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Distributed data mining in grid computing environments

机译:网格计算环境中的分布式数据挖掘

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The computing-intensive data mining for inherently Internet-wide distributed data, referred to as Distributed Data Mining (DDM), calls for the support of a powerful Grid with an effective scheduling framework. DDM often shares the computing paradigm of local processing and global synthesizing. It involves every phase of Data Mining (DM) processes, which makes the workflow of DDM very complex and can be modelled only by a Directed Acyclic Graph (DAG) with multiple data entries. Motivated by the need for a practical solution of the Grid scheduling problem for the DDM workflow, this paper proposes a novel two-phase scheduling framework, including External Scheduling and Internal Scheduling, on a two-level Grid architecture (InterGrid, IntraGrid). Currently a DM IntraGrid, named DMGCE (Data Mining Grid Computing Environment), has been developed with a dynamic scheduling framework for competitive DAGs in a heterogeneous computing environment. This system is implemented in an established Multi-Agent System (MAS) environment, in which the reuse of existing DM algorithms is achieved by encapsulating them into agents. Practical classification problems from oil well logging analysis are used to measure the system performance. The detailed experiment procedure and result analysis are also discussed in this paper. (C) 2006 Elsevier B.V. All rights reserved.
机译:固有的Internet范围内分布式数据的计算密集型数据挖掘(称为分布式数据挖掘(DDM))要求使用有效的调度框架支持功能强大的Grid。 DDM通常共享本地处理和全局合成的计算范例。它涉及数据挖掘(DM)过程的每个阶段,这使DDM的工作流程变得非常复杂,并且只能通过具有多个数据条目的有向无环图(DAG)进行建模。出于对DDM工作流的网格调度问题的实际解决方案的需求的推动,本文提出了一种新颖的两阶段调度框架,该框架包括两级网格体系结构(InterGrid,IntraGrid),包括外部调度和内部调度。目前,已经开发了一种名为DMGCE(数据挖掘网格计算环境)的DM IntraGrid,它具有用于异构计算环境中竞争性DAG的动态调度框架。该系统在已建立的多代理系统(MAS)环境中实现,在该环境中,通过将现有的DM算法封装到代理中来实现对它们的重用。油井测井分析中的实际分类问题用于衡量系统性能。本文还讨论了详细的实验过程和结果分析。 (C)2006 Elsevier B.V.保留所有权利。

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