在高级工艺节点上实现机器学习的高频低功耗数字设计

S. Nath, Vishal Khandelwal
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引用次数: 5

摘要

在高级节点上不断追求高频低功耗设计,需要在数字实现期间实现信号质量定时和功率,以尽量减少任何过度设计。随着设计规模的增长(1- 10M实例),全流程运行时是一个同样重要的指标,商业实现工具使用基于图的时间分析(GBA)来获得运行时,而不是基于路径的时间分析(PBA),这是以时间的悲观为代价的。最后一英里计时和功率关闭,然后通过昂贵的pba驱动的工程变更命令(ECO)回路在签字阶段实现。在这项工作中,我们探索了“即时”机器学习(ML)模型来预测基于GBA特征的PBA时间,以推动数字化实施流程。我们的ML模型以最小的运行时开销减少了GBA和PBA的悲观情绪,从而在不影响签字时间关闭的情况下提高了面积/功率。通过将我们的技术集成到商业数字实现工具中获得的实验结果表明,在泄漏和总功率为中心的设计中,面积提高了0.92%,功率提高了11.7%和1.16%。我们的方法在5- 16nm工业设计套件中的运行时开销为$ $ $3%。
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-Enabled High-Frequency Low-Power Digital Design Implementation At Advanced Process Nodes
Relentless pursuit of high-frequency low-power designs at advanced nodes necessitate achieving signoff-quality timing and power during digital implementation to minimize any over-design. With growing design sizes (1--10M instances), full flow runtime is an equally important metric and commercial implementation tools use graph-based timing analysis (GBA) to gain runtime over path-based timing analysis (PBA), at the cost of pessimism in timing. Last mile timing and power closure is then achieved through expensive PBA-driven engineering change order (ECO) loops in signoff stage. In this work, we explore "on-the-fly'' machine learning (ML) models to predict PBA timing based on GBA features, to drive digital implementation flow. Our ML model reduces the GBA vs. PBA pessimism with minimal runtime overhead, resulting in improved area/power without compromising on signoff timing closure. Experimental results obtained by integrating our technique in a commercial digital implementation tool show improvement of up to 0.92% in area, 11.7% and 1.16% in power in leakage- and total power-centric designs, respectively. Our method has a runtime overhead of $\sim$3% across a suite of 5--16nm industrial designs.
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