Enhancing Code Quality with Generative AI: Boosting Developer Warning Compliance
Enhancing Code Quality with Generative AI: Boosting Developer Warning Compliance
Programmers have long ignored warnings, especially those generated by static analysis tools, due to the potential for false-positives. In some cases, warnings may be indicative of larger issues, but programmers may not understand how a seemingly unimportant warning can grow into a vulnerability. Because these messages tend to be long and confusing, programmers tend to ignore them if they do not cause readily identifiable issues. Large language models can simplify these warnings, explain the gravity of important warnings, and suggest potential fixes to increase developer compliance with fixing warnings.
Hansen Chang、Christian DeLozier
计算技术、计算机技术
Hansen Chang,Christian DeLozier.Enhancing Code Quality with Generative AI: Boosting Developer Warning Compliance[EB/OL].(2025-05-16)[2025-06-06].https://arxiv.org/abs/2505.11677.点此复制
评论