A fast and scalable FPGA-based parallel processing architecture for K-means clustering for big data analysis

R. Raghavan, D. Perera
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引用次数: 8

Abstract

The exponential growth of complex, heterogeneous, dynamic, and unbounded data, generated by a variety of fields including health, genomics, physics, climatology, and social networks pose significant challenges in data processing and desired speed-performance. Existing processor-based software-only algorithms are incapable of analyzing and processing this enormous amount of data, efficiently and effectively. Consequently, some kind of hardware support is desirable to overcome the challenges in analyzing big data. Big data analytics involves many important data mining tasks including clustering, which categorizes the data into meaningful groups based on the similarity or dissimilarity among objects. In this research work, we introduce an efficient FPGA-based parallel processing architecture for K-means Clustering, one of the most popular clustering algorithms. Experiments are performed on a benchmark dataset to evaluate the feasibility and efficiency of our hardware design. Our hardware architecture is generic, parameterized, and scalable to support larger and varying datasets as well as a varying number of clusters. Our hardware configuration with 32 processing elements (PEs) achieved 368 times speedup compared to its software counterpart.
一个快速和可扩展的基于fpga的并行处理架构,用于大数据分析的K-means聚类
由健康、基因组学、物理、气候学和社会网络等多个领域产生的复杂、异构、动态和无界数据呈指数级增长,对数据处理和所需的速度性能提出了重大挑战。现有处理器的纯软件算法无法分析和处理大量的数据,有效的和有效的。因此,需要某种硬件支持来克服分析大数据的挑战。大数据分析涉及许多重要的数据挖掘任务,包括聚类,它根据对象之间的相似性或差异性将数据分类为有意义的组。在这项研究工作中,我们为最流行的聚类算法之一K-means聚类引入了一种高效的基于fpga的并行处理架构。在一个基准数据集上进行了实验,以评估我们硬件设计的可行性和效率。我们的硬件架构是通用的、参数化的、可扩展的,以支持更大的、不同的数据集以及不同数量的集群。我们的硬件配置有32个处理元素(pe),与对应的软件相比,速度提高了368倍。
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