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首页> 外文期刊>Network and Service Management, IEEE Transactions on >Optimal Resource Provisioning and the Impact of Energy-Aware Load Aggregation for Dynamic Temporal Workloads in Data Centers
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Optimal Resource Provisioning and the Impact of Energy-Aware Load Aggregation for Dynamic Temporal Workloads in Data Centers

机译:最佳资源配置和能源感知负载聚合对数据中心中动态临时工作负载的影响

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摘要

An important goal of data center providers is to minimize their operational cost, which reflected through the wear-and-tear cost and the energy consumption cost. In this paper, we present optimization formulations to minimize the cost of ownership in terms of server energy consumption and serverwear-and-tear cost under three different data center server setups (homogeneous, heterogeneous, and hybrid hetero–homogeneous clusters) for dynamic temporal workloads. Our studies show that the homogeneous model takes significantly less computational time than the heterogeneous model (by an order of magnitude). To compute optimal configurations in near real time for large-scale data centers, we propose two modes for using our models: aggregation by maximum (preserves workload deadline) and aggregation by mean (relaxes workload deadline). In addition, we propose two aggregation methods for use in each of the two modes: static (periodic) aggregation and dynamic (aperiodic)aggregation. We found that in the aggregation by maximum mode, dynamic aggregation resulted in cost savings of up to approximately 18% over the static aggregation. In the aggregation by mean mode, dynamic aggregation saved up to approximately a 50% workload rearrangement compared with the static aggregationby mean mode.
机译:数据中心提供商的一个重要目标是最大程度地降低其运营成本,这可以通过损耗成本和能耗成本来体现。在本文中,我们针对动态时间负载在三种不同的数据中心服务器设置(均质,异构和混合异质-异构群集)下提出了优化公式,以在服务器能耗和服务器磨损成本方面将拥有成本降至最低。我们的研究表明,同质模型比异质模型花费的计算时间要少得多(一个数量级)。为了为大型数据中心近乎实时地计算最佳配置,我们提出了两种使用模型的模式:按最大聚合(保留工作负荷期限)和按平均聚合(放松工作负荷期限)。此外,我们提出了两种用于两种模式的聚合方法:静态(周期性)聚合和动态(非周期性)聚合。我们发现,在最大模式聚合中,动态聚合比静态聚合最多可节省约18%的成本。在平均聚合模式下,与静态聚合相比,动态聚合最多可节省约50%的工作负载重排。

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