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Stephan Eismann
Stephan Eismann
在 stanford.edu 的电子邮件经过验证
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引用次数
引用次数
年份
High-speed recording of neural spikes in awake mice and flies with a fluorescent voltage sensor
Y Gong, C Huang, JZ Li, BF Grewe, Y Zhang, S Eismann, MJ Schnitzer
Science 350 (6266), 1361-1366, 2015
4442015
Geometric deep learning of RNA structure
RJL Townshend, S Eismann, AM Watkins, R Rangan, M Karelina, R Das, ...
Science 373 (6558), 1047-1051, 2021
1532021
Learning from protein structure with geometric vector perceptrons
B Jing, S Eismann, P Suriana, RJL Townshend, R Dror
arXiv preprint arXiv:2009.01411, 2020
1482020
Molecular mechanism of biased signaling in a prototypical G protein–coupled receptor
CM Suomivuori, NR Latorraca, LM Wingler, S Eismann, MC King, ...
Science 367 (6480), 881-887, 2020
1412020
Learning neural PDE solvers with convergence guarantees
JT Hsieh, S Zhao, S Eismann, L Mirabella, S Ermon
arXiv preprint arXiv:1906.01200, 2019
1012019
Atom3d: Tasks on molecules in three dimensions
RJL Townshend, M Vögele, P Suriana, A Derry, A Powers, Y Laloudakis, ...
arXiv preprint arXiv:2012.04035, 2020
662020
Hierarchical, rotation‐equivariant neural networks to select structural models of protein complexes
S Eismann, RJL Townshend, N Thomas, M Jagota, B Jing, RO Dror
Proteins: Structure, Function, and Bioinformatics, 2020
512020
Equivariant graph neural networks for 3d macromolecular structure
B Jing, S Eismann, PN Soni, RO Dror
arXiv preprint arXiv:2106.03843, 2021
382021
A preclinical microbeam facility with a conventional x‐ray tube
S Bartzsch, C Cummings, S Eismann, U Oelfke
Medical physics 43 (12), 6301-6308, 2016
292016
Protein sequence‐to‐structure learning: Is this the end (‐to‐end revolution)?
E Laine, S Eismann, A Elofsson, S Grudinin
Proteins: Structure, Function, and Bioinformatics 89 (12), 1770-1786, 2021
252021
Bayesian optimization and attribute adjustment
S Eismann, D Levy, R Shu, S Bartzsch, S Ermon
Proc. 34th Conference on Uncertainty in Artificial Intelligence, 2018
192018
Protein model quality assessment using rotation-equivariant, hierarchical neural networks
S Eismann, P Suriana, B Jing, RJL Townshend, RO Dror
arXiv preprint arXiv:2011.13557, 2020
92020
Hierarchical, rotation-equivariant neural networks to predict the structure of protein complexes
S Eismann, RJL Townshend, N Thomas, M Jagota, B Jing, R Dror
arXiv preprint arXiv:2006.09275, 2020
72020
Geometric prediction: Moving beyond scalars
RJL Townshend, B Townshend, S Eismann, RO Dror
arXiv preprint arXiv:2006.14163, 2020
62020
Protein connectivity in chemotaxis receptor complexes
S Eismann, RG Endres
PLoS Computational Biology 11 (12), e1004650, 2015
62015
Protein model quality assessment using rotation‐equivariant transformations on point clouds
S Eismann, P Suriana, B Jing, RJL Townshend, RO Dror
Proteins: Structure, Function, and Bioinformatics, 2023
2023
Equivariant Machine Learning for Macromolecules
SJ Eismann
Stanford University, 2021
2021
Raphael JL Townshend Computer Science Stanford University
A Derry, AS Powers, Y Laloudakis, S Balachandar, B Jing, B Anderson, ...
Hierarchical, rotation‐equivariant neural networks to select structural models of protein complexes
S Eismann, RJL Townshend, N Thomas, M Jagota, B Jing, RO Dror
Proteins: Structure, Function, and Bioinformatics, 0
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