AI Agents 相关度: 10/10

Agentic Tool Use in Large Language Models

Jinchao Hu, Meizhi Zhong, Kehai Chen, Xuefeng Bai, Min Zhang
arXiv: 2604.00835v1 发布: 2026-04-01 更新: 2026-04-01

AI 摘要

该论文综述了LLM工具使用方法,分析了不同范式的优缺点和评估方法,并提出了未来挑战。

主要贡献

  • 整理了LLM工具使用的三种范式:提示工程、监督学习和强化学习
  • 分析了各种工具使用方法的优势和局限性
  • 总结了LLM工具使用的评估方法和关键挑战

方法论

论文采用文献综述的方法,系统性地回顾和分析了现有LLM工具使用相关的研究工作。

原文摘要

Large language models are increasingly being deployed as autonomous agents yet their real world effectiveness depends on reliable tools for information retrieval, computation and external action. Existing studies remain fragmented across tasks, tool types, and training settings, lacking a unified view of how tool-use methods differ and evolve. This paper organizes the literature into three paradigms: prompting as plug-and-play, supervised tool learning and reward-driven tool policy learning, analyzes their methods, strengths and failure modes, reviews the evaluation landscape and highlights key challenges, aiming to address this fragmentation and provide a more structured evolutionary view of agentic tool use.

标签

LLM Agent Tool Use Literature Review

arXiv 分类

cs.CL