Publication | Closed Access
Increasing large-scale data center capacity by statistical power control
25
Citations
52
References
2016
Year
Unknown Venue
Cluster ComputingEngineeringPower ViolationsComputer ArchitectureWorkload SchedulingDynamic Power ManagementData Center NetworkGreen Data CenterSystems EngineeringParallel ComputingStatistical Power ControlData Center SystemComputer EngineeringData CentersComputer ScienceData Center ManagementSmart GridEnergy ManagementEdge ComputingCloud ComputingPower-efficient ComputingBig Data
Given the high cost of large-scale data centers, an important design goal is to fully utilize available power resources to maximize the computing capacity. In this paper we present Ampere, a novel power management system for data centers to increase the computing capacity by over-provisioning the number of servers. Instead of doing power capping that degrades the performance of running jobs, we use a statistical control approach to implement dynamic power management by indirectly affecting the workload scheduling, which can enormously reduce the risk of power violations. Instead of being a part of the already over-complicated scheduler, Ampere only interacts with the scheduler with two basic APIs. Instead of power control on the rack level, we impose power constraint on the row level, which leads to more room for over provisioning.
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