Broadly applicable and accurate protein design by integrating structure prediction networks and diffusion generative models
Joseph L. Watson(University of Washington), David Baker(Howard Hughes Medical Institute), Woody Ahern(University of Washington), Regina Barzilay(Massachusetts Institute of Technology), Preetham Venkatesh(University of Washington), Alexis Courbet(Howard Hughes Medical Institute), Nathaniel R. Bennett(University of Washington), Samuel J. Pellock(University of Washington), Helen E. Eisenach(University of Washington), Basile I. M. Wicky(ETH Zurich), Andrew J. Borst(University of Washington), Isaac Sappington(University of Washington), Lukas F. Milles(University of Washington), Minkyung Baek(Seoul National University), Tommi Jaakkola(Massachusetts Institute of Technology), Valentin De Bortoli(École Normale Supérieure - PSL), Émile Mathieu(University of Cambridge), Susana Vázquez Torres(University of Washington), Brian L. Trippe(University of Washington), Nikita Hanikel(University of Washington), Anna Lauko(University of Washington), Jason Yim(University of Washington), David Juergens(University of Washington), William Sheffler(University of Washington), Jue Wang(University of Washington), Frank DiMaio(University of Washington), Robert J. Ragotte(University of Washington)
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