Machine learning models, especially certain deep neural networks, can predict lattice thermal conductivity with useful accuracy across different generalization tests while being orders of magnitude faster than first-principles calculations.
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Orb: A fast, scalable neural network potential.arXiv preprint arXiv:2410.22570(2024)
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