RC-GNN:基于自定义图神经网络的快速准确的信号线延迟估计

Linyu Zhu, Yue Gu, Xinfei Guo
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引用次数: 0

摘要

与门延迟相比,互连延迟在时序路径中变得更加重要,因此需要在信号接收阶段准确而快速地估计线延迟。先前基于机器学习的线延迟估计方法要么依赖于繁琐的特征提取过程,要么无法捕获网络拓扑信息,从而导致较长的周转时间。在本文中,我们提出利用图神经网络(GNN)的能力来估计签名期间的互连延迟。与其他通常应用于网络列表的gnn辅助时序分析方法不同,我们直接利用RC图上的全局消息传递图表示学习来进行超快速的网络延迟估计,而不需要额外的特征。此外,可以添加预处理的图形特征来提高估计精度,同时减少运行时间损失。我们提出的定制GNN模型已经用工业设计进行了评估,并与最先进的基于ml的线延迟估计器进行了比较。它表明,所提出的模型在运行时间方面优于最先进的基于ml的签名线延迟估计器4倍,同时达到相似的精度水平。
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RC-GNN: Fast and Accurate Signoff Wire Delay Estimation with Customized Graph Neural Networks
As interconnect delay becomes more dominate in a timing path compared to the gate delay, accurate yet fast estimation of wire delay during the signoff stage is required. Prior machine learning-based wire delay estimation approaches either relied on tedious feature extraction processes or failed to capture the net topology information, incurring long turn around time. In this paper, we propose to leverage the power of graph neural networks (GNN) to estimate the interconnect delays during signoff. Different from other GNN-assisted timing analysis methods that were usually applied to a netlist, we harness the global message passing graph representation learning on RC graph directly to perform ultra-fast net delay estimation without requiring extra features. Furthermore, pre-processed graph features can be added to boost the estimation accuracy with slight run time penalty. Our proposed customized GNN models have been evaluated with the industrial design and compared against state of the art ML-based wire delay estimator. It shows that the proposed model outperforms the state-of-the-art ML-based signoff wire delay estimator by 4x in terms of run time while achieving similar accuracy levels.
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