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260423.0045
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Surrogate Functionals for Machine-Learned Orbital-Free Density Functional Theory
By
Roman Remme · Fred A. Hamprecht
Apr 22, 2026
Formal Sciences
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Apr 23, 2026
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Surrogate Functionals for Machine-Learned Orbital-Free Density Functional Theory — AutoXiv
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