International audienceThe advent of multicore processors represents a disruptive event in the history of computer science as conventional parallel programming paradigms are proving incapable of fully exploiting their potential for concurrent computations. The need for different or new programming models clearly arises from recent studies which identify fine-granularity and dynamic execution as the keys to achieving high efficiency on multicore systems. This work presents an approach to the parallelization of the multifrontal method for the $QR$ factorization of sparse matrices specifically designed for multicore based systems. High efficiency is achieved through a fine-grained partitioning of data and a dynamic scheduling of computational t...
This article addresses the problems of memory man-agement in a parallel sparse matrix factorization ...
International audienceTo exploit the potential of multicore architectures, recent dense linear algeb...
Factorizing a sparse matrix is a robust way to solve large sparse systems of linear equations. Howev...
The advent of multicore processors represents a disruptive event in the history of computer science ...
SuiteSparseQR is a sparse multifrontal QR factorization algorithm. Dense matrix methods within each ...
International audienceTo face the advent of multicore processors and the ever increasing complexity ...
International audienceTo face the advent of multicore processors and the ever increasing complexity ...
Sparse linear systems occur in areas such as finite element methods and statistics. These system...
SuiteSparseQR is an implementation of the multifrontal sparse QR factorization method. Parallelism i...
International audienceThe advent of multicore processors requires to reconsider the design of high p...
AbstractThis paper discusses an extension of the pipelined Givens method for computing the QR factor...
International audienceWe study the memory scalability of the parallel multifrontal factorization of ...
Recent studies have shown the potential of task-based programming paradigms for implementing robust,...
Afin de s'adapter aux architectures multicoeurs et aux machines de plus en plus complexes, les modèl...
This article addresses the problems of memory man-agement in a parallel sparse matrix factorization ...
International audienceTo exploit the potential of multicore architectures, recent dense linear algeb...
Factorizing a sparse matrix is a robust way to solve large sparse systems of linear equations. Howev...
The advent of multicore processors represents a disruptive event in the history of computer science ...
SuiteSparseQR is a sparse multifrontal QR factorization algorithm. Dense matrix methods within each ...
International audienceTo face the advent of multicore processors and the ever increasing complexity ...
International audienceTo face the advent of multicore processors and the ever increasing complexity ...
Sparse linear systems occur in areas such as finite element methods and statistics. These system...
SuiteSparseQR is an implementation of the multifrontal sparse QR factorization method. Parallelism i...
International audienceThe advent of multicore processors requires to reconsider the design of high p...
AbstractThis paper discusses an extension of the pipelined Givens method for computing the QR factor...
International audienceWe study the memory scalability of the parallel multifrontal factorization of ...
Recent studies have shown the potential of task-based programming paradigms for implementing robust,...
Afin de s'adapter aux architectures multicoeurs et aux machines de plus en plus complexes, les modèl...
This article addresses the problems of memory man-agement in a parallel sparse matrix factorization ...
International audienceTo exploit the potential of multicore architectures, recent dense linear algeb...
Factorizing a sparse matrix is a robust way to solve large sparse systems of linear equations. Howev...