Back to Search Start Over

Rapid Experimentation with Python Considering Optional and Hierarchical Inputs

Authors :
Ranly, Neil
Wagner, Torrey
Publication Year :
2025

Abstract

Space-filling experimental design techniques are commonly used in many computer modeling and simulation studies to explore the effects of inputs on outputs. This research presents raxpy, a Python package that leverages expressive annotation of Python functions and classes to simplify space-filling experimentation. It incorporates code introspection to derive a Python function's input space and novel algorithms to automate the design of space-filling experiments for spaces with optional and hierarchical input dimensions. In this paper, we review the criteria for design evaluation given these types of dimensions and compare the proposed algorithms with numerical experiments. The results demonstrate the ability of the proposed algorithms to create improved space-filling experiment designs. The package includes support for parallelism and distributed execution. raxpy is available as free and open-source software under a MIT license.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.03398
Document Type :
Working Paper