The availability of large-scale computing platforms comprised of tens of thousands of multicore processors motivates the need for the next generation of highly scalable sparse linear system solvers. These solvers must optimize parallel performance, processor (serial) performance, as well as memory requirements, while being robust across broad classes of applications and systems. In this paper, we present a new parallel solver that combines the desirable characteristics of direct methods (robustness) and effective iterative solvers (low computational cost), while alleviating their drawbacks (memory requirements, lack of robustness). Our proposed hybrid solver is based on the general sparse solver PARDISO, and the "Spike" family of hybrid sol...
We propose a hybrid sparse system solver for handling linear systems using algebraic domain decompos...
This paper presents a new software framework for solving large and sparse linear systems on current ...
The need to solve large sparse linear systems of equations efficiently lies at the heart of many app...
We consider the challenge of solving large scale sparse linear systems arising from different applic...
The solution of large sparse linear systems is often the most time-consuming part of many science an...
The solution of large sparse linear systems is often the most time-consuming part of many science an...
It is important to have a fast, robust and scalable algorithm to solve a sparse linear system AX=B. ...
Sparse linear system of equations often arises after discretization of the partial differential equa...
Abstract—With the ubiquity of multicore processors, it is crucial that solvers adapt to the hierarch...
At the heart of many computations in science and engineering lies the need to efficiently and accura...
Iterative methods for solving large sparse systems of linear equations are widely used in many HPC a...
Solution of large sparse linear systems is frequently the most time consuming operation in computati...
AbstractWe propose a hybrid sparse system solver for handling linear systems using algebraic domain ...
International audienceIn this talk we will discuss our research activities on the design of parallel...
Dans le contexte de cette thèse, nous nous focalisons sur des algorithmes pour l’algèbre linéaire nu...
We propose a hybrid sparse system solver for handling linear systems using algebraic domain decompos...
This paper presents a new software framework for solving large and sparse linear systems on current ...
The need to solve large sparse linear systems of equations efficiently lies at the heart of many app...
We consider the challenge of solving large scale sparse linear systems arising from different applic...
The solution of large sparse linear systems is often the most time-consuming part of many science an...
The solution of large sparse linear systems is often the most time-consuming part of many science an...
It is important to have a fast, robust and scalable algorithm to solve a sparse linear system AX=B. ...
Sparse linear system of equations often arises after discretization of the partial differential equa...
Abstract—With the ubiquity of multicore processors, it is crucial that solvers adapt to the hierarch...
At the heart of many computations in science and engineering lies the need to efficiently and accura...
Iterative methods for solving large sparse systems of linear equations are widely used in many HPC a...
Solution of large sparse linear systems is frequently the most time consuming operation in computati...
AbstractWe propose a hybrid sparse system solver for handling linear systems using algebraic domain ...
International audienceIn this talk we will discuss our research activities on the design of parallel...
Dans le contexte de cette thèse, nous nous focalisons sur des algorithmes pour l’algèbre linéaire nu...
We propose a hybrid sparse system solver for handling linear systems using algebraic domain decompos...
This paper presents a new software framework for solving large and sparse linear systems on current ...
The need to solve large sparse linear systems of equations efficiently lies at the heart of many app...