Stitch It Up: Using Progressive Data Storage to Scale Science

J. Lofstead, John Mitchell, Enze Chen
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引用次数: 3

Abstract

Generally, scientific simulations load the entire simulation domain into memory because most, if not all, of the data changes with each time step. This has driven application structures that have, in turn, affected the design of popular IO libraries, such as HDF-5, ADIOS, and NetCDF. This assumption makes sense for many cases, but there is also a significant collection of simulations where this approach results in vast swaths of unchanged data written each time step.This paper explores a new IO approach that is capable of stitching together a coherent global view of the total simulation space at any given time. This benefit is achieved with no performance penalty compared to running with the full data set in memory, at a radically smaller process requirement, and results in radical data reduction with no fidelity loss. Additionally, the structures employed enable online simulation monitoring.
缝合:使用渐进式数据存储来扩展科学
通常,科学模拟会将整个模拟域加载到内存中,因为大多数(如果不是全部的话)数据会随着每个时间步的变化而变化。这驱动了应用程序结构,进而影响了流行的IO库的设计,如HDF-5、ADIOS和NetCDF。这个假设在很多情况下是有意义的,但是也有一些重要的模拟,在这些模拟中,这种方法会导致每个时间步写入大量未更改的数据。本文探讨了一种新的IO方法,该方法能够在任何给定时间将整个模拟空间的连贯全局视图拼接在一起。与在内存中运行完整的数据集相比,实现这一优势没有性能损失,进程需求也大大减少,并且在没有保真度损失的情况下大幅减少数据。此外,所采用的结构使在线模拟监测成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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