Many real-world data contain internal relationships. Efficient analysis of these relationship data is crucial for important problems including genome alignment, network vulnerability analysis, ranking web pages, among others. Such relationship data is frequently sparse and analysis on it is called sparse computation. We demonstrate that the important technique of data tiling is more powerful than previously known by broadening its application space. We focus on three important sparse computation areas: graph analysis, linear algebra, and bioinformatics. We demonstrate data tiling's power by addressing key issues and providing significant improvements---to both runtime and solution quality---in each area. For graph analysis, we focus on fast...
An organism’s DNA sequence is a virtual cornucopia of information, and sequencing technology is the ...
abstract: Imaging genetics is an emerging and promising technique that investigates how genetic vari...
Irregular algorithms such as graph algorithms, sorting, and sparse matrix multiplication, present nu...
Many real-world data contain internal relationships. Efficient analysis of these relationship data i...
The objective of this research is to improve the performance of sparse problems that have a wide ran...
Large-scale numerically intensive scientific applications can require tremendous amounts of computer...
abstract: Sparsity has become an important modeling tool in areas such as genetics, signal and audio...
Ever-increasing amounts of complex biological data continue to come on line daily. Examples include ...
The meaning of parsimony is twofold in machine learning: either the structure or (and) the parameter...
Graphs' versatile ability to represent diverse relationships, make them effective for a wide range o...
This dissertation advances the state of the art for scalable high-performance graph analytics and da...
University of Minnesota Ph.D. dissertation. April 2019. Major: Computer Science. Advisor: George Ka...
Graph theoretical approaches have been widely used to solve problems arising in bioinformatics and g...
Matrix computation is an important area in high-performance scientific computing. Major computer man...
https://hal.archives-ouvertes.fr/tel-01288976v1This document is organized around three chapters.that...
An organism’s DNA sequence is a virtual cornucopia of information, and sequencing technology is the ...
abstract: Imaging genetics is an emerging and promising technique that investigates how genetic vari...
Irregular algorithms such as graph algorithms, sorting, and sparse matrix multiplication, present nu...
Many real-world data contain internal relationships. Efficient analysis of these relationship data i...
The objective of this research is to improve the performance of sparse problems that have a wide ran...
Large-scale numerically intensive scientific applications can require tremendous amounts of computer...
abstract: Sparsity has become an important modeling tool in areas such as genetics, signal and audio...
Ever-increasing amounts of complex biological data continue to come on line daily. Examples include ...
The meaning of parsimony is twofold in machine learning: either the structure or (and) the parameter...
Graphs' versatile ability to represent diverse relationships, make them effective for a wide range o...
This dissertation advances the state of the art for scalable high-performance graph analytics and da...
University of Minnesota Ph.D. dissertation. April 2019. Major: Computer Science. Advisor: George Ka...
Graph theoretical approaches have been widely used to solve problems arising in bioinformatics and g...
Matrix computation is an important area in high-performance scientific computing. Major computer man...
https://hal.archives-ouvertes.fr/tel-01288976v1This document is organized around three chapters.that...
An organism’s DNA sequence is a virtual cornucopia of information, and sequencing technology is the ...
abstract: Imaging genetics is an emerging and promising technique that investigates how genetic vari...
Irregular algorithms such as graph algorithms, sorting, and sparse matrix multiplication, present nu...