International audienceSparse direct solvers using Block Low-Rank compression have been proven efficient to solve problems arising in many real-life applications. Improving those solvers is crucial for being able to 1) solve larger problems and 2) speed up computations. A main characteristic of a sparse direct solver using low-rank compression is at what point in the algorithm the compression is performed. There are two distinct approaches: (1) all blocks are compressed before starting the factorization, which reduces the memory as much as possible, or (2) each block is compressed as late as possible, which usually leads to better speedup. Approach 1 reaches a very small memory footprint generally at the expense of a greater execution time. ...
International audienceIn order to express parallelism, parallel sparse direct solvers take advantage...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Solving sparse linear systems is a problem that arises in many scientific applications, and sparse d...
International audienceSparse direct solvers using Block Low-Rank compression have been proven effici...
International audienceIn this talk, we describe a preliminary fast direct solver using HODLR library...
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...
International audienceThis paper presents two approaches using a Block Low-Rank (BLR) compression te...
Through the recent improvements toward exascale supercomputer systems, huge computations can be perf...
Solving large, sparse systems of linear equations plays a significant role in certain scientific com...
This paper presents two approaches using a Block Low-Rank (BLR) compressiontechnique to reduce the m...
The dissertation presents some fast direct solvers and efficient preconditioners mainly for sparse m...
International audienceSolving linear equations of type Ax=b for large sparse systems frequently emer...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
International audienceIn order to express parallelism, parallel sparse direct solvers take advantage...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Solving sparse linear systems is a problem that arises in many scientific applications, and sparse d...
International audienceSparse direct solvers using Block Low-Rank compression have been proven effici...
International audienceIn this talk, we describe a preliminary fast direct solver using HODLR library...
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...
International audienceThis paper presents two approaches using a Block Low-Rank (BLR) compression te...
Through the recent improvements toward exascale supercomputer systems, huge computations can be perf...
Solving large, sparse systems of linear equations plays a significant role in certain scientific com...
This paper presents two approaches using a Block Low-Rank (BLR) compressiontechnique to reduce the m...
The dissertation presents some fast direct solvers and efficient preconditioners mainly for sparse m...
International audienceSolving linear equations of type Ax=b for large sparse systems frequently emer...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
International audienceIn order to express parallelism, parallel sparse direct solvers take advantage...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Solving sparse linear systems is a problem that arises in many scientific applications, and sparse d...