Abstract. For the past decade, HENP experiments have been heading towards a distributed computing model in an effort to concurrently process tasks over enormous data sets that have been increasing in size as a function of time. In order to optimize all available resources (geographically spread) and minimize the processing time, it is necessary to face also the question of efficient data transfers and placements. A key question is whether the time penalty for moving the data to the computational resources is worth the presumed gain. Onward to the truly distributed task scheduling we present the technique using a Constraint Programming (CP) approach. The CP technique schedules data transfers from multiple resources considering all available ...
In this contribution, the scheduling at flexible job-shops and the lot streaming problem are simulta...
This paper describes a computing environment which supports computer-based scientific research work....
Program parallelization and distribution becomes increasingly important when new multi-core architec...
Time-related optimization problems are very hard to solve. Scheduling covers a subcategory of such p...
Today?s scientific and business applications generate mas- sive data sets that need to be transferre...
Typically called big data processing, analyzing large volumes of data from geographically distribute...
Scientific applications and experimental facilities generate massive data sets that need to be trans...
International audienceIn the context of space missions, where onboard memory resources are limited, ...
As a result of advances in technology and highly demanding users expectations, more and more applica...
Abstract. Task Scheduling is a critical design issue of distributed computing. The emerging Grid com...
Abstract. In recent years, there has been a growing demand on the required resources in terms of com...
Many combinatorial optimization problems lend themselves to be modeled as distributed constraint opt...
We consider the problem of scheduling multiple projects subject to joint resource constraints. Most ...
In the context of service hosting in large-scale datacenters, we consider the problem faced by a pro...
enable a group of collaborating but geographically separated researchers to effectively investigate ...
In this contribution, the scheduling at flexible job-shops and the lot streaming problem are simulta...
This paper describes a computing environment which supports computer-based scientific research work....
Program parallelization and distribution becomes increasingly important when new multi-core architec...
Time-related optimization problems are very hard to solve. Scheduling covers a subcategory of such p...
Today?s scientific and business applications generate mas- sive data sets that need to be transferre...
Typically called big data processing, analyzing large volumes of data from geographically distribute...
Scientific applications and experimental facilities generate massive data sets that need to be trans...
International audienceIn the context of space missions, where onboard memory resources are limited, ...
As a result of advances in technology and highly demanding users expectations, more and more applica...
Abstract. Task Scheduling is a critical design issue of distributed computing. The emerging Grid com...
Abstract. In recent years, there has been a growing demand on the required resources in terms of com...
Many combinatorial optimization problems lend themselves to be modeled as distributed constraint opt...
We consider the problem of scheduling multiple projects subject to joint resource constraints. Most ...
In the context of service hosting in large-scale datacenters, we consider the problem faced by a pro...
enable a group of collaborating but geographically separated researchers to effectively investigate ...
In this contribution, the scheduling at flexible job-shops and the lot streaming problem are simulta...
This paper describes a computing environment which supports computer-based scientific research work....
Program parallelization and distribution becomes increasingly important when new multi-core architec...