Markov state models (MSMs) and other related kinetic network models are frequently used to study the long-timescale dynamical behavior of biomolecular and materials systems. MSMs are often constructed bottom-up using brute-force molecular dynamics (MD) simulations when the model contains a large number of states and kinetic pathways that are not known a priori. However, the resulting network generally encompasses only parts of the configurational space, and regardless of any additional MD performed, several states and pathways will still remain missing. This implies that the duration for which the MSM can faithfully capture the true dynamics, which we term as the validity time for the MSM, is always finite and unfortunately much shorter tha...
Nucleic acid strands, which react by forming and breaking Watson-Crick base pairs, can be designed t...
With recent advances in structural biology, including experi-mental techniques and deep learning-ena...
With recent advances in structural biology, including experi-mental techniques and deep learning-ena...
Kinetic Monte Carlo (KMC) models of complex materials and biomolecules are increasingly being constr...
Markov state models of molecular kinetics (MSMs), in which the long-time statistical dynamics of a m...
Understanding the kinetic behavior of complex systems is crucial for the study of physical, chemical...
Markov state models (MSMs) of biomolecular systems are often constructed using the molecular dynamic...
In this thesis, the aim is to contribute to the development of long-time methods for molecular dynam...
Markov State Modelling as a concept for a coarse grained description of the essential kinetics of a ...
Markov State Modelling as a concept for a coarse grained description of the essential kinetics of a ...
Interest in atomically detailed simulations has grown significantly with recent advances in computat...
Markov state models (MSMs) have been successful in computing metastable states, slow relaxation time...
Markov State Modelling as a concept for a coarse grained description of the essential kinetics of a ...
The problem of flickering trajectories in standard kinetic Monte Carlo (kMC) simulations prohibits s...
Conformational changes of proteins are an*Author contributed equally with all other contributors. es...
Nucleic acid strands, which react by forming and breaking Watson-Crick base pairs, can be designed t...
With recent advances in structural biology, including experi-mental techniques and deep learning-ena...
With recent advances in structural biology, including experi-mental techniques and deep learning-ena...
Kinetic Monte Carlo (KMC) models of complex materials and biomolecules are increasingly being constr...
Markov state models of molecular kinetics (MSMs), in which the long-time statistical dynamics of a m...
Understanding the kinetic behavior of complex systems is crucial for the study of physical, chemical...
Markov state models (MSMs) of biomolecular systems are often constructed using the molecular dynamic...
In this thesis, the aim is to contribute to the development of long-time methods for molecular dynam...
Markov State Modelling as a concept for a coarse grained description of the essential kinetics of a ...
Markov State Modelling as a concept for a coarse grained description of the essential kinetics of a ...
Interest in atomically detailed simulations has grown significantly with recent advances in computat...
Markov state models (MSMs) have been successful in computing metastable states, slow relaxation time...
Markov State Modelling as a concept for a coarse grained description of the essential kinetics of a ...
The problem of flickering trajectories in standard kinetic Monte Carlo (kMC) simulations prohibits s...
Conformational changes of proteins are an*Author contributed equally with all other contributors. es...
Nucleic acid strands, which react by forming and breaking Watson-Crick base pairs, can be designed t...
With recent advances in structural biology, including experi-mental techniques and deep learning-ena...
With recent advances in structural biology, including experi-mental techniques and deep learning-ena...