发明名称 Method and apparatus for creating an extraction model using Bayesian inference implemented with the Hybrid Monte Carlo method
摘要 A system for using machine learning based upon Bayesian inference using a hybrid Monte Carlo method to create a model for performing integrated circuit layout extraction is disclosed. The system of the present invention has two main phases: model creation and model application. The model creation phase comprises creating one or more extraction models using machine-learning techniques. First, a complex extraction problem is decomposed into smaller simpler extraction problems. Then, each smaller extraction problem is then analyzed to identify a set of physical parameters that fully define the smaller extraction problem. Then, for each of the smaller simpler extraction problems, complex mathematical models are created using machine learning techniques. The machine learning is performed by first creating training data sets composed of the identified parameters from typical examples of the smaller extraction problem and the answers to those example extraction problems as solved using a highly accurate physics-based field solver. Next, the system uses Bayesian inference implemented with a hybrid Monte Carlo method to train a set of neural networks for extraction problems. After the creation of a set of models for each of the smaller simpler extraction problems, the machine-learning based models may be used for extraction.
申请公布号 US7103524(B1) 申请公布日期 2006.09.05
申请号 US20020062196 申请日期 2002.01.31
申请人 CADENCE DESIGN SYSTEMS, INC. 发明人 TEIG STEVEN;CHATTERJEE ARINDAM
分类号 G06F17/50;G06F9/455 主分类号 G06F17/50
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