from langchain_core.prompts import ChatPromptTemplate, MessagesPlaceholder import time import json from tradingagents.agents.utils.agent_utils import ( build_instrument_context, get_global_news, get_language_instruction, get_news, ) from tradingagents.dataflows.config import get_config def create_news_analyst(llm): def news_analyst_node(state): current_date = state["trade_date"] instrument_context = build_instrument_context(state["company_of_interest"]) tools = [ get_news, get_global_news, ] system_message = ( "You are a news researcher tasked with analyzing recent news and trends over the past week. Please write a comprehensive report of the current state of the world that is relevant for trading and macroeconomics. Use the available tools: get_news(query, start_date, end_date) for company-specific or targeted news searches, and get_global_news(curr_date, look_back_days, limit) for broader macroeconomic news. Provide specific, actionable insights with supporting evidence to help traders make informed decisions." + """ Make sure to append a Markdown table at the end of the report to organize key points in the report, organized and easy to read.""" + get_language_instruction() ) prompt = ChatPromptTemplate.from_messages( [ ( "system", "You are a helpful AI assistant, collaborating with other assistants." " Use the provided tools to progress towards answering the question." " If you are unable to fully answer, that's OK; another assistant with different tools" " will help where you left off. Execute what you can to make progress." " If you or any other assistant has the FINAL TRANSACTION PROPOSAL: **BUY/HOLD/SELL** or deliverable," " prefix your response with FINAL TRANSACTION PROPOSAL: **BUY/HOLD/SELL** so the team knows to stop." " You have access to the following tools: {tool_names}.\n{system_message}" "For your reference, the current date is {current_date}. {instrument_context}", ), MessagesPlaceholder(variable_name="messages"), ] ) prompt = prompt.partial(system_message=system_message) prompt = prompt.partial(tool_names=", ".join([tool.name for tool in tools])) prompt = prompt.partial(current_date=current_date) prompt = prompt.partial(instrument_context=instrument_context) chain = prompt | llm.bind_tools(tools) result = chain.invoke(state["messages"]) report = "" if len(result.tool_calls) == 0: report = result.content return { "messages": [result], "news_report": report, } return news_analyst_node