Publication | Open Access
Performance and Power Analysis of HPC Workloads on Heterogeneous Multi-Node Clusters
35
Citations
31
References
2018
Year
Cluster ComputingEngineeringGpu BenchmarkingEnergy EfficiencyComputer ArchitectureHigh Performance ComputingGpu ComputingDatacenter-scale ComputingCluster TechnologyData ScienceSame ProfilingParallel ComputingPower AnalysisHybrid Hpc WorkloadHpc WorkloadsData Center SystemComputer EngineeringComputer SciencePerformance Analysis ToolGpu ClusterPerformance Analysis ToolsGpu ArchitectureHeterogeneous Multi-node ClustersProgram AnalysisCloud ComputingRelevant MetricsParallel Programming
Performance analysis tools allow application developers to identify and characterize the inefficiencies that cause performance degradation in their codes, allowing for application optimizations. Due to the increasing interest in the High Performance Computing (HPC) community towards energy-efficiency issues, it is of paramount importance to be able to correlate performance and power figures within the same profiling and analysis tools. For this reason, we present a performance and energy-efficiency study aimed at demonstrating how a single tool can be used to collect most of the relevant metrics. In particular, we show how the same analysis techniques can be applicable on different architectures, analyzing the same HPC application on a high-end and a low-power cluster. The former cluster embeds Intel Haswell CPUs and NVIDIA K80 GPUs, while the latter is made up of NVIDIA Jetson TX1 boards, each hosting an Arm Cortex-A57 CPU and an NVIDIA Tegra X1 Maxwell GPU.
| Year | Citations | |
|---|---|---|
Page 1
Page 1