Folded Polynomial Codes for Coded Distributed $AA^\top$-Type Matrix Multiplication
Abstract
In this paper, due to the important value in practical applications, we consider the coded distributed matrix multiplication problem of computing in a distributed computing system with worker nodes and a master node, where the input matrices and are partitioned into -by- and -by- blocks of equal-size sub-matrices respectively. For effective straggler mitigation, we propose a novel computation strategy, named \emph{folded polynomial code}, which is obtained by modifying the entangled polynomial codes. Moreover, we characterize a lower bound on the optimal recovery threshold among all linear computation strategies when the underlying field is the real number field, and our folded polynomial codes can achieve this bound in the case of . Compared with all known computation strategies for coded distributed matrix multiplication, our folded polynomial codes outperform them in terms of recovery threshold, download cost, and decoding complexity.
Cite
@article{arxiv.2211.15267,
title = {Folded Polynomial Codes for Coded Distributed $AA^\top$-Type Matrix Multiplication},
author = {Jingke Xu and Yaqian Zhang and Libo Wang},
journal= {arXiv preprint arXiv:2211.15267},
year = {2023}
}
Comments
This paper has been accepted in IEEE Transactions on Communications