Due to the character of the original source materials and the nature of batch digitization, quality control issues may be present in this document. Please report any quality issues you encounter to digital@library.tamu.edu, referencing the URI of the item.Includes bibliographical references: p. 46-47.Issued also on microfiche from Lange Micrographics.In this thesis, we study the applicability of pipelining techniques to the development of parallel algorithms for scientific computation. General principles for pipelining techniques are discussed and two applications, Gram-Schmidt orthogonalization and chasing algorithms, are considered. For each application, the pipelined parallel implementation is discussed and performance analysis is prese...
In recent years a new category of data analysis applications have evolved, known as data pipelining ...
Scientific computing is by its very nature a practical subject- it requires tools and a lot of pract...
Combinatorial algorithms have long played apivotal enabling role in many applications of parallel co...
Due to the character of the original source materials and the nature of batch digitization, quality ...
[[abstract]]The basic concept of piplined data-parallel algorithms is introduced by contrasting the ...
Pipelining is normally associated with shared memory and vector computers and rarely used as an algo...
Abstract—Important operations in numerical computing are vector orthogonalization. One of the well-k...
[[abstract]]A systematic procedure for designing pipelined data-parallel algorithms that are suitabl...
[[abstract]]A methodology for designing pipelined data-parallel algorithms on multicomputers is stud...
Many different data compression techniques currently exist. Each has its own advantages and disadvan...
AbstractThe parallelization of the modified Gram-Schmidt orthogonalisation algorithm is studied. Dif...
Pipelining is a very effective way to increase the thruput of a process. It has been used successful...
In this paper we analyse implementations of parallel Gram-Schmidt orthogonalization algorithms. One ...
Parallel processing has gained increasing importance over the last few years. A key aim of parallel ...
In recent years a new category of data analysis applications have evolved, known as data pipelining ...
In recent years a new category of data analysis applications have evolved, known as data pipelining ...
Scientific computing is by its very nature a practical subject- it requires tools and a lot of pract...
Combinatorial algorithms have long played apivotal enabling role in many applications of parallel co...
Due to the character of the original source materials and the nature of batch digitization, quality ...
[[abstract]]The basic concept of piplined data-parallel algorithms is introduced by contrasting the ...
Pipelining is normally associated with shared memory and vector computers and rarely used as an algo...
Abstract—Important operations in numerical computing are vector orthogonalization. One of the well-k...
[[abstract]]A systematic procedure for designing pipelined data-parallel algorithms that are suitabl...
[[abstract]]A methodology for designing pipelined data-parallel algorithms on multicomputers is stud...
Many different data compression techniques currently exist. Each has its own advantages and disadvan...
AbstractThe parallelization of the modified Gram-Schmidt orthogonalisation algorithm is studied. Dif...
Pipelining is a very effective way to increase the thruput of a process. It has been used successful...
In this paper we analyse implementations of parallel Gram-Schmidt orthogonalization algorithms. One ...
Parallel processing has gained increasing importance over the last few years. A key aim of parallel ...
In recent years a new category of data analysis applications have evolved, known as data pipelining ...
In recent years a new category of data analysis applications have evolved, known as data pipelining ...
Scientific computing is by its very nature a practical subject- it requires tools and a lot of pract...
Combinatorial algorithms have long played apivotal enabling role in many applications of parallel co...