高能量比例服务器的峰值效率感知调度

Daniel Wong
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引用次数: 35

摘要

在过去的十年中,数据中心服务器的能量比例已经得到了极大的改善,现在接近理想能量比例的服务器已经很常见了。这些高能量比例的服务器表现出独特的特性,即峰值效率不再与峰值利用率一致。在本文中,我们探讨了这一特性对数据中心调度的影响。我们发现,目前最先进的数据中心调度器不能有效地利用这些属性,从而导致低效的调度决策。我们提出了峰值效率感知调度(Peak Efficiency Aware Scheduling, PEAS),它可以在数据中心级别实现优于理想的能量比例。我们证明,与最先进的调度策略相比,豌豆可以将平均功耗降低25.5%,TCO提高3.0%。
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Peak Efficiency Aware Scheduling for Highly Energy Proportional Servers
Energy proportionality of data center severs have improved drastically over the past decade to the point where near ideal energy proportional servers are now common. These highly energy proportional servers exhibit the unique property where peak efficiency no longer coincides with peak utilization. In this paper, we explore the implications of this property on data center scheduling. We identified that current state of the art data center schedulers does not efficiently leverage these properties, leading to inefficient scheduling decisions. We propose Peak Efficiency Aware Scheduling (PEAS) which can achieve better-than-ideal energy proportionality at the data center level. We demonstrate that PEAS can reduce average power by 25.5% with 3.0% improvement to TCO compared to state-of-the-art scheduling policies.
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