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Empirical Analysis of Hidden Technical Debt Patterns in Machine Learning Software

机译:机器学习软件隐藏技术债务模式的实证分析

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[Context/Background] Machine Learning (ML) software has special ability for increasing technical debt due to ML-specific issues besides having all the problems of regular code. The term "Hidden Technical Debt" (HTD) was coined by Sculley et al. to address maintainability issues in ML software as an analogy to technical debt in traditional software. [Goal] The aim of this paper is to empirically analyse how HTD patterns emerge during the early development phase of ML software, namely the prototyping phase. [Method] Therefore, we conducted a case study with subject systems as ML models planned to be integrated into the software system owned by Vasttrafik, the public transportation agency in the west area of Sweden. [Results] During our case study, we could detect HTD patterns, which have the potential to emerge in ML prototypes, except for "Legacy Features", "Correlated features", and "Plain Old Data Type Smell". [Conclusion] Preliminary results indicate that emergence of significant amount of HTD patterns can occur during prototyping phase. However, generalizability of our results require analyses of further ML systems from various domains.
机译:[上下文/背景]机器学习(ML)软件具有由于具有普遍代码的所有问题而导致的ML特定问题的特殊能力提高技术债务。术语“隐藏的技术债务”(HTD)由Sculley等人创造。解决ML软件中的可维护性问题作为传统软件中的技术债务。 [目标]本文的目的是经验分析HTD模式在ML软件的早期发育阶段如何出现,即原型化阶段。 [方法]因此,我们进行了一个案例研究,以ML模型计划纳入瑞典西部地区的公共交通机构所拥有的软件系统。 [结果]在我们的案例研究期间,我们可以检测到HTD模式,这些模式具有潜在的ML原型,除了“遗留特征”,“相关特征”和“普通旧数据类型气味”。 [结论]初步结果表明,在原型化阶段期间可能发生大量HTD模式的出现。然而,我们的结果的普遍性需要分析来自各个域的其他ML系统。

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