MLNoC: A Machine Learning Based Approach to NoC Design

N. Rao, Akshay Ramachandran, Amish Shah
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引用次数: 5

Abstract

Modern System on Chips (SoCs) are becoming increasingly complex with a growing number of CPUs, caches, accelerators, memory and I/O subsystems. For such designs, a packet based distributed networks-on-chip (NoCs) interconnect can provide scalability, performance and efficiency. However, the design of such a NoC involves optimizing a large number of variables such as topology, routing choices, arbitration and quality of service (QoS) policies, buffer sizes, and deadlock avoidance policies. Widely varying die sizes, power, floorplan and performance constraints across a variety of different market segments, ranging from high-end servers to low-end IoT devices, impose additional design challenges. In this paper we demonstrate that there is a strong correlation between SoC characteristics and good NoC design practices. However this correlation is highly non-linear and multidimensional, with dimensions indicative of the features of the SoC, design goals and properties of the NoC. This results in a high-dimensional NoC design space and complex search process which is inefficient to solve with classic algorithms. Using a variety of real SoCs and training data sets, we demonstrate that a machine learning (ML) based approach yields near-optimal NoC designs quickly. We determine a number of SoC and NoC features, describe reduction methods, and also show that a multi-model approach yields better designs. We demonstrate that for a wide variety of SoCs, ML based NoC designs are far superior to those designed and optimized manually over years on almost all quality metrics.
MLNoC:基于机器学习的NoC设计方法
随着cpu、缓存、加速器、内存和I/O子系统数量的增加,现代系统芯片(soc)正变得越来越复杂。对于这样的设计,基于分组的分布式片上网络(noc)互连可以提供可扩展性、性能和效率。然而,这种NoC的设计涉及优化大量变量,如拓扑、路由选择、仲裁和服务质量(QoS)策略、缓冲区大小和死锁避免策略。从高端服务器到低端物联网设备,各种不同细分市场的芯片尺寸、功耗、平面布局和性能限制都存在很大差异,这给设计带来了额外的挑战。在本文中,我们证明了SoC特性与良好的NoC设计实践之间存在很强的相关性。然而,这种相关性是高度非线性和多维的,其维度表明SoC的特征、设计目标和NoC的属性。这导致了高维NoC设计空间和复杂的搜索过程,传统算法求解效率低下。通过使用各种真实soc和训练数据集,我们证明了基于机器学习(ML)的方法可以快速生成接近最佳的NoC设计。我们确定了一些SoC和NoC特征,描述了减少方法,并表明多模型方法可以产生更好的设计。我们证明,对于各种各样的soc,基于ML的NoC设计在几乎所有质量指标上都远远优于多年来手工设计和优化的设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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