集成电路设计流程中电子设计自动化的机器学习方法

M. P. Varghese, T. Muthumanickam
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引用次数: 0

摘要

由于VLSI设计和制造中收集的大量数据和非常高的复杂性,使用机器学习可用于物理设计的实现已显着增加。ML可用于提高从基于物理模型的复杂模拟中获得的抽象级别,并提供代表重要质量水平的结果。模式匹配和机器学习等计算机科学技术可以通过处理大型数据集来减少VLSI电路的设计时间。
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 Approaches for Electronic Design Automation in IC Design Flow
Due to the vast amount of data collected and the very high level of complexity in VLSI design and manufacturing, the implementation using machine learning can be used in physical design has increased significantly. ML can be used to increase the abstraction level that is obtained from complex simulations based on physics models and provide results that represent a significant level of quality. Computer science techniques such as pattern matching and machine learning can reduce the design time of VLSI circuits by working with large datasets.
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