Large genome model: Open source AI trained on trillions of bases

Reddit - Artificial Intelligence 1 min read

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"...Evo 2, an open source AI that has been trained on genomes from all three domains of life (bacteria, archaea, and eukaryotes). After training on trillions of base pairs of DNA, Evo 2 developed internal representations of key features in even complex genomes like ours, including things like regulatory DNA and splice sites, which can be challenging for humans to spot. Bacterial genomes are organized along relatively straightforward principles. Any genes that encode proteins or RNAs are conti...

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Originally published on March 05, 2026. Curated by AI News.

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