import asyncio import os import pathlib import cognee from cognee import SearchType from cognee.shared.logging_utils import ERROR, setup_logging # Prerequisites: # 1. Copy `.env.template` and rename it to `.env`. # 2. Add your OpenAI API key to the `.env` file in the `LLM_API_KEY` field: # LLM_API_KEY = "your_key_here" async def main(): # Create a clean slate for cognee -- reset data and system state await cognee.forget(everything=True) # cognee knowledge graph will be created based on the text # and description of these files mp3_file_path = os.path.join( pathlib.Path(__file__).parent, "data/text_to_speech.mp3", ) png_file_path = os.path.join( pathlib.Path(__file__).parent, "data/example.png", ) # Remember the files and create knowledge graph memory await cognee.remember([mp3_file_path, png_file_path], self_improvement=False) # Query cognee for summaries of the data in the multimedia files search_results = await cognee.recall( query_type=SearchType.SUMMARIES, query_text="What is in the multimedia files?", ) # Display search results for result_text in search_results: print(result_text) if __name__ == "__main__": logger = setup_logging(log_level=ERROR) asyncio.run(main())