Adaptive Optimization of Sparse Matrix-Vector Multiplication on Emerging Many-Core Architectures

Chen, Shizhao and Fang, Jianbin and Chen, Donglin and Xu, Chuanfu and Wang, Zheng (2018) Adaptive Optimization of Sparse Matrix-Vector Multiplication on Emerging Many-Core Architectures. In: The 20th IEEE International Conference on High Performance Computing and Communications (HPCC). IEEE, pp. 649-658. ISBN 9781538666142

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Abstract

Sparse matrix vector multiplication (SpMV) is one of the most common operations in scientific and high-performance applications, and is often responsible for the application performance bottleneck. While the sparse matrix representation has a significant impact on the resulting application performance, choosing the right representation typically relies on expert knowledge and trial and error. This paper provides the first comprehensive study on the impact of sparse matrix representations on two emerging many-core architectures: the Intel's Knights Landing (KNL) XeonPhi and the ARM-based FT-2000Plus (FTP). Our large-scale experiments involved over 9,500 distinct profiling runs performed on 956 sparse datasets and five mainstream SpMV representations. We show that the best sparse matrix representation depends on the underlying architecture and the program input. To help developers to choose the optimal matrix representation, we employ machine learning to develop a predictive model. Our model is first trained offline using a set of training examples. The learned model can be used to predict the best matrix representation for any unseen input for a given architecture. We show that our model delivers on average 95% and 91% of the best available performance on KNL and FTP respectively, and it achieves this with no runtime profiling overhead.

Item Type: Contribution in Book/Report/Proceedings
Additional Information: ©2018 IEEE. Personal use of this material is permitted. However, permission to reprint/republish this material for advertising or promotional purposes or for creating new collective works for resale or redistribution to servers or lists, or to reuse any copyrighted component of this work in other works must be obtained from the IEEE.
Departments: Faculty of Science and Technology > School of Computing & Communications
ID Code: 124965
Deposited By: ep_importer_pure
Deposited On: 01 May 2018 10:56
Refereed?: Yes
Published?: Published
Last Modified: 25 Feb 2020 05:23
URI: https://eprints.lancs.ac.uk/id/eprint/124965

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