Sparse linear algebra is central to many areas of engineering, science, and business. The community has done considerable work on proposing new methods for sparse matrix-vector multiplication (SpMV) computations and iterative sparse solvers on graphical processing units (GPUs). Due to vast variations in matrix features, no single method performs well across all sparse matrices. A few tools on automatic prediction of best-performing SpMV kernels have emerged recently and require many more efforts to fully utilize their potential. The utilization of a GPU by the existing SpMV kernels is far from its full capacity. Moreover, the development and performance analysis of SpMV techniques on GPUs have not been studied in sufficient depth. This pape...
Accelerators such as the Graphic Processing Unit (GPU) have increasingly seen use by the science and...
Many important problems in science and engineering today deal with sparse data. Examples of sparse d...
Abstract. Graphics Processing Units (GPUs) are massive data parallel processors. High performance co...
Sparse linear algebra is central to many areas of engineering, science, and business. The community ...
Graphics processing units (GPUs) have delivered a remarkable performance for a variety of high perfo...
AbstractThis paper presents unique modeling algorithms of performance prediction for sparse matrix-v...
Predicting the runtime of a sparse matrix-vector multiplication (SpMV) for different sparse matrix f...
Predicting the runtime of a sparse matrix-vector multiplication (SpMV) for different sparse matrix f...
This paper presents an integrated analytical and profile-based cross-architecture performance modeli...
AbstractSparse matrix vector multiplication (SpMV) is the dominant kernel in scientific simulations....
Abstract—This paper presents a performance modeling and optimization analysis tool to predict and op...
Sparse matrix-vector (SpMV) multiplication is a vital building block for numerous scientific and eng...
Sparse matrix–vector multiplication (SpMV) is of singular importance in sparse linear algebra, which...
Multiphysics simulations are at the core of modern Computer Aided Engineering (CAE) allowing the ana...
Sparse matrix–vector multiplication (SpMV) is of singular importance in sparse linear algebra, which...
Accelerators such as the Graphic Processing Unit (GPU) have increasingly seen use by the science and...
Many important problems in science and engineering today deal with sparse data. Examples of sparse d...
Abstract. Graphics Processing Units (GPUs) are massive data parallel processors. High performance co...
Sparse linear algebra is central to many areas of engineering, science, and business. The community ...
Graphics processing units (GPUs) have delivered a remarkable performance for a variety of high perfo...
AbstractThis paper presents unique modeling algorithms of performance prediction for sparse matrix-v...
Predicting the runtime of a sparse matrix-vector multiplication (SpMV) for different sparse matrix f...
Predicting the runtime of a sparse matrix-vector multiplication (SpMV) for different sparse matrix f...
This paper presents an integrated analytical and profile-based cross-architecture performance modeli...
AbstractSparse matrix vector multiplication (SpMV) is the dominant kernel in scientific simulations....
Abstract—This paper presents a performance modeling and optimization analysis tool to predict and op...
Sparse matrix-vector (SpMV) multiplication is a vital building block for numerous scientific and eng...
Sparse matrix–vector multiplication (SpMV) is of singular importance in sparse linear algebra, which...
Multiphysics simulations are at the core of modern Computer Aided Engineering (CAE) allowing the ana...
Sparse matrix–vector multiplication (SpMV) is of singular importance in sparse linear algebra, which...
Accelerators such as the Graphic Processing Unit (GPU) have increasingly seen use by the science and...
Many important problems in science and engineering today deal with sparse data. Examples of sparse d...
Abstract. Graphics Processing Units (GPUs) are massive data parallel processors. High performance co...