instadeepai/nucleotide-transformer
Foundation Models for Genomics & Transcriptomics
Built on transformer architectures trained on billions of base pairs across diverse species, these models enable single-nucleotide-resolution tasks like genome annotation, functional-track prediction, and sequence generation using a unified framework. The ecosystem integrates with Hugging Face for model distribution and leverages JAX for efficient inference, supporting fine-tuning workflows for downstream genomics applications like plant crop analysis and enhancer design.
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