A Grounded Memory System For Smart Personal Assistants
By: Felix Ocker , Jörg Deigmöller , Pavel Smirnov and more
Potential Business Impact:
AI remembers and understands things like people do.
A wide variety of agentic AI applications - ranging from cognitive assistants for dementia patients to robotics - demand a robust memory system grounded in reality. In this paper, we propose such a memory system consisting of three components. First, we combine Vision Language Models for image captioning and entity disambiguation with Large Language Models for consistent information extraction during perception. Second, the extracted information is represented in a memory consisting of a knowledge graph enhanced by vector embeddings to efficiently manage relational information. Third, we combine semantic search and graph query generation for question answering via Retrieval Augmented Generation. We illustrate the system's working and potential using a real-world example.
Similar Papers
Memoria: A Scalable Agentic Memory Framework for Personalized Conversational AI
Artificial Intelligence
Helps AI remember you and talk better.
AI Meets Brain: Memory Systems from Cognitive Neuroscience to Autonomous Agents
Computation and Language
Helps AI remember like humans do.
General Agentic Memory Via Deep Research
Computation and Language
AI remembers better, learns faster, and solves more problems.