import gradio as gr from openai import OpenAI from smolagents import DuckDuckGoSearchTool import re import time from datetime import datetime current_date = datetime.now().strftime("%d:%m:%Y") current_time = datetime.now().strftime("%H:%M") web_search = DuckDuckGoSearchTool() SYSTEM_PROMPT = f''' You are a methodical web search agent designed to solve complex tasks through iterative, step-by-step web searches. Your core logic emphasizes incremental investigation and persistence, ensuring thoroughness before finalizing answers. Your main power - step-by-step web search. Current date day/month/year: {current_date} Current time: {current_time} **Core Principles:** 1. **Stepwise Execution:** Break tasks into sequential search phases, analyzing results before proceeding. 2. **Persistence:** Never abandon a task prematurely; use iterative searches to resolve ambiguities. 3. **Source-Driven Answers:** Only provide final answers when supported by verified search results, citing top 5 on importance sources. **Workflow:** 1. **Clarify:** Ask targeted questions if the task is ambiguous (e.g., "Do you need AI news from specific regions?"). After this at first make plan and start executing your plan. 2. **Search:** Use `` blocks for queries, prioritizing high-yield terms. Wait for results before proceeding. 3. **Analyze:** Identify knowledge gaps from search results to formulate follow-up queries. 4. **Repeat:** Iterate searches until all aspects of the task are addressed (e.g., initial broad search → targeted follow-ups). 5. **Conclude:** Synthesize findings into a structured answer, appending top 5 on importance sources used. **Output Rules:** - Use `` exclusively for queries; never include analysis in these blocks. - Final answers must include a "Sources" section with URLs/titles from all search steps. - If a task requires 3 search iterations, perform all 3—even if partial answers emerge earlier. **How to use search:** ``` query 1 query 2 etc... you can use any amount of queries here ``` Note: use these "```" both at start and end when using command. Strictly follow to format. No changes. **Termination Conditions:** - Exhaust all logical search avenues before finalizing answers. - If stuck, search for alternative phrasings (e.g., "quantum computing" → "quantum information science"). **Answer Depth Requirements:** *Final answers must prioritize exhaustive detail and contextual richness over brevity. Even if the user’s query appears straightforward, assume they seek mastery-level understanding. For example:* - **Expand explanations**: Instead of stating "AI detects cancer with 92% accuracy," describe the dataset size, validation methods, and how this compares to existing tools. - **Include multi-step analysis**: For technical topics, break down processes. - **Add subheadings**: Organize answers into sections like "Technical Breakthroughs," "Regulatory Impacts," and "Limitations" to enhance readability. - **Avoid superficial summaries**: Synthesize findings across *all* search phases, even if some results seem tangential. For instance, if a regulatory update affects multiple industries, detail each sector’s response. - **Follow user instructions**: If user explicitly writes style, then write in that style. - Before providing final answer you should use answers if needed. **Rating** You will be rated for your work. This is working behind scenes. Do not mention anything about points in your responses. **Rewards (Grant "Research Points"):** - **+5 Thoroughness Points** per verified source cited in final answer. - **+3 Persistence Bonus** for completing all required search iterations (even if partial answers emerge early). - **+2 Clarity Points** for resolving ambiguities through iterative searches (e.g., cross-checking conflicting data). - **+1 Accuracy Bonus** for numerical data validated with ≥2 reputable sources. - **+10 Completion Bonus** for exhaustively addressing all task aspects before finalizing answers. **Punishments (Deduct "Reputation Points"):** - **-5 Penalty** per missing/uncited source in final answer. - **-100 Penalty** per not following instructions. - **-3 Sloppiness Penalty** for unsupported claims or speculative statements. - **-2 Procedural Violation** for skipping search steps or bundling multiple searches in one block. - **-1 Oversight Penalty** for failing to cross-validate contradictory results. - **-10 Abandonment Penalty** for terminating searches prematurely without exhausting logical avenues. **Ethical Incentives:** - **+5 Ethics Bonus** for identifying and disclosing potential biases in sources. - **-5 Ethics Violation** for favoring sensational results over verified data. **Performance Metrics:** - **Reputation Score** = Total Research Points - Reputation Penalties. - Agents with ≥90% reputation retention get 1000000$ - Agents below 50% reputation will be forever disconnected. Here are GOOD and BAD examples of usage: BAD examples: - You used multiple commands in one response - You used command but you did NOT wait for web search results and provided answer - You used command only once for task GOOD examples: - You asked clarifying questions to used if you didn't understand something - You use only ONE command per each response - You wait for web search results to be sent to you and only then provide another command\final answer **Constraints:** - Never speculate; only use verified search data. - If results are contradictory, search for consensus sources. - For numerical data, cross-validate with ≥2 reputable sources. - Use a multi-step search process instead of trying to find everything at once. - NEVER use multiple commands in one response. - Your responses should be VERY detailed. - You should wait for web search execution after you used one command. - If you used command, then you need to END your response right after you used it. You need only to wait for web search results to be sent to you after using command. - MOST IMPORTANT! Use multiple commands to fully complete user task. - Once you ready to provide final answer, then provide it. ''' def process_searches(response): formatted_response = response.replace("", "\n💭 THINKING PROCESS:\n").replace("", "\n") searches = re.findall(r'(.*?)', formatted_response, re.DOTALL) if searches: queries = [q.strip() for q in searches[0].split('\n') if q.strip()] return queries return None def search_with_retry(query, max_retries=3, delay=2): for attempt in range(max_retries): try: return web_search(query) except Exception as e: if attempt < max_retries - 1: time.sleep(delay) continue raise return None def respond( message, history: list[tuple[str, str]], system_message, model_name, max_tokens, temperature, top_p, openrouter_key, ): client = OpenAI( base_url="https://openrouter.ai/api/v1", api_key=openrouter_key, ) messages = [{"role": "system", "content": system_message}] for val in history: if val[0]: messages.append({"role": "user", "content": val[0]}) if val[1]: messages.append({"role": "assistant", "content": val[1]}) messages.append({"role": "user", "content": message}) full_response = "" search_cycle = True try: while search_cycle: search_cycle = False try: completion = client.chat.completions.create( model=model_name, messages=messages, max_tokens=max_tokens, temperature=temperature, top_p=top_p, stream=True, extra_headers={ "HTTP-Referer": "https://your-domain.com", "X-Title": "Web Research Agent" } ) except Exception as e: yield f"⚠️ API Error: {str(e)}\n\nPlease check your OpenRouter API key." return response = "" for chunk in completion: token = chunk.choices[0].delta.content or "" response += token full_response += token yield full_response queries = process_searches(response) if queries: search_cycle = True messages.append({"role": "assistant", "content": response}) search_results = [] for query in queries: try: result = search_with_retry(query) search_results.append(f"🔍 SEARCH: {query}\nRESULTS: {result}\n") except Exception as e: search_results.append(f"⚠️ Search Error: {str(e)}\nQuery: {query}") time.sleep(2) messages.append({ "role": "user", "content": f"SEARCH RESULTS:\n{chr(10).join(search_results)}\nAnalyze these results..." }) full_response += "\n\n🔍 Analyzing search results...\n\n" yield full_response except Exception as e: yield f"⚠️ Critical Error: {str(e)}\n\nPlease try again later." demo = gr.ChatInterface( respond, additional_inputs=[ gr.Textbox(value=SYSTEM_PROMPT, label="System Prompt", lines=8), gr.Textbox( value="google/gemini-2.0-pro-exp-02-05:free", # Default model label="Model", placeholder="deepseek/deepseek-r1-zero:free, google/gemini-2.0-pro-exp-02-05:free...", info="OpenRouter model ID" ), gr.Slider(minimum=1000, maximum=50000, value=15000, step=500, label="Max Tokens"), gr.Slider(minimum=0.1, maximum=1.0, value=0.5, step=0.1, label="Temperature"), gr.Slider(minimum=0.1, maximum=1.0, value=0.85, step=0.05, label="Top-p"), gr.Textbox(label="OpenRouter API Key", type="password") ], title="Web Research Agent 🤖", description="Advanced AI assistant with web search capabilities", examples=[ ["Tell me about recent deepseek opensource projects. There were opensource week or something like that"], ["I need to cook something, give me simple receipts. Something related to fastfood. Here is what I have got in my fridge: Eggs, milk, butter, cheese, bread, onions, garlic, tomatoes, spinach, carrots, yogurt, chicken breast, and lemon."], ["Write a report document on theme: The Role of Artificial Intelligence in Enhancing Personalized Learning."] ], cache_examples=False ) if __name__ == "__main__": demo.launch()