Message boards : Rosetta@home Science : ESMFold
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| ![View the profile of [VENETO] boboviz Profile](https://boinc.bakerlab.org/rosetta/img/head_20.png) [VENETO] boboviz Send message Joined: 1 Dec 05 Posts: 2124 Credit: 12,432,615 RAC: 1,727   | 
 ESMFold Machine learning methods for protein structure prediction have taken advantage of the evolutionary information present in multiple sequence alignments to derive accurate structural information, but predicting structure accurately from a single sequence is much more difficult. Lin et al. trained transformer protein language models with up to 15 billion parameters on experimental and high-quality predicted structures and found that information about atomic-level structure emerged in the model as it was scaled up. They created ESMFold, a sequence-to-structure predictor that is nearly as accurate as alignment-based methods and considerably faster. The increased speed permitted the generation of a database, the ESM Metagenomic Atlas, containing more than 600 million metagenomic proteins This is the github | 
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