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An Infrastructure Service Recommendation System for Cloud Applications with Real-time QoS Requirement Constraints

机译:具有实时QoS需求约束的云应用程序基础设施服务推荐系统

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摘要

The proliferation of cloud computing has revolutionized the hosting and delivery of Internet-based application services. However, with the constant launch of new cloud services and capabilities almost every month by both big (e.g., Amazon Web Service and Microsoft Azure) and small companies (e.g., Rackspace and Ninefold), decision makers (e.g., application developers and chief information officers) are likely to be overwhelmed by choices available. The decision-making problem is further complicated due to heterogeneous service configurations and application provisioning QoS constraints. To address this hard challenge, in our previous work, we developed a semiautomated, extensible, and ontology-based approach to infrastructure service discovery and selection only based on design-time constraints (e.g., the renting cost, the data center location, the service feature, etc.). In this paper, we extend our approach to include the real-time (run-time) QoS (the end-to-end message latency and the end-to-end message throughput) in the decision-making process. The hosting of next-generation applications in the domain of online interactive gaming, large-scale sensor analytics, and real-time mobile applications on cloud services necessitates the optimization of such real-time QoS constraints for meeting service-level agreements. To this end, we present a real-time QoS-aware multicriteria decision-making technique that builds over the well-known analytic hierarchy process method. The proposed technique is applicable to selecting Infrastructure as a Service (IaaS) cloud offers, and it allows users to define multiple design-time and real-time QoS constraints or requirements. These requirements are then matched against our knowledge base to compute the possible best fit combinations of cloud services at the IaaS layer. We conducted extensive experiments to prove the feasibility of our approach.
机译:云计算的激增彻底改变了基于Internet的应用程序服务的托管和交付。但是,随着大型公司(例如,Amazon Web Service和Microsoft Azure)和小型公司(例如,Rackspace和Ninefold),决策者(例如,应用程序开发人员和首席信息官)几乎每月都不断推出新的云服务和功能。 )可能会因可用的选择而淹没。由于异构服务配置和应用程序供应QoS约束,决策问题更加复杂。为了解决这个艰巨的挑战,在我们之前的工作中,我们仅根据设计时的约束条件(例如,租赁成本,数据中心位置,服务)开发了一种基于半自动化,可扩展且基于本体的基础结构服务发现和选择方法。功能等)。在本文中,我们将方法扩展为在决策过程中包括实时(运行时)QoS(端到端消息延迟和端到端消息吞吐量)。在在线互动游戏,大规模传感器分析和云服务上的实时移动应用程序领域中托管下一代应用程序,需要优化此类实时QoS约束以满足服务级别协议。为此,我们提出了一种基于QoS的实时多准则决策技术,该技术建立在众所周知的层次分析处理方法之上。所提出的技术适用于选择基础设施即服务(IaaS)云产品,并且它允许用户定义多个设计时和实时QoS约束或要求。然后,将这些要求与我们的知识库进行匹配,以在IaaS层计算云服务的可能最佳匹配组合。我们进行了广泛的实验以证明我们方法的可行性。

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