propnet: A Knowledge Graph for Materials Science

Date Published
02/2020
Publication Type
Journal Article
Authors
DOI
10.1016/j.matt.2019.11.013
Abstract

Data-driven materials science is bolstered by the recent growth of online materials databases. However, the current informatics infrastructure has yet to unlock the full knowledge available within existing datasets or to explore connections between different materials science domains. Here, we present a streamlined system for codifying and connecting materials properties in an open-source Python framework: propnet. We demonstrate the capability of this framework to augment existing datasets of materials properties: by consecutively applying a network of physical relationships to calculate related information, propnet connects disparate domain knowledge. Beyond an immediate increase in available information, the results allow for the examination of correlations between sets of properties and guide the design of multifunctional materials. By emphasizing code extensibility and simplicity, we offer this software to the materials science community for general application to any experimental or computationally derived materials database.

Journal
Matter
Volume
2
Year of Publication
2020
Issue
2
Pagination
464 - 480
ISSN Number
25902385
Short Title
Matter
Refereed Designation
Refereed
Organizations
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