Straggler- and Adversary-Tolerant Secure Distributed Matrix Multiplication Using Polynomial Codes

Author:

Byrne Eimear1ORCID,Gnilke Oliver W.2ORCID,Kliewer Jörg3ORCID

Affiliation:

1. School of Mathematics and Statistics, University College Dublin, D04 V1W8 Dublin, Ireland

2. Department of Mathematical Sciences, Aalborg University, 9220 Aalborg, Denmark

3. Department of Electrical and Computer Engineering, New Jersey Institute of Technology, Newark, NJ 07410, USA

Abstract

Large matrix multiplications commonly take place in large-scale machine-learning applications. Often, the sheer size of these matrices prevent carrying out the multiplication at a single server. Therefore, these operations are typically offloaded to a distributed computing platform with a master server and a large amount of workers in the cloud, operating in parallel. For such distributed platforms, it has been recently shown that coding over the input data matrices can reduce the computational delay by introducing a tolerance against straggling workers, i.e., workers for which execution time significantly lags with respect to the average. In addition to exact recovery, we impose a security constraint on both matrices to be multiplied. Specifically, we assume that workers can collude and eavesdrop on the content of these matrices. For this problem, we introduce a new class of polynomial codes with fewer non-zero coefficients than the degree +1. We provide closed-form expressions for the recovery threshold and show that our construction improves the recovery threshold of existing schemes in the literature, in particular for larger matrix dimensions and a moderate to large number of colluding workers. In the absence of any security constraints, we show that our construction is optimal in terms of recovery threshold.

Funder

UCD Seed Funding-Horizon Scanning scheme

U.S. National Science Foundation

Publisher

MDPI AG

Subject

General Physics and Astronomy

Reference32 articles.

1. Janzamin, M., Sedghi, H., and Anandkumar, A. (2015). Beating the perils of non-convexity: Guaranteed training of neural networks using tensor methods. arXiv.

2. Efficient redundancy techniques for latency reduction in cloud systems;Joshi;ACM Trans. Model. Perform. Eval. Comput. Syst.,2017

3. Lee, K., Suh, C., and Ramchandran, K. (2017, January 25–30). High-dimensional coded matrix multiplication. Proceedings of the IEEE International Symposium on Information Theory (ISIT), Aachen, Germany.

4. Speeding Up Distributed Machine Learning Using Codes;Lee;IEEE Trans. Inf. Theory,2018

5. Yu, Q., Maddah-Ali, M., and Avestimehr, S. (2017, January 4–9). Polynomial codes: An optimal design for high-dimensional coded matrix multiplication. Proceedings of the Advances in Neural Information Processing Systems, Long Beach, CA, USA.

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