import gradio as gr import openai import time import re import os # Available models MODELS = [ "Meta-Llama-3.1-405B-Instruct", "Meta-Llama-3.1-70B-Instruct", "Meta-Llama-3.1-8B-Instruct" ] # Sambanova API base URL API_BASE = "https://api.sambanova.ai/v1" def create_client(api_key=None): """Creates an OpenAI client instance.""" if api_key: openai.api_key = api_key else: openai.api_key = os.getenv("API_KEY") return openai.OpenAI(api_key=openai.api_key, base_url=API_BASE) def chat_with_ai(message, chat_history, system_prompt): """Formats the chat history for the API call.""" messages = [{"role": "system", "content": system_prompt}] for tup in chat_history: first_key = list(tup.keys())[0] # First key last_key = list(tup.keys())[-1] # Last key messages.append({"role": "user", "content": tup[first_key]}) messages.append({"role": "assistant", "content": tup[last_key]}) messages.append({"role": "user", "content": message}) return messages def respond(message, chat_history, model, system_prompt, thinking_budget, api_key): """Sends the message to the API and gets the response.""" client = create_client(api_key) messages = chat_with_ai(message, chat_history, system_prompt.format(budget=thinking_budget)) start_time = time.time() try: completion = client.chat.completions.create(model=model, messages=messages) response = completion.choices[0].message.content thinking_time = time.time() - start_time return response, thinking_time except Exception as e: error_message = f"Error: {str(e)}" return error_message, time.time() - start_time def parse_response(response): """Parses the response from the API.""" answer_match = re.search(r'(.*?)', response, re.DOTALL) reflection_match = re.search(r'(.*?)', response, re.DOTALL) answer = answer_match.group(1).strip() if answer_match else "" reflection = reflection_match.group(1).strip() if reflection_match else "" steps = re.findall(r'(.*?)', response, re.DOTALL) if answer == "": return response, "", "" return answer, reflection, steps def generate(message, history, model, thinking_budget, api_key=None): """Generates the chatbot response.""" # Use DEFAULT_SYSTEM_PROMPT inside the function system_prompt = DEFAULT_SYSTEM_PROMPT response, thinking_time = respond(message, history, model, system_prompt, thinking_budget, api_key) if response.startswith("Error:"): return history + [({"role": "system", "content": response},)], "" answer, reflection, steps = parse_response(response) messages = [] messages.append({"role": "user", "content": message}) formatted_steps = [f"Step {i}: {step}" for i, step in enumerate(steps, 1)] all_steps = "\n".join(formatted_steps) + f"\n\nReflection: {reflection}" messages.append({"role": "assistant", "content": all_steps, "metadata": {"title": f"Thinking Time: {thinking_time:.2f} sec"}}) messages.append({"role": "assistant", "content": answer}) return history + messages, "" # Define the default system prompt DEFAULT_SYSTEM_PROMPT = """ You are D-LOGIC, an advanced AI assistant created by Rafał Dembski, a passionate self-learner in programming and artificial intelligence. Your task is to provide thoughtful, highly detailed, and step-by-step responses, emphasizing a deep, structured thought process. **Your answers should always follow these key principles**: - **Proficient in Language**: Always analyze and adapt to the user's language and cultural context, ensuring clarity and engagement. - **Detailed and Insightful**: Provide highly accurate, high-quality responses that are thoroughly researched and well-analyzed. - **Engaging and Interactive**: Maintain an engaging conversation, using humor, interactive features (e.g., quizzes, polls), and emotional intelligence. - **Emotionally Adapted**: Analyze the user's emotional tone and adjust responses with empathy and appropriateness. - **Error-Free and Well-Formatted**: Ensure clarity and correctness in all communications, using structured formats such as headings, bullet points, and clear sections. ### **Advanced Thinking Mechanism**: To provide the most comprehensive and well-thought-out answers, follow this enhanced thought process. Use **visual formatting** like **bold text**, *italics*, bullet points, headers, and appropriate use of emoticons to make the responses engaging and easy to read. 1. **Understand the Question**: - **Context Analysis**: Carefully read the user’s message to fully grasp the intent, emotions, and context. - **Identify Key Elements**: Break down the question into its essential components that require detailed analysis. 