Systolic arrays for determining the singular value decomposition of a mxn, m n, matrix A of bandwidth w are presented. After A has been reduced to bidiagonal form B by means of Givens plane rotations, the singular values of B are computed by the Golub-Reinsch iteration. The products of plane rotations form the matrices of left and right singular vectors. Assuming each processor can compute or supply a plane rotation, O(wn) processors accomplish the reduction to bidiagonal form in O(np) steps, where p is the number of superdiagonals. A constant number of processors then determines each singular value in about 6n steps. The singular vectors are computed by rerouting the rotations through the arrays used for the reduction to bidiagonal form, ...
This thesis presents a systolic algorithm for the SVD of arbitrary complex matrices, based on the cy...
Masters ThesisThe Singular Value Decomposition (SVD) is an important matrix factorization with appli...
Abstract-As a useful tool for dimensionality reduction, Singular Value Decomposition (SVD) plays an ...
We propose a systolic architecture for computing a singular value decomposition of an m x n matrix,...
A cyclic Jacobi method for computing the singular value decomposition of an $mxn$ matrix $(m \geq n...
A triangular processor array for computing a singular value decomposition (SVD) of an $m \times n (...
This paper contains the computation of the singular value decomposition using systolic arrays. Two ...
Architectures for systolic array processor elements for calculating the singular value decomposition...
AbstractA triangular processor array for computing the singular values of an m×n (m⩾n) matrix is pro...
Parallel Jacobi-like algorithms are presented for computing a singular-value decomposition of an $m...
Most methods for calculating the SVD (singular value decomposition) require to first bidiagonalize t...
We present a stream algorithm for the Singular-Value Decomposition (SVD) of an M ×N matrix A. Our al...
AbstractThis paper presents an adaptive hardware design for computing Singular Value Decomposition (...
AbstractThis paper reports several parallel singular value decomposition (SVD) algorithms on the hyp...
In this thesis, we propose a new systolic architecture which is based on the Faddeev\u27s algorithm....
This thesis presents a systolic algorithm for the SVD of arbitrary complex matrices, based on the cy...
Masters ThesisThe Singular Value Decomposition (SVD) is an important matrix factorization with appli...
Abstract-As a useful tool for dimensionality reduction, Singular Value Decomposition (SVD) plays an ...
We propose a systolic architecture for computing a singular value decomposition of an m x n matrix,...
A cyclic Jacobi method for computing the singular value decomposition of an $mxn$ matrix $(m \geq n...
A triangular processor array for computing a singular value decomposition (SVD) of an $m \times n (...
This paper contains the computation of the singular value decomposition using systolic arrays. Two ...
Architectures for systolic array processor elements for calculating the singular value decomposition...
AbstractA triangular processor array for computing the singular values of an m×n (m⩾n) matrix is pro...
Parallel Jacobi-like algorithms are presented for computing a singular-value decomposition of an $m...
Most methods for calculating the SVD (singular value decomposition) require to first bidiagonalize t...
We present a stream algorithm for the Singular-Value Decomposition (SVD) of an M ×N matrix A. Our al...
AbstractThis paper presents an adaptive hardware design for computing Singular Value Decomposition (...
AbstractThis paper reports several parallel singular value decomposition (SVD) algorithms on the hyp...
In this thesis, we propose a new systolic architecture which is based on the Faddeev\u27s algorithm....
This thesis presents a systolic algorithm for the SVD of arbitrary complex matrices, based on the cy...
Masters ThesisThe Singular Value Decomposition (SVD) is an important matrix factorization with appli...
Abstract-As a useful tool for dimensionality reduction, Singular Value Decomposition (SVD) plays an ...