2024
DOI: 10.1101/2024.01.14.575543
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OmniNA: A foundation model for nucleotide sequences

Xilin Shen,
Xiangchun Li

Abstract: Foundation models have demonstrated exceptional efficacy across diverse downstream tasks. However, within the realms of genomics and transcriptomics, a notable gap persists in the availability of models that afford a comprehensive understanding of nucleotide sequence principles across various species. Here, we present OmniNA, a foundation generative model designed for comprehensive nucleotide sequence learning. The model was pre-trained on 91.7 million nucleotide sequences and the corresponding annotations enc… Show more

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