An inherently parallel ℋ2-ULV factorization for solving dense linear systems on GPUs

Author:

Ma Qianxiang1ORCID,Yokota Rio2ORCID

Affiliation:

1. School of Computing, Tokyo Institute of Technology, Tokyo, Japan

2. Global Scientific Information and Computing Center, Tokyo Institute of Technology, Tokyo, Japan

Abstract

Hierarchical low-rank approximation of dense matrices can reduce the complexity of their factorization from [Formula: see text] to [Formula: see text]. However, the complex structure of such hierarchical matrices makes them difficult to parallelize. The block size and ranks can vary between the sub-blocks, which creates load imbalance. The dependency between the sub-blocks during factorization results in serialization. Since many sub-blocks are low-rank, their small computational load exposes the overhead of runtime systems. The combination of these factors makes it challenging to implement these methods on GPUs. In this work, we show that dense matrices can be factorized with linear complexity, while extracting the potential parallelism of GPUs. This is made possible through the [Formula: see text]-ULV factorization, which removes the dependency on trailing sub-matrices.

Funder

JSPS KAKENHI

JST CREST

Joint Usage/Research Center for Interdisciplinary Large-scale Information Infrastructures

Publisher

SAGE Publications

Reference29 articles.

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2. Ambikasaran S, Darve E (2014) The Inverse Fast Multipole Method. arXiv preprint, arXiv:1407.1572v1.

3. Improving Multifrontal Methods by Means of Block Low-Rank Representations

4. Block Low-Rank Matrices with Shared Bases: Potential and Limitations of the BLR$^2$ Format

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