AI for Science期刊第二期文章出版

04 Mar 2026 gabriels
我们很高兴地宣布,AI for Science(AI4S)期刊第二期文章正式发布。AI4S是一本全新的跨学科、国际化、同行评审的钻石开放获取期刊,致力于发表具有高影响力的原创研究论文、综述和前瞻性文章,展示人工智能如何在不同学科中推动科学发现的变革。依托与中国科学院东莞材料科学与技术研究所的合作,AI4S目前为钻石开放获取期刊,所有文章出版费用均由期刊承担。

📖 对读者而言:可即时、免费获取期刊发表的所有前沿研究成果。
✏️ 对作者而言:可在完全无需支付任何费用的情况下发表研究工作。

欢迎您浏览本期精选文章,深入了解人工智能领域的最新进展。


文章介绍

PapersAInstein: numerical Einstein metrics via machine learning

Edward Hirst, Tancredi Schettini Gherardini and Alexander G Stapleton

 

Surface stability modeling with universal machine learning interatomic potentials: a comprehensive cleavage energy benchmarking study

Ardavan Mehdizadeh and Peter Schindler

Focus Issue on Machine Learning Potentials and Mapping of Atomic Structures

 

TorchSim: an efficient atomistic simulation engine in PyTorch

Orion Cohen, Janosh Riebesell, Rhys Goodall, Adeesh Kolluru, Stefano Falletta, Joseph Krause, Jorge Colindres, Gerbrand Ceder and Abhijeet S Gangan

 

Graph learning metallic glass discovery from Wikipedia

Kaichen Ouyang, Shiyun Zhang, Song-Ling Liu, Jiachuan Tian, Yuanhao Li, Hua Tong, Hai-Yang Bai, Wei-Hua Wang and Yuan-Chao Hu

 

Universal machine learning potentials for systems with reduced dimensionality

Giulio Benedini, Antoine Loew, Matti Hellström, Silvana Botti and Miguel A L Marques

Focus Issue on Machine Learning Potentials and Mapping of Atomic Structures

 

Learning to be simple

Yang-Hui He, Vishnu Jejjala, Mishra Challenger and Em Sharnoff

 

Investigating CO adsorption on Cu(111) and Rh(111) surfaces using machine learning exchange-correlation functionals

Xinyuan Liang, Renxi Liu and Mohan Chen


期刊介绍

AI for Science

  • AI for Science是一本跨学科、国际同行评审的钻石开放获取期刊,致力于发表具有重大影响力的原创研究、综述和观点文章,聚焦人工智能(AI)在推动科学创新方面的变革性应用。本刊由IOP出版社和中国科学院东莞材料科学与技术研究所合办。