One of the key motivations of computational and data grids is the ability to make coordinated use of heterogeneous computing resources which are geographically dispersed. Consequently, the performance of the network linking all the resources present in a grid has a significant impact on the performance of an application. It is therefore essential to consider network characteristics when carrying out tasks such as scheduling, migration or monitoring of jobs. This work focuses on an implementation of an autonomic network-aware meta-scheduling architecture that is capable of adapting its behavior to the current status of the environment, so that jobs can be efficiently mapped to computing resources. The implementation extends the widely used G...
Abstract—This paper describes a metascheduler for high-performance computing (HPC) grids that is bui...
Abstract—The paper describes a metascheduler for high-performance computing (HPC) grids that is buil...
International audienceIn this paper, we study the impact of task reallocations/migrations on a Grid ...
One of the key motivations of computational and data grids is the ability to make coordinated use of...
Grid technologies have enabled the aggregation of geographically distributed resources, in the conte...
Grid computing supports workload execution on computing resources that are shared across a set of co...
Autonomic middleware services will play an important role in the management of resources and distrib...
In Grids scheduling decisions are often made on the basis of jobs being either data or computation i...
In Grids scheduling decisions are often made on the basis of jobs being either data or computation i...
Grid technologies have enabled the aggregation of geograph-ically distributed resources, in the cont...
Computational Grids consist of an aggregation of data and computing resources, which can be co-allo...
AbstractGrid computing generally involves the aggregation of geographically distributed resources in...
Grid computing generally involves the aggregation of geographically distributed resources in the con...
Grid computing, a special form of distributed computing, stands for the effort undertaken mainly by ...
Computational grids have the potential for solving large-scale scientific problems using heterogene...
Abstract—This paper describes a metascheduler for high-performance computing (HPC) grids that is bui...
Abstract—The paper describes a metascheduler for high-performance computing (HPC) grids that is buil...
International audienceIn this paper, we study the impact of task reallocations/migrations on a Grid ...
One of the key motivations of computational and data grids is the ability to make coordinated use of...
Grid technologies have enabled the aggregation of geographically distributed resources, in the conte...
Grid computing supports workload execution on computing resources that are shared across a set of co...
Autonomic middleware services will play an important role in the management of resources and distrib...
In Grids scheduling decisions are often made on the basis of jobs being either data or computation i...
In Grids scheduling decisions are often made on the basis of jobs being either data or computation i...
Grid technologies have enabled the aggregation of geograph-ically distributed resources, in the cont...
Computational Grids consist of an aggregation of data and computing resources, which can be co-allo...
AbstractGrid computing generally involves the aggregation of geographically distributed resources in...
Grid computing generally involves the aggregation of geographically distributed resources in the con...
Grid computing, a special form of distributed computing, stands for the effort undertaken mainly by ...
Computational grids have the potential for solving large-scale scientific problems using heterogene...
Abstract—This paper describes a metascheduler for high-performance computing (HPC) grids that is bui...
Abstract—The paper describes a metascheduler for high-performance computing (HPC) grids that is buil...
International audienceIn this paper, we study the impact of task reallocations/migrations on a Grid ...