English

Toward Personalized LLM-Powered Agents: Foundations, Evaluation, and Future Directions

Artificial Intelligence 2026-03-17 v2

Abstract

Large language models have enabled agentic systems that reason, plan, and interact with tools and environments to accomplish complex tasks. As these agents operate over extended interaction horizons, their effectiveness increasingly depends on adapting behavior to individual users and maintaining continuity across interactions, giving rise to personalized LLM-powered agents (PLAs). In such long-term, user-dependent settings, personalization permeates the entire decision pipeline rather than remaining confined to surface-level response generation. This survey provides a capability-oriented review of personalized LLM-powered agents. Existing work is organized around four interdependent capabilities: profile modeling, memory, planning, and action execution. Using this taxonomy, representative methods are synthesized and analyzed to illustrate how user signals are represented, propagated, and utilized across the agent pipeline, highlighting cross-component interactions and recurring design challenges. Evaluation metrics and benchmarking paradigms tailored to personalized agents are further examined, along with application scenarios ranging from conversational assistants to domain-specific expert systems. By clarifying the design space of personalization in agent systems, this survey provides a structured foundation for developing more user-aligned, adaptive, and deployable LLM-powered agents.

Keywords

Cite

@article{arxiv.2602.22680,
  title  = {Toward Personalized LLM-Powered Agents: Foundations, Evaluation, and Future Directions},
  author = {Yue Xu and Qian Chen and Zizhan Ma and Dongrui Liu and Wenxuan Wang and Xiting Wang and Li Xiong and Wenjie Wang},
  journal= {arXiv preprint arXiv:2602.22680},
  year   = {2026}
}
R2 v1 2026-07-01T10:53:24.332Z