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Using Deep Learning to Annotate the Protein Universe

View ORCID ProfileMaxwell L. Bileschi, View ORCID ProfileDavid Belanger, Drew Bryant, View ORCID ProfileTheo Sanderson, View ORCID ProfileBrandon Carter, D. Sculley, View ORCID ProfileMark A. DePristo, View ORCID ProfileLucy J. Colwell
doi: https://doi.org/10.1101/626507
Maxwell L. Bileschi
1Google Research
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  • For correspondence: mlbileschi@google.com lcolwell@google.com
David Belanger
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Drew Bryant
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Theo Sanderson
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Brandon Carter
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2Computer Science and Artificial Intelligence Laboratory, MIT
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D. Sculley
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Mark A. DePristo
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Lucy J. Colwell
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3Dept. of Chemistry, Cambridge University
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  • For correspondence: mlbileschi@google.com lcolwell@google.com
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  • https://www.kaggle.com/googleai/pfam-seed-random-split

  • https://pantheon.corp.google.com/storage/browser/brain-genomics-public/research/proteins/pfam/random_split?pli=1

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Posted May 06, 2019.
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Using Deep Learning to Annotate the Protein Universe
Maxwell L. Bileschi, David Belanger, Drew Bryant, Theo Sanderson, Brandon Carter, D. Sculley, Mark A. DePristo, Lucy J. Colwell
bioRxiv 626507; doi: https://doi.org/10.1101/626507
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Using Deep Learning to Annotate the Protein Universe
Maxwell L. Bileschi, David Belanger, Drew Bryant, Theo Sanderson, Brandon Carter, D. Sculley, Mark A. DePristo, Lucy J. Colwell
bioRxiv 626507; doi: https://doi.org/10.1101/626507

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