Appearing frequently in applications, generalized eigenvalue problems represent one of the core problems in numerical linear algebra. The QZ algorithm of Moler and Stewart is the most widely used algorithm for addressing such problems. Despite its importance, little attention has been paid to the parallelization of the QZ algorithm. The purpose of this work is to fill this gap. We propose a parallelization of the QZ algorithm that incorporates all modern ingredients of dense eigensolvers, such as multishift and aggressive early deflation techniques. To deal with (possibly many) infinite eigenvalues, a new parallel deflation strategy is developed. Numerical experiments for several random and application examples demonstrate the effectiveness...
Abstract. We present a new parallel implementation of a divide and conquer algorithm for computing t...
International audienceWe design a fast implicit real QZ algorithm for eigenvalue computation of stru...
In many scientific applications, eigenvalues of a matrix have to be computed. By first reducing a ma...
A novel variant of the parallel QR algorithm for solving dense nonsymmetric eigenvalue problems on h...
One approach to solving the nonsymmetric eigenvalue problem in parallel is to parallelize the QR alg...
We present and discuss algorithms and library software for solving the generalized non-symmetric eig...
In this paper a parallel implementation of the QR algorithm for the eigenvalues of a non-Hermitian m...
textThis thesis demonstrates an efficient parallel method of solving the generalized eigenvalue prob...
Abstract. Small- to medium-sized polynomial eigenvalue problems can be solved by lineariz-ing the ma...
Small- to medium-sized polynomial eigenvalue problems can be solved by linearizing the matrix polyno...
We discuss a novel iterative approach for the computation of a number of eigenvalues and eigenvecto...
We present a new parallel implementation of a divide and conquer algorithm for computing the spectra...
This dissertation discusses parallel algorithms for the generalized eigenvalue problem Ax = λBx wher...
The QR algorithm is one of the three phases in the process of computing the eigenvalues and the eige...
In this paper, parallel extensions of a complete symmetric eigensolver, proposed by Yau and Lu in 19...
Abstract. We present a new parallel implementation of a divide and conquer algorithm for computing t...
International audienceWe design a fast implicit real QZ algorithm for eigenvalue computation of stru...
In many scientific applications, eigenvalues of a matrix have to be computed. By first reducing a ma...
A novel variant of the parallel QR algorithm for solving dense nonsymmetric eigenvalue problems on h...
One approach to solving the nonsymmetric eigenvalue problem in parallel is to parallelize the QR alg...
We present and discuss algorithms and library software for solving the generalized non-symmetric eig...
In this paper a parallel implementation of the QR algorithm for the eigenvalues of a non-Hermitian m...
textThis thesis demonstrates an efficient parallel method of solving the generalized eigenvalue prob...
Abstract. Small- to medium-sized polynomial eigenvalue problems can be solved by lineariz-ing the ma...
Small- to medium-sized polynomial eigenvalue problems can be solved by linearizing the matrix polyno...
We discuss a novel iterative approach for the computation of a number of eigenvalues and eigenvecto...
We present a new parallel implementation of a divide and conquer algorithm for computing the spectra...
This dissertation discusses parallel algorithms for the generalized eigenvalue problem Ax = λBx wher...
The QR algorithm is one of the three phases in the process of computing the eigenvalues and the eige...
In this paper, parallel extensions of a complete symmetric eigensolver, proposed by Yau and Lu in 19...
Abstract. We present a new parallel implementation of a divide and conquer algorithm for computing t...
International audienceWe design a fast implicit real QZ algorithm for eigenvalue computation of stru...
In many scientific applications, eigenvalues of a matrix have to be computed. By first reducing a ma...