""" OmniMem Quickstart Example Demonstrates basic text memory operations: store conversations and query them. Prerequisites: pip install omnimem export OPENAI_API_KEY=your_key_here """ import os import sys sys.path.insert(0, os.path.join(os.path.dirname(__file__), "..")) from omni_memory import OmniMemoryOrchestrator, OmniMemoryConfig def main(): # 1. Create configuration config = OmniMemoryConfig() config.embedding.model_name = "all-MiniLM-L6-v2" # Local embedding (no API needed) config.embedding.embedding_dim = 384 # 2. Initialize orchestrator orchestrator = OmniMemoryOrchestrator( config=config, data_dir="./quickstart_data", ) # 3. Store conversation turns conversations = [ {"text": "User mentioned they love hiking in the Rocky Mountains every summer.", "tags": ["session_id:D1", "timestamp:2024-06-15"]}, {"text": "User discussed their new camera, a Sony A7IV, for landscape photography.", "tags": ["session_id:D1", "timestamp:2024-06-15"]}, {"text": "User planned a trip to Yellowstone National Park next month.", "tags": ["session_id:D2", "timestamp:2024-07-01"]}, {"text": "User bought a new telephoto lens (200-600mm) for wildlife photography.", "tags": ["session_id:D2", "timestamp:2024-07-01"]}, {"text": "User shared photos from their Yellowstone trip — saw grizzly bears and bison.", "tags": ["session_id:D3", "timestamp:2024-08-10"]}, ] print("Storing conversations...") for conv in conversations: orchestrator.add_text(conv["text"], tags=conv["tags"]) print(f"Stored {len(conversations)} conversation turns.\n") # 4. Query the memory queries = [ "What camera does the user have?", "Where did the user go hiking?", "What animals did the user see?", "What lens did the user buy?", ] for query in queries: print(f"Q: {query}") result = orchestrator.query(query, top_k=3) for item in result.items[:2]: summary = item.get("summary", "")[:100] print(f" → {summary}") print() # 5. Cleanup orchestrator.close() print("Done!") if __name__ == "__main__": main()