Title :
A Taxonomy of GPGPU Performance Scaling
Author :
Abhinandan Majumdar;Gene Wu;Kapil Dev;Joseph L. Greathouse;Indrani Paul;Wei Huang;Arjun-Karthik Venugopal;Leonardo Piga;Chip Freitag;Sooraj Puthoor
Abstract :
Graphics processing units (GPUs) range from small, embedded designs to large, high-powered discrete cards. While the performance of graphics workloads is generally understood, there has been little study of the performance of GPGPU applications across a variety of hardware configurations. This work presents performance scaling data gathered for 267 GPGPU kernels from 97 programs run on 891 hardware configurations of a modern GPU. We study the performance of these kernels across a 5× change in core frequency, 8.3× change in memory bandwidth, and 11× difference in compute units. We illustrate that many kernels scale in intuitive ways, such as those that scale directly with added computational capabilities or memory bandwidth. We also find a number of kernels that scale in non-obvious ways, such as losing performance when more processing units are added or plateauing as frequency and bandwidth are increased. In addition, we show that a number of current benchmark suites do not scale to modern GPU sizes, implying that either new benchmarks or new inputs are warranted.
Keywords :
"Kernel","Bandwidth","Benchmark testing","Hardware","Graphics processing units","Performance evaluation","Programming"
Conference_Titel :
Workload Characterization (IISWC), 2015 IEEE International Symposium on
DOI :
10.1109/IISWC.2015.22