Learning Hamiltonian Flow Maps: Mean Flow Consistency for Large-Timestep Molecular Dynamics
About
Simulating the long-time evolution of Hamiltonian systems is limited by the small timesteps required for stable numerical integration. To overcome this constraint, we introduce a framework to learn Hamiltonian Flow Maps by predicting the mean phase-space evolution over a chosen time span, enabling stable large-timestep updates far beyond the stability limits of classical integrators. To this end, we impose a Mean Flow consistency condition for time-averaged Hamiltonian dynamics. Unlike prior approaches, this allows training on independent phase-space samples without access to future states, avoiding expensive trajectory generation. Validated across diverse Hamiltonian systems, our method in particular improves upon molecular dynamics simulations using machine-learned force fields (MLFF). Our models maintain comparable training and inference cost, but support significantly larger integration timesteps while trained directly on widely-available trajectory-free MLFF datasets.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Molecular Dynamics Simulation | MD17 Ethanol (test) | Force MAE (meV/Å)0.076 | 13 | |
| Molecular Dynamics Simulation | MD17 Naphthalene (test) | Force MAE (meV/Å)0.047 | 13 | |
| Molecular Dynamics Simulation | MD17 Salicylic acid (test) | Force MAE (meV/Å)0.039 | 13 | |
| Molecular Dynamics Simulation | Aspirin (test) | Time per Step (ms)1.4 | 7 | |
| Molecular Dynamics Simulation | MD17 Aspirin (test) | -- | 7 |