Publication | Closed Access
GPU-NEST: Characterizing Energy Efficiency of Multi-GPU Inference Servers
44
Citations
14
References
2020
Year
Cluster ComputingEngineeringGpu BenchmarkingEnergy EfficiencyComputer ArchitectureData ScienceInference SchedulingParallel ComputingPower-aware SoftwareComputer EngineeringComputer ScienceGpu ClusterPower ConsumptionCloud Inference SystemsGpu ArchitectureEdge ComputingCloud ComputingMulti-gpu Inference ServersParallel ProgrammingPower-efficient Computing
Cloud inference systems have recently emerged as a solution to the ever-increasing integration of AI-powered applications into the smart devices around us. The wide adoption of GPUs in cloud inference systems has made power consumption a first-order constraint in multi-GPU systems. Thus, to achieve this goal, it is critical to have better insight into the power and performance behaviors of multi-GPU inference system. To this end, we propose GPU-NEST, an energy efficiency characterization methodology for multi-GPU inference systems. As case studies, we examined the challenges presented by, and implications of, multi-GPU scaling, inference scheduling, and non-GPU bottleneck on multi-GPU inference systems' energy efficiency. We found that inference scheduling in particular has great benefits in improving the energy efficiency of multi-GPU scheduling, by as much as 40 percent.
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