Training-free hyperparameter optimization of neural networks for electronic structures in matter

Author:

Fiedler LenzORCID,Hoffmann Nils,Mohammed Parvez,Popoola Gabriel A,Yovell Tamar,Oles Vladyslav,Austin Ellis JORCID,Rajamanickam SivasankaranORCID,Cangi AttilaORCID

Abstract

Abstract A myriad of phenomena in materials science and chemistry rely on quantum-level simulations of the electronic structure in matter. While moving to larger length and time scales has been a pressing issue for decades, such large-scale electronic structure calculations are still challenging despite modern software approaches and advances in high-performance computing. The silver lining in this regard is the use of machine learning to accelerate electronic structure calculations—this line of research has recently gained growing attention. The grand challenge therein is finding a suitable machine-learning model during a process called hyperparameter optimization. This, however, causes a massive computational overhead in addition to that of data generation. We accelerate the construction of neural network models by roughly two orders of magnitude by circumventing excessive training during the hyperparameter optimization phase. We demonstrate our workflow for Kohn–Sham density functional theory, the most popular computational method in materials science and chemistry.

Publisher

IOP Publishing

Subject

Artificial Intelligence,Human-Computer Interaction,Software

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

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3. Predicting electronic structures at any length scale with machine learning;npj Computational Materials;2023-06-27

4. Electronic density response of warm dense matter;Physics of Plasmas;2023-03-01

5. Machine-Learning for Static and Dynamic Electronic Structure Theory;Challenges and Advances in Computational Chemistry and Physics;2023

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