336 lines
10 KiB
Python
336 lines
10 KiB
Python
"""3-stage LLM Council orchestration."""
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from typing import List, Dict, Any, Tuple
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from .openrouter import query_models_parallel, query_model
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from .config import COUNCIL_MODELS, CHAIRMAN_MODEL
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async def stage1_collect_responses(user_query: str) -> List[Dict[str, Any]]:
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"""
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Stage 1: Collect individual responses from all council models.
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Args:
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user_query: The user's question
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Returns:
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List of dicts with 'model' and 'response' keys
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"""
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messages = [{"role": "user", "content": user_query}]
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# Query all models in parallel
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responses = await query_models_parallel(COUNCIL_MODELS, messages)
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# Format results
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stage1_results = []
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for model, response in responses.items():
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if response is not None: # Only include successful responses
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stage1_results.append({
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"model": model,
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"response": response.get('content', '')
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})
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return stage1_results
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async def stage2_collect_rankings(
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user_query: str,
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stage1_results: List[Dict[str, Any]]
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) -> Tuple[List[Dict[str, Any]], Dict[str, str]]:
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"""
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Stage 2: Each model ranks the anonymized responses.
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Args:
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user_query: The original user query
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stage1_results: Results from Stage 1
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Returns:
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Tuple of (rankings list, label_to_model mapping)
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"""
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# Create anonymized labels for responses (Response A, Response B, etc.)
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labels = [chr(65 + i) for i in range(len(stage1_results))] # A, B, C, ...
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# Create mapping from label to model name
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label_to_model = {
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f"Response {label}": result['model']
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for label, result in zip(labels, stage1_results)
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}
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# Build the ranking prompt
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responses_text = "\n\n".join([
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f"Response {label}:\n{result['response']}"
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for label, result in zip(labels, stage1_results)
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])
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ranking_prompt = f"""You are evaluating different responses to the following question:
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Question: {user_query}
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Here are the responses from different models (anonymized):
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{responses_text}
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Your task:
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1. First, evaluate each response individually. For each response, explain what it does well and what it does poorly.
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2. Then, at the very end of your response, provide a final ranking.
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IMPORTANT: Your final ranking MUST be formatted EXACTLY as follows:
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- Start with the line "FINAL RANKING:" (all caps, with colon)
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- Then list the responses from best to worst as a numbered list
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- Each line should be: number, period, space, then ONLY the response label (e.g., "1. Response A")
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- Do not add any other text or explanations in the ranking section
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Example of the correct format for your ENTIRE response:
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Response A provides good detail on X but misses Y...
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Response B is accurate but lacks depth on Z...
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Response C offers the most comprehensive answer...
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FINAL RANKING:
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1. Response C
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2. Response A
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3. Response B
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Now provide your evaluation and ranking:"""
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messages = [{"role": "user", "content": ranking_prompt}]
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# Get rankings from all council models in parallel
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responses = await query_models_parallel(COUNCIL_MODELS, messages)
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# Format results
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stage2_results = []
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for model, response in responses.items():
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if response is not None:
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full_text = response.get('content', '')
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parsed = parse_ranking_from_text(full_text)
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stage2_results.append({
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"model": model,
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"ranking": full_text,
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"parsed_ranking": parsed
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})
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return stage2_results, label_to_model
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async def stage3_synthesize_final(
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user_query: str,
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stage1_results: List[Dict[str, Any]],
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stage2_results: List[Dict[str, Any]]
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) -> Dict[str, Any]:
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"""
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Stage 3: Chairman synthesizes final response.
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Args:
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user_query: The original user query
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stage1_results: Individual model responses from Stage 1
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stage2_results: Rankings from Stage 2
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Returns:
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Dict with 'model' and 'response' keys
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"""
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# Build comprehensive context for chairman
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stage1_text = "\n\n".join([
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f"Model: {result['model']}\nResponse: {result['response']}"
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for result in stage1_results
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])
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stage2_text = "\n\n".join([
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f"Model: {result['model']}\nRanking: {result['ranking']}"
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for result in stage2_results
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])
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chairman_prompt = f"""You are the Chairman of an LLM Council. Multiple AI models have provided responses to a user's question, and then ranked each other's responses.
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Original Question: {user_query}
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STAGE 1 - Individual Responses:
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{stage1_text}
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STAGE 2 - Peer Rankings:
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{stage2_text}
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Your task as Chairman is to synthesize all of this information into a single, comprehensive, accurate answer to the user's original question. Consider:
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- The individual responses and their insights
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- The peer rankings and what they reveal about response quality
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- Any patterns of agreement or disagreement
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Provide a clear, well-reasoned final answer that represents the council's collective wisdom:"""
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messages = [{"role": "user", "content": chairman_prompt}]
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# Query the chairman model
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response = await query_model(CHAIRMAN_MODEL, messages)
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if response is None:
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# Fallback if chairman fails
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return {
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"model": CHAIRMAN_MODEL,
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"response": "Error: Unable to generate final synthesis."
