International audienceLow-rank compression techniques are very promising for reducing memory footprint and execution time on a large spectrum of linear solvers. Sparse direct supernodal approaches are one of these techniques. However, despite providing a very good scalability and reducing the memory footprint, they suffer from an important flops overhead in their unstructured low-rank updates. As a consequence, the execution time is not improved as expected. In this paper, we study a solution to improve low-rank compression techniques in sparse supernodal solvers. The proposed method tackles the overprice of the low-rank updates by identifying the blocks that have poor compression rates. We show that the fill-in levels of the graph based bl...
National audienceIn this talk, we present the use of PaStiX sparse direct solver in a Schwarz method...
Solving sparse linear systems is a problem that arises in many scientific applications, and sparse d...
The dissertation presents some fast direct solvers and efficient preconditioners mainly for sparse m...
International audienceLow-rank compression techniques are very promising for reducing memory footpri...
International audienceThis paper presents two approaches using a Block Low-Rank (BLR) compression te...
This paper presents two approaches using a Block Low-Rank (BLR) compression technique to reduce the ...
International audienceSparse direct solvers using Block Low-Rank compression have been proven effici...
Through the recent improvements toward exascale supercomputer systems, huge computations can be perf...
International audienceIn this talk, we describe a preliminary fast direct solver using HODLR library...
International audienceIn this talk, we present the PaStiX sparse supernodal solver, using hierarchic...
International audienceIn this talk, we present the PaStiX sparse supernodal solver, using hierarchic...
This paper presents two approaches using a Block Low-Rank (BLR) compressiontechnique to reduce the m...
International audienceSolving linear equations of type Ax=b for large sparse systems frequently emer...
International audienceIn the context of solving sparse linear systems, an ordering process partition...
International audienceWe will discuss challenges in building clusters for the Block Low-Rank (BLR) a...
National audienceIn this talk, we present the use of PaStiX sparse direct solver in a Schwarz method...
Solving sparse linear systems is a problem that arises in many scientific applications, and sparse d...
The dissertation presents some fast direct solvers and efficient preconditioners mainly for sparse m...
International audienceLow-rank compression techniques are very promising for reducing memory footpri...
International audienceThis paper presents two approaches using a Block Low-Rank (BLR) compression te...
This paper presents two approaches using a Block Low-Rank (BLR) compression technique to reduce the ...
International audienceSparse direct solvers using Block Low-Rank compression have been proven effici...
Through the recent improvements toward exascale supercomputer systems, huge computations can be perf...
International audienceIn this talk, we describe a preliminary fast direct solver using HODLR library...
International audienceIn this talk, we present the PaStiX sparse supernodal solver, using hierarchic...
International audienceIn this talk, we present the PaStiX sparse supernodal solver, using hierarchic...
This paper presents two approaches using a Block Low-Rank (BLR) compressiontechnique to reduce the m...
International audienceSolving linear equations of type Ax=b for large sparse systems frequently emer...
International audienceIn the context of solving sparse linear systems, an ordering process partition...
International audienceWe will discuss challenges in building clusters for the Block Low-Rank (BLR) a...
National audienceIn this talk, we present the use of PaStiX sparse direct solver in a Schwarz method...
Solving sparse linear systems is a problem that arises in many scientific applications, and sparse d...
The dissertation presents some fast direct solvers and efficient preconditioners mainly for sparse m...