International audienceGrid systems are complex heterogeneous systems, and their modeling constitutes a highly challenging goal. This paper is interested in modeling the jobs handled by the EGEE grid, by mining the Logging and Bookkeeping files. The goal is to discover meaningful job clusters, going beyond the coarse categories of ”successfully terminated jobs” and ”other jobs”. The presented approach is a threestep process: i) Data slicing is used to alleviate the job heterogeneity and afford discriminant learning; ii) Constructive induction proceeds by learning discriminant hypotheses from each data slice; iii) Finally, double clustering is used on the representation built by constructive induction; the clusters are fully validated after t...
Abstract: Student’s employment in any company has been a big issue,as how the right student would be...
theme du Workshop : Workload characterization and modellingWith Grids, we are able to share computin...
Abstract: Grid computing is nothing but the computing environment in which the resources are shared ...
International audienceGrid systems are complex heterogeneous systems, and their modeling constitutes...
International audienceGrids reliability remains an order of magnitude below clusters on production i...
International audienceThe Affinity Propagation (AP) clustering algorithm proposed by Frey and Dueck ...
International audienceThe ever increasing scale and complexity of large computational systems ask fo...
International audienceDespite extensive research focused on enabling QoS for grid users through econ...
International audienceIt is commonly observed that production grids are inherently unreliable. The a...
In this paper we present an unsupervised learning approach to detect meaningful job traffic patterns...
Abstract—In this paper, we discuss a Grid data mining system based on the MapReduce paradigm of comp...
The paper examines the potential of a novel data mining method, the random forest classifier, to sup...
AbstractData mining approach was used in this paper to predict labor market needs, by implementing N...
Despite extensive research focused on enabling QoS for grid users through economic and intelligent r...
Abstract: Student’s employment in any company has been a big issue,as how the right student would be...
theme du Workshop : Workload characterization and modellingWith Grids, we are able to share computin...
Abstract: Grid computing is nothing but the computing environment in which the resources are shared ...
International audienceGrid systems are complex heterogeneous systems, and their modeling constitutes...
International audienceGrids reliability remains an order of magnitude below clusters on production i...
International audienceThe Affinity Propagation (AP) clustering algorithm proposed by Frey and Dueck ...
International audienceThe ever increasing scale and complexity of large computational systems ask fo...
International audienceDespite extensive research focused on enabling QoS for grid users through econ...
International audienceIt is commonly observed that production grids are inherently unreliable. The a...
In this paper we present an unsupervised learning approach to detect meaningful job traffic patterns...
Abstract—In this paper, we discuss a Grid data mining system based on the MapReduce paradigm of comp...
The paper examines the potential of a novel data mining method, the random forest classifier, to sup...
AbstractData mining approach was used in this paper to predict labor market needs, by implementing N...
Despite extensive research focused on enabling QoS for grid users through economic and intelligent r...
Abstract: Student’s employment in any company has been a big issue,as how the right student would be...
theme du Workshop : Workload characterization and modellingWith Grids, we are able to share computin...
Abstract: Grid computing is nothing but the computing environment in which the resources are shared ...