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An effective mass package

Reason this release was yanked:

incorrect versioning - should be a minor release

Project description

effmass

PyPI version Documentation Status Build Status Test Coverage DOI License: MIT JOSS status

New: Effmass can now read in FHI-Aims output data

effmass is a Python 3 package for calculating various definitions of effective mass from the electronic bandstructure of a semiconducting material. It consists of a core class that calculates the effective mass and other associated properties of selected bandstructure segments. The module also contains functions for locating bandstructure extrema and plotting approximations to the dispersion.

Examples are provided in a Jupyter notebook here. API documentation is here. Source code is available as a git repository at https://github.com/lucydot/effmass.

If you use effmass for your published research please cite effmass.

The paper directory contains the Vasp input data (POSCAR), Vasp output data (OUTCAR/PROCAR) and band structures generated for an academic paper using this software: Impact of nonparabolic electronic band structure on the optical and transport properties of photovoltaic materials
Phys. Rev. B 99 (8), 085207 - also avaiable on arXiv..

Features

effmass can:

Read in a bandstructure: It is assumed you have used a DFT calculator to walk through a 1D slice of the Brillouin Zone, capturing the maxima and minima of interest. effmass uses the Python package vasppy for parsing VASP output.

Locate extrema: These correspond to the valence band maxima and conduction band minima. Maxima and minima within a certain energy range can also be located.

Calculate curvature, transport and optical effective masses: The curvature (aka inertial) and transport masses are calculated using the derivatives of a fitted polynomial function. The optical effective mass can also be calculated assuming a Kane dispersion.

Assess the extent of non-parabolicity: Parameters of the Kane quasi-linear dispersion are calculated to quantify the extent of non-parabolicity over a given energy range.

Calculate the quasi-fermi level for a given carrier concentration: Using density-of-states data and assuming no thermal smearing, effmass can calculate the energy to which states are occupied. This is a useful approximation to the quasi-Fermi level. Note: this is only supported for VASP and requires the output file DOSCAR.

Plot fits to the dispersion: Selected bandstructure segments and approximations to the dispersion (assuming a Kane, quadratic, or higher order fit) can be visualised.

The effmass package is aimed towards theoretical solid state physicists and chemists who have a basic familiarity with Python. Depending on the functionality and level of approximation you are looking for, it may be that one of the packages listed here will suit your needs better.

Supported Codes

effmass currently supports VASP and FHI-Aims. We are currently working on interfacing with Castep output and, in the near future, hope to play nicely with pymatgen. We especially welcome contributions that will help make effmass available to more researchers.

Questions, bug reports, feature requests

Please use the Github issue tracker for any questions, feature requests or bug reports. Please do not contact the developers via email unless there is a specific reason you do not want the conversation to be public.

Development

If you would like to contribute please do so via a pull request. All contributors must read and respect the code of conduct. In particular, we welcome contributions which would extend effmass so that it is able to parse output from other electronic structure codes.

Installation

effmass is a Python 3 package and requires key packages from the SciPy ecosystem: SciPy, NumPy and Matplotlib. If you have not installed these packages before, it may be best to install them using your preferred package manager (eg: Homebrew). Note that together they will use >100MB of disk space. effmass can then be built using the Python package manager pip:

pip3 install --user effmass

Or download the latest release from GitHub, and install

cd effmass
python3 setup.py install

Or clone the latest development version

git clone git@github.com:lucydot/effmass.git

and install the same way.

cd effmass
python3 setup.py install 

Tests

Automated testing of the latest commit happens here.

Manual tests can be run using

python3 -m pytest

This code has been tested with Python versions 3.6.

Documentation

An overview of the features of effmass along with example code is contained in a Jupyter notebook.

API documentation is available here.

Citing effmass

If you use this code in your research, please cite the following paper:

Whalley, Lucy D. (2018). effmass - an effective mass package. The Journal of Open Source Software, 3(28) 797. Link to paper here.

Bibtex

@misc{Whalley_JOSS2018,
  author       = {Lucy D. Whalley},
  title        = {effmass: An effective mass package},
  volume       = {3},
  issue        = {28},
  pages        = {797},
  month        = {Aug},
  year         = {2018},
  doi          = {10.21105/joss.00797},
  url          = {http://joss.theoj.org/papers/10.21105/joss.00797}
}

Contributors

Lead developer: Lucy Whalley, a.k.a lucydot

Contributors: Matthias Goloumb (Support for FHI-Aims), a.k.a MatthiasGolomb Sean Kavanagh (Documentation), a.k.a kavanase Benjamin Morgan (Vasppy compatability), a.k.a bjmorgan

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