Dataset Viewer
The dataset viewer is not available for this dataset.
Unexpected token '<', "<html> <h"... is not valid JSON

Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.

Multi-fidelity DFT delta corrections for crystal structures

Dataset Description

This dataset contains ~60,000 crystal structure relaxations from the NOMAD repository, computed with the all-electron DFT code FHI-aims at multiple levels of numerical precision (basis set size × k-point density). For each pair of a low-fidelity and a high-fidelity calculation on the same structure, we provide the delta corrections — the difference in key physical observables between the two settings.

The dataset was constructed to train and evaluate machine-learning models that predict the correction needed to "upgrade" a cheap DFT calculation to a more expensive one, without running the expensive calculation.

Key quantities

Symbol Column Description
ΔE delta_total_energy_per_atom Energy delta (eV/atom)
ΔE_g delta_homo_lumo_gap HOMO–LUMO gap delta (eV)
ΔV delta_final_volume_per_atom Volume delta (ų/atom)

Files

File Format Size Description
data.parquet Parquet (snappy) ~92 MB Tabular delta corrections + DFT settings + features
graph_data.pt PyTorch torch.save ~352 MB Pre-processed graph dataset for GNN training

Loading Examples

Tabular data (Parquet)

import pandas as pd

df = pd.read_parquet("data.parquet")
print(df.shape)          # (59235, 175)
print(df["basis_size"].value_counts())
print(df["delta_total_energy_per_atom"].describe())

Graph data (PyTorch / PyG)

import torch

graphs = torch.load("graph_data.pt", map_location="cpu")
# graphs is a list of torch_geometric.data.Data objects
g = graphs[0]
print(g.x.shape)          # atom features
print(g.edge_index.shape) # connectivity
print(g.pos.shape)        # fractional / Cartesian positions
# g.split  →  "train" | "val" | "test"

Column Dictionary

Identifiers & DFT settings

Column Type Description
compound_name str Chemical formula + ICSD index label
formula str Reduced chemical formula
ICSD_number int ICSD database entry number
uid str Unique structure–setting identifier
split str train / val / test (80/10/10 by structure)
basis_size str FHI-aims basis tier: minimal, standard, tier1, tier2
k_point_density int Monkhorst–Pack k-point density parameter (2, 4, or 8)
functional str XC functional (PBE throughout)
relaxation str Relaxation protocol identifier

Primary delta targets

Column Unit Description
delta_total_energy_per_atom eV/atom Total energy difference (low→high fidelity)
delta_homo_lumo_gap eV HOMO–LUMO gap difference
delta_final_volume_per_atom ų/atom Cell volume difference
delta_relaxed_a_len Å Lattice parameter a difference
delta_relaxed_b_len Å Lattice parameter b difference
delta_relaxed_c_len Å Lattice parameter c difference

Structure geometry (low-fidelity baseline)

Column Unit Description
original_volume ų Unit cell volume before relaxation
final_volume ų Unit cell volume after low-fidelity relaxation
original_a_len, _b_len, _c_len Å Pre-relaxation lattice parameters
relaxed_a_len, _b_len, _c_len Å Post-relaxation lattice parameters (low-fidelity)
original_atom_positions str Fractional positions (JSON-encoded)
relaxed_atom_positions str Relaxed fractional positions (low-fidelity)

Elemental features (statistics over atoms in unit cell)

Columns follow the pattern {stat}_{feature} where stat ∈ {max, min, mean, mad}:

Feature suffix Description
atomic_EA_half Electron affinity (half-electron, eV)
atomic_IP_half Ionisation potential (half-electron, eV)
atomic_HOMO / atomic_LUMO HOMO/LUMO energy of isolated atom (eV)
atomic_rs/rp/rd/rf Orbital radii (Bohr)
monomer_total_energy_per_atom Free-atom reference energy (eV/atom)
monomer_volume_per_atom Free-atom reference volume (ų/atom)
monomer_bandstructure_gap Free-atom band gap proxy (eV)
valence_electrons Number of valence electrons
basis_functions Number of basis functions per atom

Dataset Statistics

  • Total rows: 59,235
  • Unique structures: ~14,500
  • Basis sizes: minimal, standard, tier1, tier2
  • k-point densities: 2, 4, 8
  • Elements covered: H through Bi (excluding lanthanides/actinides; a small number of heavy-element structures are filtered)
  • Train / val / test split: 80 / 10 / 10 by unique crystal structure

Citation

If you use this dataset, please cite:

@inproceedings{speckhard2026multifidelity,
  title     = {Multi-fidelity {DFT} delta corrections for crystal structures},
  author    = {Speckhard, Daniel and others},
  booktitle = {ICML 2026 Workshop on Machine Learning for Materials},
  year      = {2026},
}

License

Creative Commons Attribution 4.0 International (CC BY 4.0)


Training Code

The GNN and Random Forest training code used with this dataset is available at:
https://gitlab.mpcdf.mpg.de/dansp/errorbar_modelling

Downloads last month
29