色量子动力学
计算机科学
生成语法
转化式学习
人工智能
量子场论
量子计算机
格子(音乐)
理论物理学
量子
粒子物理学
理论计算机科学
统计物理学
物理
量子力学
声学
心理学
教育学
作者
K. Cranmer,Gurtej Kanwar,Sébastien Racanière,Danilo Jimenez Rezende,Phiala E. Shanahan
标识
DOI:10.1038/s42254-023-00616-w
摘要
Sampling from known probability distributions is a ubiquitous task in computational science, underlying calculations in domains from linguistics to biology and physics. Generative machine-learning (ML) models have emerged as a promising tool in this space, building on the success of this approach in applications such as image, text, and audio generation. Often, however, generative tasks in scientific domains have unique structures and features -- such as complex symmetries and the requirement of exactness guarantees -- that present both challenges and opportunities for ML. This Perspective outlines the advances in ML-based sampling motivated by lattice quantum field theory, in particular for the theory of quantum chromodynamics. Enabling calculations of the structure and interactions of matter from our most fundamental understanding of particle physics, lattice quantum chromodynamics is one of the main consumers of open-science supercomputing worldwide. The design of ML algorithms for this application faces profound challenges, including the necessity of scaling custom ML architectures to the largest supercomputers, but also promises immense benefits, and is spurring a wave of development in ML-based sampling more broadly. In lattice field theory, if this approach can realize its early promise it will be a transformative step towards first-principles physics calculations in particle, nuclear and condensed matter physics that are intractable with traditional approaches.
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