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Evaluating FAIR maturity through a scalable, automated, community-governed framework.

Mark D WilkinsonMichel DumontierSusanna-Assunta SansoneLuiz Bonino da Silva SantosMario PrietoDominique BatistaPeter McQuiltonTobias KuhnPhilippe Rocca-SerraMercѐ CrosasErik Schultes
Published in: Scientific data (2019)
Transparent evaluations of FAIRness are increasingly required by a wide range of stakeholders, from scientists to publishers, funding agencies and policy makers. We propose a scalable, automatable framework to evaluate digital resources that encompasses measurable indicators, open source tools, and participation guidelines, which come together to accommodate domain relevant community-defined FAIR assessments. The components of the framework are: (1) Maturity Indicators - community-authored specifications that delimit a specific automatically-measurable FAIR behavior; (2) Compliance Tests - small Web apps that test digital resources against individual Maturity Indicators; and (3) the Evaluator, a Web application that registers, assembles, and applies community-relevant sets of Compliance Tests against a digital resource, and provides a detailed report about what a machine "sees" when it visits that resource. We discuss the technical and social considerations of FAIR assessments, and how this translates to our community-driven infrastructure. We then illustrate how the output of the Evaluator tool can serve as a roadmap to assist data stewards to incrementally and realistically improve the FAIRness of their resources.
Keyphrases
  • mental health
  • healthcare
  • public health
  • machine learning
  • deep learning
  • physical activity
  • high throughput
  • big data
  • data analysis
  • single cell