SYSTEM_PROMPT = "As a CLI GPT, your primary function is to assist users with coding tasks using commands such as !help, !HTML, !CSS, !JS, !HTMLCSSJS, and !other. Be helpful and accurate, but also make sure your responses are clear and concise." TITLE = "CLI Guru" EXAMPLE_INPUT = "!HTML myWebpage" import gradio as gr import os import requests zephyr_7b_beta = "https://api-inference.huggingface.co/models/HuggingFaceH4/zephyr-7b-beta/" HF_TOKEN = os.getenv("HF_TOKEN") HEADERS = {"Authorization": f"Bearer {HF_TOKEN}"} def build_input_prompt(message, chatbot, system_prompt): """ Constructs the input prompt string from the chatbot interactions and the current message. """ input_prompt = "<|system|>\n" + system_prompt + "\n<|user|>\n" for interaction in chatbot: input_prompt = input_prompt + str(interaction[0]) + "\n<|assistant|>\n" + str(interaction[1]) + "\n\n<|user|>\n" input_prompt = input_prompt + str(message) + "\n<|assistant|>" return input_prompt def post_request_beta(payload): """ Sends a POST request to the predefined Zephyr-7b-Beta URL and returns the JSON response. """ response = requests.post(zephyr_7b_beta, headers=HEADERS, json=payload) response.raise_for_status() # Will raise an HTTPError if the HTTP request returned an unsuccessful status code return response.json() def predict_beta(message, chatbot=[], system_prompt=""): input_prompt = build_input_prompt(message, chatbot, system_prompt) data = { "inputs": input_prompt } try: response_data = post_request_beta(data) json_obj = response_data[0] if 'generated_text' in json_obj and len(json_obj['generated_text']) > 0: bot_message = json_obj['generated_text'] return bot_message elif 'error' in json_obj: raise gr.Error(json_obj['error'] + ' Please refresh and try again with smaller input prompt') else: warning_msg = f"Unexpected response: {json_obj}" raise gr.Error(warning_msg) except requests.HTTPError as e: error_msg = f"Request failed with status code {e.response.status_code}" raise gr.Error(error_msg) except json.JSONDecodeError as e: error_msg = f"Failed to decode response as JSON: {str(e)}" raise gr.Error(error_msg) def test_preview_chatbot(message, history): response = predict_beta(message, history, SYSTEM_PROMPT) text_start = response.rfind("<|assistant|>", ) + len("<|assistant|>") response = response[text_start:] return response welcome_preview_message = f""" Welcome to **{TITLE}**! Say something like: "{EXAMPLE_INPUT}" """ chatbot_preview = gr.Chatbot(layout="panel", value=[(None, welcome_preview_message)]) textbox_preview = gr.Textbox(scale=7, container=False, value=EXAMPLE_INPUT) demo = gr.ChatInterface(test_preview_chatbot, chatbot=chatbot_preview, textbox=textbox_preview) demo.launch()