About this Research Topic
With this Research Topic, we aim to focus on the development of methods that can bridge AI and MD methodologies. We approach the problem with two questions: (1) how do we smoothly couple AI and MD methods; and (2) how do we systematize or automate AI-MD workflows? We are asking authors to develop readily usable methods to featurize MD simulations and/or ports of these features that connect AI algorithms and MD tools. Preferably, these tools should be able to integrate with common simulation tools such as GROMACS, NAMD, LAMMPS, OpenMM, CHARMM, etc. Alternatively, authors are encouraged to design systematic or automatable workflows that help force field parametrization, spatial or temporal coarse-graining, molecular designs, featurization (such as free energy calculations), structure preparations, etc. We believe that normalizing the use of novel deep learning tools in MD simulations will assist researchers in exploiting both powerful methods in emerging fields.
We welcome submissions covering, but not limited to, the following areas:
• AI methods that featurize MD simulation data (correlation analysis, cluster analysis, rare event analysis, free energy calculations, ensemble analysis, etc.)
• Enhanced sampling using AI methods
• Structural predictions based on both AI and MD methods
• Property predictions based on both AI and MD methods
• AI-enhanced parametrization of force fields
• Automation of MD simulations with AI methods
• Toolkits that connect MD generated data and AI methods
Dr. Leili Zhang is a full time employee at IBM. All other Topic Editors declare no competing interests with regards to the Research Topic subject.
Keywords: Molecular dynamics simulations, molecular modeling, artificial intelligence, machine learning, deep learning
Important Note: All contributions to this Research Topic must be within the scope of the section and journal to which they are submitted, as defined in their mission statements. Frontiers reserves the right to guide an out-of-scope manuscript to a more suitable section or journal at any stage of peer review.