用于架构探索的深度强化学习框架:无路由器NoC案例研究

Ting-Ru Lin, Drew Penney, M. Pedram, Lizhong Chen
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引用次数: 24

摘要

机器学习应用于建筑设计是一个具有广泛应用前景的机会。特别是最近的深度强化学习(DRL)技术,能够在传统设计策略可能不足的巨大设计空间中进行有效的探索。本文以无路由器片上网络(NoC)为评估案例,提出了一种新的深度强化框架。新框架成功地解决了先前设计方法的问题,这些方法要么由于随机搜索而不可靠,要么由于严格的设计空间限制而不灵活。该框架为具有各种设计约束的无路由器noc学习(接近)最优环路布局。利用并行线程开发了一种深度神经网络,该网络利用蒙特卡罗搜索树有效地探索了巨大的无路由器NoC设计空间。实验结果表明,与传统mesh相比,提出的深度强化学习(DRL)无路由器设计实现了3.25倍的吞吐量提高,1.6倍的数据包延迟降低,5倍的功耗降低。与最先进的无路由器NoC相比,DRL的吞吐量增加了1.47倍,数据包延迟减少了1.18倍,平均跳数减少了1.14倍,功耗降低了6.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Reinforcement Learning Framework for Architectural Exploration: A Routerless NoC Case Study
Machine learning applied to architecture design presents a promising opportunity with broad applications. Recent deep reinforcement learning (DRL) techniques, in particular, enable efficient exploration in vast design spaces where conventional design strategies may be inadequate. This paper proposes a novel deep reinforcement framework, taking routerless networks-on-chip (NoC) as an evaluation case study. The new framework successfully resolves problems with prior design approaches, which are either unreliable due to random searches or inflexible due to severe design space restrictions. The framework learns (near-)optimal loop placement for routerless NoCs with various design constraints. A deep neural network is developed using parallel threads that efficiently explore the immense routerless NoC design space with a Monte Carlo search tree. Experimental results show that, compared with conventional mesh, the proposed deep reinforcement learning (DRL) routerless design achieves a 3.25x increase in throughput, 1.6x reduction in packet latency, and 5x reduction in power. Compared with the state-of-the-art routerless NoC, DRL achieves a 1.47x increase in throughput, 1.18x reduction in packet latency, 1.14x reduction in average hop count, and 6.3% lower power consumption.
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