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A benchmark for machine learning energy models on inorganic crystal stability prediction from unrelaxed structures

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Matbench Discovery

arXiv Tests GitHub Pages Requires Python 3.11+ PyPI

TL;DR: We benchmark ML models on crystal stability prediction from unrelaxed structures finding universal interatomic potentials (UIP) like CHGNet, MACE and M3GNet to be highly accurate, robust across chemistries and ready for production use in high-throughput materials discovery.

Matbench Discovery is an interactive leaderboard and associated PyPI package which together make it easy to rank ML energy models on a task designed to simulate a high-throughput discovery campaign for new stable inorganic crystals.

We've tested models covering multiple methodologies ranging from random forests with structure fingerprints to graph neural networks, from one-shot predictors to iterative Bayesian optimizers and interatomic potential relaxers.

Our results show that ML models have become robust enough to deploy them as triaging steps to more effectively allocate compute in high-throughput DFT relaxations. This work provides valuable insights for anyone looking to build large-scale materials databases.

We welcome contributions that add new models to the leaderboard through GitHub PRs. See the contributing guide for details.

If you're interested in joining this work, feel free to open a GitHub discussion or send an email.

For detailed results and analysis, check out the preprint.

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