학술논문

On the Parallel I/O Optimality of Linear Algebra Kernels: Near-Optimal Matrix Factorizations
Document Type
Conference
Source
SC21: International Conference for High Performance Computing, Networking, Storage and Analysis High Performance Computing, Networking, Storage and Analysis, SC21: International Conference for. :1-15 Nov, 2021
Subject
Computing and Processing
Schedules
Codes
Three-dimensional displays
Scientific computing
Layout
Libraries
Supercomputers
Distributed linear algebra algorithms
communication complexity
matrix factorization
Language
ISSN
2167-4337
Abstract
Matrix factorizations are among the most important building blocks of scientific computing. However, state-of-the-art libraries are not communication-optimal, underutilizing current parallel architectures. We present novel algorithms for Cholesky and LU factorizations that utilize an asymptotically communication-optimal 2.5D decomposition. We first establish a theoretical framework for deriving parallel I/O lower bounds for linear algebra kernels, and then utilize its insights to derive Cholesky and LU schedules, both communicating $N^{3}/(P\sqrt{M})$ elements per processor, where M is the local memory size. The empirical results match our theoretical analysis: our implementations communicate significantly less than Intel MKL, SLATE, and the asymptotically communication-optimal CANDMC and CAPITAL libraries. Our code outperforms these state-of-the-art libraries in almost all tested scenarios, with matrix sizes ranging from 2,048 to 524,288 on up to 512 CPU nodes of the Piz Daint supercomputer, decreasing the time-to-solution by up to three times. Our code is ScaLAPAck-compatible and available as an open-source library.