Matrix decomposition plays an increasingly significant role in many scientific and engineering applications. Among numerous techniques, Singular Value Decomposition (SVD) and Eigenvalue Decomposition (EVD) are widely used as factorization tools to perform Principal Component Analysis for dimensionality reduction and pattern recognition in image processing, text mining and wireless communications, while QR Decomposition (QRD) and sparse LU Decomposition (LUD) are employed to solve the dense or sparse linear system of equations in bioinformatics, power system and computer vision. Matrix decompositions are computationally expensive and their sequential implementations often fail to meet the requirements of many time-sensitive applications. The...
Due to the increasing complexity of VLSI circuits, power grid simulation has become more and more ti...
The current increases in silicon logic densities have made feasible the implementation of multiproce...
UnrestrictedThe large capacity of field programmable gate arrays (FPGAs) has prompted researchers to...
With the continued development of computation and communication technologies, we are overwhelmed wit...
In recent years, the emerging of new machine learning algorithms and the fast development of availab...
Sparse Lower-Upper (LU) Triangular Decomposition is important to many di erent applications, includi...
There are hundreds of papers on accelerating sparse matrix vector multiplication (SpMV), however, on...
Sparse Matrix-Matrix multiplication (SpMM) is a fundamental operation over irregular data, which is ...
Sparse linear algebra algorithms typically perform poorly on superscalar, general-purpose processors...
Abstract-As a useful tool for dimensionality reduction, Singular Value Decomposition (SVD) plays an ...
This thesis presents a design, implementation and performance benchmark of custom hardware for compu...
The rise of cloud computing and deep machine learning in recent years have led to a tremendous growt...
abstract: The information era has brought about many technological advancements in the past few dec...
abstract: With the end of Dennard scaling and Moore's law, architects have moved towards heterogene...
Digital image processing is a widely used and diverse field. It is used in a broad array of areas su...
Due to the increasing complexity of VLSI circuits, power grid simulation has become more and more ti...
The current increases in silicon logic densities have made feasible the implementation of multiproce...
UnrestrictedThe large capacity of field programmable gate arrays (FPGAs) has prompted researchers to...
With the continued development of computation and communication technologies, we are overwhelmed wit...
In recent years, the emerging of new machine learning algorithms and the fast development of availab...
Sparse Lower-Upper (LU) Triangular Decomposition is important to many di erent applications, includi...
There are hundreds of papers on accelerating sparse matrix vector multiplication (SpMV), however, on...
Sparse Matrix-Matrix multiplication (SpMM) is a fundamental operation over irregular data, which is ...
Sparse linear algebra algorithms typically perform poorly on superscalar, general-purpose processors...
Abstract-As a useful tool for dimensionality reduction, Singular Value Decomposition (SVD) plays an ...
This thesis presents a design, implementation and performance benchmark of custom hardware for compu...
The rise of cloud computing and deep machine learning in recent years have led to a tremendous growt...
abstract: The information era has brought about many technological advancements in the past few dec...
abstract: With the end of Dennard scaling and Moore's law, architects have moved towards heterogene...
Digital image processing is a widely used and diverse field. It is used in a broad array of areas su...
Due to the increasing complexity of VLSI circuits, power grid simulation has become more and more ti...
The current increases in silicon logic densities have made feasible the implementation of multiproce...
UnrestrictedThe large capacity of field programmable gate arrays (FPGAs) has prompted researchers to...