posted on 2023-03-01, 15:10authored byThomas Plé, Nastasia Mauger, Olivier Adjoua, Théo Jaffrelot Inizan, Louis Lagardère, Simon Huppert, Jean-Philip Piquemal
We report the implementation of a multi-CPU and multi-GPU
massively
parallel platform dedicated to the explicit inclusion of nuclear quantum
effects (NQEs) in the Tinker-HP molecular dynamics (MD) package. The
platform, denoted Quantum-HP, exploits two simulation strategies:
the Ring-Polymer Molecular Dynamics (RPMD) that provides exact structural
properties at the cost of a MD simulation in an extended space of
multiple replicas and the adaptive Quantum Thermal Bath (adQTB) that
imposes the quantum distribution of energy on a classical system via
a generalized Langevin thermostat and provides computationally affordable
and accurate (though approximate) NQEs. We discuss some implementation
details, efficient numerical schemes, and parallelization strategies
and quickly review the GPU acceleration of our code. Our implementation
allows an efficient inclusion of NQEs in MD simulations for very large
systems, as demonstrated by scaling tests on water boxes with more
than 200,000 atoms (simulated using the AMOEBA polarizable force field).
We test the compatibility of the approach with Tinker-HP’s
recently introduced Deep-HP machine learning potentials module by
computing water properties using the DeePMD potential with adQTB thermostatting.
Finally, we show that the platform is also compatible with the alchemical
free energy estimation capabilities of Tinker-HP and fast enough to
perform simulations. Therefore, we study how NQEs affect the hydration
free energy of small molecules solvated with the recently developed
Q-AMOEBA water force field. Overall, the Quantum-HP platform allows
users to perform routine quantum MD simulations of large condensed-phase
systems and will help to shed new light on the quantum nature of important
interactions in biological matter.