Placement for Wafer-Scale Deep Learning Accelerator

Benzheng Li, Qi Du, Dingcheng Liu, Jingchong Zhang, Gengjie Chen, Hailong You
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引用次数: 2

Abstract

To meet the growing demand from deep learning applications for computing resources, accelerators by ASIC are necessary. A wafer-scale engine (WSE) is recently proposed [1], which is able to simultaneously accelerate multiple layers from a neural network (NN). However, without a high-quality placement that properly maps NN layers onto the WSE, the acceleration efficiency cannot be achieved. Here, the WSE placement resembles the traditional ASIC floorplan problem of placing blocks onto a chip region, but they are fundamentally different. Since the slowest layer determines the compute time of the whole NN on WSE, a layer with a heavier workload needs more computing resources. Besides, locations of layers and protocol adapter cost of internal 10 connections will influence inter-layer communication overhead. In this paper, we propose GigaPlacer to handle this new challenge. A binary- search-based framework is developed to obtain a minimum compute time of the NN. Two dynamic-programming-based algorithms with different optimizing strategies are integrated to produce legal placement, The distance and adapter cost between connected layers will be further minimized by some refinements. Compared with the first place of the ISPD2020 Contest, GigaPlacer reduces the contest metric by up to 6.89% and on average 2.09%, while runs 7.23X faster.
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为了满足深度学习应用对计算资源日益增长的需求,ASIC加速器是必不可少的。最近提出了一种晶圆级引擎(WSE)[1],它能够同时加速来自神经网络(NN)的多层。然而,如果没有一个高质量的放置,正确地将NN层映射到WSE上,就无法实现加速效率。在这里,WSE的放置类似于传统的ASIC布局问题,将块放置在芯片区域上,但它们根本不同。由于最慢的一层决定了整个NN在WSE上的计算时间,所以负载越重的一层需要的计算资源越多。此外,层的位置和内部10个连接的协议适配器成本也会影响层间通信开销。在本文中,我们提出了GigaPlacer来应对这一新的挑战。为了使神经网络的计算时间最短,提出了一种基于二进制搜索的框架。结合两种基于动态规划的算法,采用不同的优化策略来实现合理布局,通过一些改进,使连接层之间的距离和适配器成本进一步最小化。与ISPD2020竞赛的第一名相比,GigaPlacer将竞赛指标降低了6.89%,平均降低了2.09%,同时运行速度提高了7.23倍。
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