hadoop集群上并行k介质算法的映射约简规划模型

Devesh Kumar Srivastava, Ravinder Yadav, G. Agrwal
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引用次数: 2

摘要

本文利用Map-Reduce的概念在Hadoop集群上实现了K-Mediod算法的结果分析。Map-Reduce是一种编程模型,它授权在大量设备上并行管理大量数据集。它特别适合于恒定或适度变化的数据集,因为位置的实现点通常很高。MapReduce被认为是“大数据”的框架。MapReduce模型允许使用一个评估节点集群系统地、即时地组织大规模数据。Hadoop的主要影响之一是如何最小化一组MapReduce任务的完成长度(即make span)。对于word count, grep, terasort和并行k - medium聚类算法等各种应用程序,可以观察到随着节点数量的增加,执行时间会减少。在本文中,我们验证了Map Reduce应用程序,发现随着节点数量的增加,完成时间减少。
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Map reduce programming model for parallel K-mediod algorithm on hadoop cluster
This paper presents result analysis of K-Mediod algorithm, implemented on Hadoop Cluster by using Map-Reduce concept. Map-Reduce are programming models which authorize the managing of huge datasets in parallel, on a large number of devices. It is especially well suited to constant or moderate changing set of data since the implementation point of a position is usually high. MapReduce is supposed to be framework of "big data". The MapReduce model authorizes for systematic and instant organizing of large scale data with a cluster of evaluate nodes. One of the primary affect in Hadoop is how to minimize the completion length (i.e., make span) of a set of MapReduce duty. For various applications like word count, grep, terasort and parallel K-Mediod Clustering Algorithm, it has been observed that as the number of node increases, execution time decreases. In this paper we verified Map Reduce applications and found as the amount of nodes increases the completion time decreases.
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