Driver

Approver

Contributors

Stakeholder

Pavan Behara Simon Boothroyd Hyesu Jang

Objective

Test force field optimization strategies

Due date

 

Key outcomes

  • Find out any deficiencies in current setup that may drive the optimization to bad parameter space

  • Train a better force field (question)

Status

Problem Statement

Apart from the selection of training data which is critical to force field optimization, there are lot of empirical parameters so that the optimizer samples the intended parameter space giving out reasonable physical parameter values. However, due to the curse of dimensionality and existence of multiple minima, that gives rise to near linear dependencies, it is not always possible to end up with the best parameter set. There are instances where we end up with some bad parameters, such as in case of sulfonamides, which resulted in manually debugging and adding guard rails in the form of canary tests. Lot of work on this front has been done by Lee-Ping Wang and Hyesu Jang in building current force fields. This work is to document the existing knowledge, as well as try out any other possible iterations with the new automated fitting infrastructure by Josh Horton and Simon Boothroyd (qcsubmit + bespoke workflows), which allow rapid prototyping with minimal setup.

Here is a list of things where the FF optimization can be tuned (some of which are already studied):