Note
Go to the end to download the full example code.
Creating models that use neighbor lists¶
This tutorial demonstrates how to create an atomistic model that requires a neighbor list, and use it to run MD simulations. This tutorial assumes knowledge of how to export an atomistic model and run it with the ASE calculator. If you haven’t read the corresponding examples, please refer to Exporting a model and Running Molecular Dynamics with ASE.
As depicted below, one or more neighbor lists will be requested by the model, computed
by the simulation engine and attached to the Systems
. The
Systems
with the neighbor list is then passed to the model.
As example, we will run a 1 ps short molecular dynamics simulation of 125 already equilibrated liquid argon atoms interacting via Lennard-Jones within a cutoff of 5 Å. The system will be simulated at a temperature of 94.4 K and a mass density of 1.374 g/cm³. In the end, we will obtain the pair-correlation function \(g(r)\) of the liquid.
from typing import Dict, List, Optional
# tools for analysis
import ase.geometry.rdf
# tools to run the simulation and visualization
import ase.io
import ase.md
import ase.neighborlist
import ase.visualize.plot
import chemiscope
import matplotlib.pyplot as plt
# the usual suspects
import numpy as np
import torch
from metatensor.torch import Labels, TensorBlock, TensorMap
from metatensor.torch.atomistic import (
MetatensorAtomisticModel,
ModelCapabilities,
ModelMetadata,
ModelOutput,
NeighborListOptions,
System,
)
# Integration with ASE calculator for metatensor atomistic models
from metatensor.torch.atomistic.ase_calculator import MetatensorCalculator
The simulation system¶
We load the pre-equilibrated liquid argon system from a
file
.
atoms = ase.io.read("liquid-argon.xyz")
The system was generated based on a 5x5x5 supercell of a simple cubic (sc) cell with a lattice constant of a = 3.641 Å. After initialization of the velocities, the system was run for 100 ps with the same parameters we will use below and the final state can be visualized as
ax = ase.visualize.plot.plot_atoms(atoms, radii=0.5)
ax.set_xlabel("$\\AA$")
ax.set_ylabel("$\\AA$")
plt.show()
The system already has velocities and the expected density of 1.374 g/cm³.
u_to_g = 1.66053906660e-24
Å_to_cm = 1e-08
mass_density = sum(atoms.get_masses()) / atoms.cell.volume * u_to_g / Å_to_cm**3
print(f"ρ_m = {mass_density:.3f} g/cm³")
ρ_m = 1.374 g/cm³
Metatensor’s neighbor lists¶
Note
The steps below of creating a neighbor list, wrapping it inside a
TensorBlock
and attaching it to a system
will be done by the simulation engine and must not be handled by the model
developer. How to request a neighbor list will be presented below when the actual
model is defined.
Before implementing the actual model, let’s take a look at how metatensor stores
neighbor lists inside a System
object. We start by computing the neighbor
list for our argon systen using ASE.
i, j, S, D = ase.neighborlist.neighbor_list(quantities="ijSD", a=atoms, cutoff=5.0)
The ase.neighborlist.neighbor_list()
function returns the neighbor indices:
quantities "i"
and "j"
, the neighbor shifts "S"
, and the distance
vectors "D"
. We now stack these together and convert them into the suitable
types.
i = torch.from_numpy(i.astype(int))
j = torch.from_numpy(j.astype(int))
neighbor_indices = torch.stack([i, j], dim=1)
neighbor_shifts = torch.from_numpy(S.astype(int))
print("neighbor_indices:", neighbor_indices)
print("neighbor_shifts:", neighbor_shifts)
neighbor_indices: tensor([[ 0, 20],
[ 0, 4],
[ 0, 5],
...,
[124, 123],
[124, 119],
[124, 94]])
neighbor_shifts: tensor([[ 1, -1, -1],
[ 0, 0, -1],
[ 1, 0, -1],
...,
[ 0, 0, 0],
[ 0, 0, 0],
[ 0, 0, 0]])
Creating a neighbor list¶
We now assemble the neighbor list following metatensor conventions. First, we create
the samples
metadata for the TensorBlock
which will hold the neighbor list.
