Design of experiments for Python
Project description
The pyDOE package is designed to help the scientist, engineer, statistician, etc., to construct appropriate experimental designs.
Capabilities
The package currently includes functions for creating designs for any number of factors:
Factorial Designs
General Full-Factorial (fullfact)
2-level Full-Factorial (ff2n)
2-level Fractional Factorial (fracfact)
Plackett-Burman (pbdesign)
Response-Surface Designs
Box-Behnken (bbdesign)
Central-Composite (ccdesign)
Randomized Designs
Latin-Hypercube (lhs)
See the package homepage for details on usage and other notes
What’s New
In this release, the original authors (for Scilab) have been given the credit they deserve.
Requirements
NumPy
SciPy
Installation and download
See the package homepage for helpful hints relating to downloading and installing pyDOE.
Source Code
The latest, bleeding-edge but working code and documentation source are available on GitHub.
Contact
Any feedback, questions, bug reports, or success stores should be sent to the author. I’d love to hear from you!
Credits
This code was originally published by the following individuals for use with Scilab:
Copyright (C) 2012 - 2013 - Michael Baudin
Copyright (C) 2012 - Maria Christopoulou
Copyright (C) 2010 - 2011 - INRIA - Michael Baudin
Copyright (C) 2009 - Yann Collette
Copyright (C) 2009 - CEA - Jean-Marc Martinez
Website: forge.scilab.org/index.php/p/scidoe/sourcetree/master/macros
Much thanks goes to these individuals.
License
This package is provided under two licenses:
The BSD License
Any other that the author approves (just ask!)
References
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.