Engaging with Researchers and Raising Awareness of FAIR and Open Science
through the FAIR+ Implementation Survey Tool (FAIRIST)
- URL: http://arxiv.org/abs/2301.10236v1
- Date: Tue, 17 Jan 2023 22:38:30 GMT
- Title: Engaging with Researchers and Raising Awareness of FAIR and Open Science
through the FAIR+ Implementation Survey Tool (FAIRIST)
- Authors: Christine R. Kirkpatrick, Kevin L. Coakley, Julie Christopher, Ines
Dutra
- Abstract summary: Six years after the seminal paper on FAIR was published, researchers still struggle to understand how to implement FAIR.
The FAIR+ Implementation Survey Tool (FAIRIST) mitigates the problem by integrating research requirements with research proposals in a systematic way.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Six years after the seminal paper on FAIR was published, researchers still
struggle to understand how to implement FAIR. For many researchers FAIR
promises long-term benefits for near-term effort, requires skills not yet
acquired, and is one more thing in a long list of unfunded mandates and onerous
requirements on scientists. Even for those required to or who are convinced
they must make time for FAIR research practices, the preference is for
just-in-time advice properly sized to the scientific artifacts and process.
Because of the generality of most FAIR implementation guidance, it is difficult
for a researcher to adjust the advice to their situation. Technological
advances, especially in the area of artificial intelligence (AI) and machine
learning (ML), complicate FAIR adoption as researchers and data stewards ponder
how to make software, workflows, and models FAIR and reproducible. The FAIR+
Implementation Survey Tool (FAIRIST) mitigates the problem by integrating
research requirements with research proposals in a systematic way. FAIRIST
factors in new scholarly outputs such as nanopublications and notebooks, and
the various research artifacts related to AI research (data, models, workflows,
and benchmarks). Researchers step through a self-serve survey process and
receive a table ready for use in their DMP and/or work plan while gaining
awareness of the FAIR Principles and Open Science concepts. FAIRIST is a model
that uses part of the proposal process as a way to do outreach, raise awareness
of FAIR dimensions and considerations, while providing just-in-time assistance
for competitive proposals.
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