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Advantages of Giraph over Hadoop in Graph Processing

机译:Giraph在图形处理方面优于Hadoop的优势

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This article presents a comparison of the computing performance of the MapReduce tool Hadoop and Giraph on large-scale graphs. The main ideas of MapReduce and bulk synchronous parallel (BSP) are reviewed as big data computing approaches to highlight their applicability in large-scale graph processing. This paper reviews the execution performance of Hadoop and Giraph on the PageRank algorithm to classify web pages according to their relevance, and on a few other algorithms to find the minimum spanning tree in a graph with the primary goal of finding the most efficient computing approach to work on large-scale graphs. Experimental results show that the use of Giraph for processing large-size graphs reduces the execution time by 25% in comparison with the results obtained using the Hadoop for the same experiments. Giraph represents the optimal option thanks to its in-memory computing approach that avoids secondary memory direct interaction.
机译:本文在大型图上比较了MapReduce工具Hadoop和Giraph的计算性能。作为大数据计算方法,对MapReduce和批量同步并行(BSP)的主要思想进行了概述,以突出它们在大规模图形处理中的适用性。本文回顾了Hadoop和Giraph在PageRank算法上的执行性能,以根据它们的相关性对网页进行分类,并在其他几种算法上找到图形中的最小生成树,其主要目标是寻找最有效的计算方法来在大型图上工作。实验结果表明,与使用Hadoop进行相同实验的结果相比,使用Giraph处理大型图形的执行时间减少了25%。 Giraph代表最佳选择,这要归功于其内存中计算方法避免了辅助内存的直接交互。

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