A Multivocal Literature Review of MLOps Tools and Features

Gilberto Recupito, Fabiano Pecorelli, Gemma Catolino, Sergio Moreschini, D. D. Nucci, Fabio Palomba, D. Tamburri
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引用次数: 4

Abstract

DevOps has become increasingly widespread, with companies employing its methods in different fields. In this context, MLOps automates Machine Learning pipelines by applying DevOps practices. Considering the high number of tools available and the high interest of the practitioners to be supported by tools to automate the steps of Machine Learning pipelines, little is known concerning MLOps tools and their functionalities. To this aim, we conducted a Multivocal Literature Review (MLR) to (i) extract tools that allow for and support the creation of MLOps pipelines and (ii) analyze their main characteristics and features to provide a comprehensive overview of their value. Overall, we investigate the functionalities of 13 MLOps Tools. Our results show that most MLOps Tools support the same features but apply different approaches that can bring different advantages, depending on user requirements.
MLOps工具和特征的多语种文献综述
DevOps已经变得越来越广泛,许多公司在不同的领域使用它的方法。在这种情况下,MLOps通过应用DevOps实践来自动化机器学习管道。考虑到大量可用的工具以及从业者对自动化机器学习管道步骤的工具的高度兴趣,关于MLOps工具及其功能的了解很少。为此,我们进行了多声文献综述(MLR),以(i)提取允许和支持创建MLOps管道的工具,(ii)分析其主要特征和特征,以提供对其价值的全面概述。总的来说,我们研究了13个MLOps工具的功能。我们的结果表明,大多数MLOps工具支持相同的功能,但根据用户需求,应用不同的方法可以带来不同的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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