An Architecture for Efficient Hardware Data Mining using Reconfigurable Computing Systems

Z. Baker, V. Prasanna
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引用次数: 56

Abstract

The Apriori algorithm is a fundamental correlation-based data mining kernel used in a variety of fields. The innovation in this paper is a highly parallel custom architecture implemented on a reconfigurable computing system. Using this "bitmapped CAM," the time and area required for executing the subset operations fundamental to data mining can be significantly reduced. The bitmapped CAM architecture implementation on an FPGA-accelerated high performance workstation provides a performance acceleration of orders of magnitude over software-based systems. The bitmapped CAM utilizes redundancy within the candidate data to efficiently store and process many subset operations simultaneously. The efficiency of this operation allows 140 units to process about 2,240 subset operations simultaneously. Using industry-standard benchmarking databases, we have tested the bitmapped CAM architecture and shown the platform provides a minimum of 24times (and often much higher) time performance advantage over the fastest software Apriori implementations
基于可重构计算系统的高效硬件数据挖掘体系结构
Apriori算法是一种基本的基于关联的数据挖掘内核,应用于许多领域。本文的创新之处在于在可重构计算系统上实现了高度并行的自定义体系结构。使用这种“位图CAM”,执行数据挖掘的基本子集操作所需的时间和面积可以大大减少。位图CAM架构在fpga加速的高性能工作站上的实现提供了基于软件系统的数量级的性能加速。位图CAM利用候选数据中的冗余来有效地存储和同时处理多个子集操作。该操作的效率允许140个单元同时处理大约2,240个子集操作。使用行业标准的基准数据库,我们已经测试了位图CAM架构,并显示该平台比最快的软件Apriori实现提供了至少24倍(通常更高)的时间性能优势
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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