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Hypergraph partitioning implementation for parallelizing matrix-vector multiplication using CUDA GPU-based parallel computing
Author(s) -
Murni Murni,
Alhadi Bustamam,
Ernastuti,
Tri Handhika,
Djati Kerami
Publication year - 2017
Publication title -
aip conference proceedings
Language(s) - English
Resource type - Conference proceedings
eISSN - 1551-7616
pISSN - 0094-243X
DOI - 10.1063/1.4991257
Subject(s) - cuda , parallel computing , computer science , hypergraph , matrix multiplication , graphics processing unit , multiplication (music) , general purpose computing on graphics processing units , graphics , graph partition , parallel algorithm , graph , matrix (chemical analysis) , computational science , theoretical computer science , mathematics , computer graphics (images) , physics , discrete mathematics , quantum mechanics , combinatorics , quantum , materials science , composite material
Calculation of the matrix-vector multiplication in the real-world problems often involves large matrix with arbitrary size. Therefore, parallelization is needed to speed up the calculation process that usually takes a long time. Graph partitioning techniques that have been discussed in the previous studies cannot be used to complete the parallelized calculation of matrix-vector multiplication with arbitrary size. This is due to the assumption of graph partitioning techniques that can only solve the square and symmetric matrix. Hypergraph partitioning techniques will overcome the shortcomings of the graph partitioning technique. This paper addresses the efficient parallelization of matrix-vector multiplication through hypergraph partitioning techniques using CUDA GPU-based parallel computing. CUDA (compute unified device architecture) is a parallel computing platform and programming model that was created by NVIDIA and implemented by the GPU (graphics processing unit).

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