Accelerating Molecular Dynamics Simulations using Fast Ewald Summation with Prolates

arXiv:2505.0972758.87 citationsh-index: 11Has Code
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This provides a practical, drop-in acceleration for long-range electrostatics in MD simulations, benefiting computational chemists and biologists running large-scale simulations.

The authors introduce ESP, a new Ewald summation method using prolate spheroidal wave functions, which accelerates molecular dynamics simulations by 2.5-5x (depending on accuracy) compared to standard PME/PPPM methods, while maintaining accuracy and improving strong scaling.

The evaluation of long-range Coulomb interactions is a significant cost in molecular dynamics (MD), even when using Particle Mesh Ewald (PME) or Particle-Particle-Particle-Mesh (PPPM) methods, which rely on Ewald splitting and the fast Fourier transform to achieve near-linear scaling. We introduce ESP -- Ewald summation with prolate spheroidal wave functions (PSWFs) -- which leads to a more efficient Fourier representation and a reduction in the required grid size, global communication, and particle-grid operations, without loss of accuracy. We have integrated the ESP method into two widely-used open-source MD packages, LAMMPS and GROMACS, enabling rapid comparison and adoption. Relative to PME/PPPM baselines at error tolerances $10^{-3}$ to $10^{-4}$, ESP gives roughly a $3$-fold acceleration of electrostatic interactions, and a $2.5$-fold speed-up in the MD simulation when using about $10^3$ compute cores. At high accuracy ($10^{-5}$), these increase to $10$-fold for the far-field electrostatics and $5$-fold for MD simulation. Furthermore, we show that the accelerated codes have improved strong scaling with core count, and validate them in realistic long-time biological and material simulations. ESP thus offers a practical, drop-in path to reduce the time-to-solution and energy footprint of MD workflows.

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