1 research outputs found
A Systematic Survey of General Sparse Matrix-Matrix Multiplication
SpGEMM (General Sparse Matrix-Matrix Multiplication) has attracted much
attention from researchers in fields of multigrid methods and graph analysis.
Many optimization techniques have been developed for certain application fields
and computing architecture over the decades. The objective of this paper is to
provide a structured and comprehensive overview of the research on SpGEMM.
Existing optimization techniques have been grouped into different categories
based on their target problems and architectures. Covered topics include SpGEMM
applications, size prediction of result matrix, matrix partitioning and load
balancing, result accumulating, and target architecture-oriented optimization.
The rationales of different algorithms in each category are analyzed, and a
wide range of SpGEMM algorithms are summarized. This survey sufficiently
reveals the latest progress and research status of SpGEMM optimization from
1977 to 2019. More specifically, an experimentally comparative study of
existing implementations on CPU and GPU is presented. Based on our findings, we
highlight future research directions and how future studies can leverage our
findings to encourage better design and implementation.Comment: 19 pages, 11 figures, 2 tables, 4 algorithm