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Hadoop cluster with FPGA-based hardware accelerators for K-means clustering algorithm

机译:Hadoop集群与基于FPGA的硬件加速器K-means聚类算法

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In this paper, the implementation of the K-means clustering algorithm on a Hadoop cluster with FPGA-based hardware accelerators is presented. The proposed design follows MapReduce programming model and uses Hadoop distribution file system (HDFS) for storing large dataset. The proposed FPGA-based hardware accelerator for speed up the K-means clustering algorithm is implemented on Xilinx VC707 evaluation boards (EVBs). There are four computers in the proposed Hadoop cluster, one computer is Master Node, and the other three computers are Slave Nodes. The Slave Nodes communicate with VC707 EVBs through Gigabit Ethernet. The experimental results show that for clustering 125 million three-dimensional input dataset, the proposed design can achieve 4× speedup than the Hadoop cluster without FPGA-based hardware accelerators.
机译:本文介绍了与基于FPGA的硬件加速器的Hadoop集群中的K-Means聚类算法的实现。所提出的设计遵循MapReduce编程模型,并使用Hadoop分布文件系统(HDFS)来存储大型数据集。基于FPGA的基于FPGA的硬件加速器用于加速K-Means聚类算法在Xilinx VC707评估板(EVB)上实现。建议的Hadoop集群中有四台计算机,一台计算机是主节点,另一台三台计算机是从属节点。从节点通过千兆以太网与VC707 EVB通信。实验结果表明,对于聚类12500万三维输入数据集,所提出的设计可以实现比没有FPGA的硬件加速器的Hadoop集群实现4倍的加速。

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