AI RESEARCH

Trajectory-Informed Memory Generation for Self-Improving Agent Systems

arXiv CS.AI

ArXi:2603.10600v1 Announce Type: new LLM-powered agents face a persistent challenge: learning from their execution experiences to improve future performance. While agents can successfully complete many tasks, they often repeat inefficient patterns, fail to recover from similar errors, and miss opportunities to apply successful strategies from past executions. We present a novel framework for automatically extracting actionable learnings from agent execution trajectories and utilizing them to improve future performance through contextual memory retrieval.