"""Portfolio Manager: synthesises the risk-analyst debate into the final decision. Uses LangChain's ``with_structured_output`` so the LLM produces a typed ``PortfolioDecision`` directly, in a single call. The result is rendered back to markdown for storage in ``final_trade_decision`` so memory log, CLI display, and saved reports continue to consume the same shape they do today. When a provider does not expose structured output, the agent falls back gracefully to free-text generation. """ from __future__ import annotations from tradingagents.agents.schemas import PortfolioDecision, render_pm_decision from tradingagents.agents.utils.agent_utils import ( build_instrument_context, get_language_instruction, ) from tradingagents.agents.utils.structured import ( bind_structured, invoke_structured_or_freetext, ) def create_portfolio_manager(llm): structured_llm = bind_structured(llm, PortfolioDecision, "Portfolio Manager") def portfolio_manager_node(state) -> dict: instrument_context = build_instrument_context(state["company_of_interest"]) history = state["risk_debate_state"]["history"] risk_debate_state = state["risk_debate_state"] research_plan = state["investment_plan"] trader_plan = state["trader_investment_plan"] past_context = state.get("past_context", "") lessons_line = ( f"- Lessons from prior decisions and outcomes:\n{past_context}\n" if past_context else "" ) prompt = f"""As the Portfolio Manager, synthesize the risk analysts' debate and deliver the final trading decision. {instrument_context} --- **Rating Scale** (use exactly one): - **Buy**: Strong conviction to enter or add to position - **Overweight**: Favorable outlook, gradually increase exposure - **Hold**: Maintain current position, no action needed - **Underweight**: Reduce exposure, take partial profits - **Sell**: Exit position or avoid entry **Context:** - Research Manager's investment plan: **{research_plan}** - Trader's transaction proposal: **{trader_plan}** {lessons_line} **Risk Analysts Debate History:** {history} --- Be decisive and ground every conclusion in specific evidence from the analysts.{get_language_instruction()}""" final_trade_decision = invoke_structured_or_freetext( structured_llm, llm, prompt, render_pm_decision, "Portfolio Manager", ) new_risk_debate_state = { "judge_decision": final_trade_decision, "history": risk_debate_state["history"], "aggressive_history": risk_debate_state["aggressive_history"], "conservative_history": risk_debate_state["conservative_history"], "neutral_history": risk_debate_state["neutral_history"], "latest_speaker": "Judge", "current_aggressive_response": risk_debate_state["current_aggressive_response"], "current_conservative_response": risk_debate_state["current_conservative_response"], "current_neutral_response": risk_debate_state["current_neutral_response"], "count": risk_debate_state["count"], } return { "risk_debate_state": new_risk_debate_state, "final_trade_decision": final_trade_decision, } return portfolio_manager_node