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DGX-A100 Face to Face DGX-2—Performance, Power and Thermal Behavior Evaluation

Matěj Špeťko, Ondřej Vysocký, Branislav Jansı́k, Lubomı́r Řı́ha

2021Energies20 citationsDOIOpen Access PDF

Abstract

Nvidia is a leading producer of GPUs for high-performance computing and artificial intelligence, bringing top performance and energy-efficiency. We present performance, power consumption, and thermal behavior analysis of the new Nvidia DGX-A100 server equipped with eight A100 Ampere microarchitecture GPUs. The results are compared against the previous generation of the server, Nvidia DGX-2, based on Tesla V100 GPUs. We developed a synthetic benchmark to measure the raw performance of floating-point computing units including Tensor Cores. Furthermore, thermal stability was investigated. In addition, Dynamic Frequency and Voltage Scaling (DVFS) analysis was performed to determine the best energy-efficient configuration of the GPUs executing workloads of various arithmetical intensities. Under the energy-optimal configuration the A100 GPU reaches efficiency of 51 GFLOPS/W for double-precision workload and 91 GFLOPS/W for tensor core double precision workload, which makes the A100 the most energy-efficient server accelerator for scientific simulations in the market.

Topics & Concepts

FLOPSComputer scienceBenchmark (surveying)Double-precision floating-point formatParallel computingEfficient energy useWorkloadFloating pointComputational scienceOperating systemElectrical engineeringGeodesyGeographyEngineeringParallel Computing and Optimization TechniquesAdvanced Data Storage TechnologiesCloud Computing and Resource Management
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