International audienceWe illustrate how linear algebra calculations can be enhanced by statistical techniques in the case of a square linear system Ax = b. We study a random transformation of A that enables us to avoid pivoting and then to reduce the amount of communication. Numerical experiments show that this randomization can be performed at a very affordable computational price while providing us with a satisfying accuracy when compared to partial pivoting. This random transformation called Partial Random Butterfly Transformation (PRBT) is optimized in terms of data storage and flops count. We propose a solver where PRBT and the LU factorization with no pivoting take advantage of the current hybrid multicore/GPU machines and we compare ...
In the first part of this dissertation, we explore a novel randomized pivoting strategy to efficient...
In this "Habilitation à Diriger des Recherches" (HDR), we present our research in high-performance s...
AbstractOur randomized preprocessing enables pivoting-free and orthogonalization-free solution of ho...
International audienceWe illustrate how linear algebra calculations can be enhanced by statistical t...
We illustrate how linear algebra calculations can be enhanced by statistical techniques in the case ...
International audienceWe present a fast hybrid solver for dense linear systems based on LU factoriza...
Also appeared as Lapack Working Note 285We consider the solution of sparse linear systems using dire...
AbstractWe study several solvers for the solution of general linear systems where the main objective...
We study several solvers for the solution of general linear systems where the main objective is to r...
In this PhD thesis, we study algorithms and implementations to accelerate the solution of dense line...
International audienceThis paper focuses on the resolution of a large number of small symmetric line...
This paper illustrates how the communication due to pivoting in the solution of symmetric indefinite...
International audienceThis paper studies the performance of different algorithms for solving a dense...
In the first part of this dissertation, we explore a novel randomized pivoting strategy to efficient...
In this "Habilitation à Diriger des Recherches" (HDR), we present our research in high-performance s...
AbstractOur randomized preprocessing enables pivoting-free and orthogonalization-free solution of ho...
International audienceWe illustrate how linear algebra calculations can be enhanced by statistical t...
We illustrate how linear algebra calculations can be enhanced by statistical techniques in the case ...
International audienceWe present a fast hybrid solver for dense linear systems based on LU factoriza...
Also appeared as Lapack Working Note 285We consider the solution of sparse linear systems using dire...
AbstractWe study several solvers for the solution of general linear systems where the main objective...
We study several solvers for the solution of general linear systems where the main objective is to r...
In this PhD thesis, we study algorithms and implementations to accelerate the solution of dense line...
International audienceThis paper focuses on the resolution of a large number of small symmetric line...
This paper illustrates how the communication due to pivoting in the solution of symmetric indefinite...
International audienceThis paper studies the performance of different algorithms for solving a dense...
In the first part of this dissertation, we explore a novel randomized pivoting strategy to efficient...
In this "Habilitation à Diriger des Recherches" (HDR), we present our research in high-performance s...
AbstractOur randomized preprocessing enables pivoting-free and orthogonalization-free solution of ho...