AI agent memory, learning and evolution mechanism: a comprehensive review in 2026
AI agent memory, learning and evolution mechanism: a comprehensive review in 2026
Zhenyu Zhang 1Jingling Weng 1Xiaozheng Lai1
作者信息
- 1. School of Computer Science and Engineering, South China University of Technology, Guangzhou 510641, China
- 折叠
摘要
In February 2026, AI Agent technology has entered the stage of complex systems with autonomous, persistent, and adaptive characteristics. 2025 will become the "Year of AI Agents", promoting the transformation of large language models into active task executors. Memory, learning, and evolution are the three core pillars supporting its intelligence. This article is based on academic and industry achievements from 2024 to early 2026, and systematically reviews three major dimensions of technological progress: the evolution of memory domain parsing vector databases to neural symbol hybrid architectures, and performance trade-offs of representative systems such as MemGPT; Exploring frameworks such as Reflexion in the field of learning to implement adaptive testing mechanisms through environmental feedback; The field of evolution reveals the operational principles of genetic algorithm capability transfer protocols, MemEvolve, and other technologies in multi-agent systems. At the same time, this article compared benchmark indicators such as LoCoMo to evaluate the current implementation status of top enterprises, and found that the production level AI Agent system integrating the three pillars is still in the early stages of exploration, and urgently needs to address challenges such as retrieval latency, catastrophic forgetting, and secure alignment.
Abstract
In February 2026, AI Agent technology has entered the stage of complex systems with autonomous, persistent, and adaptive characteristics. 2025 will become the "Year of AI Agents", promoting the transformation of large language models into active task executors. Memory, learning, and evolution are the three core pillars supporting its intelligence. This article is based on academic and industry achievements from 2024 to early 2026, and systematically reviews three major dimensions of technological progress: the evolution of memory domain parsing vector databases to neural symbol hybrid architectures, and performance trade-offs of representative systems such as MemGPT; Exploring frameworks such as Reflexion in the field of learning to implement adaptive testing mechanisms through environmental feedback; The field of evolution reveals the operational principles of genetic algorithm capability transfer protocols, MemEvolve, and other technologies in multi-agent systems. At the same time, this article compared benchmark indicators such as LoCoMo to evaluate the current implementation status of top enterprises, and found that the production level AI Agent system integrating the three pillars is still in the early stages of exploration, and urgently needs to address challenges such as retrieval latency, catastrophic forgetting, and secure alignment.关键词
AI agent/Long-term memory/Self-evolving/Meta-learning/Multi-agent systemsKey words
AI agent/Long-term memory/Self-evolving/Meta-learning/Multi-agent systems引用本文复制引用
Zhenyu Zhang,Jingling Weng,Xiaozheng Lai.AI agent memory, learning and evolution mechanism: a comprehensive review in 2026[EB/OL].(2026-03-04)[2026-03-06].https://chinaxiv.org/abs/202603.00024.学科分类
计算技术、计算机技术/自动化基础理论
评论