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High Efficiency Configuration Space Sampler

Project description

HECSS

High Efficiency Configuration Space Sampler

HECSS is a Markow chain Monte-Carlo, configuration space sampler using Metropolis-Hastings algorithm for probablity distribution sampling. It provides an alternative way to create representations of systems at thermal equilibrium without running a very expensive molecular dynamics simulation. The theoretical foundation of the code are presented in the section Background in the Documentation. More detailed examples are included in the LAMMPS and VASP tutorials.

A very short example

Minimal example using LAMMPS potential from the asap3 package and OpenKIM database. Here we will sample the thermodynamic distribution of 3C-SiC crystal at 300K. We start by importing required modules, define the crystal and energy/forces calculator, run the sampler and finally plot the energy distribution.

#asap
from ase.build import bulk
import asap3
from hecss.monitor import plot_stats

Then we define the crystal and interaction model used in the calculation. In this case we use 3x3x3 supercell of the SiC crystal in zincblende structure and describe the interaction using LAMMPS potential from the OpenKIM database and ASAP3 implementation of the calculator.

#asap
model = 'Tersoff_LAMMPS_ErhartAlbe_2005_SiC__MO_903987585848_003'
cryst = bulk('SiC', crystalstructure='zincblende', a=4.38120844, cubic=True).repeat((3,3,3))
cryst.set_calculator(asap3.OpenKIMcalculator(model))

Then we define the sampler parameters (N -- number of samples, T -- temperature) and run it.

#asap
T = 300
N = 1_000
samples = HECSS(cryst, asap3.OpenKIMcalculator(model), T).generate(N)

And finally we plot the histogram of the resulting energy distribution which corresponds to the thermal equilibrium distribution.

#asap
plot_stats(samples, T)

png

Install

The HECSS package is avaliable on pypi and conda-forge additionally the package is present also in my personal anaconda channel (jochym). Installation is simple, but requires a number of other packages to be installed as well. Package menagers handle these dependencies automatically.

Install with pip

It is advisable to install in a dedicated virtual environment e.g.:

python3 -m venv venv
. venv/bin/activate

then install with pip:

pip install hecss

Install with conda

Also installation with conda should be performed for dedicated or some other non-base environment. To create dedicated environment you can invoke conda create:

conda create -n hecss -c conda-forge hecss

or you can install in some working environment venv:

conda install -n venv -c conda-forge hecss

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