SMI-TED: A large-scale foundation model for materials and chemistry
Abstract
We present SMI-TED (SMILE Transformer Encoder Decoder), a large-scale foundation model for materials and chemistry, trained on a massive dataset of 91 million SMILES samples (4 billion molecular tokens) from PubChem using self-supervised learning. Our encoder-decoder architecture enables a wide range of complex tasks, including the prediction of quantum chemical properties and reaction yields. We offer two model variants, with 289M and 8 X 289 parameters, respectively, to accommodate different use cases. Our model achieves state-of-the-art results across multiple benchmark datasets, demonstrating its versatility and effectiveness. Notably, our model's latent space exhibits compositionality and separability, essential properties for higher-level reasoning tasks and few-shot learning capabilities. To facilitate further research and applications, we make our model weights and source code publicly available on HuggingFace and GitHub, respectively.