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Tools for processing x-ray powder diffraction data from laboratory sources.

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Tools for processing x-ray powder diffraction data from laboratory sources.

PDFgetX3 has revolutionized how PDF methods can be applied to solve nanostructure problems. However, the program was designed for use with Rapid Acquisition PDF (RAPDF) data from synchrotron sources. A key approximation inherent in the use of PDFgetX3 for RAPDF data is that absorption effects are negligible. This is typically not the case for laboratory x-ray diffractometers, where absorption effects can be significant.

This app is designed to preprocess data from laboratory x-ray diffractometers before using PDFgetX3 to obtain PDFs. The app currently carries out an absorption correction assuming a parallel beam capillary geometry which is the most common geometry for lab PDF measurements.

The theory is described in the following paper:

An ad hoc Absorption Correction for Reliable Pair-Distribution Functions from Low Energy x-ray Sources, Yucong Chen, Till Schertenleib, Andrew Yang, Pascal Schouwink, Wendy L. Queen and Simon J. L. Billinge, in preparation.

The related experimental data acquisition protocols are described in the following paper:

Protocols for Obtaining Reliable PDFs from Laboratory x-ray Sources Using PDFgetX3, Till Schertenleib, Daniel Schmuckler, Yucong Chen, Geng Bang Jin, Wendy L. Queen and Simon J. L. Billinge, in preparation.

For more information about the diffpy.labpdfproc library, please consult our online documentation.

Citation

If you use diffpy.labpdfproc in a scientific publication, we would like you to cite this package as

diffpy.labpdfproc Package, https://github.com/diffpy/diffpy.labpdfproc

Installation

The preferred method is to use Miniconda Python and install from the “conda-forge” channel of Conda packages.

To add “conda-forge” to the conda channels, run the following in a terminal.

conda config --add channels conda-forge

We want to install our packages in a suitable conda environment. The following creates and activates a new environment named diffpy.labpdfproc_env

conda create -n diffpy.labpdfproc_env python=3
conda activate diffpy.labpdfproc_env

Then, to fully install diffpy.labpdfproc in our active environment, run

conda install diffpy.labpdfproc

Another option is to use pip to download and install the latest release from Python Package Index. To install using pip into your diffpy.labpdfproc_env environment, type

pip install diffpy.labpdfproc

If you prefer to install from sources, after installing the dependencies, obtain the source archive from GitHub. Once installed, cd into your diffpy.labpdfproc directory and run the following

pip install .

Example

Navigate to the directory that contains 1D diffraction patterns that you would like to process. Activate the conda environment (conda activate diffpy.labpdfproc_env) that contains the package and run the following command

labpdfproc <muD> <path/to/inputfile.txt>

Here replace <muD> with the value of muD for your sample and <path/to/inputfile.txt> with the path and filename of your input file. For example, if the uncorrected data case is called zro2_mo.xy and is in the current directory and it has a muD of 2.5 then the command would be

labpdfproc 2.5 zro2_mo.xy

Please type

labpdfproc --help

for more information on the available options.

Support and Contribute

Diffpy user group is the discussion forum for general questions and discussions about the use of diffpy.labpdfproc. Please join the diffpy.labpdfproc users community by joining the Google group. The diffpy.labpdfproc project welcomes your expertise and enthusiasm!

If you see a bug or want to request a feature, please report it as an issue and/or submit a fix as a PR. You can also post it to the Diffpy user group.

Feel free to fork the project and contribute. To install diffpy.labpdfproc in a development mode, with its sources being directly used by Python rather than copied to a package directory, use the following in the root directory

pip install -e .

To ensure code quality and to prevent accidental commits into the default branch, please set up the use of our pre-commit hooks.

  1. Install pre-commit in your working environment by running conda install pre-commit.

  2. Initialize pre-commit (one time only) pre-commit install.

Thereafter your code will be linted by black and isort and checked against flake8 before you can commit. If it fails by black or isort, just rerun and it should pass (black and isort will modify the files so should pass after they are modified). If the flake8 test fails please see the error messages and fix them manually before trying to commit again.

Improvements and fixes are always appreciated.

Before contributing, please read our Code of Conduct.

Contact

For more information on diffpy.labpdfproc please visit the project web-page or email Prof. Simon Billinge at sb2896@columbia.edu.

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