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Accelerating large data analysis by exploiting regularities

机译:通过利用规律性来加速大数据分析

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We present techniques for discovering and exploiting regularity in large curvilinear data sets. The data can be based on a single mesh or a mesh composed of multiple submeshes (also known as zones). Multi-zone data are typical in Computational Fluid Dynamics (CFD) simulations. Regularities include axis-aligned rectilinear and cylindrical meshes as well as cases where one zone is equivalent to a rigid body transformation of another. Our algorithms can also discover rigid-body motion of meshes in time-series data. Next, we describe a data model where we can utilize the results from the discovery process in order to accelerate large data visualizations. Where possible, we replace general curvilinear zones with rectilinear or cylindrical zones. In rigid-body motion cases, we replace a time-series of meshes with a transformed mesh object where a reference mesh is dynamically transformed based on a given time value in order to satisfy geometry requests, on demand. The data model enables us to make these substitutions and dynamic transformations transparently with respect to the visualization algorithms. We present results with large data sets where we combine our mesh replacement and transformation techniques with out-of-core paging in order to achieve analysis speedups ranging from 1.5 to 2.
机译:我们提出了在大曲线数据集中发现和利用规律性的技术。数据可以基于单个网格或由多个子/地区组成的网格(也称为区域)。多区域数据在计算流体动力学(CFD)模拟中是典型的。规律性包括轴对齐的直线和圆柱网,以及一个区域等于另一个区域的刚性体变换。我们的算法还可以在时间序列数据中发现网格的刚体运动。接下来,我们描述了一种数据模型,我们可以利用发现过程中的结果以加速大数据可视化。在可能的情况下,我们可以用直线或圆柱形区域取代一般曲线区域。在刚体运动情况下,我们替换具有变换的网格对象的时间序列,其中基于给定时间值动态地转换参考网格,以满足几何请求,按需满足几何要求。数据模型使我们能够对可视化算法透明地进行这些替换和动态变换。我们使用大数据集的结果,我们将我们的网格替换和转换技术与核心分页外,以实现从1.5到2的分析加速。

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