Abstract. Parallel graph partitioning is a difficult issue, because the best sequential graph partitioning methods known to date are based on iterative local optimization algorithms that do not parallelize nor scale well. On the other hand, evolutionary algorithms are highly parallel and scalable, but converge very slowly as problem size increases. This paper presents methods that can be used to reduce problem space in a dramatic way when using graph partitioning techniques in a multi-level framework, thus enabling the use of evolutionary algorithms as possible candidates, among others, for the realization of efficient scalable parallel graph partitioning tools. Results obtained on the recursive bipartitioning problem with a multi-threaded ...
Partitioning graphs into equally large groups of nodes, minimizing the number of edges between diffe...
We present a novel distributed evolutionary algorithm, KaFFPaE, to solve the Graph Partitioning Prob...
We describe an approach to parallel graph partitioning that scales to hundreds of processors and pro...
International audienceParallel graph partitioning is a difficult issue, because the best sequential ...
Genetic algorithms are stochastic search and optimization techniques which can be used for a wide ra...
The efficient implementation of parallel processing architectures generally requires the solution of...
Optimal graph partitioning is a foundational problem in computer science, and appears in many differ...
Abstract. The graph-partitioning problem is to divide a graph into several pieces so that the number...
Graph partitioning divides a graph into several pieces by cutting edges. The graph partitioning prob...
Graph partitioning divides a graph into several pieces by cutting edges. Very effective heuristic pa...
A parallel genetic algorithm for the graph partitioning problem is presented, which combines general...
The graph partitioning problem is defined as that of dividing the vertices of an undirected graph in...
The realization of efficient parallel graph partitioners requires the parallelization of the multi-l...
Abstract. The paper gives an overview of our recent work on balanced graph partitioning – partition ...
We present a novel distributed evolutionary algorithm, KaFFPaE, to solve the Graph Partitioning Prob...
Partitioning graphs into equally large groups of nodes, minimizing the number of edges between diffe...
We present a novel distributed evolutionary algorithm, KaFFPaE, to solve the Graph Partitioning Prob...
We describe an approach to parallel graph partitioning that scales to hundreds of processors and pro...
International audienceParallel graph partitioning is a difficult issue, because the best sequential ...
Genetic algorithms are stochastic search and optimization techniques which can be used for a wide ra...
The efficient implementation of parallel processing architectures generally requires the solution of...
Optimal graph partitioning is a foundational problem in computer science, and appears in many differ...
Abstract. The graph-partitioning problem is to divide a graph into several pieces so that the number...
Graph partitioning divides a graph into several pieces by cutting edges. The graph partitioning prob...
Graph partitioning divides a graph into several pieces by cutting edges. Very effective heuristic pa...
A parallel genetic algorithm for the graph partitioning problem is presented, which combines general...
The graph partitioning problem is defined as that of dividing the vertices of an undirected graph in...
The realization of efficient parallel graph partitioners requires the parallelization of the multi-l...
Abstract. The paper gives an overview of our recent work on balanced graph partitioning – partition ...
We present a novel distributed evolutionary algorithm, KaFFPaE, to solve the Graph Partitioning Prob...
Partitioning graphs into equally large groups of nodes, minimizing the number of edges between diffe...
We present a novel distributed evolutionary algorithm, KaFFPaE, to solve the Graph Partitioning Prob...
We describe an approach to parallel graph partitioning that scales to hundreds of processors and pro...