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Large Model Based Agents: State-of-the-Art, Cooperation Paradigms, Security and Privacy, and Future Trends

arXiv.org

With the rapid advancement of large models (LMs), the development of general-purpose intelligent agents powered by LMs has become a reality. It is foreseeable that in the near future, LM-driven general AI agents will serve as essential tools in production tasks, capable of autonomous communication and collaboration without human intervention. This paper investigates scenarios involving the autonomous collaboration of future LM agents. We review the current state of LM agents, the key technologies enabling LM agent collaboration, and the security and privacy challenges they face during cooperative operations. To this end, we first explore the foundational principles of LM agents, including their general architecture, key components, enabling technologies, and modern applications. We then discuss practical collaboration paradigms from data, computation, and knowledge perspectives to achieve connected intelligence among LM agents. After that, we analyze the security vulnerabilities and privacy risks associated with LM agents, particularly in multi-agent settings, examining underlying mechanisms and reviewing current and potential countermeasures. Lastly, we propose future research directions for building robust and secure LM agent ecosystems.

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基於大型模型的代理:最新技術、協作範式、安全與隱私,及未來趨勢

arXiv.org
17 天前

AI 生成摘要

本文探討了基於大型模型(LM)的代理的最新技術,審視了其基礎原理、實現自主協作的關鍵技術,以及它們在協作營運中所面臨的安全與隱私挑戰。此外,本文還提出了建立穩健且安全的 LM 代理生態系統的未來研究方向。

基於大型模型的代理:最先進技術、合作範式、安全與隱私,以及未來趨勢

電腦科學 > 人工智慧

標題:基於大型模型的代理:最先進技術、合作範式、安全與隱私,以及未來趨勢

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