支持在并行netCDF中使用高性能I/O的计算数据模型表示

Kui Gao, Chen Jin, A. Choudhary, W. Liao
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引用次数: 8

摘要

并行计算的科学应用已经通过其计算和通信模式来描述。从存储和I/O的角度来看,还可以根据在模拟、分析和可视化期间组织和访问数据的方式,将这些应用程序分组到单独的数据模型中。并行netCDF是许多科学应用程序中使用的流行库,用于存储科学数据集并提供高性能并行I/O。虽然元数据丰富的netCDF文件格式可以有效地存储和描述常规多维数组数据集,但它不能解决当前和未来计算科学数据模型的全部问题。在本文中,我们提出了一种新的并行netCDF存储方案,以表示现代计算科学应用中使用的各种数据模型。该方案还允许为来自多组应用程序进程的不同数据对象并发构建元数据,这是为显示不规则数据分布的数据模型获得高度I/O并行性的一个重要特性。此外,我们采用非阻塞I/O功能将不规则分布的数据请求聚合为大型、连续的数据请求,以实现高性能I/O。通过一个自适应网格细化数据模型的例子,我们证明了所提出的方案可以在数据和元数据的创建和访问方面产生可扩展的性能结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supporting computational data model representation with high-performance I/O in parallel netCDF
Parallel computational scientific applications have been described by their computation and communication patterns. From a storage and I/O perspective, these applications can also be grouped into separate data models based on the way data is organized and accessed during simulation, analysis, and visualization. Parallel netCDF is a popular library used in many scientific applications to store scientific datasets and provides high-performance parallel I/O. Although the metadata-rich netCDF file format can effectively store and describe regular multi-dimensional array datasets, it does not address the full range of current and future computational science data models. In this paper, we present a new storage scheme in Parallel netCDF to represent a broad variety of data models used in modern computational scientific applications. This scheme also allows concurrent metadata construction for different data objects from multiple groups of application processes, an important feature in obtaining a high degree of I/O parallelism for data models exhibiting irregular data distribution. Furthermore, we employ non-blocking I/O functions to aggregate irregularly distributed data requests into large, contiguous data requests, to achieve high-performance I/O. Using an example of adaptive mesh refinement data model, we demonstrate the proposed scheme can produce scalable performance results for both data and metadata creation and access.
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