Parallel Implementation of Fast Randomized Algorithms for Low Rank Matrix Decomposition

Journal Article
Parallel Processing Letters, vol. 24, iss. 01, pp. 1450004, 2014
Authors
Andrew Lucas, Mark Stalzer, John Feo
Abstract
We analyze the parallel performance of randomized interpolative decomposition by decomposing low rank complex-valued Gaussian random matrices of about 100 GB. We chose a Cray XMT supercomputer as it provides an almost ideal PRAM model permitting quick investigation of parallel algorithms without obfuscation from hardware idiosyncrasies. We obtain that on non-square matrices performance scales almost linearly with runtime about 100 times faster on 128 processors. We also verify that numerically discovered error bounds still hold on matrices two orders of magnitude larger than those previously tested.
English