MuRaL: inferring mutation rates via deep learning

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MuRaL, short for Mutation Rate Learner, is a deep learning framework to predict mutation rates at the nucleotide level using only genomic sequences as input. MuRaL can build models with relatively few training mutations and a moderate number of sequenced individuals (e.g. ~100 individuals), and can leverage transfer learning to further reduce data and time demands. It can be applied to many species with population genomic data.

This documentation is for MuRaL v1.2.0.

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