Previous graph analytics accelerators have achieved great improvement on throughput by alleviating irregular off-chip memory accesses. However, on-chip side datapath conflicts and design centralization have become the critical issues hindering further throughput improvement. In this paper, a general solution, Multiple-stage Decentralized Propagation network (MDP-network), is proposed to address these issues, inspired by the key idea of trading latency for throughput. Besides, a novel High throughput Graph analytics accelerator, HiGraph, is proposed by deploying MDP-network to address each issue in practice. The experiment shows that compared with state-of-the-art accelerator, HiGraph achieves up to 2.2x speedup (1.5x on average) as well as better scalability.
翻译:先前的图形分析加速器通过减少不规则的芯片外内存访问,在吞吐量方面取得了巨大的进步。 但是,在芯片上的侧面数据路径冲突和设计集中化已成为阻碍进一步吞吐改进的关键问题。 本文建议,在通过吞吐量交易的潜伏度这一关键理念的启发下,采用一个一般性的解决方案,即多阶段分散推进网络(MDP-网络)来解决这些问题。此外,通过部署MDP-网络来解决实践中的每个问题,还提出了一个新的高吞吐图分析加速器Higraph。 实验表明,与最先进的电动加速器相比,Higraph取得了高达2.2x速度(平均1.5x)以及更好的可缩放性。