Verified instruction-level energy consumption measurement for NVIDIA GPUs


연구 분야: Verification



학회: CF '20: Proceedings of the 17th ACM International Conference on Computing Frontiers


초록

GPUs are prevalent in modern computing systems at all scales. They consume a significant fraction of the energy in these systems. However, vendors do not publish the actual cost of the power/energy overhead of their internal microarchitecture. In this paper, we accurately measure the energy consumption of various PTX instructions found in modern NVIDIA GPUs. We provide an exhaustive comparison of more than 40 instructions for four high-end NVIDIA GPUs from four different generations (Maxwell, Pascal, Volta, and Turing). Furthermore, we show the effect of the CUDA compiler optimizations on the energy consumption of each instruction. We use three different software techniques to read the GPU on-chip power sensors, which use NVIDIA's NVML API and provide an in-depth comparison between these techniques. Additionally, we verified the software measurement techniques against a custom-designed hardware power measurement. The results show that Volta GPUs have the best energy efficiency of all the other generations for the different categories of the instructions. This work should aid in understanding NVIDIA GPUs' microarchitecture. It should also make energy measurements of any GPU kernel both efficient and accurate.


Author Profile
Abdel Hameed A Badawy

New Mexico State University

Mexico
Author Profile
Yehia Arafa

New Mexico State University

Mexico
Author Profile
Ammar ElWazir

New Mexico State University

Mexico

📄 논문 정보

발행 연도 2020년
인용수 26
출판 국가 Egypt, Mexico
사이트 ACM
좋아요 수 0

연관 논문 목록 (89건)