Proposed for presentation at the New Mexico Machine Learning Symposium held January 26, 2021 in Albuquerque, NM.最新文献

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Accelerating phase-field based predictions via surrogate models trained by machine learning methods. 通过机器学习方法训练的代理模型加速基于相场的预测。
R. Dingreville
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