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Model-based System Identification for Cloud Services Analytics

机译:基于模型的云服务分析系统识别

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The issue of less-than-100% reliability and trustworthiness of third-party controlled cloud components (e.g., IaaS and SaaS components from different vendors) may lead to laxity in the QoS guarantees offered by a service-support system S to various applications. QoS laxity (i.e., SLA violations) may be inadvertent: say, due to the inability of system designers to model the impact of sub-system behaviors onto a deliverable QoS. Sometimes, QoS laxity may even be intentional: say, to reap revenue-oriented benefits by cheating on resource allocations and/or excessive statistical-sharing of system resources (e.g., VM cycles, number of servers). Our goal is to assess how well the internal mechanisms of S are geared to offer a required level of service to the applications. We use computational models of S to determine the optimal feasible resource schedules and verify how close is the actual system behavior to a model-computed 'gold-standard'. A cloud-based content distribution network (CDN) case study is described to illustrate our QoS assessment method.
机译:第三方控制云组分(例如,来自不同供应商的IAAS和SaaS组件)的不复比和可靠性的问题可能导致服务支持系统S提供的QoS保证中的松弛。 QoS Laxity(即,SLA违规)可能是无意的:例如,由于系统设计人员无法模拟子系统行为的影响到可交付的QoS。有时,QoS Laxity甚至可能是有意的:说,通过欺骗资源分配和/或过度统计分享系统资源(例如,VM周期,服务器数量)来获取营养合作效益。我们的目标是评估S的内部机制如何为应用程序提供所需的服务水平。我们使用S的计算模型来确定最佳可行的资源计划,并验证实际系统行为与模型计算的“金标”的关闭程度。描述了基于云的内容分发网络(CDN)案例研究来说明我们的QoS评估方法。

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