机器学习时代的密度泛函理论和材料数据库

IF 3.5 2区 物理与天体物理 Q2 PHYSICS, APPLIED
Arti Kashyap
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引用次数: 0

摘要

这篇透视文章介绍了密度泛函理论,并追溯了它的发展历程。随着基于密度泛函理论计算的进步,以及整理通过密度泛函理论生成的数据的努力,该领域现在已经拥有了一个很好的材料及其特性资料库/数据库。虽然这个资源库的规模不如机器学习一般使用的那么大,但它使密度泛函理论与机器学习的结合成为可能。本文通过讨论一些具体实例,重点介绍了当前的研究挑战,并对 "密度泛函理论与机器学习 "的未来进行了乐观展望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Density functional theory and material databases in the era of machine learning
This perspective article presents the density functional theory and traces its evolution. With the advancement in density functional theory-based computations and the efforts to collate the data generated through density functional theory, the field now has a good repository/database of materials and their properties. This repository, though not as substantial as generally used for machine learning, has nonetheless made it possible to combine density functional theory and machine learning. This article highlights current research challenges and presents an optimistic outlook for the future of “Density Functional Theory with Machine Learning” by discussing some specific examples.
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来源期刊
Applied Physics Letters
Applied Physics Letters 物理-物理:应用
CiteScore
6.40
自引率
10.00%
发文量
1821
审稿时长
1.6 months
期刊介绍: Applied Physics Letters (APL) features concise, up-to-date reports on significant new findings in applied physics. Emphasizing rapid dissemination of key data and new physical insights, APL offers prompt publication of new experimental and theoretical papers reporting applications of physics phenomena to all branches of science, engineering, and modern technology. In addition to regular articles, the journal also publishes invited Fast Track, Perspectives, and in-depth Editorials which report on cutting-edge areas in applied physics. APL Perspectives are forward-looking invited letters which highlight recent developments or discoveries. Emphasis is placed on very recent developments, potentially disruptive technologies, open questions and possible solutions. They also include a mini-roadmap detailing where the community should direct efforts in order for the phenomena to be viable for application and the challenges associated with meeting that performance threshold. Perspectives are characterized by personal viewpoints and opinions of recognized experts in the field. Fast Track articles are invited original research articles that report results that are particularly novel and important or provide a significant advancement in an emerging field. Because of the urgency and scientific importance of the work, the peer review process is accelerated. If, during the review process, it becomes apparent that the paper does not meet the Fast Track criterion, it is returned to a normal track.
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