""" OmniMem Multimodal Memory Example Demonstrates storing and retrieving multimodal content (text + images). Prerequisites: pip install omnimem[visual] 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(): # Configure for multimodal usage config = OmniMemoryConfig() config.embedding.model_name = "all-MiniLM-L6-v2" config.embedding.embedding_dim = 384 config.embedding.visual_embedding_model = "UCSC-VLAA/openvision-vit-large-patch14-224" config.embedding.visual_embedding_dim = 768 orchestrator = OmniMemoryOrchestrator( config=config, data_dir="./multimodal_data", ) # Store text with image references orchestrator.add_text( "User showed a photo of their golden retriever Max playing in the park. " "image_caption: A golden retriever running through green grass with a tennis ball.", tags=["session_id:D1", "image_id:D1:IMG_001", "timestamp:2024-06-15"], ) orchestrator.add_text( "User discussed dog training techniques. Max has learned to sit, stay, and fetch. " "They use positive reinforcement with treats.", tags=["session_id:D1", "timestamp:2024-06-15"], ) orchestrator.add_text( "User shared another photo of Max at the beach. " "image_caption: A golden retriever swimming in ocean waves.", tags=["session_id:D2", "image_id:D2:IMG_001", "timestamp:2024-07-20"], ) # Query about the dog print("Q: What tricks has Max learned?") result = orchestrator.query("What tricks has Max learned?", top_k=5) for item in result.items[:2]: print(f" → {item.get('summary', '')[:120]}") print("\nQ: What does the user's dog look like?") result = orchestrator.query("What does the user's dog look like?", top_k=5) for item in result.items[:2]: print(f" → {item.get('summary', '')[:120]}") orchestrator.close() print("\nDone!") if __name__ == "__main__": main()