Towards an approach for cloud service composition in Multi-Cloud environment based QoS using deep Q-learning *

M. Boutarfa, R. Maamri, Mohammed Nassim Lacheheub
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Abstract

Cloud Computing is internet-based computing where resources are offered over the internet on-demand and based on Pay-as-you-go. The advantages of Cloud computing have encouraged many enterprises to migrate to it and adapt its services. Sometimes users’ requests are not met from only one cloud and to better satisfy users’ complex requirements in front of the huge number of cloud services, multiple services from the various cloud can be combined by using Cloud Service Composition (SC). SC is an NP-Hard problem divided into services selection and service composition. Few works have combined these two sub-problem for service composition in a Multi-cloud environment. In this paper, we propose an approach to Service Composition in a Multi-Cloud environment based on cooperative Agents to merge these two sub-problems. Such us, our approach combines DQL for obtaining the optimal composition with locale selection of atomic service for each abstract service.
基于深度q学习的多云环境下基于QoS的云服务组合方法*
云计算是基于互联网的计算,其中资源是通过互联网按需提供的,并基于现收现付。云计算的优势鼓励许多企业迁移到它并适应它的服务。有时用户的请求不能仅从一个云中得到满足,为了更好地满足用户在庞大的云服务面前的复杂需求,可以使用云服务组合(cloud Service Composition, SC)将来自各个云的多个服务组合在一起。SC是一个NP-Hard问题,分为服务选择和服务组合两部分。很少有作品将这两个子问题结合起来用于多云环境中的服务组合。在本文中,我们提出了一种基于协作代理的多云环境下的服务组合方法来合并这两个子问题。像我们这样,我们的方法将用于获得最佳组合的DQL与每个抽象服务的原子服务的语言环境选择相结合。
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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