Back to Search Start Over

KLARAPTOR: A Tool for Dynamically Finding Optimal Kernel Launch Parameters Targeting CUDA Programs

Authors :
Brandt, Alexander
Mohajerani, Davood
Maza, Marc Moreno
Paudel, Jeeva
Wang, Linxiao
Publication Year :
2019

Abstract

In this paper we present KLARAPTOR (Kernel LAunch parameters RAtional Program estimaTOR), a new tool built on top of the LLVM Pass Framework and NVIDIA CUPTI API to dynamically determine the optimal values of kernel launch parameters of a CUDA program P. To be precise, we describe a novel technique to statically build (at the compile time of P) a so-called rational program R. Using a performance prediction model, and knowing particular data and hardware parameters of P at runtime, the program R can automatically and dynamically determine the values of launch parameters of P that will yield optimal performance. Our technique can be applied to parallel programs in general, as well as to generic performance prediction models which account for program and hardware parameters. We are particularly interested in programs targeting manycore accelerators. We have implemented and successfully tested our technique in the context of GPU kernels written in CUDA using the MWP-CWP performance prediction model.<br />Comment: 10 pages. arXiv admin note: text overlap with arXiv:1906.00142

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1911.02373
Document Type :
Working Paper