Affiliation:
1. Syracuse University USA
2. University of Arizona USA
Abstract
ABSTRACTThis poster discusses Automated Research Workflows (ARWs) in the context of a FAIR data ecosystem for the science of science research. We offer a conceptual discussion from the point of view of information science and technology using several cases of “data problems” in the science of science research to illustrate the characteristics and expectations for designers and developers of a FAIR data ecosystem. Drawing from a 10‐year data science project developing GenBank metadata workflows, we incorporate the ideas of ARWs into the FAIR data ecosystem discussion to set a broader context and increase generalizability. Researchers can use these as a guide for their data science projects to automate research workflows in the science of science domain and beyond.
Subject
Library and Information Sciences,General Computer Science
Reference15 articles.
1. Big data, big metadata and quantitative study of science: A workflow model for big scientometrics
2. Science of science
3. NIH. (2018).NIH Strategic Plan for Data Science.https://datascience.nih.gov/sites/default/files/NIH_Strategic_Plan_for_Data_Science_Final_508.pdf
4. NSF. (2022).New data infrastructure initiative will accelerate the advancement and impacts of social and behavioral research.https://www.nsf.gov/news/special_reports/announcements/020422.jsp