In many data grid applications, data can be decomposed into multiple independent sub datasets and distributed for parallel execution and analysis. This property has been successfully exploited using Divisible Load Theory (DLT). Many Scheduling approaches have been studied but there is no optimal solution. This paper proposes a novel Simulated Annealing (SA) algorithm for scheduling divisible load in large scale data grids. SA algorithm is integrated with DLT model and compared with the previous approaches. Experimental results show that the proposed model obtains better solution in term of makespan
Divisible load applications have received a lot of attention in recentscheduling literature. These a...
In many data grid applications, data can be decomposed into multiple independent sub datasets and d...
According to the special features of the dynamic heterogeneous grid environment, a loose-coupled and...
In many data grid applications, data can be decomposed into multiple independent sub datasets and d...
In many data grid applications, data can be decomposed into multiple independent sub datasets and di...
In many data grid applications, data can be decomposed into multiple independent sub data sets and d...
Problem statement: In many data grid applications, data can be decomposed into multiple independent ...
In many data grid applications, data can be decomposed into multiple independent sub-datasets and di...
Abstract: Scheduling an application in data grid was significantly complex and very challenging beca...
Scheduling an application in data grid was significantly complex and very challenging because of its...
In this paper we introduce the Divisible Load Scheduling (DLS) family of algorithms for data-intensi...
In this paper we introduce the Divisible Load Scheduling (DLS) family of algorithms for data-intensi...
Divisible load applications consist of a load, that is input data and associated computation, that c...
Scheduling an application in data grid is significantly complex and very challenging because of its ...
Scheduling an application in data grid is significantly complex and very challenging because of its ...
Divisible load applications have received a lot of attention in recentscheduling literature. These a...
In many data grid applications, data can be decomposed into multiple independent sub datasets and d...
According to the special features of the dynamic heterogeneous grid environment, a loose-coupled and...
In many data grid applications, data can be decomposed into multiple independent sub datasets and d...
In many data grid applications, data can be decomposed into multiple independent sub datasets and di...
In many data grid applications, data can be decomposed into multiple independent sub data sets and d...
Problem statement: In many data grid applications, data can be decomposed into multiple independent ...
In many data grid applications, data can be decomposed into multiple independent sub-datasets and di...
Abstract: Scheduling an application in data grid was significantly complex and very challenging beca...
Scheduling an application in data grid was significantly complex and very challenging because of its...
In this paper we introduce the Divisible Load Scheduling (DLS) family of algorithms for data-intensi...
In this paper we introduce the Divisible Load Scheduling (DLS) family of algorithms for data-intensi...
Divisible load applications consist of a load, that is input data and associated computation, that c...
Scheduling an application in data grid is significantly complex and very challenging because of its ...
Scheduling an application in data grid is significantly complex and very challenging because of its ...
Divisible load applications have received a lot of attention in recentscheduling literature. These a...
In many data grid applications, data can be decomposed into multiple independent sub datasets and d...
According to the special features of the dynamic heterogeneous grid environment, a loose-coupled and...