jheuschkel/clustered-cds-dataset
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bibtex @article{10.1093/nar/gkag166, 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}, journal = {Nucleic Acids Research}, volume = {54}, number = {5}, pages = {gkag166}, year = {2026}, month = {02}, 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 six of seven benchmarks sensitive to DNA-level features, including messenger RNA 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.}, issn = {1362-4962}, doi = {10.1093/nar/gkag166}, url = {https://doi.org/10.1093/nar/gkag166}, eprint = {https://academic.oup.com/nar/article-pdf/54/5/gkag166/67103471/gkag166.pdf}, } } git clone https://github.com/Boehringer-Ingelheim/SynCodonLM.git
cd SynCodonLM
pip install -r requirements.txt #maybe not neccesary depending on your env :)
from SynCodonLM import CodonEmbeddings
model = CodonEmbeddings() #this loads the model & tokenizer using our built-in functions
seq = 'ATGTCCACCGGGCGGTGA'
mean_pooled_embedding = model.get_mean_embedding(seq, species_token_type=30) #E. coli
#returns --> tensor of shape [768]
raw_output = model.get_raw_embeddings(seq, species_token_type=30) #E. coli
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]
from SynCodonLM import CodonOptimizer
optimizer = CodonOptimizer() #this loads the model & tokenizer using our built-in functions
result = optimizer.optimize(
protein_sequence="MSKGEELFTGVVPILVELDGDVNGHKFSVSGEGEGDATYGKLTLKFICTTGKLPVPWPTLVTTFSYGVQCFSRYPDHMKRHDFFKSAMPEGYVQERTIFFKDDGNYKTRAEVKFEGDTLVNRIELKGIDFKEDGNILGHKLEYNYNSHNVYIMADKQKNGIKVNFKIRHNIEDGSVQLADHYQQNTPIGDGPVLLPDNHYLSTQSALSKDPNEKRDHMVLLEFVTAAGITLGMDELYK", #GFP
species_token_type=30, #E. coli
deterministic=True #true by default
)
codon_optimized_sequence = result.sequence
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]
bibtex @article{10.1093/nar/gkag166, 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}, journal = {Nucleic Acids Research}, volume = {54}, number = {5}, pages = {gkag166}, year = {2026}, month = {02}, 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 six of seven benchmarks sensitive to DNA-level features, including messenger RNA 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.}, issn = {1362-4962}, doi = {10.1093/nar/gkag166}, url = {https://doi.org/10.1093/nar/gkag166}, eprint = {https://academic.oup.com/nar/article-pdf/54/5/gkag166/67103471/gkag166.pdf}, } }
| Organism | Token-Type ID |
|---|---|
| E. coli | 30 |
| S. cerevisiae | 118 |
| C. elegans | 212 |
| D. melanogaster | 190 |
| D. rerio | 428 |
| M. musculus | 368 |
| A. thaliana | 258 |
| H. sapiens | 373 |
| C. griseus | 345 |