Software Systems Implementation and Domain-Specific Architectures towards Graph Analytics

IF 2.2 Q3 COMPUTER SCIENCE, CYBERNETICS International Journal of Intelligent Computing and Cybernetics Pub Date : 2022-10-29 DOI:10.34133/2022/9806758
Hai Jin, Hao Qi, Jin Zhao, Xinyu Jiang, Yu Huang, Chuangyi Gui, Qinggang Wang, Xinyang Shen, Yi Zhang, Ao Hu, Dan Chen, Chao Liu, Haifeng Liu, Haiheng He, Xiangyu Ye, Runze Wang, Jingrui Yuan, Pengcheng Yao, Yu Zhang, Long Zheng, Xiaofei Liao
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引用次数: 2

Abstract

Graph analytics, which mainly includes graph processing, graph mining, and graph learning, has become increasingly important in several domains, including social network analysis, bioinformatics, and machine learning. However, graph analytics applications suffer from poor locality, limited bandwidth, and low parallelism owing to the irregular sparse structure, explosive growth, and dependencies of graph data. To address those challenges, several programming models, execution modes, and messaging strategies are proposed to improve the utilization of traditional hardware and performance. In recent years, novel computing and memory devices have emerged, e.g., HMCs, HBM, and ReRAM, providing massive bandwidth and parallelism resources, making it possible to address bottlenecks in graph applications. To facilitate understanding of the graph analytics domain, our study summarizes and categorizes current software systems implementation and domain-specific architectures. Finally, we discuss the future challenges of graph analytics.
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面向图分析的软件系统实现和特定领域架构
图分析主要包括图处理、图挖掘和图学习,在社会网络分析、生物信息学和机器学习等多个领域变得越来越重要。然而,由于图数据的不规则稀疏结构、爆炸性增长和依赖性,图分析应用程序受到局部性差、带宽有限和低并行性的影响。为了应对这些挑战,提出了几种编程模型、执行模式和消息传递策略,以提高传统硬件的利用率和性能。近年来,新型计算和存储设备如hmc、HBM和ReRAM等出现,提供了大量的带宽和并行资源,使解决图形应用中的瓶颈成为可能。为了促进对图形分析领域的理解,我们的研究总结并分类了当前的软件系统实现和特定于领域的架构。最后,我们讨论了图分析未来的挑战。
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CiteScore
6.80
自引率
4.70%
发文量
26
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