Machine Learning for Electronic Design Automation: A Survey
Guyue Huang
Jingbo Hu
Yifan He
Jialong Liu
Mingyuan Ma
Zhaoyang Shen
Juejian Wu
Yuanfan Xu
Hengrui Zhang
Kai Zhong
Xuefei Ning
Yuzhe Ma
Haoyu Yang
Bei Yu
Huazhong Yang
Yu Wang

Abstract
With the down-scaling of CMOS technology, the design complexity of very large-scale integrated (VLSI) is increasing. Although the application of machine learning (ML) techniques in electronic design automation (EDA) can trace its history back to the 90s, the recent breakthrough of ML and the increasing complexity of EDA tasks have aroused more interests in incorporating ML to solve EDA tasks. In this paper, we present a comprehensive review of existing ML for EDA studies, organized following the EDA hierarchy.
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