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Homogeneity Guided Probabilistic Data Summaries for Analysis and Visualization of Large-Scale Data Sets

机译:大规模数据集的分析和可视化的均匀性引导概率数据摘要

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High-resolution simulation data sets provide plethora of information, which needs to be explored by application scientists to gain enhanced understanding about various phenomena. Visual-analytics techniques using raw data sets are often expensive due to the data sets' extreme sizes. But, interactive analysis and visualization is crucial for big data analytics, because scientists can then focus on the important data and make critical decisions quickly. To assist efficient exploration and visualization, we propose a new region-based statistical data summarization scheme. Our method is superior in quality, as compared to the existing statistical summarization techniques, with a more compact representation, reducing the overall storage cost. The quantitative and visual efficacy of our proposed method is demonstrated using several data sets along with an in situ application study for an extreme-scale flow simulation.
机译:高分辨率仿真数据集提供过多的信息,需要由应用科学家探索,以增强对各种现象的理解。由于数据集的极端尺寸,使用原始数据集的视觉分析技术通常昂贵。但是,互动分析和可视化对于大数据分析至关重要,因为科学家可以专注于重要数据并快速做出关键决策。为协助高效的探索和可视化,我们提出了一种新的基于地区的统计数据摘要方案。与现有的统计摘要技术相比,我们的方法质量优异,具有更紧凑的表示,降低了整体储存成本。使用若干数据集来证明我们所提出的方法的定量和视觉效果,以及用于极度尺度流模拟的原位应用研究。

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