Illustrating an Effective Workflow for Accelerated Materials Discovery
Mrinalini Mulukutla, A. Nicole Person, Sven Voigt, Lindsey Kuettner,, Branden Kappes, Danial Khatamsaz, Robert Robinson, Daniel Salas, Wenle Xu,, Daniel Lewis, Hongkyu Eoh, Kailu Xiao, Haoren Wang, Jaskaran Singh Saini, Raj, Mahat, Trevor Hastings, Matthew Skokan, Vahid Attari

TL;DR
This paper discusses a comprehensive workflow and data management system designed to accelerate materials discovery through collaborative, cloud-based tools, standardized procedures, and knowledge graphs, enabling efficient data sharing and analysis.
Contribution
It introduces an integrated collaboration platform with innovative data management strategies, including cloud storage, sample tracking, and knowledge graphs, tailored for accelerated materials discovery.
Findings
Successful implementation of cloud storage and sample tracking.
Development of a standardized naming convention and file system.
Use of knowledge graphs for efficient data management.
Abstract
Algorithmic materials discovery is a multi-disciplinary domain that integrates insights from specialists in alloy design, synthesis, characterization, experimental methodologies, computational modeling, and optimization. Central to this effort is a robust data management system paired with an interactive work platform. This platform should empower users to not only access others data but also integrate their analyses, paving the way for sophisticated data pipelines. To realize this vision, there is a need for an integrative collaboration platform, streamlined data sharing and analysis tools, and efficient communication channels. Such a collaborative mechanism should transcend geographical barriers, facilitating remote interaction and fostering a challenge-response dynamic. In this paper, we present our ongoing efforts in addressing the critical challenges related to an accelerated…
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