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  1. Software

Avocado

Status
released
Title
Avocado
Description
Avocado is a multi-scale deep tensor factorization method for learning a latent representation of the human epigenome. The purpose of this model is two fold; first, to impute epigenomic experiments that have not yet been performed, and second, to learn a latest representation of the human epigenome that can be used as input for machine learning models in the place of epigenomic data itself.

Software versions

Version
Download checksum
0.1.0e8d3440ce9fe1da002ce07ff65cfa916
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