Incremental and Parallel Analytics on Astrophysical Data Streams

D. Mishin, T. Budavári, A. Szalay, Yanif Ahmad
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引用次数: 2

Abstract

Stream processing methods and online algorithms are increasingly appealing in the scientific and large-scale data management communities due to increasing ingestion rates of scientific instruments, the ability to produce and inspect results interactively, and the simplicity and efficiency of sequential storage access over enormous datasets. This article will showcase our experiences in using off-the-shelf streaming technology to implement incremental and parallel spectral analysis of galaxies from the Sloan Digital Sky Survey (SDSS) to detect a wide variety of galaxy features. The technical focus of the article is on a robust, highly scalable principal components analysis (PCA) algorithm and its use of coordination primitives to realize consistency as part of parallel execution. Our algorithm and framework can be readily used in other domains.
天体物理数据流的增量和并行分析
流处理方法和在线算法在科学和大规模数据管理社区中越来越有吸引力,因为科学仪器的摄取率越来越高,交互式产生和检查结果的能力,以及对大量数据集进行顺序存储访问的简单性和效率。本文将展示我们使用现成的流技术来实现斯隆数字巡天(SDSS)星系的增量和并行光谱分析的经验,以探测各种各样的星系特征。本文的技术重点是一个健壮的、高度可伸缩的主成分分析(PCA)算法,以及它使用协调原语来实现作为并行执行一部分的一致性。我们的算法和框架可以很容易地应用于其他领域。
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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