Learning-driven Physically-aware Large-scale Circuit Gate Sizing
arxiv(2024)
摘要
Gate sizing plays an important role in timing optimization after physical
design. Existing machine learning-based gate sizing works cannot optimize
timing on multiple timing paths simultaneously and neglect the physical
constraint on layouts. They cause sub-optimal sizing solutions and
low-efficiency issues when compared with commercial gate sizing tools. In this
work, we propose a learning-driven physically-aware gate sizing framework to
optimize timing performance on large-scale circuits efficiently. In our
gradient descent optimization-based work, for obtaining accurate gradients, a
multi-modal gate sizing-aware timing model is achieved via learning timing
information on multiple timing paths and physical information on
multiple-scaled layouts jointly. Then, gradient generation based on the
sizing-oriented estimator and adaptive back-propagation are developed to update
gate sizes. Our results demonstrate that our work achieves higher timing
performance improvements in a faster way compared with the commercial gate
sizing tool.
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