--- license: apache-2.0 datasets: - jheuschkel/clustered-cds-dataset language: - en pipeline_tag: fill-mask tags: - codon - Codon - biology - synthetic - dna - mrna - optimization - codon-optimization - codon-embedding - codon-representation - codon-language-model - codon-language misc: - codon --- # Model Card for SynCodonLM - This model is a replicate of that trained with species - token type ID, however, trained without any token type ID. - This model is totally protein-agnostic, while the species-token type model may still have a small amount of spurious statistical focus. --- ## Installation ```python git clone https://github.com/Boehringer-Ingelheim/SynCodonLM.git cd SynCodonLM pip install -r requirements.txt #maybe not neccesary depending on your env :) ``` ## Embedding a Coding DNA Sequence Using our Model Trained without Token Type ID ```python from SynCodonLM import CodonEmbeddings model = CodonEmbeddings(model_name='jheuschkel/SynCodonLM-V2-NoTokenType') #this loads the model & tokenizer using our built-in functions seq = 'ATGTCCACCGGGCGGTGA' mean_pooled_embedding = model.get_mean_embedding(seq) #returns --> tensor of shape [768] raw_output = model.get_raw_embeddings(seq) raw_embedding_final_layer = raw_output.hidden_states[-1] #treat this like a typical Hugging Face model dictionary based output! #returns --> tensor of shape [batch size (1), sequence length, 768] ``` ## Citation If you use this work, please cite: ```bibtex @article {Heuschkel2025.08.19.671089, author = {Heuschkel, James and Kingsley, Laura and Pefaur, Noah and Nixon, Andrew and Cramer, Steven}, title = {Advancing Codon Language Modeling with Synonymous Codon Constrained Masking}, elocation-id = {2025.08.19.671089}, year = {2025}, doi = {10.1101/2025.08.19.671089}, publisher = {Cold Spring Harbor Laboratory}, abstract = {Codon language models offer a promising framework for modeling protein-coding DNA sequences, yet current approaches often conflate codon usage with amino acid semantics, limiting their ability to capture DNA-level biology. We introduce SynCodonLM, a codon language model that enforces a biologically grounded constraint: masked codons are only predicted from synonymous options, guided by the known protein sequence. This design disentangles codon-level from protein-level semantics, enabling the model to learn nucleotide-specific patterns. The constraint is implemented by masking non-synonymous codons from the prediction space prior to softmax. Unlike existing models, which cluster codons by amino acid identity, SynCodonLM clusters by nucleotide properties, revealing structure aligned with DNA-level biology. Furthermore, SynCodonLM outperforms existing models on 6 of 7 benchmarks sensitive to DNA-level features, including mRNA and protein expression. Our approach advances domain-specific representation learning and opens avenues for sequence design in synthetic biology, as well as deeper insights into diverse bioprocesses.Competing Interest StatementThe authors have declared no competing interest.}, URL = {https://www.biorxiv.org/content/early/2025/08/24/2025.08.19.671089}, eprint = {https://www.biorxiv.org/content/early/2025/08/24/2025.08.19.671089.full.pdf}, journal = {bioRxiv} } ```