重要性驱动的现场分析和可视化

M. A. Wani, Preeti Malakar
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引用次数: 0

摘要

百亿亿次的出现将计算能力提升到前所未有的规模。科学应用现在可以在几秒钟内生成大量数据。然而,内存、I/O和网络带宽的改进一直是次指数级的,导致数据生成和使用速度之间的差距越来越大。数据通常在模拟后进行分析和可视化。就地处理意味着在数据生成后立即对其进行分析/可视化,通常会绕过磁盘I/O瓶颈。分析每个时间步将增加端到端模拟分析时间。然而,大多数工作在没有检查数据内容的情况下确定分析/可视化的频率。这可能会导致忽略模拟的关键时间步长。考虑到数据的重要性,提出了改进仿真-分析-可视化工作流时间的建议。我们监控正在进行的模拟中的数据变化,并仅传输最重要的时间步长,从而进一步减少数据传输时间(减少68%),这通常是现场分析的瓶颈。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Importance-driven In situ Analysis and Visualization
The advent of exascale has enhanced the computing capacity to unprecedented scales. Scientific applications now generate massive amounts of data in a few seconds. However, improvement in memory, I/O and network bandwidth has been sub-exponential, resulting in an increasing gap between the rate at which data may be generated and consumed. Data is typically analyzed and visualized after simulations. In situ processing implies analyzing/visualizing data as soon as it is generated, often bypassing the disk I/O bottleneck. Analyzing every time step will increase the end-to-end simulation-analysis time. However most works determine the frequency of analysis/visualization without examining the data content. This may result in omission of critical time steps of the simulations. We propose improving the simulation-analysis-visualization workflow time considering the importance of data. We monitor the changes in data in an ongoing simulation and transfer only the most significant time steps thereby further reducing the data transfer time (by 68%), which is often a bottleneck for in situ analysis.
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