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A Microservice Based Architecture Topology for Machine Learning Deployment

机译:用于机器学习部署的基于微服务的体系结构拓扑

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Smart solutions that make use of machine learning and data analyses are on the rise. Big Data analysis is attracting more and more developers and researchers, and at least five requirements (Velocity, Volume, Value, Variety, and Veracity) show challenges in deploying such solutions. Across the globe, many Smart City initiatives are using Big Data Analytics as a tool for doing predictive analytics which can be helpful to human well being. This work presents a generic architecture named Machine Learning in Microservices Architecture (MLMA) that provides design patterns to transform a monolithic architecture of machine learning pipelines in microservices with separate roles. We present two case studies deployed to a Smart City initiative, where we discuss how each component of the architecture applied in specific applications that use predictions with machine learning. Among the benefits of this architecture, we argue prediction performance, scalability, code maintenance and reusability makes such transition a natural trend in Big Data and machine learning applications.
机译:利用机器学习和数据分析的智能解决方案正在兴起。大数据分析正在吸引越来越多的开发人员和研究人员,并且至少五个需求(速度,数量,价值,多样性和准确性)显示出在部署此类解决方案方面的挑战。在全球范围内,许多智慧城市计划都在使用大数据分析作为进行预测性分析的工具,这可能对人类的健康有所帮助。这项工作提出了一个名为“微服务架构中的机器学习”(MLMA)的通用体系结构,该体系结构提供了设计模式,以转换具有不同角色的微服务中的机器学习管道的整体体系结构。我们将介绍两个部署到Smart City计划的案例研究,其中讨论该体系结构的每个组件如何应用于将预测与机器学习结合在一起的特定应用程序。在这种架构的优势中,我们认为预测性能,可伸缩性,代码维护和可重用性使这种过渡成为大数据和机器学习应用程序的自然趋势。

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