Factorizing a sparse matrix is a robust way to solve large sparse systems of linear equations. However such an approach is known to be costly both in terms of computation and storage. When the storage required to process a matrix is greater than the amount of memory available on the platform, so-called out-of-core approaches have to be employed: disks extend the main memory to provide enough storage capacity. In this thesis, we investigate both theoretical and practical aspects of such out-of-core factorizations. The MUMPS and SuperLU software packages are used to illustrate our discussions on real-life matrices. First, we propose and study various out-of-core models that aim at limiting the overhead due to data transfers between memory and...
We present an out-of-core sparse nonsymmetric LU-factorization algorithm with partial pivoting. We h...
Direct methods for the solution of sparse systems of linear equations are used in a wide range of nu...
International audienceWe study the memory scalability of the parallel multifrontal factorization of ...
Factorizing a sparse matrix is a robust way to solve large sparse systems of linear equations. Howev...
The memory usage of sparse direct solvers can be the bottleneck to solve large-scale problems involv...
We consider the solution of very large sparse systems of linear equations on parallel architectures....
(eng) The memory usage of sparse direct solvers can be the bottleneck to solve large-scale problems ...
International audienceABSTRACT The memory usage of sparse direct solvers can be the bottleneck to so...
We consider the factorization of sparse symmetric matrices in the context of a two-layer storage sys...
Nous nous intéressons à la résolution de systèmes linéaires creux de très grande taille par des méth...
We consider the solution of very large systems of linear equations with direct multifrontal methods....
International audienceThe memory usage of sparse direct solvers can be the bottleneck to solve large...
High performance sparse direct solvers are often a method of choice in various simulation problems. ...
Les méthodes directes de résolution de systèmes linéaires creux sont connues pour leurs besoins mémo...
(eng) High performance sparse direct solvers are often a method of choice in various simulation prob...
We present an out-of-core sparse nonsymmetric LU-factorization algorithm with partial pivoting. We h...
Direct methods for the solution of sparse systems of linear equations are used in a wide range of nu...
International audienceWe study the memory scalability of the parallel multifrontal factorization of ...
Factorizing a sparse matrix is a robust way to solve large sparse systems of linear equations. Howev...
The memory usage of sparse direct solvers can be the bottleneck to solve large-scale problems involv...
We consider the solution of very large sparse systems of linear equations on parallel architectures....
(eng) The memory usage of sparse direct solvers can be the bottleneck to solve large-scale problems ...
International audienceABSTRACT The memory usage of sparse direct solvers can be the bottleneck to so...
We consider the factorization of sparse symmetric matrices in the context of a two-layer storage sys...
Nous nous intéressons à la résolution de systèmes linéaires creux de très grande taille par des méth...
We consider the solution of very large systems of linear equations with direct multifrontal methods....
International audienceThe memory usage of sparse direct solvers can be the bottleneck to solve large...
High performance sparse direct solvers are often a method of choice in various simulation problems. ...
Les méthodes directes de résolution de systèmes linéaires creux sont connues pour leurs besoins mémo...
(eng) High performance sparse direct solvers are often a method of choice in various simulation prob...
We present an out-of-core sparse nonsymmetric LU-factorization algorithm with partial pivoting. We h...
Direct methods for the solution of sparse systems of linear equations are used in a wide range of nu...
International audienceWe study the memory scalability of the parallel multifrontal factorization of ...