We present a sparse linear system solver that is based on a multifrontal variant of Gaussian elimination and exploits low-rank approximation of the resulting dense frontal matrices. We use hierarchically semiseparable (HSS) matrices, which have low-rank off-diagonal blocks, to approximate the frontal matrices. For HSS matrix construction, a randomized sampling algorithm is used together with interpolative decompositions. The combination of the randomized compression with a fast ULV HSS factorization leads to a solver with lower computational complexity than the standard multifrontal method for many applications, resulting in speedups up to sevenfold for problems in our test suite. The implementation targets many-core systems by using task p...
It is important to have a fast, robust and scalable algorithm to solve a sparse linear system AX=B. ...
International audienceTo solve sparse systems of linear equations, multifrontal methods rely on dens...
International audienceABSTRACT The memory usage of sparse direct solvers can be the bottleneck to so...
We present a sparse linear system solver that is based on a multifrontal variant of Gaussian elimina...
Hierarchically semiseparable (HSS) matrix algorithms are emerging techniques in constructing the sup...
We present a distributed-memory library for computations with dense structured matrices. A matrix is...
We design a distributed-memory randomized structured multifrontal solver for large sparse matrices. ...
This dissertation presents several fast and stable algorithms for both dense and sparse matrices bas...
Abstract. Randomized sampling has recently been proven a highly efficient technique for computing ap...
The dissertation presents some fast direct solvers and efficient preconditioners mainly for sparse m...
Nous nous intéressons à la résolution de systèmes linéaires creux de très grande taille par des méth...
We consider several issues involved in the solution of sparse symmetric positive definite system b...
We describe the issues involved in the design and implementation of efficient parallel algorithms fo...
We describethe design, implementation, and performance of a frontal code for the solution of large, ...
In this poster, a GPU-accelerated sparse multifrontal solver for structurally symmetric matrices is ...
It is important to have a fast, robust and scalable algorithm to solve a sparse linear system AX=B. ...
International audienceTo solve sparse systems of linear equations, multifrontal methods rely on dens...
International audienceABSTRACT The memory usage of sparse direct solvers can be the bottleneck to so...
We present a sparse linear system solver that is based on a multifrontal variant of Gaussian elimina...
Hierarchically semiseparable (HSS) matrix algorithms are emerging techniques in constructing the sup...
We present a distributed-memory library for computations with dense structured matrices. A matrix is...
We design a distributed-memory randomized structured multifrontal solver for large sparse matrices. ...
This dissertation presents several fast and stable algorithms for both dense and sparse matrices bas...
Abstract. Randomized sampling has recently been proven a highly efficient technique for computing ap...
The dissertation presents some fast direct solvers and efficient preconditioners mainly for sparse m...
Nous nous intéressons à la résolution de systèmes linéaires creux de très grande taille par des méth...
We consider several issues involved in the solution of sparse symmetric positive definite system b...
We describe the issues involved in the design and implementation of efficient parallel algorithms fo...
We describethe design, implementation, and performance of a frontal code for the solution of large, ...
In this poster, a GPU-accelerated sparse multifrontal solver for structurally symmetric matrices is ...
It is important to have a fast, robust and scalable algorithm to solve a sparse linear system AX=B. ...
International audienceTo solve sparse systems of linear equations, multifrontal methods rely on dens...
International audienceABSTRACT The memory usage of sparse direct solvers can be the bottleneck to so...