Offline Materials Optimization with CliqueFlowmer
About
Recent advances in deep learning inspired neural network-based approaches to computational materials discovery (CMD). A plethora of problems in this field involve finding materials that optimize a target property. Nevertheless, the increasingly popular generative modeling methods are ineffective at boldly exploring attractive regions of the materials space due to their maximum likelihood training. In this work, we offer an alternative CMD technique based on offline model-based optimization (MBO) that fuses direct optimization of a target material property into generation. To that end, we introduce a domain-specific model, dubbed CliqueFlowmer, that incorporates recent advances of clique-based MBO into transformer and flow generation. We validate CliqueFlowmer's optimization abilities and show that materials it produces strongly outperform those provided by generative baselines. To enable its use in specialized materials discovery problems and support interdisciplinary research, we open-source our code and provide additional project information at https://github.com/znowu/CliqueFlowmer.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Crystal Structure Generation (Formation Energy Optimization) | 100 M3GNet-selected structures (DFT evaluated) | Formation Energy (Eform)-2.87 | 6 | |
| Material Generation (Formation Energy) | MP-20 (test) | Eform-0.99 | 6 | |
| Material Property Optimization (Formation Energy) | MP-20 | Eform-0.99 | 6 | |
| Crystal Structure Generation (Band Gap Optimization) | 100 M3GNet-selected structures (DFT evaluated) | Band Gap0.2 | 6 | |
| Material Generation (Band Gap) | MP-20 (test) | Band Gap0.07 | 6 | |
| Material Property Optimization (Band Gap) | MP-20 | Band Gap0.07 | 6 |