A general formula for deep learning success in semiconductor manufacturing

A. Fujimura, A. Baranwal
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Abstract

This is a management overview of our experience in how to apply deep learning for semiconductor manufacturing projects. Deep learning is a transformative software technique, largely enabled by "useful waste" that is now possible with Peta-FLOPS level computing available with GPUs. DL has achieved many "firsts" that tens of years of effort by the best computer scientists could not achieve before. But production deployment of DL projects in semiconductor manufacturing including mask manufacturing has been difficult to attain. There has been a number of successes reported at this conference and elsewhere, but a common theme in deep learning papers in our field is the lack of availability of a large amount of data. Deep learning needs lots of data to train with because it is a pattern matching technique. It needs to see enough patterns to recognize all the situations a production mask might contain. In addition, deep learning programmers improve the network by adding data to the training data set to disambiguate where the network is confused. it is essential to be able to add any kind of data at will quickly to improve the success rate of a deep learning network. In semiconductor manufacturing, real data is hard to come by because of confidentiality requirements and also because of the expense of generating masks and wafers. A key ingredient to the general formula for deep learning success in semiconductor manufacturing is to use digital twins to generate data at will. It is time consuming, resource intensive, and expensive to set up. But it is necessary to create a deep learning capability that can be deployed in production. We will conclude with an overview of the other necessary conditions for deep learning success.
半导体制造业中深度学习成功的一般公式
这是对我们如何将深度学习应用于半导体制造项目的经验的管理概述。深度学习是一种变革性的软件技术,在很大程度上是由“有用的浪费”实现的,现在gpu可以提供Peta-FLOPS级别的计算。深度学习取得了许多“第一”,这是最好的计算机科学家几十年努力所不能达到的。但是,包括掩模制造在内的半导体制造业的DL项目的生产部署一直难以实现。在这次会议和其他地方已经有一些成功的报道,但在我们这个领域的深度学习论文中,一个共同的主题是缺乏大量数据的可用性。深度学习需要大量的数据来训练,因为它是一种模式匹配技术。它需要看到足够的模式来识别生产掩码可能包含的所有情况。此外,深度学习程序员通过向训练数据集中添加数据来改进网络,以消除网络混淆的地方的歧义。为了提高深度学习网络的成功率,必须能够快速添加任何类型的数据。在半导体制造业中,由于保密要求以及生产掩模和晶圆的费用,很难获得真实数据。深度学习在半导体制造业取得成功的通用公式的一个关键因素是使用数字双胞胎随意生成数据。它是耗时的,资源密集的,并且昂贵的设置。但是有必要创建一个可以部署在生产环境中的深度学习功能。最后,我们将概述深度学习成功的其他必要条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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