ABSTRACT This paper describes and analyzes the application of a simulated evolution (SE) approach to the problem of matching and scheduling of coarse-grained tasks in a heterogeneous suite of machines. The various steps of the SE algorithm are first discussed. Goodness function required by SE is designed and explained. Then experimental results applied on various types of workloads are analyzed. Workloads are characterized according to the connectivity, heterogeneity, and communication-to-cost ratio of the task graphs. The performance of SE is also compared with a genetic algorithm (GA) approach for the same problem with respect to the quality of solutions generated, and timing requirements of the algorithms
Includes bibliographical references (pages 175-178).Much work has been done using GAs of various typ...
An algorithm has been developed to dynamically schedule heterogeneous tasks on heterogeneous process...
An algorithm has been developed to dynamically schedule heterogeneous tasks on heterogeneous process...
ABSTRACT This paper describes and analyzes the application of a simulated evolution (SE) approach to...
ABSTRACT This paper describes and analyzes the application of a simulated evolution (SE) approach to...
Abstract This paper applies a simulated evolution (SE) approach to the problem of matching and sched...
Abstract This paper applies a simulated evolution (SE) approach to the problem of matching and sched...
Abstract This paper applies a simulated evolution (SE) approach to the problem of matching and sched...
This paper describes and analyzes the application of a simulated evolution (SE) approach to the prob...
To exploit a heterogeneous computing (HC) environment (e.g., a suite of interconnected different hig...
To meet the increasing computational demands, geographically distributed resources need to be logica...
Abstract. In this study, we address the meta-task scheduling problem in heterogeneous computing (HC)...
Heterogeneous computing (HC) environments composed of interconnected machines with varied computatio...
An algorithm has been developed to dynamically schedule heterogeneous tasks on to heterogeneous proc...
A new optimization technique, called the Genetic Annealing Algorithm (GAA), is proposed in this pape...
Includes bibliographical references (pages 175-178).Much work has been done using GAs of various typ...
An algorithm has been developed to dynamically schedule heterogeneous tasks on heterogeneous process...
An algorithm has been developed to dynamically schedule heterogeneous tasks on heterogeneous process...
ABSTRACT This paper describes and analyzes the application of a simulated evolution (SE) approach to...
ABSTRACT This paper describes and analyzes the application of a simulated evolution (SE) approach to...
Abstract This paper applies a simulated evolution (SE) approach to the problem of matching and sched...
Abstract This paper applies a simulated evolution (SE) approach to the problem of matching and sched...
Abstract This paper applies a simulated evolution (SE) approach to the problem of matching and sched...
This paper describes and analyzes the application of a simulated evolution (SE) approach to the prob...
To exploit a heterogeneous computing (HC) environment (e.g., a suite of interconnected different hig...
To meet the increasing computational demands, geographically distributed resources need to be logica...
Abstract. In this study, we address the meta-task scheduling problem in heterogeneous computing (HC)...
Heterogeneous computing (HC) environments composed of interconnected machines with varied computatio...
An algorithm has been developed to dynamically schedule heterogeneous tasks on to heterogeneous proc...
A new optimization technique, called the Genetic Annealing Algorithm (GAA), is proposed in this pape...
Includes bibliographical references (pages 175-178).Much work has been done using GAs of various typ...
An algorithm has been developed to dynamically schedule heterogeneous tasks on heterogeneous process...
An algorithm has been developed to dynamically schedule heterogeneous tasks on heterogeneous process...