地理分布式数据中心在QoS约束下的成本效益资源调度

M. Maswood, Robayet Nasim, A. Kassler, D. Medhi
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引用次数: 9

摘要

地理分布式数据中心(dc)越来越普遍,以便为现代应用程序不断增长的计算需求提供可伸缩性。当多个地理分布的数据中心为用户请求提供服务时,考虑到有足够的可用资源(例如CPU和带宽),确定选择哪个数据中心和服务器以最低成本满足需求是很重要的。这是一项复杂的任务,因为每个数据中心都有不同的运营成本,例如能源、碳排放和带宽成本。在本文中,我们开发了一个新的数学优化模型,指导决策者选择哪个数据中心,使用哪个服务器,使用哪个数据中心网关和网络路径来路由用户需求,以满足时变的计算,带宽和延迟需求。我们的模型基于虚拟网络的概念,虚拟网络在延迟等方面有不同的要求,我们将排队延迟建模为流量负载的函数。我们基于现实世界的数据中心位置、资源供应成本和典型需求模式进行了广泛的数值评估,显示了运营成本是如何随着流量负载而增加的,我们还分析了不同延迟界限对不同虚拟网络性能的影响。
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Cost-efficient resource scheduling under QoS constraints for geo-distributed data centers
Geo-distributed Data Centers (DCs) are increasingly common in order to provide scalability for increasing compute demands of modern applications. When multiple geo-distributed DCs serve user requests, it is important to determine which DC and server to select to fulfill the demand at minimum cost, given that enough resources are available in terms of e.g., CPU and bandwidth. This is a complex task since every DC has different operational costs due to e.g. energy, carbon emission, and bandwidth costs. In this paper, we develop a novel mathematical optimization model that guides the decision maker which DC to select, which server to use, and which DC gateway and network path to use to route the user demand in order to satisfy the time varying compute, bandwidth, and latency demands. Our model is based on the concept of virtual networks, which have different requirements in terms of e.g. latency, and we model the queuing delay as a function of the traffic load. Our extensive numerical evaluation, which is based on real-world DC locations, their resource provision costs, and typical demand patterns, shows how operational costs increase with the traffic load, and we analyze the impact of different latency bounds on the performance of different virtual networks.
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