Summary form only given. Scheduling policies are proposed for parallelizing data intensive particle physics analysis applications on computer clusters. Particle physics analysis jobs require the analysis of tens of thousands of particle collision events, each event requiring typically 200ms processing time and 600KB of data. Many jobs are launched concurrently by a large number of physicists. At a first view, particle physics jobs seem to be easy to parallelize, since particle collision events can be processed independently one from another. However, since large amounts of data need to be accessed, the real challenge resides in making an efficient use of the underlying computing resources. We propose several job parallelization and scheduli...
Scheduling parallel applications on shared--memory multiprocessors is a difficult task that requires...
dsn,edp,tsp¤ Abstract. Scheduling parallel applications on shared–memory multiprocessors is a diffic...
A wide range of modern computer systems process workloads composed of parallelizable jobs. Data cent...
Scheduling policies are proposed for parallelizing data intensive particle physics analysis applicat...
We propose several methods for speeding up the processing of particle physics data on clusters of PC...
In today\u27s large scale clusters, running tasks with high degrees of parallelism allows interactiv...
The authors applied operations management principles on scheduling and allocation to scientific comp...
Abstract: This paper proposes a new scheduler to schedule parallel jobs on Clusters that may be part...
this article we investigate the trade-off between time and space efficiency in scheduling and execut...
Scheduling a large number of applications on a cluster computing environment is a serious obstacle t...
Extensive data analysis has become the enabler for diagnostics and decision making in many modern sy...
peer reviewedThe scheduling of parallel tasks is a topic that has received a lot of attention in rec...
International audienceThe scheduling of parallel tasks is a topic that has received a lot of attenti...
This article discusses specialized computer cluster architectures for high performance computing tha...
The Worldwide LHC Computing Grid (WLCG) is the largest Computing Grid and is used by all Large Hadro...
Scheduling parallel applications on shared--memory multiprocessors is a difficult task that requires...
dsn,edp,tsp¤ Abstract. Scheduling parallel applications on shared–memory multiprocessors is a diffic...
A wide range of modern computer systems process workloads composed of parallelizable jobs. Data cent...
Scheduling policies are proposed for parallelizing data intensive particle physics analysis applicat...
We propose several methods for speeding up the processing of particle physics data on clusters of PC...
In today\u27s large scale clusters, running tasks with high degrees of parallelism allows interactiv...
The authors applied operations management principles on scheduling and allocation to scientific comp...
Abstract: This paper proposes a new scheduler to schedule parallel jobs on Clusters that may be part...
this article we investigate the trade-off between time and space efficiency in scheduling and execut...
Scheduling a large number of applications on a cluster computing environment is a serious obstacle t...
Extensive data analysis has become the enabler for diagnostics and decision making in many modern sy...
peer reviewedThe scheduling of parallel tasks is a topic that has received a lot of attention in rec...
International audienceThe scheduling of parallel tasks is a topic that has received a lot of attenti...
This article discusses specialized computer cluster architectures for high performance computing tha...
The Worldwide LHC Computing Grid (WLCG) is the largest Computing Grid and is used by all Large Hadro...
Scheduling parallel applications on shared--memory multiprocessors is a difficult task that requires...
dsn,edp,tsp¤ Abstract. Scheduling parallel applications on shared–memory multiprocessors is a diffic...
A wide range of modern computer systems process workloads composed of parallelizable jobs. Data cent...