Ulster University Logo

Ulster Institutional Repository

Digging Deep into the Data Mine with DataMiningGrid

Biomedical Sciences Research Institute Computer Science Research Institute Environmental Sciences Research Institute Nanotechnology & Advanced Materials Research Institute

Stankovski, Vlado, Trnkoczy, Jernej, Swain, Martin, Dubitzky, Werner, Kravtsov, Valentin, Schuster, Assaf, Niessen, Thomas, Wegener, Dennis, May, Michael, Röhm, Matthias and Franke, Jürgen (2008) Digging Deep into the Data Mine with DataMiningGrid. IEEE INTERNET COMPUTING, 12 (6). pp. 69-76. [Journal article]

Full text not available from this repository.

Abstract

As modern data mining applications increase in complexity, so too do their demands for resources. Grid computing is one of several emerging networked computing paradigms promising to meet the requirements of heterogeneous, large-scale, and distributed data mining applications. Despite this promise, there are still too many issues to be resolved before grid technology is commonly applied to large-scale data mining tasks. To address some of these issues, the authors developed the DataMiningGrid system. It integrates a diverse set of programs and application scenarios within a single framework, and features scalability, flexible extensibility, sophisticated support for relevant standards and different users.

Item Type:Journal article
Faculties and Schools:Faculty of Life and Health Sciences
Faculty of Life and Health Sciences > School of Biomedical Sciences
Research Institutes and Groups:Biomedical Sciences Research Institute
Biomedical Sciences Research Institute > Molecular Medicine
ID Code:4447
Deposited By:Professor Werner Dubitzky
Deposited On:15 May 2012 11:34
Last Modified:15 May 2012 11:34

Repository Staff Only: item control page