Yanxian Huang, Wanjun Zhong, Ensheng Shi, Min Yang, Jiachi Chen, Hui Li, Yuchi Ma, Qianxiang Wang, Zibin Zheng, Yanlin Wang
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引用次数: 0
摘要
近年来,大型语言模型(LLM)取得了显著的成就,并被广泛应用于各种下游任务,尤其是软件工程(SE)领域的任务。我们发现,许多将 LLM 与 SE 结合起来的研究都或明或暗地使用了代理的概念。然而,目前还缺乏深入的调查来梳理现有研究的发展脉络,分析现有研究如何结合基于 LLM 的代理技术来优化各种任务,并阐明基于 LLM 的代理在 SE 中的框架。在本文中,我们首次对基于 LLM 的代理与 SE 的结合研究进行了调查,并提出了基于 LLM 的代理在 SE 中的框架,其中包括三个关键模块:感知、记忆和行动。我们还总结了当前将这两个领域结合起来所面临的挑战,并针对现有挑战提出了未来的机遇。我们在 GitHub 上建立了一个相关论文库:https://github.com/DeepSoftwareAnalytics/Awesome-Agent4SE。
Agents in Software Engineering: Survey, Landscape, and Vision
In recent years, Large Language Models (LLMs) have achieved remarkable
success and have been widely used in various downstream tasks, especially in
the tasks of the software engineering (SE) field. We find that many studies
combining LLMs with SE have employed the concept of agents either explicitly or
implicitly. However, there is a lack of an in-depth survey to sort out the
development context of existing works, analyze how existing works combine the
LLM-based agent technologies to optimize various tasks, and clarify the
framework of LLM-based agents in SE. In this paper, we conduct the first survey
of the studies on combining LLM-based agents with SE and present a framework of
LLM-based agents in SE which includes three key modules: perception, memory,
and action. We also summarize the current challenges in combining the two
fields and propose future opportunities in response to existing challenges. We
maintain a GitHub repository of the related papers at:
https://github.com/DeepSoftwareAnalytics/Awesome-Agent4SE.