AI RESEARCH

Crystalite: A Lightweight Transformer for Efficient Crystal Modeling

arXiv CS.LG

ArXi:2604.02270v1 Announce Type: new Generative models for crystalline materials often rely on equivariant graph neural networks, which capture geometric structure well but are costly to train and slow to sample. We present Crystalite, a lightweight diffusion Transformer for crystal modeling built around two simple inductive biases. The first is Subatomic Tokenization, a compact chemically structured atom representation that replaces high-dimensional one-hot encodings and is better suited to continuous diffusion.