State of the Art and Future Trends in Data Reduction for High-Performance Computing

Kira Duwe, Jakob Lüttgau, Georgiana Mania, Jannek Squar, A. Fuchs, Michael Kuhn, Eugen Betke, T. Ludwig
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引用次数: 6

Abstract

Research into data reduction techniques has gained popularity in recent years as storage capacity and performance become a growing concern. This survey paper provides an overview of leveraging points found in high-performance computing (HPC) systems and suitable mechanisms to reduce data volumes. We present the underlying theories and their application throughout the HPC stack and also discuss related hardware acceleration and reduction approaches. After introducing relevant use-cases, an overview of modern lossless and lossy compression algorithms and their respective usage at the application and file system layer is given. In anticipation of their increasing relevance for adaptive and in situ approaches, dimensionality reduction techniques are summarized with a focus on non-linear feature extraction. Adaptive approaches and in situ compression algorithms and frameworks follow. The key stages and new opportunities to deduplication are covered next. An unconventional but promising method is recomputation, which is proposed at last. We conclude the survey with an outlook on future developments.
面向高性能计算的数据缩减技术现状和未来趋势
近年来,随着存储容量和性能日益受到关注,对数据约简技术的研究越来越受欢迎。本调查报告概述了在高性能计算(HPC)系统中发现的利用点和减少数据量的适当机制。我们介绍了基本理论及其在整个HPC堆栈中的应用,并讨论了相关的硬件加速和减少方法。在介绍了相关用例之后,概述了现代无损压缩和有损压缩算法及其在应用程序层和文件系统层的使用情况。鉴于降维技术与自适应和原位方法的相关性日益增强,本文对降维技术进行了总结,重点是非线性特征提取。自适应方法和原位压缩算法和框架紧随其后。接下来将介绍重复数据删除的关键阶段和新机会。最后提出了一种非常规但很有前途的方法——重计算。我们以对未来发展的展望来结束调查。
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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