eacortes's picture
Update README.md
ad31ca4 verified
---
license: cdla-permissive-2.0
tags:
- chemistry
- smiles
- cheminformatics
pretty_name: MSR-ACC TAE25 Regression
size_categories:
- 10K<n<100K
---
# MSR-ACC TAE25 Regression Dataset
This dataset is a processed version of the Microsoft Research Accurate Chemistry Collection (MSR-ACC) TAE25 dataset, containing thermochemical data for molecules with computed Total Atomization Energies (TAE) using various quantum chemical methods.
[![DOI](https://zenodo.org/badge/DOI/10.5281/zenodo.15783826.svg)](https://doi.org/10.5281/zenodo.15783826)
## Dataset Description
The original MSR-ACC TAE25 dataset contains QCSchema JSON files with 3D molecular geometries and computed thermochemical properties.
This processed version provides:
- **SMILES representations** generated from 3D coordinates and graph connectivity
- **Train/validation/test splits** for machine learning applications
- **Train set**: Contains molecular structures from the original training partition (except test samples)
- **Validation set**: Contains molecular structures from the original validation partition
- **Test set**: 1,510 molecules sampled from the training set (1,485 random samples + 25 complete records)
## Data Processing Pipeline
### 1. SMILES Generation
SMILES strings were generated from 3D molecular coordinates using the following process:
1. **QCSchema Parsing**: Loaded QCSchema JSON files using `qcelemental` for validation
2. **Bonds (Graph Connectivity)**: Used pre-computed connectivity from `graph:all` fields in QCSchema extras
3. **SMILES Generation**: Generated canonical, isomeric SMILES using RDKit with `MolToSmiles(canonical=True, isomericSmiles=True)`
### 2. Dataset Splitting
The test set was created by sampling from the original training partition to ensure proper evaluation:
1. **Sampling**:
- Selected 25 molecules with complete (non-NaN) target values across all thermochemical properties
- Randomly sampled 1,485 additional molecules from remaining training data
2. **Data Cleaning**:
- Maintained original train/validation split from source dataset
## Data Format
Each Parquet file contains the following columns:
- `filename`: QCSchema JSON filename from the original dataset
- `name`: Molecular name from QCSchema
- `smiles`: Canonical, isomeric SMILES string
- `symbols`: Atomic symbols
- `atomic_numbers`: Atomic numbers
- `geometry`: 3D coordinates in Angstroms
- `graph:all`: Molecular connectivity information
- `tae@*`: Total Atomization Energy computed with various DFT methods and basis sets
- `singlet-triplet-gap-*`: Electronic excitation energies
## Target Properties
The dataset includes Total Atomization Energies computed using:
- **DFT Methods**: B3LYP, B97M-V, M06-2X, r2SCAN, revDSD-PBEP86
- **Basis Sets**: def2-SVP, def2-TZVP, def2-QZVP, ma-def2-*
- **Composite Methods**: B97-3C, PBEh-3C, r2SCAN-3C
- **Semi-empirical**: GFN1-xTB, GFN2-xTB
- **High-level**: CCSD(T)/6-31G*, W1-F12
## Usage Notes
- **Missing Values**: Many molecules have NaN values for specific methods (sparse coverage)
- **SMILES Quality**: Generated from optimized 3D geometries and graph connectivity
- **Test Set**: Contains both complete and incomplete records to enable various evaluation strategies
## Citation
If you use this processed dataset, please cite both the original MSR-ACC publication and the Zenodo repository:
```bibtex
@misc{ehlert2025accuratechemistrycollectioncoupled,
title={Accurate Chemistry Collection: Coupled cluster atomization energies for broad chemical space},
author={Sebastian Ehlert and Jan Hermann and Thijs Vogels and Victor Garcia Satorras and Stephanie Lanius and Marwin Segler and Derk P. Kooi and Kenji Takeda and Chin-Wei Huang and Giulia Luise and Rianne van den Berg and Paola Gori-Giorgi and Amir Karton},
year={2025},
eprint={2506.14492},
archivePrefix={arXiv},
primaryClass={physics.chem-ph},
url={https://arxiv.org/abs/2506.14492},
}
```
```bibtex
@dataset{ehlert_2025_15783826,
author = {Ehlert, Sebastian and
Hermann, Jan and
Vogels, Thijs and
Garcia Satorras, Victor and
Lanius, Stephanie and
Segler, Marwin and
Kooi, Derk P. and
Takeda, Kenji and
Huang, Chin-Wei and
Luise, Giulia and
van den Berg, Rianne and
Gori-Giorgi, Paola and
Karton, Amir},
title = {MSR-ACC/TAE25: 77k coupled cluster atomization
energies for broad chemical space
},
month = jul,
year = 2025,
publisher = {Zenodo},
doi = {10.5281/zenodo.15783826},
url = {https://doi.org/10.5281/zenodo.15783826},
}
```
## License
This dataset is released under the Community Data License Agreement - Permissive - Version 2.0 (CDLA-Permissive-2.0), consistent with the original MSR-ACC dataset licensing.