Accelerating Dynamic Time Warping Subsequence Search with GPUs and FPGAs

D. Sart, A. Mueen, W. Najjar, Eamonn J. Keogh, V. Niennattrakul
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引用次数: 131

Abstract

Many time series data mining problems require subsequence similarity search as a subroutine. Dozens of similarity/distance measures have been proposed in the last decade and there is increasing evidence that Dynamic Time Warping (DTW) is the best measure across a wide range of domains. Given DTW’s usefulness and ubiquity, there has been a large community-wide effort to mitigate its relative lethargy. Proposed speedup techniques include early abandoning strategies, lower-bound based pruning, indexing and embedding. In this work we argue that we are now close to exhausting all possible speedup from software, and that we must turn to hardware-based solutions. With this motivation, we investigate both GPU (Graphics Processing Unit) and FPGA (Field Programmable Gate Array) based acceleration of subsequence similarity search under the DTW measure. As we shall show, our novel algorithms allow GPUs to achieve two orders of magnitude speedup and FPGAs to produce four orders of magnitude speedup. We conduct detailed case studies on the classification of astronomical observations and demonstrate that our ideas allow us to tackle problems that would be untenable otherwise.
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利用gpu和fpga加速动态时间翘曲子序列搜索
许多时间序列数据挖掘问题需要子序列相似性搜索作为子程序。在过去的十年中,已经提出了数十种相似性/距离度量方法,并且越来越多的证据表明动态时间扭曲(DTW)是跨广泛领域的最佳度量方法。鉴于DTW的有用性和普遍性,整个社区都在努力减轻它的相对惰性。提出的加速技术包括早期放弃策略、基于下界的剪枝、索引和嵌入。在这项工作中,我们认为,我们现在已经接近用尽所有可能的软件加速,我们必须转向基于硬件的解决方案。基于这一动机,我们研究了DTW度量下基于GPU(图形处理单元)和FPGA(现场可编程门阵列)的子序列相似性搜索加速。正如我们将展示的,我们的新算法允许gpu实现两个数量级的加速,fpga产生四个数量级的加速。我们对天文观测的分类进行了详细的案例研究,并证明我们的想法使我们能够解决否则无法解决的问题。
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