Engineering and Technology
Neural structure fields with application to crystal structure autoencoders
N. Chiba, Y. Suzuki, et al.
Discover how researchers Naoya Chiba, Yuta Suzuki, Tatsunori Taniai, Ryo Igarashi, Yoshitaka Ushiku, Kotaro Saito, and Kanta Ono are transforming crystal structure representation for machine learning with their innovative Neural Structure Fields (NeSF). This cutting-edge method uses neural networks to redefine material design, showcasing remarkable reconstruction capabilities compared to traditional grid-based techniques.
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