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}
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return {
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"model": CHAIRMAN_MODEL,
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"response": response.get('content', '')
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}
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def parse_ranking_from_text(ranking_text: str) -> List[str]:
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"""
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Parse the FINAL RANKING section from the model's response.
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Args:
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ranking_text: The full text response from the model
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Returns:
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List of response labels in ranked order
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"""
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import re
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# Look for "FINAL RANKING:" section
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if "FINAL RANKING:" in ranking_text:
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# Extract everything after "FINAL RANKING:"
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parts = ranking_text.split("FINAL RANKING:")
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if len(parts) >= 2:
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ranking_section = parts[1]
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# Try to extract numbered list format (e.g., "1. Response A")
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# This pattern looks for: number, period, optional space, "Response X"
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numbered_matches = re.findall(r'\d+\.\s*Response [A-Z]', ranking_section)
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if numbered_matches:
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# Extract just the "Response X" part
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return [re.search(r'Response [A-Z]', m).group() for m in numbered_matches]
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# Fallback: Extract all "Response X" patterns in order
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matches = re.findall(r'Response [A-Z]', ranking_section)
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return matches
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# Fallback: try to find any "Response X" patterns in order
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matches = re.findall(r'Response [A-Z]', ranking_text)
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return matches
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def calculate_aggregate_rankings(
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stage2_results: List[Dict[str, Any]],
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label_to_model: Dict[str, str]
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) -> List[Dict[str, Any]]:
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"""
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Calculate aggregate rankings across all models.
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Args:
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stage2_results: Rankings from each model
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label_to_model: Mapping from anonymous labels to model names
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Returns:
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List of dicts with model name and average rank, sorted best to worst
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"""
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from collections import defaultdict
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# Track positions for each model
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model_positions = defaultdict(list)
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for ranking in stage2_results:
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ranking_text = ranking['ranking']
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# Parse the ranking from the structured format
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parsed_ranking = parse_ranking_from_text(ranking_text)
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for position, label in enumerate(parsed_ranking, start=1):
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if label in label_to_model:
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model_name = label_to_model[label]
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model_positions[model_name].append(position)
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# Calculate average position for each model
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aggregate = []
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for model, positions in model_positions.items():
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if positions:
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avg_rank = sum(positions) / len(positions)
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aggregate.append({
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"model": model,
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"average_rank": round(avg_rank, 2),
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"rankings_count": len(positions)
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})
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# Sort by average rank (lower is better)
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aggregate.sort(key=lambda x: x['average_rank'])
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return aggregate
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async def generate_conversation_title(user_query: str) -> str:
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"""
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Generate a short title for a conversation based on the first user message.
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Args:
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user_query: The first user message
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Returns:
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A short title (3-5 words)
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"""
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title_prompt = f"""Generate a very short title (3-5 words maximum) that summarizes the following question.
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The title should be concise and descriptive. Do not use quotes or punctuation in the title.
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Question: {user_query}
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Title:"""
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messages = [{"role": "user", "content": title_prompt}]
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# Use gemini-2.5-flash for title generation (fast and cheap)
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response = await query_model("google/gemini-2.5-flash", messages, timeout=30.0)
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if response is None:
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# Fallback to a generic title
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return "New Conversation"
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title = response.get('content', 'New Conversation').strip()
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# Clean up the title - remove quotes, limit length
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title = title.strip('"\'')
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# Truncate if too long
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if len(title) > 50:
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title = title[:47] + "..."
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return title
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async def run_full_council(user_query: str) -> Tuple[List, List, Dict, Dict]:
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"""
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Run the complete 3-stage council process.
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Args:
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user_query: The user's question
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Returns:
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Tuple of (stage1_results, stage2_results, stage3_result, metadata)
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"""
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# Stage 1: Collect individual responses
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stage1_results = await stage1_collect_responses(user_query)
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# If no models responded successfully, return error
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if not stage1_results:
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return [], [], {
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"model": "error",
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"response": "All models failed to respond. Please try again."
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}, {}
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# Stage 2: Collect rankings
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stage2_results, label_to_model = await stage2_collect_rankings(user_query, stage1_results)
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# Calculate aggregate rankings
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aggregate_rankings = calculate_aggregate_rankings(stage2_results, label_to_model)
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# Stage 3: Synthesize final answer
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stage3_result = await stage3_synthesize_final(
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user_query,
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stage1_results,
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stage2_results
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)
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# Prepare metadata
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metadata = {
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"label_to_model": label_to_model,
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"aggregate_rankings": aggregate_rankings
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}
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return stage1_results, stage2_results, stage3_result, metadata
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