The QR algorithm is one of the three phases in the process of computing the eigenvalues and the eigenvectors of a dense nonsymmetric matrix. This paper describes a task-based QR algorithm for reducing an upper Hessenberg matrix to real Schur form. The task-based algorithm also supports generalized eigenvalue problems (QZ algorithm) but this paper concentrates on the standard case. The task-based algorithm adopts previous algorithmic improvements, such as tightly-coupled multi-shifts and Aggressive Early Deflation (AED), and also incorporates several new ideas that significantly improve the performance. This includes, but is not limited to, the elimination of several synchronization points, the dynamic merging of previously separate computat...
Library software implementing a parallel small-bulge multishift QR algorithm with Aggressive Early D...
Recently an extension of the class of matrices admitting a Francis type of multishift QR algorithm w...
Library software implementing a parallel small-bulge multishift QR algorithm with Aggressive Early D...
The QR algorithm is one of the three phases in the process of computing the eigenvalues and the eige...
We present a new deflation criterion for the multishift QR algorithm motivated by convergence analys...
AbstractIn the year 2000 the dominant method for solving matrix eigenvalue problems is still the QR ...
We show how both the tridiagonal and bidiagonal QR algorithms can be restructured so that they be- ...
This paper presents two modifications to the multi-shift QR algorithm that significantly increase it...
The QR algorithm is an algorithm for computing the spectral de-composition of a symmetric matrix [9]...
matrix computations, eigenvalues, QR algorithm Each iteration of the multishift QR algorithm of Bai ...
The QR algorithm computes a Schur decomposition of a matrix. It is certainly one of the most importa...
Each iteration of the multishift QR algorithm of Bai and Demmel requires the computation of a "...
This algorithm is an extension of Moler and Stewart's QZ algorithm with some added features for savi...
Appearing frequently in applications, generalized eigenvalue problems represent one of the core prob...
The QR algorithm is the method of choice for computing all eigenvalues of a dense nonsymmetric matri...
Library software implementing a parallel small-bulge multishift QR algorithm with Aggressive Early D...
Recently an extension of the class of matrices admitting a Francis type of multishift QR algorithm w...
Library software implementing a parallel small-bulge multishift QR algorithm with Aggressive Early D...
The QR algorithm is one of the three phases in the process of computing the eigenvalues and the eige...
We present a new deflation criterion for the multishift QR algorithm motivated by convergence analys...
AbstractIn the year 2000 the dominant method for solving matrix eigenvalue problems is still the QR ...
We show how both the tridiagonal and bidiagonal QR algorithms can be restructured so that they be- ...
This paper presents two modifications to the multi-shift QR algorithm that significantly increase it...
The QR algorithm is an algorithm for computing the spectral de-composition of a symmetric matrix [9]...
matrix computations, eigenvalues, QR algorithm Each iteration of the multishift QR algorithm of Bai ...
The QR algorithm computes a Schur decomposition of a matrix. It is certainly one of the most importa...
Each iteration of the multishift QR algorithm of Bai and Demmel requires the computation of a "...
This algorithm is an extension of Moler and Stewart's QZ algorithm with some added features for savi...
Appearing frequently in applications, generalized eigenvalue problems represent one of the core prob...
The QR algorithm is the method of choice for computing all eigenvalues of a dense nonsymmetric matri...
Library software implementing a parallel small-bulge multishift QR algorithm with Aggressive Early D...
Recently an extension of the class of matrices admitting a Francis type of multishift QR algorithm w...
Library software implementing a parallel small-bulge multishift QR algorithm with Aggressive Early D...