Back to Search Start Over

Coded Sparse Matrix Multiplication

Authors :
Wang, Sinong
Liu, Jiashang
Shroff, Ness
Publication Year :
2018

Abstract

In a large-scale and distributed matrix multiplication problem $C=A^{\intercal}B$, where $C\in\mathbb{R}^{r\times t}$, the coded computation plays an important role to effectively deal with "stragglers" (distributed computations that may get delayed due to few slow or faulty processors). However, existing coded schemes could destroy the significant sparsity that exists in large-scale machine learning problems, and could result in much higher computation overhead, i.e., $O(rt)$ decoding time. In this paper, we develop a new coded computation strategy, we call \emph{sparse code}, which achieves near \emph{optimal recovery threshold}, \emph{low computation overhead}, and \emph{linear decoding time} $O(nnz(C))$. We implement our scheme and demonstrate the advantage of the approach over both uncoded and current fastest coded strategies.<br />Comment: new comparisons with existing sparse codes are added

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1802.03430
Document Type :
Working Paper