As simulation and analytics enter the exascale era, numerical algorithms, particularly implicit solvers that couple vast numbers of degrees of freedom, must span a widening gap between ambitious applications and austere architectures to support them. We present fifteen universals for researchers in scalable solvers: imperatives from computer architecture that scalable solvers must respect, strategies towards achieving them that are currently well established, and additional strategies currently being developed for an effective and efficient exascale software ecosystem. We consider recent generalizations of what it means to “solve” a computational problem, which suggest that we have often been “oversolving” them at the smaller scales of the ...
As we approach the Exascale computing era, disruptive changes in the software landscape are required...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
TOPS is providing high-performance, scalable sparse direct solvers, which have had significant impac...
As simulation and analytics enter the exascale era, numerical algorithms, particularly implicit solv...
As simulation and analytics enter the exascale era, numerical algorithms, particularly implicit solv...
As simulation and analytics enter the exascale era, numerical algorithms, particularly implicit solv...
As simulation and analytics enter the exascale era, numerical algorithms, particularly implicit solv...
Factorization based preconditioning algorithms, most notably incomplete LU (ILU) factorization, have...
In this talk, we will look at the current state of high performance computing and look at the next s...
As simulation and analytics enter the exascale era, numerical algorithms, particularly implicit solv...
Algebraic multigrid (AMG) is a popular iterative solver and preconditioner for large sparse linear s...
AbstractWe review the influence of the advent of high-performance computing on the solution of linea...
In the last decades, numerical simulation has experienced tremendous improvements driven by massive ...
Submitted for publication to SIAMMatrices coming from elliptic Partial Differential Equations (PDEs)...
International audienceThis paper presents two approaches using a Block Low-Rank (BLR) compression te...
As we approach the Exascale computing era, disruptive changes in the software landscape are required...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
TOPS is providing high-performance, scalable sparse direct solvers, which have had significant impac...
As simulation and analytics enter the exascale era, numerical algorithms, particularly implicit solv...
As simulation and analytics enter the exascale era, numerical algorithms, particularly implicit solv...
As simulation and analytics enter the exascale era, numerical algorithms, particularly implicit solv...
As simulation and analytics enter the exascale era, numerical algorithms, particularly implicit solv...
Factorization based preconditioning algorithms, most notably incomplete LU (ILU) factorization, have...
In this talk, we will look at the current state of high performance computing and look at the next s...
As simulation and analytics enter the exascale era, numerical algorithms, particularly implicit solv...
Algebraic multigrid (AMG) is a popular iterative solver and preconditioner for large sparse linear s...
AbstractWe review the influence of the advent of high-performance computing on the solution of linea...
In the last decades, numerical simulation has experienced tremendous improvements driven by massive ...
Submitted for publication to SIAMMatrices coming from elliptic Partial Differential Equations (PDEs)...
International audienceThis paper presents two approaches using a Block Low-Rank (BLR) compression te...
As we approach the Exascale computing era, disruptive changes in the software landscape are required...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
TOPS is providing high-performance, scalable sparse direct solvers, which have had significant impac...