High performance computation and sophisticated machine learning algorithms have emerged as new tools for studying biological, physical and chemical systems at the atomistic scale. In this thesis, I report several applications of molecular dynamics simulation and machine learning in the study of the macromolecular folding and assembly. In the first aspect, I employ molecular simulation and non-linear manifold learning to explore the dynamics and configuration of linear and ring polymers. Integrating statistical mechanics with dynamical systems theory, I establish a means to determine single molecule folding funnels from univariate time series in experimentally accessible observables. In the second aspect, I utilize coarse grained molecular s...
Agent-based simulations are rule-based models traditionally used for the simulations of complex syst...
From simple clustering techniques to more sophisticated neural networks, the use of machine learning...
Accurate modelling of chemical and physical interactions is crucial for obtaining thermodynamic and ...
High performance computation and sophisticated machine learning algorithms have emerged as new tools...
Molecular Dynamics simulations have been employed to investigate the effect of polydispersity on the...
Molecular dynamics simulations have been employed to investigate the effect of molecular polydispers...
Ring polymers are prevalent in natural and engineered systems, including circular bacterial DNA, cro...
Asphaltenes constitute the heaviest aromatic component of crude oil. The myriad of asphaltene molecu...
Machine learning has been playing an increasingly important role in many fields of computational phys...
2Agent-based simulations are rule-based models traditionally used for the simulations of complex sys...
In this thesis, we explore the application of various molecular simulations techniques to give insig...
Whether in designing novel materials or simply sustaining basic biological function, the dynamics of...
Machine learning has been used for estimation of potential energy surfaces to speed up molecular dyn...
This thesis explores the interplay of machine learning and molecular physics, demonstrating how deve...
This dissertation applies machine learning to the study of colloidal self-assembly to provide insigh...
Agent-based simulations are rule-based models traditionally used for the simulations of complex syst...
From simple clustering techniques to more sophisticated neural networks, the use of machine learning...
Accurate modelling of chemical and physical interactions is crucial for obtaining thermodynamic and ...
High performance computation and sophisticated machine learning algorithms have emerged as new tools...
Molecular Dynamics simulations have been employed to investigate the effect of polydispersity on the...
Molecular dynamics simulations have been employed to investigate the effect of molecular polydispers...
Ring polymers are prevalent in natural and engineered systems, including circular bacterial DNA, cro...
Asphaltenes constitute the heaviest aromatic component of crude oil. The myriad of asphaltene molecu...
Machine learning has been playing an increasingly important role in many fields of computational phys...
2Agent-based simulations are rule-based models traditionally used for the simulations of complex sys...
In this thesis, we explore the application of various molecular simulations techniques to give insig...
Whether in designing novel materials or simply sustaining basic biological function, the dynamics of...
Machine learning has been used for estimation of potential energy surfaces to speed up molecular dyn...
This thesis explores the interplay of machine learning and molecular physics, demonstrating how deve...
This dissertation applies machine learning to the study of colloidal self-assembly to provide insigh...
Agent-based simulations are rule-based models traditionally used for the simulations of complex syst...
From simple clustering techniques to more sophisticated neural networks, the use of machine learning...
Accurate modelling of chemical and physical interactions is crucial for obtaining thermodynamic and ...