For over 60 years computers have been used to simulate biological systems in molecular detail using classical mechanics, using so-called molecular dynamics simulations. To perform a molecular dynamics simulation the system of interest has to be described using simulation input files, ensuring that the system is described using an appropriate model which reproduces the physical behaviour of the real system. Preparing these input files has, until now, only been possible for common, linear, polymers, such as proteins and DNA due to a historical focus on these systems. In chapter 2 we present software that is capable of setting up simulations for more complex systems such as branched or cyclic polymers using models at several resolutions. Howev...
Computational modeling of biological systems is challenging because of the multitude of spatial and ...
Natural biomolecular systems process information in a radically different manner than programmable m...
Machine learning has rapidly become a key method for the analysis and organization of large-scale da...
For over 60 years computers have been used to simulate biological systems in molecular detail using ...
Molecular dynamics simulations play an increasingly important role in the rational design of (nano)-...
High performance computation and sophisticated machine learning algorithms have emerged as new tools...
We present an algorithm to reconstruct atomistic structures from their corresponding coarse-grained ...
Molecular dynamics has established itself over the last years as a strong tool for structure-based m...
Complex (supra)molecular systems are ubiquitous in living organisms as well as in synthetic context ...
The goal of most clustering algorithms is to find the optimal number of clusters (i.e. fewest number...
This dissertation is concerned with the development and application of unsupervised machine learning...
The folding of biomolecules by computational methods remains a big challenge. Most notably, all-atom...
Computational modeling of biological systems is challenging because of the multitude of spatial and ...
Natural biomolecular systems process information in a radically different manner than programmable m...
Machine learning has rapidly become a key method for the analysis and organization of large-scale da...
For over 60 years computers have been used to simulate biological systems in molecular detail using ...
Molecular dynamics simulations play an increasingly important role in the rational design of (nano)-...
High performance computation and sophisticated machine learning algorithms have emerged as new tools...
We present an algorithm to reconstruct atomistic structures from their corresponding coarse-grained ...
Molecular dynamics has established itself over the last years as a strong tool for structure-based m...
Complex (supra)molecular systems are ubiquitous in living organisms as well as in synthetic context ...
The goal of most clustering algorithms is to find the optimal number of clusters (i.e. fewest number...
This dissertation is concerned with the development and application of unsupervised machine learning...
The folding of biomolecules by computational methods remains a big challenge. Most notably, all-atom...
Computational modeling of biological systems is challenging because of the multitude of spatial and ...
Natural biomolecular systems process information in a radically different manner than programmable m...
Machine learning has rapidly become a key method for the analysis and organization of large-scale da...