International audienceTo face the advent of multicore processors and the ever increasing complexity of hardware architectures, programming models based on DAG parallelism regained popularity in the high performance, scientific computing community. Modern runtime systems offer a programming interface that complies with this paradigm and powerful engines for scheduling the tasks into which the application is decomposed. These tools have already proved their effectiveness on a number of dense linear algebra applications. This paper evaluates the usability and effectiveness of runtime systems based on the Sequential Task Flow model for complex applications , namely, sparse matrix multifrontal factorizations which feature extremely irregular wor...
To solve sparse systems of linear equations, multifrontal methods rely on dense partial LU decomposi...
Sparse linear systems occur in areas such as finite element methods and statistics. These system...
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 ...
To face the advent of multicore processors and the ever increasing complexity of hardware architectu...
International audienceThe advent of multicore processors represents a disruptive event in the histor...
International audienceThe advent of multicore processors requires to reconsider the design of high p...
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...
International audienceThe ever growing complexity and scale of parallel architectures imposes to rew...
We consider the solution of very large sparse systems of linear equations on parallel architectures....
Direct methods for the solution of sparse systems of linear equations are used in a wide range of nu...
International audienceMatrices coming from elliptic Partial Differential Equations have been shown t...
To solve sparse systems of linear equations, multifrontal methods rely on dense partial LU decomposi...
Sparse linear systems occur in areas such as finite element methods and statistics. These system...
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 ...
To face the advent of multicore processors and the ever increasing complexity of hardware architectu...
International audienceThe advent of multicore processors represents a disruptive event in the histor...
International audienceThe advent of multicore processors requires to reconsider the design of high p...
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...
International audienceThe ever growing complexity and scale of parallel architectures imposes to rew...
We consider the solution of very large sparse systems of linear equations on parallel architectures....
Direct methods for the solution of sparse systems of linear equations are used in a wide range of nu...
International audienceMatrices coming from elliptic Partial Differential Equations have been shown t...
To solve sparse systems of linear equations, multifrontal methods rely on dense partial LU decomposi...
Sparse linear systems occur in areas such as finite element methods and statistics. These system...
SuiteSparseQR is a sparse multifrontal QR factorization algorithm. Dense matrix methods within each ...