To solve sparse systems of linear equations, multifrontal methods rely on dense partial LU decompositions of so-called frontal matrices; we consider a parallel asynchronous setting in which several frontal matrices can be factored simultaneously. In this context, to address performance and scalability issues of acyclic pipelined asynchronous factorization kernels, we study models to revisit properties of left and right-looking variants of partial \(LU\) decompositions, study the use of several levels of blocking, before focusing on communication issues. The general purpose sparse solver MUMPS has been modified to implement the proposed algorithms and confirm the properties demonstrated by the models
We design a distributed-memory randomized structured multifrontal solver for large sparse matrices. ...
International audienceMatrices coming from elliptic Partial Differential Equations have been shown t...
We are interested in the memory usage of sparse direct solvers. We particularly focus on the parall...
International audienceTo solve sparse systems of linear equations, multifrontal methods rely on dens...
We consider the solution of very large sparse systems of linear equations on parallel architectures....
We consider the solution of both symmetric and unsymmetric systems of sparse linear equations. A new...
Direct methods for the solution of sparse systems of linear equations are used in a wide range of nu...
Nous nous intéressons à la résolution de systèmes linéaires creux de très grande taille par des méth...
Sparse matrix factorization algorithms are typically characterized by irregular memory access patter...
We consider the solution of very large systems of linear equations with direct multifrontal methods....
International audienceTo face the advent of multicore processors and the ever increasing complexity ...
The memory usage of sparse direct solvers can be the bottleneck to solve large-scale problems involv...
We consider the solution of large sparse linear systems by means of direct factorization based on a ...
The solution of sparse systems of linear equations is at the heart of numerous applicationfields. Wh...
International audienceWe study the memory scalability of the parallel multifrontal factorization of ...
We design a distributed-memory randomized structured multifrontal solver for large sparse matrices. ...
International audienceMatrices coming from elliptic Partial Differential Equations have been shown t...
We are interested in the memory usage of sparse direct solvers. We particularly focus on the parall...
International audienceTo solve sparse systems of linear equations, multifrontal methods rely on dens...
We consider the solution of very large sparse systems of linear equations on parallel architectures....
We consider the solution of both symmetric and unsymmetric systems of sparse linear equations. A new...
Direct methods for the solution of sparse systems of linear equations are used in a wide range of nu...
Nous nous intéressons à la résolution de systèmes linéaires creux de très grande taille par des méth...
Sparse matrix factorization algorithms are typically characterized by irregular memory access patter...
We consider the solution of very large systems of linear equations with direct multifrontal methods....
International audienceTo face the advent of multicore processors and the ever increasing complexity ...
The memory usage of sparse direct solvers can be the bottleneck to solve large-scale problems involv...
We consider the solution of large sparse linear systems by means of direct factorization based on a ...
The solution of sparse systems of linear equations is at the heart of numerous applicationfields. Wh...
International audienceWe study the memory scalability of the parallel multifrontal factorization of ...
We design a distributed-memory randomized structured multifrontal solver for large sparse matrices. ...
International audienceMatrices coming from elliptic Partial Differential Equations have been shown t...
We are interested in the memory usage of sparse direct solvers. We particularly focus on the parall...