Title: Data from “Signatures of a liquid-liquid transition in an ab initio deep neural network model for water”
Description: This dataset contains all data related to the publication “Signatures of a liquid-liquid transition in an ab initio deep neural network model for water”, by Gartner et al., 2020. In this work, we used neural networks to generate a computational model for water using high-accuracy quantum chemistry calculations.
Title: Deep Potential training data for subcritical and supercritical water
Description: Data set used to train a Deep Potential (DP) model for subcritical and supercritical water. Training data contain atomic forces, potential energy, atomic coordinates and cell tensor. Energy and forces were evaluated with the density functional SCAN. Atomic configurations were extracted from DP molecular dynamics at P = 250 bar and T = 553, 623, 663, 733 and 823 K. Input files used to train the DP model are also provided.