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Routability-Driven Macro Placement with Embedded CNN-Based Prediction Model

机译:基于嵌入式CNN的预测模型的可路由性宏放置

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摘要

With the dramatic shrink of feature size and the advance of semiconductor technology nodes, numerous and complicated design rules need to be followed, and a chip design can only be taped-out after passing design rule check (DRC). The high design complexity seriously deteriorates design routability, which can be measured by the number of DRC violations after the detailed routing stage. In addition, a modern large-scaled design typically consists of many huge macros due to the wide use of intellectual properties (IPs). Empirically, the placement of these macros greatly determines routability, while there exists no effective cost metric to directly evaluate a macro placement because of the extremely high complexity and unpredictability of cell placement and routing. In this paper, we propose the first work of routability-driven macro placement with deep learning. A convolutional neural network (CNN)-based routability prediction model is proposed and embedded into a macro placer such that a good macro placement with minimized DRC violations can be derived through a simulated annealing (SA) optimization process. Experimental results show the accuracy of the predictor and the effectiveness of the macro placer.
机译:随着特征大小的戏剧性收缩和半导体技术节点的进步,需要遵循众多和复杂的设计规则,并且只能在通过设计规则检查(DRC)后占用芯片设计。高设计复杂性严重恶化设计可排放性,可以通过详细路由阶段之后的DRC违规的数量来衡量。此外,由于广泛使用知识产权(IPS),现代大型设计通常由许多巨大的宏组成。经验上,这些宏的放置大大确定了无线电,而没有有效的成本度量,直接评估宏放置,因为细胞放置和路由的极高复杂性和不可预测性。在本文中,我们提出了具有深度学习的可排放可路由的宏观放置的第一工作。基于宏放置的卷积神经网络(CNN)基于宏置剂预测模型,使得可以通过模拟退火(SA)优化过程来导出具有最小的DRC违规的良好宏放置。实验结果表明了预测器的准确性和宏砂矿的有效性。

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