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Tight Memory-Independent Parallel Matrix Multiplication Communication Lower Bounds

Authors :
Daas, Hussam Al
Ballard, Grey
Grigori, Laura
Kumar, Suraj
Rouse, Kathryn
Publication Year :
2022

Abstract

Communication lower bounds have long been established for matrix multiplication algorithms. However, most methods of asymptotic analysis have either ignored the constant factors or not obtained the tightest possible values. Recent work has demonstrated that more careful analysis improves the best known constants for some classical matrix multiplication lower bounds and helps to identify more efficient algorithms that match the leading-order terms in the lower bounds exactly and improve practical performance. The main result of this work is the establishment of memory-independent communication lower bounds with tight constants for parallel matrix multiplication. Our constants improve on previous work in each of three cases that depend on the relative sizes of the aspect ratios of the matrices.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2205.13407
Document Type :
Working Paper