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Accelerator-Oriented Algorithm Transformation for Temporal Data Mining

机译:临时数据挖掘的加速器导向算法变换

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Temporal data mining algorithms are becoming increasingly important in many application domains including computational neuroscience, especially the analysis of spike train data. While application scientists have been able to readily gather multi-neuronal datasets, analysis capabilities have lagged behind, due to both lack of powerful algorithms and inaccessibility to powerful hardware platforms. The advent of GPU architectures such as Nvidia's GTX 280 offers a cost-effective option to bring these capabilities to the neuroscientist's desktop. Rather than port existing algorithms onto this architecture, we advocate the need for algorithm transformation, i.e., rethinking the design of the algorithm in a way that need not necessarily mirror its serial implementation strictly. We present a novel implementation of a frequent episode discovery algorithm by revisiting "in-the-large" issues such as problem decomposition as well as "in-the-small" issues such as data layouts and memory access patterns. This is non-trivial because frequent episode discovery does not lend itself to GPU-friendly data-parallel mapping strategies. Applications to many datasets and comparisons to CPU as well as prior GPU implementations showcase the advantages of our approach.
机译:在许多应用领域中,时间数据挖掘算法在包括计算神经科学的许多应用领域变得越来越重要,特别是对尖峰列车数据的分析。虽然应用科学家已经能够容易地收集多神经元数据集,但由于缺乏强大的算法和强大的硬件平台缺乏强大的算法,而且由于缺乏强大的硬件平台,分析能力已经滞后。 GPU架构等NVIDIA的GTX 280的出现提供了一种经济高效的选择,可将这些功能带到神经透视员的桌面。我们而不是将现有算法端口到此架构上,我们提倡算法转换,即,以严格不一定不一定镜线实现的方式重新思考算法的设计。我们通过重新审视“众多”问题,例如问题分解,以及数据布局和存储器访问模式等“内部”问题,提出了一种频繁的剧集发现算法的新颖实现。这是非微不足道的,因为频繁的剧集发现不适合GPU友好的数据并行映射策略。应用于许多数据集和CPU的比较以及先前的GPU实现展示了我们方法的优势。

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