3660

Auto-Tuning CUDA Parameters for Sparse Matrix-Vector Multiplication on GPUs

Ping Guo, Liqiang Wang
Department of Computer Science, University of Wyoming, USA
International Conference on Computational and Information Sciences, 2010, pp. 1154-1157

@conference{guo2010auto,

   title={Auto-Tuning CUDA Parameters for Sparse Matrix-Vector Multiplication on GPUs},

   author={Guo, P. and Wang, L.},

   booktitle={2010 International Conference on Computational and Information Sciences},

   pages={1154–1157},

   year={2010},

   organization={IEEE}

}

Download Download (PDF)   View View   Source Source   

1427

views

Graphics Processing Unit (GPU) has become an attractive coprocessor for scientific computing due to its massive processing capability. The sparse matrix-vector multiplication (SpMV) is a critical operation in a wide variety of scientific and engineering applications, such as sparse linear algebra and image processing. This paper presents an auto-tuning framework that can automatically compute and select CUDA parameters for SpMV to obtain the optimal performance on specific GPUs. The framework is evaluated on two NVIDIA GPU platforms, GeForce 9500 GTX and GeForce GTX 295.
No votes yet.
Please wait...

* * *

* * *

HGPU group © 2010-2024 hgpu.org

All rights belong to the respective authors

Contact us: