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Hauser.2024
Andreas W. Hauser. Pushing the limits of OFDFT with neural networks. Nature Computational Science, pages 1-2, 2024.
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Abstract
{A neural network-based method for advancing orbital-free density functional theory (OFDFT) is developed, which reaches DFT accuracy and maintains lower cost complexity.}
BibTex Reference
@article{Hauser.2024, Author = {Hauser, Andreas W.}, Title = {{Pushing the limits of OFDFT with neural networks}}, Journal = {Nature Computational Science}, Pages = {1--2}, Year = {2024} }
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