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Parallel Computing Model of Multiple Dimensions Data Streams Canonical Correlation Analysis with GPU

机译:多维数据流的并行计算模型与GPU典范相关性分析

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With view to satisfying the requirement of real-time under the circumstance of resource-constraints,specific and practical architecture for high-dimensional data streams are proposed, meanwhile,based on CUDA(Compute Unified Device Architecture),canonical correlation analysis between two multiple dimensions data streams using data cube pattern and dimensionality-reduction technique is carried out in this framework.The theoretical analysis and experimental results show that the parallel processing method can online detect correlations between multiple dimension data streams accurately in the synchronous sliding window mode.According to the pure CPU method, this method has significant speed advantage, well meeting the real-time requirements of high-dimensional data streaming and can be applied to the field of data stream mining widely.
机译:针对资源有限的情况下满足实时性的要求,提出了一种高实用性的高维数据流架构,同时基于CUDA(Compute Unified Device Architecture),对两个多维之间的规范相关性进行了分析。理论分析和实验结果表明,并行处理方法可以在同步滑动窗口模式下准确地在线检测多维数据流之间的相关性。纯CPU方法,该方法具有明显的速度优势,很好地满足了高维数据流的实时性要求,可广泛应用于数据流挖掘领域。

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