from openai import OpenAI from .config import get_config def get_stock_news_openai(query, start_date, end_date): config = get_config() client = OpenAI(base_url=config["backend_url"]) response = client.responses.create( model=config["quick_think_llm"], input=[ { "role": "system", "content": [ { "type": "input_text", "text": f"Can you search Social Media for {query} from {start_date} to {end_date}? Make sure you only get the data posted during that period.", } ], } ], text={"format": {"type": "text"}}, reasoning={}, tools=[ { "type": "web_search_preview", "user_location": {"type": "approximate"}, "search_context_size": "low", } ], temperature=1, max_output_tokens=4096, top_p=1, store=True, ) return response.output[1].content[0].text def get_global_news_openai(curr_date, look_back_days=7, limit=5): config = get_config() client = OpenAI(base_url=config["backend_url"]) response = client.responses.create( model=config["quick_think_llm"], input=[ { "role": "system", "content": [ { "type": "input_text", "text": f"Can you search global or macroeconomics news from {look_back_days} days before {curr_date} to {curr_date} that would be informative for trading purposes? Make sure you only get the data posted during that period. Limit the results to {limit} articles.", } ], } ], text={"format": {"type": "text"}}, reasoning={}, tools=[ { "type": "web_search_preview", "user_location": {"type": "approximate"}, "search_context_size": "low", } ], temperature=1, max_output_tokens=4096, top_p=1, store=True, ) return response.output[1].content[0].text def get_fundamentals_openai(ticker, curr_date): config = get_config() client = OpenAI(base_url=config["backend_url"]) response = client.responses.create( model=config["quick_think_llm"], input=[ { "role": "system", "content": [ { "type": "input_text", "text": f"Can you search Fundamental for discussions on {ticker} during of the month before {curr_date} to the month of {curr_date}. Make sure you only get the data posted during that period. List as a table, with PE/PS/Cash flow/ etc", } ], } ], text={"format": {"type": "text"}}, reasoning={}, tools=[ { "type": "web_search_preview", "user_location": {"type": "approximate"}, "search_context_size": "low", } ], temperature=1, max_output_tokens=4096, top_p=1, store=True, ) return response.output[1].content[0].text