sample_values = torch.hstack([neighbor_indices, neighbor_shifts])
samples = Labels(
names=[
"first_atom",
"second_atom",
"cell_shift_a",
"cell_shift_b",
"cell_shift_c",
],
values=sample_values,
)
neighbors = TensorBlock(
values=torch.from_numpy(D).reshape(-1, 3, 1),
samples=samples,
components=[Labels.range("xyz", 3)],
properties=Labels.range("distance", 1),
)
print(neighbors)
TensorBlock
samples (1356): ['first_atom', 'second_atom', 'cell_shift_a', 'cell_shift_b', 'cell_shift_c']
components (3): ['xyz']
properties (1): ['distance']
gradients: None
The data and metadata inside the neighbors
object do not contain information about
the cutoff
, whether this is a full or half neighbor list, and whether it is
restricted to distances strictly below the cutoff. To account for this, metatensor
neighbor lists are always stored together with NeighborListOptions
. For
example, these options can be defined with
options = NeighborListOptions(cutoff=5.0, full_list=True, strict=True)
full_list=True
will give us a list where each i, j pair appears twice, stored
once as i, j and once as j, i. full_list=False
would give us a half list, with
each pair only stored once. Depending on your model, either of these can be more
convenient or faster.
strict=True
will give us a list where all pairs are strictly contained inside the
cutoff radius. This is always safe to do and should be your default option.
strict=False
can contain additional pairs that you would need to handle
explicitly, either by adding a cutoff smoothing function to make the contribution of
pairs outside the cutoff got to zero; or by filtering out such pairs. The advantage of
using strict=False
is that this will allow simulation engines to re-use the same
neighbor list across multiple simulation steps, making the overall simulation faster.
It is however a tradeoff, since with strict=False
the model itself will have to
process more pairs.
With this we can, in principle, attach the neighbor list to a metatensor system using
system.add_neighbor_list(options=options, neighbors=neighbors)
To reiterate, in a typical simulation setup computing the neighbor list and attaching it to the system is done by the simulation engine, and model authors do not have to worry about it.
The model can then retrieve the neighbor list with
system.get_neighbor_list(options=options)
Accessing data in neighbor lists¶
Now that we have a neighbor list, we can access the data and metadata. First, we can
extract the distances
vectors between the neighboring pairs within the cutoff,
which we can then use in our models.
distances = neighbors.values
print(distances.shape)
torch.Size([1356, 3, 1])
We can also get the metadata values like neighbor indices or the neighbor
shifts using the Labels.column
and
Labels.view
methods.
i = neighbors.samples.column("first_atom")
j = neighbors.samples.column("second_atom")
neighbor_indices = neighbors.samples.view(["first_atom", "second_atom"]).values
neighbor_shifts = neighbors.samples.view(
["cell_shift_a", "cell_shift_b", "cell_shift_c"]
).values
As mentioned above, in practical use cases you will not have to compute neighbor lists
yourself, but instead the simulation engine will compute it for you and you’ll just
need to get the right list for a given System
using the corresponding
options
:
neighbors = system.get_neighbor_list(options)
You can also loop over all attached lists of a System
using
System.known_neighbor_lists()
to find a suitable one based on
NeighborListOptions
attributes like cutoff
, full_list
, and
requestors
.
A Lennard-Jones model¶
Now that we know how the neighbor data is stored and can be accessed, and know how to use it we can construct our Lennard-Jones model with a fixed cutoff. The Lennard-Jones potential is a mathematical basis to approximate the interaction between a pair of neutral atoms or molecules. It is given by the equation:
where \(\epsilon\) is the depth of the potential well, \(\sigma\) is the finite distance at which the inter-particle potential is zero, and \(r\) is the distance between the particles. The 12-6 form is chosen because the \(r^{12}\) term approximates the Pauli repulsion at short ranges, while the \(r^6\) term represents the attractive van der Waals forces. The \(r^{12}\) is chosen because it is just the square of the \(r^6\) and therefore allows fast evaluation.
A Lennard-Jones potential is well-suited for argon because it accurately represents the van der Waals forces that dominate the interactions between argon atoms, as for all noble gases. This potential was used in one of the first MD simulations: “Correlation in the motions of atoms in liquid Argon” by A. Rahman (Phys. Rev. 136, A405-A411, 1964), which demonstrated the effectiveness of continuous potentials in molecular dynamics.
The model below is a simplified version of a more complex Lennard-Jones model.
The linked version also implements per_atom
energies as well as atom selection
using the selected_atoms
parameter of the forward()
method. In this model, we
shift the energy by its value at the cutoff
. This will break the conservativeness
of the potential, which is unproblematic in here because we use a large cutoff and
therefore the potential already almost decayed to zero. For more sophisticated methods
like a polynomial switching potential like XPLOR, we refer to the literature.
class LennardJonesModel(torch.nn.Module):
"""Implementation of a single particle type Lennard-Jones potential."""
def __init__(self, cutoff, sigma, epsilon):
super().__init__()
# define neighbor list options to request the right set of neighbors
self._nl_options = NeighborListOptions(
cutoff=cutoff, full_list=False, strict=True
)
self._sigma = sigma
self._epsilon = epsilon
# shift the energy to 0 at the cutoff
self._shift = 4 * epsilon * ((sigma / cutoff) ** 12 - (sigma / cutoff) ** 6)
def requested_neighbor_lists(self) -> List[NeighborListOptions]:
"""Method declaring which neighbors lists this model desires.
