n\n" # Configure the LLM based on selected model and api_base @retry(retry=retry_if_exception_type(ValidationError)) @conditional_llm(model=text_model, api_base=api_base, api_key=openai_api_key) def generate_dialogue(text: str, intro_instructions: str, text_instructions: str, scratch_pad_instructions: str, prelude_dialog: str, podcast_dialog_instructions: str, edited_transcript: str = None, user_feedback: str = None, ) -> Dialogue: """ {intro_instructions} Here is the original input text: {text} {text_instructions} {scratch_pad_instructions} {prelude_dialog} {podcast_dialog_instructions} {edited_transcript}{user_feedback} """ instruction_improve='Based on the original text, please generate an improved version of the dialogue by incorporating the edits, comments and feedback.' edited_transcript_processed="\nPreviously generated edited transcript, with specific edits and comments that I want you to carefully address:\n"+"\n"+edited_transcript+"" if edited_transcript !="" else "" user_feedback_processed="\nOverall user feedback:\n\n"+user_feedback if user_feedback !="" else "" if edited_transcript_processed.strip()!='' or user_feedback_processed.strip()!='': user_feedback_processed=""+user_feedback_processed+"\n\n"+instruction_improve+"" if debug: logger.info (edited_transcript_processed) logger.info (user_feedback_processed) # Generate the dialogue using the LLM llm_output = generate_dialogue( combined_text, intro_instructions=intro_instructions, text_instructions=text_instructions, scratch_pad_instructions=scratch_pad_instructions, prelude_dialog=prelude_dialog, podcast_dialog_instructions=podcast_dialog_instructions, edited_transcript=edited_transcript_processed, user_feedback=user_feedback_processed ) # Generate audio from the transcript audio = b"" transcript = "" characters = 0 with cf.ThreadPoolExecutor() as executor: futures = [] for line in llm_output.dialogue: transcript_line = f"{line.speaker}: {line.text}" voice = speaker_1_voice if line.speaker == "speaker-1" else speaker_2_voice future = executor.submit(get_mp3, line.text, voice, audio_model, openai_api_key) futures.append((future, transcript_line)) characters += len(line.text) for future, transcript_line in futures: audio_chunk = future.result() audio += audio_chunk transcript += transcript_line + "\n\n" logger.info(f"Generated {characters} characters of audio") temporary_directory = "./gradio_cached_examples/tmp/" os.makedirs(temporary_directory, exist_ok=True) # Use a temporary file -- Gradio's audio component doesn't work with raw bytes in Safari temporary_file = NamedTemporaryFile( dir=temporary_directory, delete=False, suffix=".mp3", ) temporary_file.write(audio) temporary_file.close() # Delete any files in the temp directory that end with .mp3 and are over a day old for file in glob.glob(f"{temporary_directory}*.mp3"): if os.path.isfile(file) and time.time() - os.path.getmtime(file) > 24 * 60 * 60: os.remove(file) return temporary_file.name, transcript, combined_text def validate_and_generate_audio(*args): files = args[0] if not files: return None, None, None, "Please upload at least one PDF file before generating audio." try: audio_file, transcript, original_text = generate_audio(*args) return audio_file, transcript, original_text, None # Return None as the error when successful except Exception as e: # If an error occurs during generation, return None for the outputs and the error message return None, None, None, str(e) def edit_and_regenerate(edited_transcript, user_feedback, *args): # Replace the original transcript and feedback in the args with the new ones #new_args = list(args) #new_args[-2] = edited_transcript # Update edited transcript #new_args[-1] = user_feedback # Update user feedback return validate_and_generate_audio(*new_args) # New function to handle user feedback and regeneration def process_feedback_and_regenerate(feedback, *args): # Add user feedback to the args new_args = list(args) new_args.append(feedback) # Add user feedback as a new argument return validate_and_generate_audio(*new_args) with gr.Blocks(title="PDF to Podcast", css=""" #header { display: flex; align-items: center; justify-content: space-between; padding: 20px; background-color: transparent; border-bottom: 1px solid #ddd; } #title { font-size: 24px; margin: 0; } #logo_container { width: 200px; height: 200px; display: flex; justify-content: center; align-items: center; } #logo_image { max-width: 100%; max-height: 100%; object-fit: contain; } #main_container { margin-top: 20px; } """) as demo: with gr.Row(elem_id="header"): with gr.Column(scale=4): gr.Markdown("# Oli家:把你的PDF文件轉成Podcast聲音廣播節目。Convert PDFs into an audio podcast, lecture, summary and others\n\nFirst, upload one or more PDFs, select options, then push Generate Podcast.\n首先,上傳一個或多個 PDF,選擇選項,然後按下「Generate Podcast」按鈕。\nYou can also select a variety of custom option and direct the way the result is generated.\n您還可以選擇各種自訂選項。", elem_id="title") with gr.Column(scale=1): gr.HTML('''
