Maintainability Challenges in ML: A Systematic Literature Review

Karthik Shivashankar, A. Martini
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引用次数: 2

Abstract

Background: As Machine Learning (ML) advances rapidly in many fields, it is being adopted by academics and businesses alike. However, ML has a number of different challenges in terms of maintenance not found in traditional software projects. Identifying what causes these maintainability challenges can help mitigate them early and continue delivering value in the long run without degrading ML performance. Aim: This study aims to identify and synthesise the maintainability challenges in different stages of the ML workflow and understand how these stages are interdependent and impact each other’s maintainability. Method: Using a systematic literature review, we screened more than 13000 papers, then selected and qualitatively analysed 56 of them. Results: (i) a catalogue of maintainability challenges in different stages of Data Engineering, Model Engineering workflows and the current challenges when building ML systems are discussed; (ii) a map of 13 maintainability challenges to different interdependent stages of ML that impact the overall workflow; (iii) Provided insights to developers of ML tools and researchers. Conclusions: In this study, practitioners and organisations will learn about maintainability challenges and their impact at different stages of ML workflow. This will enable them to avoid pitfalls and help to build a maintainable ML system. The implications and challenges will also serve as a basis for future research to strengthen our understanding of the ML system’s maintainability.
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机器学习中的可维护性挑战:系统文献综述
背景:随着机器学习(ML)在许多领域的迅速发展,它正在被学术界和企业界所采用。然而,ML在维护方面有许多不同的挑战,这在传统软件项目中是没有的。确定导致这些可维护性挑战的原因可以帮助尽早减轻这些挑战,并在不降低ML性能的情况下长期持续交付价值。目的:本研究旨在识别和综合机器学习工作流程不同阶段的可维护性挑战,并了解这些阶段是如何相互依赖并相互影响的。方法:采用系统文献综述的方法,从13000余篇文献中筛选出56篇进行定性分析。结果:(i)讨论了数据工程、模型工程工作流程不同阶段的可维护性挑战,以及构建ML系统时当前面临的挑战;(ii) 13个可维护性挑战的地图,这些挑战涉及机器学习的不同相互依存阶段,影响整个工作流程;(iii)为机器学习工具的开发人员和研究人员提供见解。结论:在本研究中,从业者和组织将了解可维护性挑战及其在ML工作流程不同阶段的影响。这将使他们能够避免陷阱,并有助于构建可维护的ML系统。这些影响和挑战也将作为未来研究的基础,以加强我们对机器学习系统可维护性的理解。
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