Session
FOSDEM Schedule 2021
HPC, Big Data and Data Science

Lessons in Programming Model Comparisons Using OpenMP and CUDA for Targetting GPUs

D.hpc
Alaina Edwards
<p>In this talk we explore two programming models for GPU accelerated computing in a Fortran application: OpenMP with target directives and CUDA. We use an example application Riemann problem, a common problem in fluid dynamics, as our testing ground. This example application is implemented in GenASiS, a code being developed for astrophysics simulations. While OpenMP and CUDA are supported on the Summit supercomputer, its successor, an exascale supercomputer Frontier, will support OpenMP and translate CUDA-like models via HIP. In this work, we study and describe the differences and trade-offs between these programming models in terms of efforts and performance. Our hope is to provide insights on productivity and portability issues within these programming models.</p>

Additional information

Type devroom

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