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Minerva: A Portable Machine Learning Microservice Framework for Traditional Enterprise SaaS Applications

机译:MINERVA:便携式机器学习传统企业SAAS应用程序的微服务框架

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In traditional SaaS enterprise applications, microservices are an essential ingredient to deploy machine learning (ML) models successfully. In general, microservices result in efficiencies in software service design, development, and delivery. As they become ubiquitous in the redesign of monolithic software, with the addition of machine learning, the traditional applications are also becoming increasingly intelligent. Here, we propose a portable ML microservice framework Minerva (microservices container for applied ML) as an efficient way to modularize and deploy intelligent microservices in traditional “legacy” SaaS applications suite, especially in the enterprise domain. We identify and discuss the needs, challenges and architecture to incorporate ML microservices in such applications. Minerva’s design for optimal integration with legacy applications using microservices architecture leveraging lightweight infrastructure accelerates deploying ML models in such applications.
机译:在传统的SaaS企业应用中,微服务是成功部署机器学习(ML)模型的必要成分。通常,微服务导致软件服务设计,开发和交付中的效率。随着他们在单片软件重新设计中变得无处不在,随着机器学习的增加,传统的应用也变得越来越聪明。在这里,我们提出了一个便携式ML微服务框架Minerva(用于应用ML的MicroServices容器),是在传统的“遗留”SaaS应用程序套件中模块化和部署智能微服务的有效方法,尤其是在企业域中。我们识别并讨论在此类应用中加入ML微服务的需求,挑战和架构。 Minerva的设计,用于使用MicroServices架构利用MicroServices架构的Legacy应用程序的设计,利用轻量级基础架构加速在此类应用中部署ML模型。

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