Skip to main content

Reference implementation of the GDML and sGDML force field models.

Project description

Symmetric Gradient Domain Machine Learning (sGDML)

For more details visit: http://sgdml.org/

Documentation can be found here: http://sgdml.org/doc/

Requirements:

  • Python 2.7/3.7
  • NumPy (>=1.13.0)
  • SciPy
  • PyTorch (optional)
  • ASE (optional)

Getting started

Stable release

Most systems come with the default package manager for Python pip already preinstalled. Install sgdml by simply calling:

$ pip install sgdml

The sgdml command-line interface and the corresponding Python API can now be used from anywhere on the system.

Development version

(1) Clone the repository

$ git clone https://github.com/stefanch/sGDML.git
$ cd sGDML

...or update your existing local copy with

$ git pull origin master

(2) Install

$ pip install -e .

Using the flag --user, we can tell pip to install the package to the current users's home directory, instead of system-wide. This option might require you to update your system's PATH variable accordingly.

Optional dependencies

Some functionality of this package relies on third-party libraries that are not installed by default. These optional dependencies (or "package extras") are specified during installation using the "square bracket syntax":

$ pip install sgdml[<optional1>,<optional2>]

GPU support (via PyTorch)

To enable GPU support, you need to install the optional PyTorch dependency using the torch keyword:

$ pip install sgdml[torch]

Atomic Simulation Environment (ASE)

If you are interested in interfacing with ASE (see here for examples), use the ase keyword:

$ pip install sgdml[ase]

Reconstruct your first force field

Download one of the example datasets:

$ sgdml-get dataset ethanol_dft

Train a force field model:

$ sgdml all ethanol_dft.npz 200 1000 5000

Query a force field

import numpy as np
from sgdml.predict import GDMLPredict
from sgdml.utils import io

r,_ = io.read_xyz('geometries/ethanol.xyz') # 9 atoms
print(r.shape) # (1,27)

model = np.load('models/ethanol.npz')
gdml = GDMLPredict(model)
e,f = gdml.predict(r)
print(e.shape) # (1,)
print(f.shape) # (1,27)

Authors

  • Stefan Chmiela
  • Jan Hermann

We appreciate and welcome contributions and would like to thank the following people for participating in this project:

  • Huziel Sauceda
  • Igor Poltavsky
  • Luis Gálvez
  • Danny Panknin
  • Grégory Fonseca

References

  • [1] Chmiela, S., Tkatchenko, A., Sauceda, H. E., Poltavsky, I., Schütt, K. T., Müller, K.-R., Machine Learning of Accurate Energy-conserving Molecular Force Fields. Science Advances, 3(5), e1603015 (2017)
    10.1126/sciadv.1603015

  • [2] Chmiela, S., Sauceda, H. E., Müller, K.-R., & Tkatchenko, A., Towards Exact Molecular Dynamics Simulations with Machine-Learned Force Fields. Nature Communications, 9(1), 3887 (2018)
    10.1038/s41467-018-06169-2

  • [3] Chmiela, S., Sauceda, H. E., Poltavsky, I., Müller, K.-R., & Tkatchenko, A., sGDML: Constructing Accurate and Data Efficient Molecular Force Fields Using Machine Learning. Computer Physics Communications, 240, 38-45 (2019) 10.1016/j.cpc.2019.02.007

  • [4] Sauceda, H. E., Chmiela, S., Poltavsky, I., Müller, K.-R., & Tkatchenko, A., Molecular Force Fields with Gradient-Domain Machine Learning: Construction and Application to Dynamics of Small Molecules with Coupled Cluster Forces. The Journal of Chemical Physics, 150, 114102 (2019) 10.1063/1.5078687

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

sgdml-0.4.4.tar.gz (66.5 kB view hashes)

Uploaded Source

Built Distribution

sgdml-0.4.4-py2-none-any.whl (82.4 kB view hashes)

Uploaded Python 2

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page