体积范围分布查询的转换

Steven Martin, Han-Wei Shen
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引用次数: 7

摘要

体积数据集的规模持续增长,并且对这些数据集的交互式分析的需求持续存在。由于存储设备吞吐量的增长速度没有那么快,交互式分析工作流正变得受到工作集的限制。在理想的工作流中,工作流的交互分析部分的工作集复杂性应该主要取决于所生成的分析结果的大小,而不是所分析的数据的大小。过去在在线分析处理和可视化方面的工作已经在特定的应用环境中解决了这个问题,但是没有将他们的解决方案推广到更广泛的可视化应用中。我们提出了一个通用的框架来降低可视化工作流的交互部分的工作集复杂性,这个框架可以建立在分布范围查询的基础上,以及在这个框架内能够支持多个可视化应用程序的技术。在工作流的预处理阶段应用转换,以实现快速,近似的体积分布范围查询,具有低工作集复杂性。然后调整交互式应用程序算法以利用这些分布范围查询,从而在大规模数据上实现高效的交互式工作流。我们展示了所提出的技术使这些应用程序能够主要根据应用程序结果数据集的大小而不是输入数据的大小进行扩展,从而增强了交互性和可伸缩性。
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Transformations for volumetric range distribution queries
Volumetric datasets continue to grow in size, and there is continued demand for interactive analysis on these datasets. Because storage device throughputs are not increasing as quickly, interactive analysis workflows are becoming working set-constrained. In an ideal workflow, the working set complexity of the interactive analysis portion of the workflow should depend primarily on the size of the analysis result being produced, rather than on the size of the data being analyzed. Past works in online analytical processing and visualization have addressed this problem within application-specific contexts, but have not generalized their solutions to a wider variety of visualization applications. We propose a general framework for reducing the working set complexity of the interactive portion of visualization workflows that can be built on top of distribution range queries, as well as a technique within this framework able to support multiple visualization applications. Transformations are applied in the preprocessing phase of the workflow to enable fast, approximate volumetric distribution range queries with low working set complexity. Interactive application algorithms are then adapted to make use of these distribution range queries, enabling efficient interactive workflows on large-scale data. We show that the proposed technique enables these applications to be scaled primarily in terms of the application result dataset size, rather than the input data size, enabling increased interactivity and scalability.
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