Illustrating an Effective Workflow for Accelerated Materials Discovery
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 Materials Discovery Framework as a part of the High-Throughput Materials Discovery for Extreme Conditions Initiative. Our BIRDSHOT Center has successfully harnessed various tools and strategies, including the utilization of cloud-based storage, a standardized sample naming convention, a structured file system, the implementation of sample travelers, a robust sample tracking method, and the incorporation of knowledge graphs for efficient data management. Additionally, we present the development of a data collection platform, reinforcing seamless collaboration among our team members. In summary, this paper provides an illustration and insight into the various elements of an efficient and effective workflow within an accelerated materials discovery framework while highlighting the dynamic and adaptable nature of the data management tools and sharing platforms.
Keywords
Cite
@article{arxiv.2405.13132,
title = {Illustrating an Effective Workflow for Accelerated Materials Discovery},
author = {Mrinalini Mulukutla and A. Nicole Person and Sven Voigt and Lindsey Kuettner and Branden Kappes and Danial Khatamsaz and Robert Robinson and Daniel Salas and Wenle Xu and Daniel Lewis and Hongkyu Eoh and Kailu Xiao and Haoren Wang and Jaskaran Singh Saini and Raj Mahat and Trevor Hastings and Matthew Skokan and Vahid Attari and Michael Elverud and James D. Paramore and Brady Butler and Kenneth Vecchio and Surya R. Kalidindi and Douglas Allaire and Ibrahim Karaman and Edwin L. Thomas and George Pharr and Ankit Srivastava and Raymundo Arróyave},
journal= {arXiv preprint arXiv:2405.13132},
year = {2024}
}
Comments
28 pages, 9 figures, 2 tables, with appendix that has 8 pages, accepted for publication at IMMI