From Storage to Experience: A Survey on the Evolution of LLM Agent Memory Mechanisms
Abstract
Large language model agents rely on memory mechanisms that evolve through three stages—storage, reflection, and experience—driven by consistency, dynamic environments, and continual learning goals.
Large Language Model (LLM)-based agents have fundamentally reshaped artificial intelligence by integrating external tools and planning capabilities. While memory mechanisms have emerged as the architectural cornerstone of these systems, current research remains fragmented, oscillating between operating system engineering and cognitive science. This theoretical divide prevents a unified view of technological synthesis and a coherent evolutionary perspective. To bridge this gap, this survey proposes a novel evolutionary framework for LLM agent memory mechanisms, formalizing the development process into three stages: Storage (trajectory preservation), Reflection (trajectory refinement), and Experience (trajectory abstraction). We first formally define these three stages before analyzing the three core drivers of this evolution: the necessity for long-range consistency, the challenges in dynamic environments, and the ultimate goal of continual learning. Furthermore, we specifically explore two transformative mechanisms in the frontier Experience stage: proactive exploration and cross-trajectory abstraction. By synthesizing these disparate views, this work offers robust design principles and a clear roadmap for the development of next-generation LLM agents.
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An evolutionary framework is proposed for LLM agent memory that unifies fragmented research into three stages—Storage (save trajectories), Reflection (refine them), and Experience (abstract them)—driven by the need for long-range consistency, dynamic adaptation, and continual learning. Two frontier mechanisms are spotlighted in the Experience stage (proactive exploration and cross-trajectory abstraction) to provide design principles for next-generation agents.
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