Abstract. This paper presents the design and implementation of a memory scalable parallel symbolic factorization algorithm for general sparse unsymmetric matrices. Our parallel algorithm uses a graph partitioning approach, applied to the graph of |A|+|A | T, to partition the matrix in such a way that is good for sparsity preservation as well as for parallel factorization. The partitioning yields a so-called separator tree which represents the dependencies among the computations. We use the separator tree to distribute the input matrix over the processors using a block cyclic approach and a subtree to sub-processor mapping. The parallel algorithm performs a bottom up traversal of the separator tree. With a combination of right-looking and le...
We present an out-of-core sparse nonsymmetric LU-factorization algorithm with partial pivoting. We h...
AbstractA new parallel algorithm for the LU factorization of a given dense matrix A is described. Th...
AbstractPartitioning a sparse matrix A is a useful device employed by a number of sparse matrix tech...
Abstract. This paper presents the design and implementation of a memory scalable parallel symbolic f...
Texte intégral accessible uniquement aux membres de l'Université de LorraineThis dissertation treats...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...
In this paper we present several improvements of widely used parallel LU factorization methods on sp...
Colloque avec actes et comité de lecture. internationale.International audienceIn this paper we pres...
This paper presents a comparative study of two data mapping schemes for parallel sparse LU factoriza...
Colloque avec actes et comité de lecture. internationale.International audienceThis paper describes ...
In this paper we present a static scheduling algorithm for parallel sparse LU factorization with st...
In this paper we present a static scheduling algorithm for parallel sparse LU factorization with sta...
As sequential computers seem to be approaching their limits in CPU speed there is increasing intere...
Abstract. We investigate several ways to improve the performance of sparse LU factorization with par...
International audienceThe elimination tree for unsymmetric matrices is a recent model playing import...
We present an out-of-core sparse nonsymmetric LU-factorization algorithm with partial pivoting. We h...
AbstractA new parallel algorithm for the LU factorization of a given dense matrix A is described. Th...
AbstractPartitioning a sparse matrix A is a useful device employed by a number of sparse matrix tech...
Abstract. This paper presents the design and implementation of a memory scalable parallel symbolic f...
Texte intégral accessible uniquement aux membres de l'Université de LorraineThis dissertation treats...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...
In this paper we present several improvements of widely used parallel LU factorization methods on sp...
Colloque avec actes et comité de lecture. internationale.International audienceIn this paper we pres...
This paper presents a comparative study of two data mapping schemes for parallel sparse LU factoriza...
Colloque avec actes et comité de lecture. internationale.International audienceThis paper describes ...
In this paper we present a static scheduling algorithm for parallel sparse LU factorization with st...
In this paper we present a static scheduling algorithm for parallel sparse LU factorization with sta...
As sequential computers seem to be approaching their limits in CPU speed there is increasing intere...
Abstract. We investigate several ways to improve the performance of sparse LU factorization with par...
International audienceThe elimination tree for unsymmetric matrices is a recent model playing import...
We present an out-of-core sparse nonsymmetric LU-factorization algorithm with partial pivoting. We h...
AbstractA new parallel algorithm for the LU factorization of a given dense matrix A is described. Th...
AbstractPartitioning a sparse matrix A is a useful device employed by a number of sparse matrix tech...