Evaluation of Frameworks for MLOps and Microservices

Igor Urias, Rogério Rossi
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Abstract

Information Technology involves solutions for many kinds of industries and organizations, offering conditions for solving problems of different types and complexities. Artificial Intelligence, and more specifically applications that considers Machine Learning (ML) and Software Technology are part of these solutions for solving problems, including solutions for solving problems that involve smart cities approach. In order to present frameworks that deal with the operationalization of Machine Learning and Software technology, this article is based on the study and evaluation of frameworks that involve Machine Learning Operations (MLOps) and microservices. Specifically, three frameworks that integrate ML algorithms with microservices are evaluated based on a bibliographical review in scientific journals of relevance to the area. From an exploratory analysis of these frameworks, it was possible to highlight their main objectives, their benefits, and their ability to offer solutions that favor the large-scale use of Machine Learning algorithms in problem solving. The main results are highlighted in the article through a qualitative analysis that considers six evaluation criteria, such as: capacity for sharing resources, scope of use by users, and use in a cloud environment. The results achieved are satisfactory since the work allows, through a qualitative view of the evaluated frameworks, a perspective of how the integration of MLOps and microservices has been carried out, its benefits and possible results achieved through this integration.
mlop和微服务框架的评估
信息技术涉及多种行业和组织的解决方案,为解决不同类型和复杂性的问题提供了条件。人工智能,更具体地说,考虑机器学习(ML)和软件技术的应用程序是这些解决问题的解决方案的一部分,包括解决涉及智慧城市方法的问题的解决方案。为了介绍处理机器学习和软件技术操作化的框架,本文基于对涉及机器学习操作(MLOps)和微服务的框架的研究和评估。具体而言,基于与该领域相关的科学期刊的书目综述,对集成ML算法和微服务的三个框架进行了评估。通过对这些框架的探索性分析,可以突出它们的主要目标、好处,以及它们提供解决方案的能力,这些解决方案有利于大规模使用机器学习算法来解决问题。本文通过定性分析强调了主要结果,该分析考虑了六个评估标准,例如:共享资源的能力、用户使用的范围和在云环境中的使用。所取得的结果是令人满意的,因为通过对所评估框架的定性分析,我们可以看到mlop和微服务的集成是如何实现的、它的好处以及通过这种集成可能取得的结果。
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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