用细节管理数据流的演变

Steven P. Callahan, J. Freire, E. Santos, C. Scheidegger, Cláudio T. Silva, H. Vo
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引用次数: 143

摘要

科学家们现在面临着海量的数据需要分析。为了成功地分析和验证各种假设,有必要提出几个查询,关联不同的数据,并创建模拟过程和观察到的现象的深刻可视化。通过可视化进行数据探索需要科学家经历几个步骤。从本质上讲,他们需要组装复杂的工作流,包括数据集选择、需要应用于数据的一系列操作的规范,以及创建适当的可视化表示,然后才能最终查看和分析结果。通常,洞察力来自于比较在数据探索过程中创建的多个可视化结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Managing the Evolution of Dataflows with VisTrails
Scientists are now faced with an incredible volume of data to analyze. To successfully analyze and validate various hypotheses, it is necessary to pose several queries, correlate disparate data, and create insightful visualizations of both the simulated processes and observed phenomena. Data exploration through visualization requires scientists to go through several steps. In essence, they need to assemble complex workflows that consist of dataset selection, specification of series of operations that need to be applied to the data, and the creation of appropriate visual representations, before they can finally view and analyze the results. Often, insight comes from comparing the results of multiple visualizations that are created during the data exploration process.
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