Most computational work in Jacobi-Davidson [9], an iterative method for large scale eigenvalue problems, is due to a so-called correction equation. In [5] a strategy for the approximate solution of the correction equation was proposed. This strategy is based on a domain decomposition preconditioning technique in order to reduce wall clock time and local memory requirements. This report discusses the aspect that the original strategy can be improved. For large scale eigenvalue problems that need a massively parallel treatment this aspect turns out to be nontrivial. The impact on the parallel performance will be shown by results of scaling experiments up to 1024 cores
Abstract. We report on a parallel implementation of the Jacobi–Davidson (JD) to compute a few eigenp...
We discuss approaches for an efficient handling of the correction equation in the Jacobi-Davidson me...
In the Davidson method, any preconditioner can be exploited for the iterative computation of eigen-p...
Most computational work in Jacobi-Davidson [9], an iterative method for large scale eigenvalue probl...
Improving the parallel performance of a domain decomposition preconditioning technique in the Jacobi...
The JacobiDavidson method is suitable for computing solutions of large ndimensional eigen value...
textabstractThe Jacobi-Davidson method is suitable for computing solutions of large $n$-dimensional ...
We present parallel preconditioned solvers to compute a few extreme eigenvalues and vectors of large...
The Jacobi\u2013Davidson (JD) algorithm was recently proposed for evaluating a number of the eigenva...
Block variants of the Jacobi-Davidson method for computing a few extreme eigenpairs of a large spars...
Iterative solvers for eigenvalue problems are often the only means of computing the extremal eigenva...
Abstract. In the Davidson method, any preconditioner can be exploited for the iterative computation ...
We exploit an optimization method, called DACG, which sequentially computes the smallest eigenpairs...
. In the Davidson method, any preconditioner can be exploited for the iterative computation of eigen...
This talk discusses the computation of a small set of exterior eigenvalues of a large sparse matrix ...
Abstract. We report on a parallel implementation of the Jacobi–Davidson (JD) to compute a few eigenp...
We discuss approaches for an efficient handling of the correction equation in the Jacobi-Davidson me...
In the Davidson method, any preconditioner can be exploited for the iterative computation of eigen-p...
Most computational work in Jacobi-Davidson [9], an iterative method for large scale eigenvalue probl...
Improving the parallel performance of a domain decomposition preconditioning technique in the Jacobi...
The JacobiDavidson method is suitable for computing solutions of large ndimensional eigen value...
textabstractThe Jacobi-Davidson method is suitable for computing solutions of large $n$-dimensional ...
We present parallel preconditioned solvers to compute a few extreme eigenvalues and vectors of large...
The Jacobi\u2013Davidson (JD) algorithm was recently proposed for evaluating a number of the eigenva...
Block variants of the Jacobi-Davidson method for computing a few extreme eigenpairs of a large spars...
Iterative solvers for eigenvalue problems are often the only means of computing the extremal eigenva...
Abstract. In the Davidson method, any preconditioner can be exploited for the iterative computation ...
We exploit an optimization method, called DACG, which sequentially computes the smallest eigenpairs...
. In the Davidson method, any preconditioner can be exploited for the iterative computation of eigen...
This talk discusses the computation of a small set of exterior eigenvalues of a large sparse matrix ...
Abstract. We report on a parallel implementation of the Jacobi–Davidson (JD) to compute a few eigenp...
We discuss approaches for an efficient handling of the correction equation in the Jacobi-Davidson me...
In the Davidson method, any preconditioner can be exploited for the iterative computation of eigen-p...