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Modeling the failures of power-aware data centers by leveraging heat recirculation

机译:通过利用热再循环来建立动力感知数据中心的故障

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With the explosive growth of data, hundreds of thousands of servers may be contained in a single data center. Hence, node failures are unavoidable and generally negatively effects the performance of the whole data center. Additionally, data centers with a large number of nodes will cause plenty of energy consumption. Many existing task scheduling techniques can effectively reduce the power consumption in data centers by considering heat recirculation. However, the traditional techniques do not take the situation of node failures into account. This paper proposes an airflow-based failure model for data centers by leveraging heat recirculation. In this model, the spatial distribution and time distribution of failures are considered. Furthermore, a genetic algorithm (GA) and a simulated annealing algorithm (SA) are implemented to evaluate the proposed failure model. Because the positions of node failures have a significant impact on the heat recirculation and the energy consumption of data centers, failures with different positions are analyzed and evaluated. The experimental results demonstrate that the energy consumption of data centers can be significantly reduced by using the GA and SA algorithms for task scheduling based on the proposed failure model.
机译:随着数据的爆炸性增长,单个数据中心可以包含数十万台服务器。因此,节点故障是不可避免的,并且通常对整个数据中心的性能产生负面影响。此外,具有大量节点的数据中心将导致充足的能耗。通过考虑热再循环,许多现有的任务调度技术可以有效地降低数据中心的功耗。但是,传统技术不会考虑节点故障的情况。本文提出了通过利用热再循环来提出基于气流的故障模型。在该模型中,考虑了失败的空间分布和时间分布。此外,实现了遗传算法(GA)和模拟退火算法(SA)以评估所提出的故障模型。因为节点故障的位置对热再循环产生重大影响和数据中心的能量消耗,因此分析和评估了具有不同位置的故障。实验结果表明,通过使用基于所提出的故障模型的任务调度,可以通过GA和SA算法显着降低数据中心的能量消耗。

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