Sparse linear iterative solvers are essential for many large-scale simulations. Much of the runtime of these solvers is often spent in the implicit evaluation of matrix polynomials via a sequence of sparse matrix-vector products. A variety of approaches has been proposed to make these polynomial evaluations explicit (i.e., fix the coefficients), e.g., polynomial preconditioners or s-step Krylov methods. Furthermore, it is nowadays a popular practice to approximate triangular solves by a matrix polynomial to increase parallelism. Such algorithms allow to evaluate the polynomial using a so-called matrix power kernel (MPK), which computes the product between a power of a sparse matrix A and a dense vector x, or a related operation. Recently we...
Many scientific applications require the solution of large and sparse linear systems of equations us...
Computations related to many scientific and engineering problems spend most of their time in solving...
Abstract. Linear systems are required to solve in many scientific applications and the solution of t...
This report has been developed over the work done in the deliverable [Nava94] There it was shown tha...
Krylov methods provide a fast and highly parallel numerical tool for the iterative solution of many ...
Many scientific applications require the solution of large and sparse linear systems of equations us...
AbstractWe examine the computational efficiency of linear algebra components in iterative solvers fo...
With the breakdown of Dennard scaling in the mid-2000s and the end of Moore's law on the horizon, th...
University of Minnesota Ph.D. dissertation. June 2015. Major: Computer Science. Advisor: Yousef Saad...
The increasing complexity of hardware and software environments in high-performance computing poses ...
Graphics Processing Units (GPUs) exhibit significantly higher peak performance than conventional CPU...
© 2014 Technical University of Munich (TUM).Most of the efforts in the FPGA community related to spa...
The symmetric sparse matrix-vector multiplication (SymmSpMV) is an important building block for many...
International audienceWe present a method for automatically selecting optimal implementations of spa...
AbstractSparse matrix vector multiplication (SpMV) is the dominant kernel in scientific simulations....
Many scientific applications require the solution of large and sparse linear systems of equations us...
Computations related to many scientific and engineering problems spend most of their time in solving...
Abstract. Linear systems are required to solve in many scientific applications and the solution of t...
This report has been developed over the work done in the deliverable [Nava94] There it was shown tha...
Krylov methods provide a fast and highly parallel numerical tool for the iterative solution of many ...
Many scientific applications require the solution of large and sparse linear systems of equations us...
AbstractWe examine the computational efficiency of linear algebra components in iterative solvers fo...
With the breakdown of Dennard scaling in the mid-2000s and the end of Moore's law on the horizon, th...
University of Minnesota Ph.D. dissertation. June 2015. Major: Computer Science. Advisor: Yousef Saad...
The increasing complexity of hardware and software environments in high-performance computing poses ...
Graphics Processing Units (GPUs) exhibit significantly higher peak performance than conventional CPU...
© 2014 Technical University of Munich (TUM).Most of the efforts in the FPGA community related to spa...
The symmetric sparse matrix-vector multiplication (SymmSpMV) is an important building block for many...
International audienceWe present a method for automatically selecting optimal implementations of spa...
AbstractSparse matrix vector multiplication (SpMV) is the dominant kernel in scientific simulations....
Many scientific applications require the solution of large and sparse linear systems of equations us...
Computations related to many scientific and engineering problems spend most of their time in solving...
Abstract. Linear systems are required to solve in many scientific applications and the solution of t...