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Showing 1–3 of 3 results
Advanced filters: Author: Abhijatmedhi Chotrattanapituk Clear advanced filters
  • Computational approaches to materials design promise to accelerate the discovery of materials with superior functionalities. This Review presents key computational advances in materials design over the past few decades, highlighting the paradigm shift from conventional screening approaches to inverse generation driven by deep generative models. Current challenges and future perspectives of materials inverse design are also discussed.

    • Mouyang Cheng
    • Chu-Liang Fu
    • Mingda Li
    Reviews
    Nature Materials
    Volume: 25, P: 174-190
  • In this study, the authors present a virtual node graph neural network to enable the prediction of material properties with variable output dimensions. This method offers fast and accurate predictions of phonon band structures in complex solids.

    • Ryotaro Okabe
    • Abhijatmedhi Chotrattanapituk
    • Mingda Li
    Research
    Nature Computational Science
    Volume: 4, P: 522-531