Current scientific applications have been producing large amounts of data. The processing, handling and analysis of such data require large-scale computing infrastructures such as clusters and grids. In this area, studies aim at improving the performance of data-intensive applications by optimizing data accesses. In order to achieve this goal, distributed storage systems have been considering techniques of data replication, migration, distribution, and access parallelism. However, the main drawback of those studies is that they do not take into account application behavior to perform data access optimization. This limitation motivated this paper which applies strategies to support the online prediction of application behavior in order to op...
International audienceIn order to attain the promises of the Cloud Computing paradigm, systems need ...
Many High-Performance Computing (HPC) applications spend a significant portion of their execution ti...
In multiprocessor systems, data parallelism is the execution of the same task on data distributed ac...
Current scientific applications have been producing large amounts of data. The processing, handling ...
The data Grid, a class of Grid Computing, aims at providing services and infrastructure to data-inte...
Computing grids are key enablers of computational science. Researchers from many fields (High Energy...
Large distributed storage systems such as High Performance Computing (HPC) systems used by national ...
ATLAS (A Toroidal LHC Apparatus) is one of several experiments of at the Large Hadron Collider (LHC)...
The computational grid is becoming the platform of choice for large-scale distributed data-intensive...
The computational grid is becoming the platform of choice for large-scale distributed data-intensive...
Abstract. I/O intensive applications have posed great challenges to computational scientists. A majo...
The computational Grid environment is heterogeneous and has a highly dynamic nature. Consequently, a...
University of Minnesota Ph.D. dissertation. February 2010. Major: Computer Science. Advisors: Prof. ...
In order to attain the promises of the Cloud Computing paradigm, systems need to be able to transpar...
The Grid is an infrastructure that enables dynamic sharing and coordinated access of resources among...
International audienceIn order to attain the promises of the Cloud Computing paradigm, systems need ...
Many High-Performance Computing (HPC) applications spend a significant portion of their execution ti...
In multiprocessor systems, data parallelism is the execution of the same task on data distributed ac...
Current scientific applications have been producing large amounts of data. The processing, handling ...
The data Grid, a class of Grid Computing, aims at providing services and infrastructure to data-inte...
Computing grids are key enablers of computational science. Researchers from many fields (High Energy...
Large distributed storage systems such as High Performance Computing (HPC) systems used by national ...
ATLAS (A Toroidal LHC Apparatus) is one of several experiments of at the Large Hadron Collider (LHC)...
The computational grid is becoming the platform of choice for large-scale distributed data-intensive...
The computational grid is becoming the platform of choice for large-scale distributed data-intensive...
Abstract. I/O intensive applications have posed great challenges to computational scientists. A majo...
The computational Grid environment is heterogeneous and has a highly dynamic nature. Consequently, a...
University of Minnesota Ph.D. dissertation. February 2010. Major: Computer Science. Advisors: Prof. ...
In order to attain the promises of the Cloud Computing paradigm, systems need to be able to transpar...
The Grid is an infrastructure that enables dynamic sharing and coordinated access of resources among...
International audienceIn order to attain the promises of the Cloud Computing paradigm, systems need ...
Many High-Performance Computing (HPC) applications spend a significant portion of their execution ti...
In multiprocessor systems, data parallelism is the execution of the same task on data distributed ac...