基于机器学习的软件质量保证静态代码分析

E. Sultanow, André Ullrich, Stefan Konopik, Gergana Vladova
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引用次数: 4

摘要

机器学习通常与预测分析相关联,例如预测购买和终止行为,预测零件、工具或产品的维护时间或寿命。然而,机器学习还可以用于其他目的,例如识别公共部门关键任务的大规模IT流程中的潜在错误。根据错误的严重程度,延迟故障排除可能代价高昂——可能需要进行热修复。本文研究了一种方法,它特别适合在这样一个关键的环境中进行静态代码分析。为此,我们使用了一种专门开发的基于机器学习的方法,其中包括一个原型,该原型可以发现经典静态代码分析无法检测到的潜在故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning based Static Code Analysis for Software Quality Assurance
Machine Learning is often associated with predictive analytics, for example with the prediction of buying and termination behavior, with maintenance times or the lifespan of parts, tools or products. However, Machine Learning can also serve other purposes such as identifying potential errors in a mission-critical large-scale IT process of the public sector. A delay of troubleshooting can be expensive depending on the error's severity- a hotfix may become essential. This paper examines an approach, which is particularly suitable for Static Code Analysis in such a critical environment. For this, we utilize a specially developed Machine Learning based approach including a prototype that finds hidden potential for failure that classical Static Code Analysis does not detect.
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