The paper "Bringing Order to Sparsity: A Sparse Matrix Reordering Study on Multicore CPUs" compares various strategies for reordering sparse matrices. The purpose of reordering is to improve performance of sparse matrix operations, for example, by reducing fill-in resulting from sparse Cholesky factorisation or improving data locality in sparse matrix-vector multiplication (SpMV). Many reordering strategies have been proposed in the literature and the current paper provides a thorough comparison of several of the most popular methods. This comparison is based on performance measurements that were collected on the eX3 cluster, a Norwegian, experimental research infrastructure for exploration of exascale computing. These performance measurem...
Abstract—Industry is moving towards many-core processors, which are expected to consist of tens or e...
The problem of Cholesky factorization of a sparse matrix has been very well investigated on sequenti...
Sparse kernel performance depends on both the matrix and hardware platform. � Challenges in tuning s...
The paper "Bringing Order to Sparsity: A Sparse Matrix Reordering Study on Multicore CPUs" compares ...
The paper "Bringing Order to Sparsity: A Sparse Matrix Reordering Study on Multicore CPUs" compares ...
It is well-known that reordering techniques applied to sparse matrices are common strategies to impr...
Sparse matrix-vector multiplication (shortly SpM×V) is an important building block in algorithms sol...
Abstract. Sparse matrix-vector multiplication is an important computational kernel that tends to per...
Abstract—Many sparse matrix computations can be speeded up if the matrix is first reordered. Reorder...
Sparse matrix vector multiplication (SpMV) is one of the most common operations in scientific and hi...
In this paper, we propose a lightweight optimization methodology for the ubiquitous sparse matrix-ve...
Sparse matrix–vector multiplications (SpMV) are common in scientific and HPC applications but are ha...
We are witnessing a dramatic change in computer architecture due to the multicore paradigm shift, as...
Graphics processing units (GPUs) have delivered a remarkable performance for a variety of high perfo...
xi, 76 leaves : ill. ; 29 cm.The efficiency of linear algebra operations for sparse matrices on mode...
Abstract—Industry is moving towards many-core processors, which are expected to consist of tens or e...
The problem of Cholesky factorization of a sparse matrix has been very well investigated on sequenti...
Sparse kernel performance depends on both the matrix and hardware platform. � Challenges in tuning s...
The paper "Bringing Order to Sparsity: A Sparse Matrix Reordering Study on Multicore CPUs" compares ...
The paper "Bringing Order to Sparsity: A Sparse Matrix Reordering Study on Multicore CPUs" compares ...
It is well-known that reordering techniques applied to sparse matrices are common strategies to impr...
Sparse matrix-vector multiplication (shortly SpM×V) is an important building block in algorithms sol...
Abstract. Sparse matrix-vector multiplication is an important computational kernel that tends to per...
Abstract—Many sparse matrix computations can be speeded up if the matrix is first reordered. Reorder...
Sparse matrix vector multiplication (SpMV) is one of the most common operations in scientific and hi...
In this paper, we propose a lightweight optimization methodology for the ubiquitous sparse matrix-ve...
Sparse matrix–vector multiplications (SpMV) are common in scientific and HPC applications but are ha...
We are witnessing a dramatic change in computer architecture due to the multicore paradigm shift, as...
Graphics processing units (GPUs) have delivered a remarkable performance for a variety of high perfo...
xi, 76 leaves : ill. ; 29 cm.The efficiency of linear algebra operations for sparse matrices on mode...
Abstract—Industry is moving towards many-core processors, which are expected to consist of tens or e...
The problem of Cholesky factorization of a sparse matrix has been very well investigated on sequenti...
Sparse kernel performance depends on both the matrix and hardware platform. � Challenges in tuning s...