AI-accelerated Discovery of Altermagnetic Materials
Ze-Feng Gao, Shuai Qu, Bocheng Zeng, Yang Liu, Ji-Rong Wen, Hao Sun, Peng-Jie Guo, Zhong-Yi Lu

TL;DR
This paper introduces an AI-driven method using graph neural networks to discover new altermagnetic materials, successfully identifying 50 novel compounds with diverse electronic properties, surpassing human expert performance.
Contribution
The study presents a novel AI search engine that efficiently predicts and discovers altermagnetic materials, including the first identification of 4 i-wave altermagnets, advancing materials discovery in this field.
Findings
Discovered 50 new altermagnetic materials with diverse electronic properties
AI search engine outperforms human experts in material discovery
Identified 4 first-time i-wave altermagnetic materials
Abstract
Altermagnetism, a new magnetic phase, has been theoretically proposed and experimentally verified to be distinct from ferromagnetism and antiferromagnetism. Although altermagnets have been found to possess many exotic physical properties, the limited availability of known altermagnetic materials hinders the study of such properties. Hence, discovering more types of altermagnetic materials with different properties is crucial for a comprehensive understanding of altermagnetism and thus facilitating new applications in the next generation information technologies, e.g., storage devices and high-sensitivity sensors. Since each altermagnetic material has a unique crystal structure, we propose an automated discovery approach empowered by an AI search engine that employs a pre-trained graph neural network to learn the intrinsic features of the material crystal structure, followed by…
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Taxonomy
TopicsMagnetic and transport properties of perovskites and related materials · Magnetic properties of thin films · Advanced Condensed Matter Physics
MethodsSparse Evolutionary Training · Graph Neural Network
