Artificial Intelligence for Science in Quantum, Atomistic, and Continuum Systems
Xuan Zhang, Limei Wang, Jacob Helwig, Youzhi Luo, Cong Fu, Yaochen Xie, Meng Liu, Yuchao Lin, Zhao Xu, Keqiang Yan, Keir Adams, Maurice Weiler, Xiner Li, Tianfan Fu, Yucheng Wang, Alex Strasser, Haiyang Yu, YuQing Xie, Xiang Fu, Shenglong Xu, Yi Liu, Yuanqi Du, Alexandra Saxton

TL;DR
This paper reviews the emerging field of AI for science focusing on quantum, atomistic, and continuum systems, highlighting shared challenges and techniques for integrating physical principles into deep learning models.
Contribution
It provides a comprehensive, unified overview of AI techniques addressing physical symmetries and challenges across multiple scientific scales in quantum, atomic, and continuum systems.
Findings
Discussion of equivariance techniques for symmetry in AI models
Analysis of challenges like explainability and generalization in AI for science
Resources compiled for education and further research in AI4Science
Abstract
Advances in artificial intelligence (AI) are fueling a new paradigm of discoveries in natural sciences. Today, AI has started to advance natural sciences by improving, accelerating, and enabling our understanding of natural phenomena at a wide range of spatial and temporal scales, giving rise to a new area of research known as AI for science (AI4Science). Being an emerging research paradigm, AI4Science is unique in that it is an enormous and highly interdisciplinary area. Thus, a unified and technical treatment of this field is needed yet challenging. This work aims to provide a technically thorough account of a subarea of AI4Science; namely, AI for quantum, atomistic, and continuum systems. These areas aim at understanding the physical world from the subatomic (wavefunctions and electron density), atomic (molecules, proteins, materials, and interactions), to macro (fluids, climate, and…
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Taxonomy
TopicsMachine Learning in Materials Science
