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arxiv:2601.11655

Advances and Frontiers of LLM-based Issue Resolution in Software Engineering: A Comprehensive Survey

Published on Jan 15
ยท Submitted by
Wei Tao
on Jan 21
#1 Paper of the day
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Abstract

Large language models face significant challenges in software issue resolution, prompting the development of autonomous coding agents through various training-free and training-based methodologies.

AI-generated summary

Issue resolution, a complex Software Engineering (SWE) task integral to real-world development, has emerged as a compelling challenge for artificial intelligence. The establishment of benchmarks like SWE-bench revealed this task as profoundly difficult for large language models, thereby significantly accelerating the evolution of autonomous coding agents. This paper presents a systematic survey of this emerging domain. We begin by examining data construction pipelines, covering automated collection and synthesis approaches. We then provide a comprehensive analysis of methodologies, spanning training-free frameworks with their modular components to training-based techniques, including supervised fine-tuning and reinforcement learning. Subsequently, we discuss critical analyses of data quality and agent behavior, alongside practical applications. Finally, we identify key challenges and outline promising directions for future research. An open-source repository is maintained at https://github.com/DeepSoftwareAnalytics/Awesome-Issue-Resolution to serve as a dynamic resource in this field.

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๐Ÿš€ Awesome issue resolution: a comprehensive survey!
This paper surveyed 175+ works to construct the first unified taxonomy serving as the comprehensive roadmap for issue resolution.

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