Logo
''') submit_btn = gr.Button("產生Podcast聲音 | Generate Podcast", elem_id="submit_btn") with gr.Row(elem_id="main_container"): # 左邊的欄位 with gr.Column(scale=2): files = gr.Files(label="PDFs", file_types=["pdf"], ) openai_api_key = gr.Textbox( label="OpenAI API Key", visible=True, placeholder="這行要填可以用openai api key", type="password" ) # 創建一個空的下拉框,選項會在按鈕點擊時從 API 獲取並動態填充 text_model = gr.Dropdown( label="Text Generation Model", choices=[], # 初始為空 value="", # 初始值設為空 allow_custom_value=True, # 允許自定義值 info="Select the model to generate the dialogue text.", ) # 新增一個按鈕來動態獲取模型列表 fetch_button = gr.Button("獲取模型列表 | Fetch Models") # 當按鈕被點擊時,從 API 獲取模型並更新下拉選單 fetch_button.click(fn=lambda api_key: gr.update(choices=fetch_models(api_key)), inputs=[openai_api_key], outputs=[text_model]) # 音頻模型下拉框依然是靜態選擇 audio_model = gr.Dropdown( label="Audio Generation Model", choices=STANDARD_AUDIO_MODELS, value="tts-1", info="Select the model to generate the audio.", ) speaker_1_voice = gr.Dropdown( label="Speaker 1 Voice", choices=STANDARD_VOICES, value="alloy", info="Select the voice for Speaker 1.", ) speaker_2_voice = gr.Dropdown( label="Speaker 2 Voice", choices=STANDARD_VOICES, value="echo", info="Select the voice for Speaker 2.", ) api_base = gr.Textbox( label="Custom API Base", placeholder="Enter custom API base URL if using a custom/local model...", info="If you are using a custom or local model, provide the API base URL here.", ) # 右邊的欄位 with gr.Column(scale=3): audio_output = gr.Audio(label="Audio", format="mp3", interactive=False, autoplay=False) transcript_output = gr.Textbox(label="Transcript", lines=20, show_copy_button=True) original_text_output = gr.Textbox(label="Original Text", lines=10, visible=False) error_output = gr.Textbox(visible=False) use_edited_transcript = gr.Checkbox(label="Use Edited Transcript", value=False) edited_transcript = gr.Textbox(label="Edit Transcript Here", lines=20, visible=False, show_copy_button=True, interactive=False) user_feedback = gr.Textbox(label="Provide Feedback or Notes", lines=10) regenerate_btn = gr.Button("Regenerate Podcast with Edits and Feedback") # 中間部分輸入選項區域放置在下方 with gr.Column(scale=3): template_dropdown = gr.Dropdown( label="Instruction Template", choices=list(INSTRUCTION_TEMPLATES.keys()), value="podcast", info="Select the instruction template to use. You can also edit any of the fields for more tailored results.", ) intro_instructions = gr.Textbox( label="Intro Instructions", lines=10, value=INSTRUCTION_TEMPLATES["podcast"]["intro"], info="Provide the introductory instructions for generating the dialogue.", ) text_instructions = gr.Textbox( label="Standard Text Analysis Instructions", lines=10, placeholder="Enter text analysis instructions...", value=INSTRUCTION_TEMPLATES["podcast"]["text_instructions"], info="Provide the instructions for analyzing the raw data and text.", ) scratch_pad_instructions = gr.Textbox( label="Scratch Pad Instructions", lines=15, value=INSTRUCTION_TEMPLATES["podcast"]["scratch_pad"], info="Provide the scratch pad instructions for brainstorming presentation/dialogue content.", ) prelude_dialog = gr.Textbox( label="Prelude Dialog", lines=5, value=INSTRUCTION_TEMPLATES["podcast"]["prelude"], info="Provide the prelude instructions before the presentation/dialogue is developed.", ) podcast_dialog_instructions = gr.Textbox( label="Podcast Dialog Instructions", lines=20, value=INSTRUCTION_TEMPLATES["podcast"]["dialog"], info="Provide the instructions for generating the presentation or podcast dialogue.", ) def update_edit_box(checkbox_value): return gr.update(interactive=checkbox_value, lines=20 if checkbox_value else 20, visible=True if checkbox_value else False) use_edited_transcript.change(fn=update_edit_box, inputs=[use_edited_transcript], outputs=[edited_transcript]) template_dropdown.change(fn=update_instructions, inputs=[template_dropdown], outputs=[intro_instructions, text_instructions, scratch_pad_instructions, prelude_dialog, podcast_dialog_instructions]) submit_btn.click( fn=validate_and_generate_audio, inputs=[files, openai_api_key, text_model, audio_model, speaker_1_voice, speaker_2_voice, api_base, intro_instructions, text_instructions, scratch_pad_instructions, prelude_dialog, podcast_dialog_instructions, edited_transcript, user_feedback], outputs=[audio_output, transcript_output, original_text_output, error_output] ) regenerate_btn.click( fn=lambda use_edit, edit, *args: validate_and_generate_audio(*args[:12], edit if use_edit else "", *args[12:]), inputs=[use_edited_transcript, edited_transcript, files, openai_api_key, text_model, audio_model, speaker_1_voice, speaker_2_voice, api_base, intro_instructions, text_instructions, scratch_pad_instructions, prelude_dialog, podcast_dialog_instructions, user_feedback, original_text_output], outputs=[audio_output, transcript_output, original_text_output, error_output] ) # Launch the Gradio app if __name__ == "__main__": demo.launch()