Improving Data Analysis Performance for High-Performance Computing with Integrating Statistical Metadata in Scientific Datasets

Jialin Liu, Yong Chen
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引用次数: 14

Abstract

Scientific datasets and libraries, such as HDF5, ADIOS, and NetCDF, have been used widely in many data intensive applications. These libraries have their special file formats and I/O functions to provide efficient access to large datasets. When the data size keeps increasing, these high level I/O libraries face new challenges. Recent studies have started to utilize database techniques such as indexing and subsetting, and data reorganization to manage the increasing datasets. In this work, we present a new approach to boost the data analysis performance, namely Fast Analysis with Statistical Metadata (FASM), via data subsetting and integrating a small amount of statistics into the original datasets. The added statistical information illustrates the data shape and provides knowledge of the data distribution; therefore the original I/O libraries can utilize these statistical metadata to perform fast queries and analyses. The proposed FASM approach is currently evaluated with the PnetCDF on Lustre file systems, but can also be implemented with other scientific libraries. The FASM can potentially lead to a new dataset design and can have an impact on big data analysis.
集成科学数据集中的统计元数据,提高高性能计算的数据分析性能
科学数据集和库,如HDF5、ADIOS和NetCDF,已广泛应用于许多数据密集型应用。这些库具有其特殊的文件格式和I/O函数,以提供对大型数据集的有效访问。当数据量不断增加时,这些高级I/O库面临着新的挑战。近年来的研究开始利用索引和子集、数据重组等数据库技术来管理不断增加的数据集。在这项工作中,我们提出了一种新的方法来提高数据分析性能,即快速分析统计元数据(FASM),通过数据子集和集成少量的统计数据到原始数据集中。所添加的统计信息说明了数据形状并提供了有关数据分布的知识;因此,原始I/O库可以利用这些统计元数据来执行快速查询和分析。提出的FASM方法目前在Lustre文件系统上使用PnetCDF进行评估,但也可以与其他科学库一起实现。FASM可能会导致新的数据集设计,并可能对大数据分析产生影响。
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