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Density Functional Theory of Water with the Machine-Learned DM21 Functional
[post]
2022
unpublished
The delicate interplay between functional-driven and density-driven errors in density functional theory (DFT) has hindered traditional density functional approximations (DFAs) from providing an accurate description of water for over 30 years. Recently, the deep-learned DeepMind 21 (DM21) functional has been shown to overcome the limitations of traditional DFAs as it is free of delocalization error. To determine if DM21 can enable a molecular-level description of the physical properties of
doi:10.26434/chemrxiv-2022-73d0t
fatcat:yqbeasekbzeuhfl4teuwzq6jnq