The method is required to tell an simulation engine (here ase) to compute and
attach the requested neighbor list to a system which will be passed to the
``forward`` method defined below
Note that a model can request as many neighbor lists as it wants
"""
return [self._nl_options]
def forward(
self,
systems: List[System],
outputs: Dict[str, ModelOutput],
selected_atoms: Optional[Labels],
) -> Dict[str, TensorMap]:
if list(outputs.keys()) != ["energy"]:
raise ValueError(
"this model can only compute 'energy', but `outputs` contains other "
f"keys: {', '.join(outputs.keys())}"
)
# we don't want to worry about selected_atoms yet
if selected_atoms is not None:
raise NotImplementedError("selected_atoms is not implemented")
if outputs["energy"].per_atom:
raise NotImplementedError("per atom energy is not implemented")
# Initialize device so we can access it outside of the for loop
device = torch.device("cpu")
for system in systems:
device = system.device
neighbors = system.get_neighbor_list(self._nl_options)
distances = neighbors.values.reshape(-1, 3)
sigma_r_6 = (self._sigma / torch.linalg.vector_norm(distances, dim=1)) ** 6
sigma_r_12 = sigma_r_6 * sigma_r_6
e = 4.0 * self._epsilon * (sigma_r_12 - sigma_r_6) - self._shift
samples = Labels(
["system"], torch.arange(len(systems), device=device).reshape(-1, 1)
)
block = TensorBlock(
values=torch.sum(e).reshape(-1, 1),
samples=samples,
components=torch.jit.annotate(List[Labels], []),
properties=Labels(["energy"], torch.tensor([[0]], device=device)),
)
return {
"energy": TensorMap(
Labels("_", torch.tensor([[0]], device=device)), [block]
),
}
In the model above, in addition to the required __init__()
and
ModelInterface.forward()
methods, we also implemented the
ModelInterface.requested_neighbor_lists()
method, which declares the neighbor
list our model requires.
Running the simulation¶
We now define and wrap the model, using the initial positions and the Lennard-Jones parameters taken from Méndez-Bermúdez et.al, Phys. Commun. 2022.
Note
The units of the Lennard Jones parameters from the reference are in
"Angstrom"
and "kJ/mol"
. We declare the (energy) unit
and
length_unit
accordiningly when defining the ModelCapabilities
object
below. From then on, metatensor is taking care of the correct unit conversion when
the energies and forces are passed to the simulation engine.
sigma = 3.3646 # Å
epsilon = 0.94191 # kJ / mol
model = LennardJonesModel(
cutoff=5.0,
sigma=sigma,
epsilon=epsilon,
)
capabilities = ModelCapabilities(
outputs={
"energy": ModelOutput(quantity="energy", unit="kJ/mol", per_atom=False),
},
atomic_types=[18],
interaction_range=5.0,
length_unit="Angstrom",
supported_devices=["cpu"],
dtype="float32",
)
wrapper = MetatensorAtomisticModel(model.eval(), ModelMetadata(), capabilities)
# Use the wrapped model as the calculator for these atoms
atoms.calc = MetatensorCalculator(wrapper)
We’ll run the simulation in the constant volume/temperature thermodynamic ensemble
(NVT or Canonical ensemble), using a Langevin thermostat for time integration. Please
refer to the corresponding documentation (ase.md.langevin.Langevin
) for
more information!
integrator = ase.md.Langevin(
atoms,
timestep=2.0 * ase.units.fs,
temperature_K=94.4,
friction=0.1 / ase.units.fs,
)
trajectory = []
for _ in range(50):
# run a single simulation for 10 steps
integrator.run(10)
# collect data about the simulation
trajectory.append(atoms.copy())
We can use chemiscope to visualize the trajectory
viewer_settings = {"bonds": False, "playbackDelay": 70}
chemiscope.show(trajectory, mode="structure", settings={"structure": [viewer_settings]})
We finally compute and plot the avaregae pair-correlation function \(g(r)\) of the
recorded trajectory
.
rdf = []
for atoms in trajectory:
rdf_step, rdf_dists = ase.geometry.rdf.get_rdf(atoms, rmax=9.0, nbins=100)
rdf.append(rdf_step)
fig, ax = plt.subplots()
ax.plot(rdf_dists, np.mean(rdf, axis=0))
ax.set_xlabel("distance / Å")
ax.set_ylabel("$g(r)$")
ax.minorticks_on()
fig.tight_layout()
fig.show()
The pair-correlation function shows the usual structure for a liquid and we find the expected first narrow peak at 3.7 Å and a second broader peak at 7.0 Å.
Total running time of the script: (0 minutes 3.270 seconds)