''' This is the main file that launches the GUI interface for the software. ''' import warnings from huggingface_hub import InferenceClient import gradio as gr warnings.filterwarnings('ignore') # Initialize the language model generator = InferenceClient("mistralai/Mixtral-8x7B-Instruct-v0.1") def generate_script(host_name, listener_location, causes_climate_change, co2_level, effects_climate_change, sea_level_rise, warming_rate, potential_solutions, individual_role, call_to_action, TOPIC, DESCRIPTION): try: # Variables and template definitions... introduction_template = f"{host_name}, good morning! This is {listener_location}'s local radio station. Today we're talking about an issue that affects us all - {TOPIC}. It's a pressing issue that requires our immediate attention..." causes_template = f"The causes of {TOPIC} are {causes_climate_change}. Today, the level of CO2 in our atmosphere is {co2_level}, which is concerning..." effects_template = f"These activities result in {effects_climate_change}, leading to drastic changes in our environment. For instance, sea levels are rising at a rate of {sea_level_rise} per year, and global temperatures are increasing at a rate of {warming_rate} per decade..." solutions_template = f"But don't worry, there are solutions. {potential_solutions} are all steps we can take to mitigate these effects..." role_template = f"Each one of us plays a role in combating {TOPIC}. Even small actions can make a big difference. In fact, our location, {listener_location}, is particularly vulnerable to {TOPIC} due to its geographical features..." action_template = f"So, {listener_location}, why wait? Start taking steps today towards a greener future. Support local businesses that prioritize sustainability, reduce your carbon footprint, and voice your opinion to policy makers..." summary_template = f"In conclusion, {TOPIC} is a serious issue that requires our immediate attention. But by understanding its causes, effects, and potential solutions, we can all play a part in mitigating its impact. Thank you for joining us today, and remember, every small action counts!" # Combine templates based on the DESCRIPTION prompt_template = f"""{introduction_template} {causes_template} {effects_template} {solutions_template} {role_template} {action_template} {summary_template} TOPIC: {TOPIC}. DESCRIPTION: {DESCRIPTION}""" # Generate the script using the language model response = generator.text_generation(prompt_template) if isinstance(response, list): script = response[0].get('generated_text', '') else: script = response.get('generated_text', '') # Split the script into sections sections = script.split("\n") # Calculate the word count for each section word_counts = [len(section.split()) for section in sections] # Check if any section exceeds the target word count for i, count in enumerate(word_counts): if count > 200: return f"Warning: Section {i + 1} exceeds the target word count. You may need to shorten this section." return script except Exception as e: error_message = f"Error: {e}" # Save error log to a file with open("./error_log.txt", "a") as log_file: log_file.write(error_message + "\n") return error_message # Gradio interface setup... iface = gr.Interface(fn=generate_script, inputs=[gr.Textbox(label="Host Name", value="John"), gr.Textbox(label="Listener Location", value="City"), gr.Textbox(label="Causes Climate Change", value="human activities"), gr.Number(label="CO2 Level", value=400), gr.Textbox(label="Effects Climate Change", value="rising temperatures"), gr.Number(label="Sea Level Rise", value=0.1), gr.Number(label="Warming Rate", value=0.2), gr.Textbox(label="Potential Solutions", value="renewable energy"), gr.Textbox(label="Individual Role", value="reduce carbon footprint"), gr.Textbox(label="Call To Action", value="act now")], outputs="text") # Launch the interface iface.launch(debug=True)