The benchmark datasets in molecular conformation generation task are GEOM-QM9 and GEOM-Drugs.
The detail information of the benchmark is referred from "Zhu J , Xia Y , Liu C , et al. Direct Molecular Conformation Generation[J]. arXiv e-prints, 2022":
GEOM-QM9 | GEOM-Drugs | |
---|---|---|
Training set | 200K | 200K |
Validation set | 2.5K | 2.5K |
Test set | 22408 | 14324 |
large-scale setting
GEOM-QM9 | GEOM-Drugs | |
---|---|---|
Training set | 1.37M | 2M |
Validation set | 165K | 100K |
Test set | 174K | 100K |
Progress in Computational Chemistry (Interdisciplinary Science Letters, 2018) [Paper]
[CoarseGrainingVAE] Generative Coarse-Graining of Molecular Conformations (arXiv, 2022) [Paper] [Code]
[DMCG] Direct Molecular Conformation Generation (arXiv, 2022) [Paper] [Code]
[GEODIFF] GeoDiff: a Geometric Diffusion Model for Molecular Conformation Generation (ICLR, 2022) [Paper] [Code]
[CGVAE] Generative Coarse-Graining of Molecular Conformations (ICML, 2022) [Paper] [Code]
Intermediate geometric elements include atomic distances, torsion angles and the gradients w.r.t. (with regard to) inter-atomic distances, etc.
[CGCF-ConfGen] Learning Neural Generative Dynamics for Molecular Conformation Generation (ICLR, 2021) [Paper] [Code]
[GraphDG] A generative model for molecular distance geometry (ICML, 2020) [Paper] [Code]
[GraphAF] GraphAF: a Flow-based Autoregressive Model for Molecular Graph Generation (ICLR, 2020) [Paper] [Code]
[ConfGF] Learning Gradient Fields for Molecular Conformation Generation (ICML, 2021) [Paper] [Code]
[DGSM] Predicting Molecular Conformation via Dynamic Graph Score Matching (NeurIPS, 2021) [Paper] [Code]