Back to Search Start Over

Optimizing GPU Cache Policies for MI Workloads

Authors :
Alsop, Johnathan
Sinclair, Matthew D.
Bharadwaj, Srikant
Dutu, Alexandru
Gutierrez, Anthony
Kayiran, Onur
LeBeane, Michael
Puthoor, Sooraj
Zhang, Xianwei
Yeh, Tsung Tai
Beckmann, Bradford M.
Publication Year :
2019

Abstract

In recent years, machine intelligence (MI) applications have emerged as a major driver for the computing industry. Optimizing these workloads is important but complicated. As memory demands grow and data movement overheads increasingly limit performance, determining the best GPU caching policy to use for a diverse range of MI workloads represents one important challenge. To study this, we evaluate 17 MI applications and characterize their behaviors using a range of GPU caching strategies. In our evaluations, we find that the choice of caching policy in GPU caches involves multiple performance trade-offs and interactions, and there is no one-size-fits-all GPU caching policy for MI workloads. Based on detailed simulation results, we motivate and evaluate a set of cache optimizations that consistently match the performance of the best static GPU caching policies.<br />Comment: Extended version of short paper published in the 2019 IEEE International Symposium on Workload Characterization

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1910.00134
Document Type :
Working Paper