import openai import transformers import gradio as gr # Set up the OpenAI API client openai.api_key = "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" # Define the chat function for OpenAI API def openai_chat(api_key, model, message): # Check if an API key has been provided if api_key is None: return "Please enter your OpenAI API key and try again." # Set up the OpenAI API request response = openai.Completion.create( engine=model, prompt=message, max_tokens=1024, n=1, stop=None, temperature=0.5, api_key=api_key, ) # Extract the bot's response from the API request bot_response = response.choices[0].text.strip() return bot_response # Define the chat function for Hugging Face API def hf_chat(model_name, message): # Load the model and tokenizer model = transformers.pipeline("text-generation", model=model_name) # Generate a response from the model bot_response = model(message, max_length=1024, do_sample=True, temperature=0.7)[0]["generated_text"] return bot_response # Define the Gradio interface for chatbot api_key_input = gr.inputs.Textbox(label="OpenAI API Key", default=None, block="sidebar") model_input = gr.inputs.Dropdown( label="Select OpenAI model", choices=["davinci", "curie", "babbage"], default="davinci", block="sidebar" ) hf_model_input = gr.inputs.Dropdown( label="Select Hugging Face model", choices=["microsoft/DialoGPT-large", "Salesforce/codegen-2B-multi", "microsoft/DialoGPT-small"], default="microsoft/DialoGPT-large", block="sidebar" ) mode_input = gr.inputs.Dropdown( label="Select chatbot mode", choices=["OpenAI", "Hugging Face"], default="OpenAI", block="sidebar" ) message_input = gr.inputs.Textbox(label="Enter your message here", block="input") output = gr.outputs.Textbox(label="Bot response", block="output") # Define the chat window chat_window = [] def chatbot(chat_window, message, mode, model, hf_model, api_key, send_button, clear_button): if clear_button: chat_window.clear() return "Chat history cleared." if send_button: if message: if mode == "Hugging Face": bot_response = hf_chat(hf_model, message) else: bot_response = openai_chat(api_key, model, message) chat_window.append(("User", message)) chat_window.append(("Bot", bot_response)) return "\n".join([f"{name}: {text}" for name, text in chat_window]) # Define the Gradio interface for chatbot send_button = gr.inputs.Button(label="Send") clear_button = gr.inputs.Button(label="Clear Chat History") chat_interface = gr.Interface( fn=chatbot, inputs=[ message_input, mode_input, model_input, hf_model_input, api_key_input, send_button, clear_button ], outputs=output, title="Chatbot", description="Enter your message below to chat with an AI", theme="compact", allow_flagging=False, allow_screenshot=False, allow_share=False, layout="vertical" ) # Launch the page chat_interface.launch()