Data reduction algorithms often produce inaccurate results for loss of relevant information. Recently, the singular value decomposition (SVD) method has been used as preprocessing method in order to deal with high-dimensional data and achieve fuzzy-rough reduct convergence on higher dimensional datasets. Despite the well-known fact that SVD offers attractive properties, its high computational cost remains a critical issue. In this work, we present a parallel implementation of the SVD algorithm on graphics processing units using CUDA programming model. Our approach is based on an iterative parallel version of the QR factorization by means of Givens rotations using the Sameh and Kuck scheme. Our results show significant improvements in terms ...
Using two full applications with different characteristics, this thesis explores the performance and...
Designing parallel models that fully utilize the computation capabilities of Graphics Processing Uni...
QR decomposition is a computationally intensive linear al-gebra operation that factors a matrix A in...
Data reduction algorithms often produce inaccurate results for loss of relevant information. Recentl...
Linear algebra algorithms are fundamental to many com-puting applications. Modern GPUs are suited fo...
In this work, we present a parallel implementation of Hestenes-Jacobi-One-sided method exploiting th...
Abstract. Approximation of matrices using the Singular Value Decom-position (SVD) plays a central ro...
General-Purpose Graphics Processing Units (GPGPUs) have massively parallel computational capabilitie...
The purpose of this thesis is to present the computational performances of graphical processing unit...
Frequency response analysis is an important computational tool to simulate and understand the dynami...
Singular Value Decomposition (SVD) is a key linear algebraic operation in many scientific and engine...
This program has been imported from the CPC Program Library held at Queen's University Belfast (1969...
GPUs are high performance co-processors of CPU for scientific computing including CFD. We present an...
We focus on the Graphic Processor Unit (GPU) profiling of the Singular Value Decomposition (SVD) th...
Graphics Processors Units (GPU) is becoming more popular among other application developers as data ...
Using two full applications with different characteristics, this thesis explores the performance and...
Designing parallel models that fully utilize the computation capabilities of Graphics Processing Uni...
QR decomposition is a computationally intensive linear al-gebra operation that factors a matrix A in...
Data reduction algorithms often produce inaccurate results for loss of relevant information. Recentl...
Linear algebra algorithms are fundamental to many com-puting applications. Modern GPUs are suited fo...
In this work, we present a parallel implementation of Hestenes-Jacobi-One-sided method exploiting th...
Abstract. Approximation of matrices using the Singular Value Decom-position (SVD) plays a central ro...
General-Purpose Graphics Processing Units (GPGPUs) have massively parallel computational capabilitie...
The purpose of this thesis is to present the computational performances of graphical processing unit...
Frequency response analysis is an important computational tool to simulate and understand the dynami...
Singular Value Decomposition (SVD) is a key linear algebraic operation in many scientific and engine...
This program has been imported from the CPC Program Library held at Queen's University Belfast (1969...
GPUs are high performance co-processors of CPU for scientific computing including CFD. We present an...
We focus on the Graphic Processor Unit (GPU) profiling of the Singular Value Decomposition (SVD) th...
Graphics Processors Units (GPU) is becoming more popular among other application developers as data ...
Using two full applications with different characteristics, this thesis explores the performance and...
Designing parallel models that fully utilize the computation capabilities of Graphics Processing Uni...
QR decomposition is a computationally intensive linear al-gebra operation that factors a matrix A in...