This is a post-peer-review, pre-copyedit version of an article published in Lecture Notes in Computer Science. The final authenticated version is available online at: https://doi.org/10.1007/3-540-48319-5_15[Abstract] There is a class of sparse matrix computations, such as direct solvers of systems of linear equations, that change the fill-in (nonzero entries) of the coefficient matrix, and involve row and column operations (pivoting). This paper addresses the problem of the parallelization of these sparse computations from the point of view of the parallel language and the compiler. Dynamic data structures for sparse matrix storage are analyzed, permitting to efficiently deal with fill-in and pivoting issues. Any of the data representation...
This work presents a novel strategy for the parallelization of applications containing sparse matrix...
[[abstract]]Fortran 90 provides a rich set of array intrinsic functions that are useful for represen...
Sparse computations are ubiquitous in computational codes, with the sparse matrix-vector (SpMV) mult...
. There is a class of sparse matrix computations, such as direct solvers of systems of linear equati...
The multiplication of a sparse matrix by a dense vector is a centerpiece of scientific computing app...
International audienceIn this paper, we propose a generic method of automatic parallelization for sp...
The research reported in this paper presents a new idea of the storage structure of sparse matrices....
In this thesis, we investigate new ways to mitigate the inherent irregularity in sparse matrix facto...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...
Sparse matrix formats encode very large numerical matrices with relatively few nonzeros. They are ty...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
. Solving large nonsymmetric sparse linear systems on distributed memory multiprocessors is an activ...
. The paper describes a parallel algorithm for the LU factorization of sparse matrices on distribute...
This paper proposes a new approach to improve data-parallel languages in the context of sparse and i...
Texte intégral accessible uniquement aux membres de l'Université de LorraineThis dissertation treats...
This work presents a novel strategy for the parallelization of applications containing sparse matrix...
[[abstract]]Fortran 90 provides a rich set of array intrinsic functions that are useful for represen...
Sparse computations are ubiquitous in computational codes, with the sparse matrix-vector (SpMV) mult...
. There is a class of sparse matrix computations, such as direct solvers of systems of linear equati...
The multiplication of a sparse matrix by a dense vector is a centerpiece of scientific computing app...
International audienceIn this paper, we propose a generic method of automatic parallelization for sp...
The research reported in this paper presents a new idea of the storage structure of sparse matrices....
In this thesis, we investigate new ways to mitigate the inherent irregularity in sparse matrix facto...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...
Sparse matrix formats encode very large numerical matrices with relatively few nonzeros. They are ty...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
. Solving large nonsymmetric sparse linear systems on distributed memory multiprocessors is an activ...
. The paper describes a parallel algorithm for the LU factorization of sparse matrices on distribute...
This paper proposes a new approach to improve data-parallel languages in the context of sparse and i...
Texte intégral accessible uniquement aux membres de l'Université de LorraineThis dissertation treats...
This work presents a novel strategy for the parallelization of applications containing sparse matrix...
[[abstract]]Fortran 90 provides a rich set of array intrinsic functions that are useful for represen...
Sparse computations are ubiquitous in computational codes, with the sparse matrix-vector (SpMV) mult...