Solving sparse linear systems is a problem that arises in many scientific applications, and sparse direct solvers are a time consuming and key kernel for those applications and for more advanced solvers such as hybrid direct-iterative solvers. For those reasons, optimizing their performance on modern architectures is critical. However, memory requirements and time-to-solution limit the use of direct methods for very large matrices. For other approaches, such as iterative methods, general black-box preconditioners that can ensure fast convergence for a wide range of problems are still missing. In the first part of this thesis, we present two approaches using a Block Low-Rank (BLR) compression technique to reduce the memory footprint and/or t...
Solving sparse linear systems is a problem that arises in many scientific applications, and sparse d...
Nous nous intéressons à l'utilisation d'approximations de rang faible pour réduire le coût des solve...
Many physical phenomena may be studied through modeling and numerical simulations, commonplace in sc...
La résolution de systèmes linéaires creux est un problème qui apparaît dans de nombreuses applicatio...
Through the recent improvements toward exascale supercomputer systems, huge computations can be perf...
This paper presents two approaches using a Block Low-Rank (BLR) compressiontechnique to reduce the m...
International audienceThis paper presents two approaches using a Block Low-Rank (BLR) compression te...
International audienceThis paper presents two approaches using a Block Low-Rank (BLR) compression te...
International audienceLow-rank compression techniques are very promising for reducing memory footpri...
Sparse direct solvers using Block Low-Rank compression have been proven efficient to solve problems ...
We investigate the use of low-rank approximations to reduce the cost of sparsedirect multifrontal so...
We investigate the use of low-rank approximations to reduce the cost of sparse direct multifrontal s...
International audienceWe will discuss challenges in building clusters for the Block Low-Rank (BLR) a...
Solving sparse linear systems appears in many scientific applications, and sparse direct linear solv...
We consider the solution of large sparse linear systems by means of direct factorization based on a ...
Solving sparse linear systems is a problem that arises in many scientific applications, and sparse d...
Nous nous intéressons à l'utilisation d'approximations de rang faible pour réduire le coût des solve...
Many physical phenomena may be studied through modeling and numerical simulations, commonplace in sc...
La résolution de systèmes linéaires creux est un problème qui apparaît dans de nombreuses applicatio...
Through the recent improvements toward exascale supercomputer systems, huge computations can be perf...
This paper presents two approaches using a Block Low-Rank (BLR) compressiontechnique to reduce the m...
International audienceThis paper presents two approaches using a Block Low-Rank (BLR) compression te...
International audienceThis paper presents two approaches using a Block Low-Rank (BLR) compression te...
International audienceLow-rank compression techniques are very promising for reducing memory footpri...
Sparse direct solvers using Block Low-Rank compression have been proven efficient to solve problems ...
We investigate the use of low-rank approximations to reduce the cost of sparsedirect multifrontal so...
We investigate the use of low-rank approximations to reduce the cost of sparse direct multifrontal s...
International audienceWe will discuss challenges in building clusters for the Block Low-Rank (BLR) a...
Solving sparse linear systems appears in many scientific applications, and sparse direct linear solv...
We consider the solution of large sparse linear systems by means of direct factorization based on a ...
Solving sparse linear systems is a problem that arises in many scientific applications, and sparse d...
Nous nous intéressons à l'utilisation d'approximations de rang faible pour réduire le coût des solve...
Many physical phenomena may be studied through modeling and numerical simulations, commonplace in sc...