AbstractThe analysis of graphs has become increasingly important to a wide range of applications. Graph analysis presents a number of unique challenges in the areas of (1) software complexity, (2) data complexity, (3) security, (4) mathematical complexity, (5) theoretical analysis, (6) serial performance, and (7) parallel performance. Implementing graph algorithms using matrix-based approaches provides a number of promising solutions to these challenges. The GraphBLAS standard (istc-bigdata.org/GraphBlas) is being developed to bring the potential of matrix based graph algorithms to the broadest possible audience. The GraphBLAS mathematically defines a core set of matrix-based graph operations that can be used to implement a wide class of gr...
Abstract — It is our view that the state of the art in constructing a large collection of graph algo...
Many numerical methods for evaluating matrix functions can be naturally viewed as computational grap...
Description Routines for simple graphs and network analysis. igraph can handle large graphs very wel...
The analysis of graphs has become increasingly important to a wide range of applications. Graph anal...
AbstractThe analysis of graphs has become increasingly important to a wide range of applications. Gr...
The analysis of graphs has become increasingly important to a wide range of applications. Graph anal...
The GraphBLAS standard (GraphBlas.org) is being developed to bring the potential of matrix-based gra...
The GraphBLAS standard (GraphBlas.org) is being developed to bring the potential of matrix based gra...
This tutorial describes the theoretical background of GraphBLAS. First, we discuss the need for a st...
This new edition illustrates the power of linear algebra in the study of graphs. The emphasis on mat...
Graph algorithms can be expressed in terms of linear algebra. GraphBLAS is a library of low-level bu...
The challenges associated with graph algorithm scaling led multiple scientists to identify the need ...
Graph algorithms typically have very low computational intensities, hence their execution times are ...
The present article is designed to be a contribution to the chapter `Combinatorial Matrix Theory and...
This dissertation advances the state of the art for scalable high-performance graph analytics and da...
Abstract — It is our view that the state of the art in constructing a large collection of graph algo...
Many numerical methods for evaluating matrix functions can be naturally viewed as computational grap...
Description Routines for simple graphs and network analysis. igraph can handle large graphs very wel...
The analysis of graphs has become increasingly important to a wide range of applications. Graph anal...
AbstractThe analysis of graphs has become increasingly important to a wide range of applications. Gr...
The analysis of graphs has become increasingly important to a wide range of applications. Graph anal...
The GraphBLAS standard (GraphBlas.org) is being developed to bring the potential of matrix-based gra...
The GraphBLAS standard (GraphBlas.org) is being developed to bring the potential of matrix based gra...
This tutorial describes the theoretical background of GraphBLAS. First, we discuss the need for a st...
This new edition illustrates the power of linear algebra in the study of graphs. The emphasis on mat...
Graph algorithms can be expressed in terms of linear algebra. GraphBLAS is a library of low-level bu...
The challenges associated with graph algorithm scaling led multiple scientists to identify the need ...
Graph algorithms typically have very low computational intensities, hence their execution times are ...
The present article is designed to be a contribution to the chapter `Combinatorial Matrix Theory and...
This dissertation advances the state of the art for scalable high-performance graph analytics and da...
Abstract — It is our view that the state of the art in constructing a large collection of graph algo...
Many numerical methods for evaluating matrix functions can be naturally viewed as computational grap...
Description Routines for simple graphs and network analysis. igraph can handle large graphs very wel...