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Journal of the American Chemical Society
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April 22, 2015
Molecular Dynamics of Biomolecules through Direct Analysis of Dipolar Couplings
Simon Olsson, Dariusz Ekonomiuk, Jacopo Sgrignani, et al.
Scientific Reports
|
January 31, 2018
A scalable approach to the computation of invariant measures for high-dimensional Markovian systems
Susanne Gerber, Simon Olsson, Frank Noé, et al.
Science (New York, N.Y.)
|
September 7, 2019
Boltzmann generators: Sampling equilibrium states of many-body systems with deep learning
Frank Noé, Simon Olsson, Jonas Köhler, et al.
Structure (London, England : 1993)
|
August 9, 2016
The Dynamic Basis for Signal Propagation in Human Pin1-WW
Simon Olsson, Dean Strotz, Beat Vögeli, et al.
Proceedings of the National Academy of Sciences of the United States of America
|
July 19, 2017
Combining experimental and simulation data of molecular processes via augmented Markov models
Simon Olsson, Hao Wu, Fabian Paul, et al.
Journal of Chemical Theory and Computation
|
February 24, 2025
Thermodynamic Interpolation: A Generative Approach to Molecular Thermodynamics and Kinetics
Selma Moqvist, Weilong Chen, Mathias Schreiner, et al.
Plos One
|
November 19, 2013
Inference of structure ensembles of flexible biomolecules from sparse, averaged data
Simon Olsson, Jes Frellsen, Wouter Boomsma, et al.
BMC Musculoskeletal Disorders
|
October 3, 2021
Automating classification of osteoarthritis according to Kellgren-Lawrence in the knee using deep learning in an unfiltered adult population
Simon Olsson, Ehsan Akbarian, Anna Lind, et al.
The Journal of Chemical Physics
|
October 12, 2023
Vendi sampling for molecular simulations: Diversity as a force for faster convergence and better exploration
Amey P Pasarkar, Gianluca M Bencomo, Simon Olsson, et al.
Journal of Chemical Information and Modeling
|
October 11, 2022
<i>De Novo</i> Drug Design Using Reinforcement Learning with Graph-Based Deep Generative Models
Sara Romeo Atance, Juan Viguera Diez, Ola Engkvist, et al.
Page
of 5
Search research articles
Search
Showing results (11-20 of 45) with videos related to
Sort By:
Page
of 5
Journal of the American Chemical Society
|
April 22, 2015
Molecular Dynamics of Biomolecules through Direct Analysis of Dipolar Couplings
Simon Olsson, Dariusz Ekonomiuk, Jacopo Sgrignani, et al.
Scientific Reports
|
January 31, 2018
A scalable approach to the computation of invariant measures for high-dimensional Markovian systems
Susanne Gerber, Simon Olsson, Frank Noé, et al.
Science (New York, N.Y.)
|
September 7, 2019
Boltzmann generators: Sampling equilibrium states of many-body systems with deep learning
Frank Noé, Simon Olsson, Jonas Köhler, et al.
Structure (London, England : 1993)
|
August 9, 2016
The Dynamic Basis for Signal Propagation in Human Pin1-WW
Simon Olsson, Dean Strotz, Beat Vögeli, et al.
Proceedings of the National Academy of Sciences of the United States of America
|
July 19, 2017
Combining experimental and simulation data of molecular processes via augmented Markov models
Simon Olsson, Hao Wu, Fabian Paul, et al.
Journal of Chemical Theory and Computation
|
February 24, 2025
Thermodynamic Interpolation: A Generative Approach to Molecular Thermodynamics and Kinetics
Selma Moqvist, Weilong Chen, Mathias Schreiner, et al.
Plos One
|
November 19, 2013
Inference of structure ensembles of flexible biomolecules from sparse, averaged data
Simon Olsson, Jes Frellsen, Wouter Boomsma, et al.
BMC Musculoskeletal Disorders
|
October 3, 2021
Automating classification of osteoarthritis according to Kellgren-Lawrence in the knee using deep learning in an unfiltered adult population
Simon Olsson, Ehsan Akbarian, Anna Lind, et al.
The Journal of Chemical Physics
|
October 12, 2023
Vendi sampling for molecular simulations: Diversity as a force for faster convergence and better exploration
Amey P Pasarkar, Gianluca M Bencomo, Simon Olsson, et al.
Journal of Chemical Information and Modeling
|
October 11, 2022
<i>De Novo</i> Drug Design Using Reinforcement Learning with Graph-Based Deep Generative Models
Sara Romeo Atance, Juan Viguera Diez, Ola Engkvist, et al.
Page
of 5