This notebook tutorial demonstrates a method for sampling Boltzmann distributions of lattice field theories using a class of machine learning models known as normalizing flows. The ideas and approaches proposed in arXiv:1904.12072, arXiv:2002.02428, and arXiv:2003.06413 are reviewed and a concrete implementation of the framework is presented. We apply this framework to a lattice scalar field theory and to U(1) gauge theory, explicitly encoding gauge symmetries in the flow-based approach to the latter. This presentation is intended to be interactive and working with the attached Jupyter notebook is recommended.
翻译:本笔记本教学演示了一种方法,用被称为正常流动的机器学习模型来抽样Boltzmann对拉蒂斯实地理论的分布,对ArXiv:1904.12072、arXiv:2002.02428和arXiv:2003.06413中提议的想法和办法进行了审查,并介绍了该框架的具体执行情况。我们将这一框架应用于拉蒂斯卡拉尔实地理论和U(1)测量理论,即流动法中明确的编码仪表对称,建议与所附的Jupyter笔记本进行互动和协作。