==================================
Welcome to pythia's documentation!
Pythia is a library to generate numerical descriptions of particle
systems. Most methods rely heavily on freud <https://github.com/glotzerlab/freud>
_ for efficient neighbor search
and other accelerated calculations.
Installation
Pythia is available on PyPI as pythia-learn
::
$ pip install pythia-learn freud-analysis
You can install pythia from source like this::
$ git clone https://github.com/glotzerlab/pythia.git
$ # now install
$ cd pythia && python setup.py install --user
.. note::
If using conda or a virtualenv, the --user
argument in the pip
command above is unnecessary.
Citation
In addition to the citations referenced in the docstring of each
function, we encourage users to cite the pythia project itself.
Documentation
The documentation is available as standard sphinx documentation::
$ cd doc
$ make html
Automatically-built documentation is available at
https://pythia-learn.readthedocs.io .
Usage
In general, data types follow the hoomd-blue schema <http://hoomd-blue.readthedocs.io/en/stable/box.html>
_:
- Positions are an Nx3 array of particle coordinates, with
(0, 0, 0)
being the center of the box - Boxes are specified as an object with
Lx
, Ly
, Lz
, xy
, xz
, and yz
elements - Orientations are specified as orientation quaternions: an Nx4 array of
(r, i, j, k)
elements
Examples
Example notebooks are available in the examples
directory:
Unsupervised learning <https://github.com/glotzerlab/pythia/blob/master/examples/Unsupervised%20Learning.ipynb>
_Supervised learning <https://github.com/glotzerlab/pythia/blob/master/examples/Supervised%20Learning.ipynb>
_Steinhardt and Pythia order parameter comparison (FCC and HCP) <https://github.com/glotzerlab/pythia/blob/master/examples/Steinhardt%20FCC%20HCP%20comparison.ipynb>
_