AI RESEARCH

Useful Memories Become Faulty When Continuously Updated by LLMs

arXiv CS.AI

ArXi:2605.12978v1 Announce Type: new Learning from past experience benefits from two complementary forms of memory: episodic traces -- raw trajectories of what happened -- and consolidated abstractions distilled across many episodes into reusable, schema-like lessons. Recent agentic-memory systems pursue the consolidated form: an LLM rewrites past trajectories into a textual memory bank that it continuously updates with new interactions, promising self-improving agents without parameter updates.