Empirical Guide to Use of Persistent Memory for Large-Scale In-Memory Graph Analysis

Hanyeoreum Bae, Miryeong Kwon, Donghyun Gouk, Sanghyun Han, Sungjoon Koh, Changrim Lee, Dongchul Park, Myoungsoo Jung
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引用次数: 2

Abstract

We investigate runtime environment characteristics and explore the challenges of conventional in-memory graph processing. This system-level analysis includes empirical results and observations, which are opposite to the existing expectations of graph application users. Specifically, since raw graph data are not the same as the in-memory graph data, processing a billion-scale graph exhausts all system resources and makes the target system unavailable due to out-of-memory at runtime.To address a lack of memory space problem for big-scale graph analysis, we configure real persistent memory devices (PMEMs) with different operation modes and system software frameworks. In this work, we introduce PMEM to a representative in-memory graph system, Ligra, and perform an in-depth analysis uncovering the performance behaviors of different PMEM-applied in-memory graph systems. Based on our observations, we modify Ligra to improve the graph processing performance with a solid level of data persistence. Our evaluation results reveal that Ligra, with our simple modification, exhibits 4.41× and 3.01× better performance than the original Ligra running on a virtual memory expansion and conventional persistent memory, respectively.
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使用持久内存进行大规模内存图分析的经验指南
我们研究了运行时环境的特征,并探讨了传统内存中图形处理的挑战。这个系统级的分析包括实证结果和观察结果,这与图形应用程序用户现有的期望相反。具体来说,由于原始图形数据与内存中的图形数据不同,处理十亿规模的图形将耗尽所有系统资源,并在运行时由于内存不足而使目标系统不可用。为了解决大规模图形分析缺乏内存空间的问题,我们配置了具有不同操作模式和系统软件框架的真实持久存储设备(PMEMs)。在这项工作中,我们将PMEM引入具有代表性的内存图系统Ligra,并深入分析了不同PMEM应用的内存图系统的性能行为。根据我们的观察,我们修改了Ligra,以提高图形处理性能和稳固的数据持久性。我们的评估结果表明,经过简单修改的Ligra在虚拟内存扩展和传统持久内存上运行的性能分别比原始Ligra提高4.41倍和3.01倍。
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