负载依赖下电路老化估计的机器学习

F. Klemme, H. Amrouch
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引用次数: 6

摘要

关于老化引起的退化的电路分析对于确保芯片在整个生命周期内的正确运行至关重要。然而,最先进的技术只允许考虑统一应用的退化,尽管不同的工作负载会由于不同的诱发活动而导致不同的退化。这使得在估计所需的时间保护带时过于悲观,导致不必要的性能和效率损失。在这项工作中,我们提出了一种考虑实际工作负载依赖性的方法,并生成特定于工作负载的老化感知标准单元库。这允许在老化引起的退化的实际影响下精确分析电路。我们利用机器学习技术来克服单个晶体管老化的不可实现的模拟时间,同时保持高精度。在我们对PULP微处理器的评估中,我们以94.7%的平均准确率(R2评分)实现了对工作负荷相关的衰老感知标准细胞的预测。利用静态时序分析中预测的细胞库,报告的时序保护带误差小于0.1%。我们证明,通过考虑在最先进的工具流中执行的最坏情况分析的特定工作负载,定时保护带需求可以减少多达21%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning for Circuit Aging Estimation under Workload Dependency
Circuit analysis with respect to aging-induced degradation is critical to ensure correct operation throughout the entire lifetime of a chip. However, state-of-the-art techniques only allow for the consideration of uniformly applied degradation, despite the fact that different workloads will lead to different degradations due to the different induced activities. This imposes over-pessimism in estimating the required timing guardbands, resulting in unnecessary losses of performance and efficiency. In this work, we propose an approach that takes real-world workload dependencies into account and generates workload-specific aging-aware standard cell libraries. This allows for accurate analysis of circuits under the actual effect of aging-induced degradation. We make use of machine learning techniques to overcome infeasible simulation times for individual transistor aging while sustaining high accuracy. In our evaluation on the PULP microprocessor, we achieve predictions of workload-dependent aging-aware standard cells with an average accuracy (R2 score) of 94.7 %. Using the predicted cell libraries in Static Timing Analysis, timing guardbands are reported with an error of less than 0.1 %. We demonstrate that timing guardband requirements can be reduced by up to 21 % by considering specific workloads over worst-case analysis as performed in state-of-the-art tool flows.
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