English

GPU parallelization of a hybrid pseudospectral fluid turbulence framework using CUDA

Computational Physics 2018-08-07 v1 Fluid Dynamics

Abstract

An existing hybrid MPI-OpenMP scheme is augmented with a CUDA-based fine grain parallelization approach for multidimensional distributed Fourier transforms, in a well-characterized pseudospectral fluid turbulence code. Basics of the hybrid scheme are reviewed, and heuristics provided to show a potential benefit of the CUDA implementation. The method draws heavily on the CUDA runtime library to handle memory management, and on the cuFFT library for computing local FFTs. The manner in which the interfaces are constructed to these libraries, and ISO bindings utilized to facilitate platform portability, are discussed. CUDA streams are implemented to overlap data transfer with cuFFT computation. Testing with a baseline solver demonstrates significant aggregate speed-up over the hybrid MPI-OpenMP solver by offloading to GPUs on an NVLink-based test system. While the batch streamed approach provides little benefit with NVLink, we see a performance gain of 30% when tuned for the optimal number of streams on a PCIe-based system. It is found that strong GPU scaling is ideal, or slightly better than ideal, in all cases. In addition to speed-up measurements for the fiducial solver, we also consider several other solvers with different numbers of transform operations and find that aggregate speed-ups are nearly constant for all solvers.

Keywords

Cite

@article{arxiv.1808.01309,
  title  = {GPU parallelization of a hybrid pseudospectral fluid turbulence framework using CUDA},
  author = {Duane Rosenberg and Pablo D. Mininni and Raghu Reddy and Annick Pouquet},
  journal= {arXiv preprint arXiv:1808.01309},
  year   = {2018}
}

Comments

17 pages, 8 figures; submitted to Parallel Computing

R2 v1 2026-06-23T03:24:04.303Z