Distributed-Memory $\mathcal{H}$-Matrix Algebra I: Data Distribution and Matrix-Vector Multiplication

Authors

  • Yingzhou Li
  • Jack Poulson
  • Lexing Ying

DOI:

https://doi.org/10.4208/csiam-am.2020-0206

Keywords:

Parallel fast algorithm, $\mathcal{H}$-matrix, distributed-memory, parallel computing.

Abstract

We introduce a data distribution scheme for $\mathcal{H}$-matrices and a distributed-memory algorithm for $\mathcal{H}$-matrix-vector multiplication. Our data distribution scheme avoids an expensive $Ω(P^2)$ scheduling procedure used in previous work, where $P$ is the number of processes, while data balancing is well-preserved. Based on the data distribution, our distributed-memory algorithm evenly distributes all computations among $P$ processes and adopts a novel tree-communication algorithm to reduce the latency cost. The overall complexity of our algorithm is $\mathscr{O}(\frac{Nlog N}{P} +αlog P+βlog^2P)$ for $\mathcal{H}$-matrices under weak admissibility condition, where $N$ is the matrix size, $α$ denotes the latency, and $β$ denotes the inverse bandwidth. Numerically, our algorithm is applied to address both two- and three-dimensional problems of various sizes among various numbers of processes. On thousands of processes, good parallel efficiency is still observed.

Published

2021-08-31

Issue

Section

Articles