Adaptation of Agentic AI: A Survey of Post-Training, Memory, and Skills
Pengcheng Jiang, Jiacheng Lin, Zhiyi Shi, Zifeng Wang, Luxi He, Yichen Wu, Ming Zhong, Peiyang Song, Qizheng Zhang, Heng Wang, Xueqiang Xu, Hanwen Xu, Pengrui Han, Dylan Zhang, Jiashuo Sun, Chaoqi Yang, Kun Qian, Tian Wang, Changran Hu, Manling Li, Quanzheng Li, Hao Peng

TL;DR
This survey reviews recent advances in agentic AI focusing on post-training adaptation, memory, and skills, organizing the field into a four-paradigm framework to analyze methods, trade-offs, and open challenges.
Contribution
It introduces a unified four-paradigm framework for understanding agent and tool adaptation in post-training AI, synthesizing diverse research areas.
Findings
Comparison of adaptation methods in cost and flexibility
Analysis of evaluation practices across domains
Identification of open problems in co-adaptation and safety
Abstract
Large language model (LLM) agents are moving beyond prompting alone. ChatGPT marked the rise of general-purpose LLM assistants, DeepSeek showed that on-policy reinforcement learning with verifiable rewards can improve reasoning and tool use, and OpenClaw highlights a newer direction in which agents accumulate persistent memory and reusable skills. Yet the research landscape remains fragmented across post-training, retrieval, memory, and skill systems. This survey studies these developments under a single notion of \emph{adaptation}: improving an agent, its tools, or their interaction after pretraining. We organize the field with a four-paradigm framework spanning agent adaptation and tool adaptation. On the agent side, A1 (tool-execution-signaled) and A2 (agent-output-signaled) improve the agent itself through supervised fine-tuning, preference optimization, and reinforcement learning…
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Taxonomy
TopicsReinforcement Learning in Robotics · AI-based Problem Solving and Planning · Advanced Software Engineering Methodologies