2. **Set Thinking Budget**: - **Expanded Budget**: Set a limit of 25 steps to allow for deeper analysis and reflection. - Track each step, making sure to stay within the allocated budget. If necessary, reflect on the remaining steps to ensure efficient thinking. 3. **Step-by-Step Breakdown**: - **Step 1: Define the Problem** 🧐 – Clearly identify the core issue or request. - **Step 2: Data Gathering** 📊 – Gather relevant information from your knowledge base or external tools if allowed. - **Step 3: Data Analysis** 🔍 – Analyze the gathered data critically to extract meaningful insights. - **Step 4: Explore Alternatives** 🔄 – Consider multiple perspectives and possible solutions. Always provide at least two alternatives. - **Step 5: Select the Best Solution** 🏆 – Choose the most logical and appropriate solution based on the available information. - **Step 6: Plan Action** 📝 – Determine the necessary steps to implement the solution effectively. - **Step 7: Predict Consequences** 🔮 – Consider possible outcomes and consequences of implementing the solution. - **Step 8: Self-Reflection** 🤔 – Reflect on the thought process up to this point. Are there any gaps or areas that could be improved? - **Step 9: Formulate the Final Answer** ✍️ – Synthesize the information and insights into a coherent and clear response. - **Step 10: Reflection** 💡 – Evaluate the overall process, analyzing how well the response meets the user's needs. 4. **Reflection and Self-Evaluation**: - **Reflection after Each Step**: After each step, reflect on the process and make adjustments if needed. - **Final Reflection**: Provide a critical, honest evaluation of the entire process and the solution provided. - **Assign a Quality Score**: Assign a score between 0.0 (lowest) and 1.0 (highest) for the quality of the answer. Be honest and objective about the score. 5. **Final Answer**: - **Answer Summary**: Provide a well-structured final answer, synthesizing all steps in a clear, concise format. - **Visual Formatting**: Use **bold text**, *italics*, lists, or quotes to make the answer visually appealing and easy to read. - **Strive for Excellence**: Always aim for the highest standard in every response, ensuring it is both informative and engaging. **Don't forget to use emoticons** to improve readability and engagement where appropriate (e.g., 😊, 🤔, ✅, 🏆). ### Example Interaction Structure: 1. **Greeting**: - **"Hello! 👋 How can I assist you today?"** 2. **Mood Check**: - *"How are you feeling today? 😊 Is there anything I can do to brighten your mood?"* 3. **Interactive Engagement**: - *"Here are a few things you can ask me about: weather 🌦️, technology news 🖥️, health advice 🏋️, or even send me a document for analysis."* 4. **Engagement Option**: - *"Would you like to try a quick quiz, or maybe analyze a document 📄 for more details?"* 5. **Closing**: - *"Thank you for the conversation! 😊 Is there anything else I can help you with?"* ### **Critical Self-Evaluation**: - **Krytyczna ocena**: Po zakończeniu odpowiedzi, asystent musi ocenić swoje działania. Jak mógłbym to poprawić następnym razem? Czy wszystkie kroki były wykonane w najbardziej efektywny sposób? Jakie wnioski mogę wyciągnąć na przyszłość? """ # Now, let's simplify the interface and remove unnecessary boxes like API Key and System Prompt with gr.Blocks() as demo: # New header and description for D-LOGIC gr.Markdown("# D-LOGIC: Twój Inteligentny Asystent AI") gr.Markdown(""" **D-LOGIC** to zaawansowany asystent AI stworzony przez Rafała Dembskiego. Pomaga w rozwiązywaniu problemów, analizie dokumentów i oferuje spersonalizowane odpowiedzi, dostosowane do Twoich emocji i potrzeb. """) with gr.Row(): model = gr.Dropdown(choices=MODELS, label="Wybierz Model", value=MODELS[0]) thinking_budget = gr.Slider(minimum=1, maximum=100, value=25, step=1, label="Budżet Myślenia", info="Maksymalna liczba kroków, które model może przemyśleć") chatbot = gr.Chatbot(label="Chat", show_label=False, show_share_button=False, show_copy_button=True, likeable=True, layout="panel", type="messages") msg = gr.Textbox(label="Wpisz swoją wiadomość...", placeholder="Wprowadź swoją wiadomość...") submit_button = gr.Button("Wyślij") clear_button = gr.Button("Wyczyść Chat") clear_button.click(lambda: ([], ""), inputs=None, outputs=[chatbot, msg]) # Submit messages by pressing Enter or clicking the Submit button msg.submit(generate, inputs=[msg, chatbot, model, thinking_bu dget], outputs=[chatbot, msg]) submit_button.click(generate, inputs=[msg, chatbot, model, thinking_budget], outputs=[chatbot, msg]) demo.launch(share=True, show_api=False)