VLSI Mask Optimization: From Shallow To Deep Learning

2020 25th Asia and South Pacific Design Automation Conference (ASP-DAC)(2020)

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摘要
VLSI mask optimization is one of the most critical stages in manufacturability aware design, which is costly due to the complicated mask optimization and lithography simulation. Recent researches have shown prominent advantages of machine learning techniques dealing with complicated and big data problems, which bring potential of dedicated machine learning solution for DFM problems and facilitate the VLSI design cycle. In this paper, we focus on a heterogeneous OPC framework that assists mask layout optimization. Preliminary results show the efficiency and effectiveness of proposed frameworks that have the potential to be alternatives to existing EDA solutions.
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关键词
lithography simulation,big data problems,machine learning,VLSI design cycle,mask layout optimization,VLSI mask optimization,deep learning,manufacturability aware design,DFM problems,heterogeneous OPC framework,EDA solutions
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