--- license: other widget: - text: Ḣ Q V Q [MASK] E tags: - biology - medical --- ## AntiBERTa2-CSSP 🧬 AntiBERTa2 is an antibody-specific language model based on the [RoFormer model](https://arxiv.org/abs/2104.09864) - it is pre-trained using masked language modelling. We also provide a multimodal version of AntiBERTa2, AntiBERTa2-CSSP, that has been trained using a contrastive objective, similar to the [CLIP method](https://arxiv.org/abs/2103.00020). Further details on both AntiBERTa2 and AntiBERTa2-CSSP are described in our [paper](https://www.mlsb.io/papers_2023/Enhancing_Antibody_Language_Models_with_Structural_Information.pdf) accepted at the NeurIPS MLSB Workshop 2023. Both AntiBERTa2 models are only available for non-commercial use. Output antibody sequences (e.g. from infilling via masked language models) can only be used for non-commercial use. For any users seeking commercial use of our model and generated antibodies, please reach out to us at [info@alchemab.com](mailto:info@alchemab.com). | Model variant | Parameters | Config | | ------------- | ---------- | ------ | | [AntiBERTa2](https://huggingface.co/alchemab/antiberta2) | 202M | 16L, 16H, 1024d | | [AntiBERTa2-CSSP](https://huggingface.co/alchemab/antiberta2-cssp) | 202M | 16L, 16H, 1024d | ## Example usage ``` >>> from transformers import ( RoFormerModel, RoFormerTokenizer, RoFormerForSequenceClassification ) >>> tokenizer = RoFormerTokenizer.from_pretrained("alchemab/antiberta2-cssp") >>> model = RoFormerModel.from_pretrained("alchemab/antiberta2-cssp") >>> model(**tokenizer("Ḣ Q V Q ... T V S S", return_tensors='pt')).last_hidden_state... # etc >>> new_model = RoFormerForSequenceClassification.from_pretrained( "alchemab/antiberta2-cssp") # this will of course raise warnings # that a new linear layer will be added # and randomly initialized ```