This paper presents a novel heuristic approach, named JDS-HNN, to simultaneously schedule jobs and replicate data files to different entities of a grid system so that the overall makespan of executing all jobs as well as the overall delivery time of all data files to their dependent jobs is concurrently minimized. JDS-HNN is inspired by a natural distribution of a variety of stones among different jars and utilizes a Hopfield Neural Network in one of its optimization stages to achieve its goals. The performance of JDS-HNN has been measured by using several benchmarks varying from medium- to very-large-sized systems. JDS-HNN’s results are compared against the performance of other algorithms to show its superiority under different working con...
In this paper we present the design and implementation of an hyper-heuristic for efficiently schedul...
There are many challenges in Data Grids, and especially the data replication and the job scheduling ...
Many current international scientific projects are based on large scale applications that are both c...
peer reviewedThis paper presents a novel heuristic approach, named JDS-HNN, to simultaneously schedu...
This paper presents a novel Bee Colony based optimization algorithm, named Job Data Scheduling using...
Thesis (M.S.)--Wichita State University, College of Engineering, Dept. of Electrical Engineering and...
Abstract:- The Computational Grids provide a promising platform for efficient execution of computati...
Grid technology, which together a number of personal computer clusters with high speed networks, can...
Abstract 2. Scheduling problem In previous work we have studied the Hopjield Artificial Neural Netwo...
Abstract. Traditional job schedulers for grid or cluster systems are responsible for assigning incom...
This paper explores novel, polynomial time, heuristic, ap-proximate solutions to the NP-hard problem...
Many current international scientific projects are based on large scale applications that are both c...
Most scheduling problems have been demonstrated to be NP-complete problems. The Hopfield neural netw...
Abstract. Many optimization techniques have been adopted for efficient job scheduling in grid comput...
Grid computing environments have emerged following the demand of scientists to have a very high comp...
In this paper we present the design and implementation of an hyper-heuristic for efficiently schedul...
There are many challenges in Data Grids, and especially the data replication and the job scheduling ...
Many current international scientific projects are based on large scale applications that are both c...
peer reviewedThis paper presents a novel heuristic approach, named JDS-HNN, to simultaneously schedu...
This paper presents a novel Bee Colony based optimization algorithm, named Job Data Scheduling using...
Thesis (M.S.)--Wichita State University, College of Engineering, Dept. of Electrical Engineering and...
Abstract:- The Computational Grids provide a promising platform for efficient execution of computati...
Grid technology, which together a number of personal computer clusters with high speed networks, can...
Abstract 2. Scheduling problem In previous work we have studied the Hopjield Artificial Neural Netwo...
Abstract. Traditional job schedulers for grid or cluster systems are responsible for assigning incom...
This paper explores novel, polynomial time, heuristic, ap-proximate solutions to the NP-hard problem...
Many current international scientific projects are based on large scale applications that are both c...
Most scheduling problems have been demonstrated to be NP-complete problems. The Hopfield neural netw...
Abstract. Many optimization techniques have been adopted for efficient job scheduling in grid comput...
Grid computing environments have emerged following the demand of scientists to have a very high comp...
In this paper we present the design and implementation of an hyper-heuristic for efficiently schedul...
There are many challenges in Data Grids, and especially the data replication and the job scheduling ...
Many current international scientific projects are based on large scale applications that are both c...