Generating Symmetric Materials using Latent Flow Matching
About
Tackling the task of materials generation, we aim to enhance the previously proposed All-atom Diffusion Transformer (ADiT) by introducing SymADiT, a symmetry-aware variant. To do so, we use a representation of materials based on Wyckoff positions. We follow ADiT and perform generative modelling in latent space, adapted to our symmetry-aware representation. By forcing the output of the generative model to adhere to the symmetry restrictions imposed by the generated crystal's space group and each atom's Wyckoff-position, the generated materials exhibit more realistic symmetry properties. We benchmark our method against both symmetry-aware and symmetry-agnostic models for materials generation and show competitive performance, generating stable, symmetric materials with a simple Transformer architecture.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Material generation | MP-20 (test) | SUN Rate5.53 | 19 | |
| Crystal Structure Generation | MP20 + MPTS52 (test) | Structural Validity95.31 | 2 | |
| Crystal Structure Generation | MPTS52 (test) | Structural Validity94.34 | 1 |