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High-Performance and Energy-Efficient Network-on-Chip Architectures for Graph Analytics

机译:用于图形分析的高性能,高能效的片上网络架构

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摘要

With its applicability spanning numerous data-driven fields, the implementation of graph analytics on multicore platforms is gaining momentum. One of the most important components of a multicore chip is its communication backbone. Due to inherent irregularities in data movements manifested by graph-based applications, it is essential to design efficient on-chip interconnection architectures for multicore chips performing graph analytics. In this article, we present a detailed analysis of the traffic patterns generated by graph-based applications when mapped to multicore chips. Based on this analysis, we explore the design-space for the Network-on-Chip (NoC) architecture to enable an efficient implementation of graph analytics. We principally consider three types of NoC architectures, viz., traditional mesh, small-world, and high-radix networks. We demonstrate that the small-world-network-enabled wireless NoC (WiNoC) is the most suitable platform for executing the considered graph applications. The WiNoC achieves an average of 38% and 18% full-system Energy Delay Product savings compared to wireline-mesh and high-radix NoCs, respectively.
机译:由于其适用性涵盖了许多数据驱动领域,因此在多核平台上实施图形分析的势头日益强劲。多核芯片最重要的组件之一是其通信骨干网。由于基于图形的应用程序表现出的数据移动固有的不规则性,因此必须为执行图形分析的多核芯片设计高效的芯片上互连架构。在本文中,我们将对基于图形的应用程序映射到多核芯片时生成的流量模式进行详细分析。基于此分析,我们探索了片上网络(NoC)架构的设计空间,以实现图形分析的有效实施。我们主要考虑三种类型的NoC架构,即传统的网状网络,小世界和高基数网络。我们证明了启用小世界网络的无线NoC(WiNoC)是执行所考虑的图形应用程序的最合适平台。与有线网状和高基数NoC相比,WiNoC分别平均节省了38%和18%的全系统能源延迟产品。

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