The stagnant performance of single core processors, increasing size of data sets, and variety of structure in information has made the domain of parallel and high-performance computing especially crucial. Graphics Processing Units (GPUs) have recently become an exciting alternative to traditional CPU architectures for applications in this domain. Although GPUs are designed for rendering graphics, research has found that the GPU architecture is well-suited to algorithms that search and analyze unstructured, graph-based data, offering up to an order of magnitude greater memory bandwidth over their CPU counterparts. This thesis focuses on GPU graph analysis from the perspective that algorithms should be efficient on as many classes of graphs ...
Mechanisms for improving the execution efficiency of graph algorithms on Data-Parallel Architectures...
Betweenness Centrality (BC) is steadily growing in popularity as a metrics of the inuence of a verte...
A graph is a ubiquitous data structure that models entities and their interactions through the colle...
Abstract—Graphs that model social networks, numerical sim-ulations, and the structure of the Interne...
Abstract—Betweenness Centrality is a widely used graph analytic that has applications such as findin...
In this thesis we investigate the relation between the structure of input graphs and the performance...
The availability and utility of large numbers of Graphical Processing Units (GPUs) have enabled para...
There is growing interest in studying large scale graphs having millions of vertices and billions of...
Graph analytics is fundamental in unlocking key insights by mining large volumes of highly connected...
Graph analytics is fundamental in unlocking key insights by mining large volumes of highly connected...
Modern Graphics Processing Units (GPUs) provide high computation power at low costs and have been de...
Abstract — Graph processing has gained renewed attention. The increasing large scale and wealth of c...
Despite the fact that GPU was originally intended to be as a co-processor specializing in graphics r...
Data analysis is a rising field of interest for computer science research due to the growing amount ...
Graph processing is experiencing a surge of renewed interest as applications in social networks and ...
Mechanisms for improving the execution efficiency of graph algorithms on Data-Parallel Architectures...
Betweenness Centrality (BC) is steadily growing in popularity as a metrics of the inuence of a verte...
A graph is a ubiquitous data structure that models entities and their interactions through the colle...
Abstract—Graphs that model social networks, numerical sim-ulations, and the structure of the Interne...
Abstract—Betweenness Centrality is a widely used graph analytic that has applications such as findin...
In this thesis we investigate the relation between the structure of input graphs and the performance...
The availability and utility of large numbers of Graphical Processing Units (GPUs) have enabled para...
There is growing interest in studying large scale graphs having millions of vertices and billions of...
Graph analytics is fundamental in unlocking key insights by mining large volumes of highly connected...
Graph analytics is fundamental in unlocking key insights by mining large volumes of highly connected...
Modern Graphics Processing Units (GPUs) provide high computation power at low costs and have been de...
Abstract — Graph processing has gained renewed attention. The increasing large scale and wealth of c...
Despite the fact that GPU was originally intended to be as a co-processor specializing in graphics r...
Data analysis is a rising field of interest for computer science research due to the growing amount ...
Graph processing is experiencing a surge of renewed interest as applications in social networks and ...
Mechanisms for improving the execution efficiency of graph algorithms on Data-Parallel Architectures...
Betweenness Centrality (BC) is steadily growing in popularity as a metrics of the inuence of a verte...
A graph is a ubiquitous data structure that models entities and their interactions through the colle...