A new CPD dataset distillation method trains ML force fields for dense hydrogen phase transitions using only 200 configurations while reproducing structural and dynamical properties.
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First-principles simulations find denser hydrogen at planetary conditions, implying lower bulk metallicity for Jupiter.
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Dataset Distillation for Machine Learning Force Field in Phase Transition Regime
A new CPD dataset distillation method trains ML force fields for dense hydrogen phase transitions using only 200 configurations while reproducing structural and dynamical properties.
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A Denser Hydrogen Inferred from First-Principles Simulations Challenges Jupiter's Interior Models
First-principles simulations find denser hydrogen at planetary conditions, implying lower bulk metallicity for Jupiter.