Personal LLM Agents: Insights and Survey about the Capability, Efficiency and Security
Yuanchun Li, Hao Wen, Weijun Wang, Xiangyu Li, Yizhen Yuan, Guohong, Liu, Jiacheng Liu, Wenxing Xu, Xiang Wang, Yi Sun, Rui Kong, Yile Wang,, Hanfei Geng, Jian Luan, Xuefeng Jin, Zilong Ye, Guanjing Xiong, Fan Zhang,, Xiang Li, Mengwei Xu, Zhijun Li, Peng Li, Yang Liu

TL;DR
This paper surveys the development of Personal LLM Agents, exploring their architecture, capabilities, efficiency, and security, highlighting recent advances and challenges in creating intelligent, personalized AI assistants.
Contribution
It provides the first comprehensive survey of Personal LLM Agents, analyzing their design, capabilities, and security challenges, and discusses solutions and future directions.
Findings
Personal LLM Agents integrate LLMs with personal data and devices.
Key challenges include ensuring security, efficiency, and intelligent capabilities.
Survey of solutions addressing these challenges.
Abstract
Since the advent of personal computing devices, intelligent personal assistants (IPAs) have been one of the key technologies that researchers and engineers have focused on, aiming to help users efficiently obtain information and execute tasks, and provide users with more intelligent, convenient, and rich interaction experiences. With the development of smartphones and IoT, computing and sensing devices have become ubiquitous, greatly expanding the boundaries of IPAs. However, due to the lack of capabilities such as user intent understanding, task planning, tool using, and personal data management etc., existing IPAs still have limited practicality and scalability. Recently, the emergence of foundation models, represented by large language models (LLMs), brings new opportunities for the development of IPAs. With the powerful semantic understanding and reasoning capabilities, LLM can…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques
MethodsFocus
