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Parameter Space Visualization for Large-scale Datasets Using Parallel Coordinate Plots

机译:使用并行坐标图的大规模数据集的参数空间可视化

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摘要

Visualization is an important task in data analytics, as it allows researchers to view patterns within the data instead of reading through extensive raw data. Allowing the ability to interact with the visualizations is an essential aspect, since it provides the ability to intuitively explore data to find meaning and patterns more efficiently. Interactivity, however, becomes progressively more difficult as the size of the dataset increases. This project begins by leveraging existing web-based data visualization technologies, and extends their functionality through the use of parallel processing. This methodology utilizes state-of-the-art techniques, such as Node.js, to split the visualization rendering and user interactivity controls between a client server infrastructure without having to rebuild the visualization technologies. The approach minimizes data transfer by performing the rendering step on the server while allowing for the use of high-performance computing systems to render the visualizations more quickly. In order to improve the scaling of the system with larger datasets, parallel processing and visualization optimization techniques are used. This work uses parameter space data generated from mindmodeling.org to showcase the authors' methodology for handling large-scale datasets while retaining interactivity and user friendliness. (C) 2016 Society for Imaging Science and Technology.
机译:可视化是数据分析中的一项重要任务,因为它使研究人员可以查看数据中的模式,而不必阅读大量的原始数据。允许与可视化交互的能力是必不可少的方面,因为它提供了直观地探索数据以更有效地查找含义和模式的能力。但是,随着数据集大小的增加,交互性变得越来越困难。该项目首先利用现有的基于Web的数据可视化技术,并通过使用并行处理扩展其功能。该方法利用诸如Node.js之类的最新技术在客户端服务器基础结构之间拆分可视化呈现和用户交互控件,而无需重建可视化技术。该方法通过在服务器上执行渲染步骤来最大程度地减少数据传输,同时允许使用高性能计算系统更快地渲染可视化效果。为了提高具有更大数据集的系统的可伸缩性,使用了并行处理和可视化优化技术。这项工作使用从mindmodeling.org生成的参数空间数据来展示作者在处理大型数据集的同时保持交互性和用户友好性的方法。 (C)2016年影像科学与技术学会。

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