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Data Partitioning and Placement Schemes for Matrix Multiplications on a PIM Architecture

机译:PIM架构上矩阵乘法的数据分区和放置方案

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Data intensive applications require massive data transfers between storage and processing units. VLSI scaling has increased the sizes of dynamic memories as well as speeds and capabilities of processing units to a point where, for many such applications, storage and computational processing capabilities are no longer the main limiting factors. Despite this fact, most current architectures fail to meet the performance requirements for such data intensive applications. In this paper, we describe a PIM architecture that harnesses the benefits of VLSI scaling to accelerate matrix operations that constitute the core of many data-intensive applications. We then present data partitioning and placement schemes that are efficient in terms of the computational complexities and internode communication cost. Such approaches are evaluated and analyzed under various computing environments. We also discuss on how to apply such partitioning and placement schemes to each matrix when chains of matrix operations are given as a task.
机译:数据密集型应用需要在存储和处理单元之间进行大量数据传输。 VLSI缩放增加了动态存储器的大小,以及处理单元的速度和能力,在许多这样的应用程序,存储和计算处理能力不再是主要限制因素的位置。尽管如此,大多数当前架构都无法满足此类数据密集型应用程序的性能要求。在本文中,我们描述了一种PIM架构,它利用VLSI缩放的好处,以加速构成许多数据密集型应用程序的核心的矩阵操作。然后,我们在计算复杂性和节省间通信成本方面存在高效的数据分区和放置方案。在各种计算环境下评估和分析这些方法。我们还讨论如何在将矩阵操作链接作为任务时对每个矩阵应用此类分区和放置方案。

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