Implementing a registry federation for materials science data discovery

被引:5
|
作者
Plante R.L. [1 ]
Becker C.A. [1 ]
Medina-Smith A. [2 ]
Brady K. [3 ]
Dima A. [3 ]
Long B. [3 ]
Bartolo L.M. [4 ]
Warren J.A. [5 ]
Hanisch R.J. [1 ]
机构
[1] National Institute of Standards and Technology, Material Measurement Laboratory, Office of Data and Informatics, Gaithersburg, MD
[2] National Institute of Standards and Technology, Information Services Office, Gaithersburg, MD
[3] National Institute of Standards and Technology, Information Technology Laboratory, Gaithersburg, MD
[4] Northwestern University, Center for Hierarchical Materials Design, Evanston, IL
[5] National Institute of Standards and Technology, Material Measurement Laboratory, Gaithersburg, MD
关键词
Data discovery; Informatics; Metadata; OAI-PMH; Registry;
D O I
10.5334/dsj-2021-015
中图分类号
学科分类号
摘要
As a result of a number of national initiatives, we are seeing rapid growth in the data important to materials science that are available over the web. Consequently, it is becoming increasingly difficult for researchers to learn what data are available and how to access them. To address this problem, the Research Data Alliance (RDA) Working Group for International Materials Science Registries (IMRR) was established to bring together materials science and information technology experts to develop an international federation of registries that can be used for global discovery of data resources for materials science. A resource registry collects high-level metadata descriptions of resources such as data repositories, archives, websites, and services that are useful for data-driven research. By making the collection searchable, it aids scientists in industry, universities, and government laboratories to discover data relevant to their research and work interests. We present the results of our successful piloting of a registry federation for materials science data discovery. In particular, we out a blueprint for creating such a federation that is capable of amassing a global view of all available materials science data, and we enumerate the requirements for the standards that make the registries interoperable within the federation. These standards include a protocol for exchanging resource descriptions and a standard metadata schema for encoding those descriptions. We summarize how we leveraged an existing standard (OAI-PMH) for metadata exchange. Finally, we review the registry software developed to realize the federation and describe the user experience. © 2021 The Author(s).
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