Graphics Processing Units (GPUs) exhibit significantly higher peak performance than conventional CPUs. However, in general only highly parallel algorithms can exploit their potential. In this scenario, the iterative solution to sparse linear systems of equations could be carried out quite efficiently on a GPU as it requires only matrix-by-vector products, dot products, and vector updates. However, to be really effective, any iterative solver needs to be properly preconditioned and this represents a major bottleneck for a successful GPU implementation. Due to its inherent parallelism, the factored sparse approximate inverse (FSAI) preconditioner represents an optimal candidate for the conjugate gradient-like solution of sparse linear systems...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
Graphics Processing Units (GPUs) exhibit significantly higher peak performance than conventional CPU...
GPUs exhibit significantly higher peak performance than conventional CPUs. However, due to their pro...
Simulation with models based on partial differential equations often requires the solution of (seque...
Accelerating numerical algorithms for solving sparse linear systems on parallel architectures has at...
AbstractWe propose a parallel implementation of the Preconditioned Conjugate Gradient algorithm on a...
The solution of linear systems of equations is a central task in a number of scientific and engineer...
Simulation with models based on partial differential equations often requires the solution of (seque...
Simulation with models based on partial differential equations often requires the solution of (seque...
Simulation with models based on partial differential equations often requires the solution of (seque...
Simulation with models based on partial differential equations often requires the solution of (seque...
Simulation with models based on partial differential equations often requires the solution of (seque...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
Graphics Processing Units (GPUs) exhibit significantly higher peak performance than conventional CPU...
GPUs exhibit significantly higher peak performance than conventional CPUs. However, due to their pro...
Simulation with models based on partial differential equations often requires the solution of (seque...
Accelerating numerical algorithms for solving sparse linear systems on parallel architectures has at...
AbstractWe propose a parallel implementation of the Preconditioned Conjugate Gradient algorithm on a...
The solution of linear systems of equations is a central task in a number of scientific and engineer...
Simulation with models based on partial differential equations often requires the solution of (seque...
Simulation with models based on partial differential equations often requires the solution of (seque...
Simulation with models based on partial differential equations often requires the solution of (seque...
Simulation with models based on partial differential equations often requires the solution of (seque...
Simulation with models based on partial differential equations often requires the solution of (seque...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...