A Machine Learning Approach to Improving Timing Consistency between Global Route and Detailed Route

IF 2.2 4区 计算机科学 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE ACM Transactions on Design Automation of Electronic Systems Pub Date : 2023-10-10 DOI:10.1145/3626959
Vidya A. Chhabria, Wenjing Jiang, Andrew B. Kahng, Sachin S. Sapatnekar
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Abstract

Due to the unavailability of routing information in design stages prior to detailed routing (DR), the tasks of timing prediction and optimization pose major challenges. Inaccurate timing prediction wastes design effort, hurts circuit performance, and may lead to design failure. This work focuses on timing prediction after clock tree synthesis and placement legalization, which is the earliest opportunity to time and optimize a “complete” netlist. The paper first documents that having “oracle knowledge” of the final post-DR parasitics enables post-global routing (GR) optimization to produce improved final timing outcomes. To bridge the gap between GR-based parasitic and timing estimation and post-DR results during post-GR optimization , machine learning (ML)-based models are proposed, including the use of features for macro blockages for accurate predictions for designs with macros. Based on a set of experimental evaluations, it is demonstrated that these models show higher accuracy than GR-based timing estimation. When used during post-GR optimization, the ML-based models show demonstrable improvements in post-DR circuit performance. The methodology is applied to two different tool flows – OpenROAD and a commercial tool flow – and results on an open-source 45nm bulk and a commercial 12nm FinFET enablement show improvements in post-DR timing slack metrics without increasing congestion. The models are demonstrated to be generalizable to designs generated under different clock period constraints and are robust to training data with small levels of noise.
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一种提高全局路由和详细路由时序一致性的机器学习方法
由于在详细路由(DR)之前的设计阶段无法获得路由信息,因此时间预测和优化任务是主要的挑战。不准确的时序预测浪费了设计工作,损害了电路性能,并可能导致设计失败。这项工作的重点是时钟树合成和位置合法化后的时间预测,这是对“完整”网表进行时间和优化的最早机会。本文首先证明,拥有最终后dr寄生的“oracle知识”,可以使后全局路由(GR)优化产生改进的最终定时结果。为了弥补gr后优化过程中基于gr的寄生和定时估计与post-DR结果之间的差距,提出了基于机器学习(ML)的模型,包括使用宏阻塞的特征来准确预测带有宏的设计。通过一组实验评估,表明这些模型比基于gr的时间估计具有更高的精度。当用于后gr优化时,基于ml的模型显示出后dr电路性能的明显改善。该方法应用于两种不同的工具流——OpenROAD和商业工具流——在开源45nm批量和商业12nm FinFET上的结果显示,dr后时间空闲指标得到改善,而不会增加拥堵。这些模型被证明可以推广到在不同时钟周期约束下生成的设计,并且对具有小噪声水平的训练数据具有鲁棒性。
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来源期刊
ACM Transactions on Design Automation of Electronic Systems
ACM Transactions on Design Automation of Electronic Systems 工程技术-计算机:软件工程
CiteScore
3.20
自引率
7.10%
发文量
105
审稿时长
3 months
期刊介绍: TODAES is a premier ACM journal in design and automation of electronic systems. It publishes innovative work documenting significant research and development advances on the specification, design, analysis, simulation, testing, and evaluation of electronic systems, emphasizing a computer science/engineering orientation. Both theoretical analysis and practical solutions are welcome.
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