Data Mining for better material synthesis: the case of pulsed laser deposition of complex oxides
Steven R. Young, Artem Maksov, Maxim Ziatdinov, Ye Cao, Matthew Burch,, Janakiraman Balachandran, Linglong Li, Suhas Somnath, Robert M. Patton,, Sergei V. Kalinin, Rama K. Vasudevan

TL;DR
This paper presents a software tool that mines literature data on pulsed laser deposition of oxides, creating a community resource to analyze growth parameters and properties, thereby accelerating materials discovery.
Contribution
The authors develop a novel literature mining and analysis platform for oxide film growth data, integrating crowd sourcing and machine learning to enhance materials research.
Findings
Visualization of growth windows and trends
Identification of outliers and data distribution
Template for analyzing complex interactions
Abstract
The pursuit of more advanced electronics, finding solutions to energy needs, and tackling a wealth of social issues often hinges upon the discovery and optimization of new functional materials that enable disruptive technologies or applications. However, the discovery rate of these materials is alarmingly low. Much of the information that could drive this rate higher is scattered across tens of thousands of papers in the extant literature published over several decades, and almost all of it is not collated and thus cannot be used in its entirety. Many of these limitations can be circumvented if the experimentalist has access to systematized collections of prior experimental procedures and results that can be analyzed and built upon. Here, we investigate the property-processing relationship during growth of oxide films by pulsed laser deposition. To do so, we develop an enabling software…
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