Energy Efficient Real-Time Task Scheduling On Cpu-Gpu Hybrid Clusters

IEEE INFOCOM 2017 - IEEE CONFERENCE ON COMPUTER COMMUNICATIONS(2017)

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摘要
Conserving the energy consumption of large data centers is of critical significance, where a few percent in consumption reduction translates into millions-dollar savings. This work studies energy conservation on emerging CPU-GPU hybrid clusters through dynamic voltage and frequency scaling (DVFS). We aim at minimizing the total energy consumption of processing a sequence of real-time tasks under deadline constraints. We compute the appropriate voltage/frequency setting for each task through mathematical optimization, and assign multiple tasks to the cluster with heuristic scheduling algorithms. In performance evaluation driven by real-world power measurement traces, our scheduling algorithm shows comparable energy savings to the theoretical upper bound. With a GPU scaling interval where analytically at most 38% of energy can be saved, we record 30-36% of energy savings. Our results are applicable to energy management on modern heterogeneous clusters. In particular, our model stresses the nonlinear relationship between task execution time and processor speed for GPU-accelerated applications, for more accurately capturing real-world GPU energy consumption.
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关键词
upper bound,GPU energy consumption,total energy consumption reduction,dynamic voltage and frequency scaling,GPU-accelerated applications,task execution time,GPU scaling interval,real-world power measurement traces,heuristic scheduling algorithms,data centers,CPU-GPU hybrid clusters,energy efficient real-time task scheduling
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