The Materials Simulation Toolkit for Machine Learning (MAST-ML): an automated open source toolkit to accelerate data-driven materials research
Ryan Jacobs, Tam Mayeshiba, Ben Afflerbach, Luke Miles, Max Williams,, Matthew Turner, Raphael Finkel, Dane Morgan

TL;DR
MAST-ML is an open source Python toolkit that simplifies and accelerates machine learning workflows in materials science, making advanced data-driven research more accessible and reproducible.
Contribution
This paper introduces MAST-ML, a user-friendly, automated software package that standardizes and streamlines machine learning processes in materials research.
Findings
Demonstrated MAST-ML's application in recent materials informatics studies.
Showcased automated workflows for model development and evaluation.
Highlighted potential for advancing materials informatics through accessible tools.
Abstract
As data science and machine learning methods are taking on an increasingly important role in the materials research community, there is a need for the development of machine learning software tools that are easy to use (even for nonexperts with no programming ability), provide flexible access to the most important algorithms, and codify best practices of machine learning model development and evaluation. Here, we introduce the Materials Simulation Toolkit for Machine Learning (MAST-ML), an open source Python-based software package designed to broaden and accelerate the use of machine learning in materials science research. MAST-ML provides predefined routines for many input setup, model fitting, and post-analysis tasks, as well as a simple structure for executing a multi-step machine learning model workflow. In this paper, we describe how MAST-ML is used to streamline and accelerate the…
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