一种低成本、高能效的gpu NoC架构

Xianwei Cheng, Yang Zhao, Mohammadreza Robaei, Beilei Jiang, Hui Zhao, Juan Fang
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引用次数: 3

摘要

为了充分利用线程级并行性,GPGPU加速系统需要高吞吐量的数据通信。当前的GPGPU片上网络(Network-on-Chips, noc)大多采用了自cpu结构改编的拓扑结构,如mesh和crossbar。然而,由于gpu的独特流量模式,这种网络的性能和成本之间的权衡是次优的。在这项工作中,我们提出了一种新的NoC架构,称为融合脂肪树,它修改脂肪树以匹配GPU流量模式。通过将内存控制器和计算核心分别连接到树根和树叶,可以仅使用一个物理网络来避免协议死锁。但是,这种修改消除了原胖树拓扑中路径多样性的优势,使网络容易受到热点引起的拥塞的影响。为了解决这个问题,我们建议将路由器与侧链路融合,形成多条路径。为了提高网络吞吐量,提出了一种负载均衡路由算法。我们还提出了一种新颖的抢占式带宽分配方案,通过利用请求消息的松弛来提高资源利用率。我们的评估结果表明,我们的设计可以提高46%的性能,同时实现27%和25%的面积和能源节约平均。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Low-Cost and Energy-Efficient NoC Architecture for GPGPUs
GPGPU accelerated systems demand high throughput in data communication in order to fully exploit thread-level parallelism. Most of current GPGPU Network-on-Chips (NoCs) employ topology adapted from CPUs, such as mesh and crossbar. However, the trade-off between performance and cost for such networks is sub-optimal, due to the unique traffic pattern of GPUs. In this work, we propose a novel NoC architecture called fused fat tree which modifies the fat tree to match GPU traffic pattern. By separately connecting memory controllers and computing cores to tree roots and leaves, protocol deadlocks can be avoided using just one physical network. However, this modification removes the advantage of path diversity in the original fat tree topology and makes the network vulnerable to hotspot-caused congestion. To solve this problem, we propose to fuse routers with side links to create multiple paths. A load-balancing routing algorithm is also proposed in order to increase network throughput. We also propose a novel preemptive bandwidth allocation scheme to improve resource utilization by taking advantage of request message slacks. Our evaluation results show that our design can improve performance by 46% while achieving 27 % and 25 % area and energy savings on the average.
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