Cloudy, increasingly FAIR; Revisiting the FAIR Data guiding principles for the European Open Science Cloud
Da Silva Santos, L.
MetadataShow full item record
Mons, B. and Neylon, C. and Velterop, J. and Dumontier, M. and Da Silva Santos, L. and Wilkinson, M. 2017. Cloudy, increasingly FAIR; Revisiting the FAIR Data guiding principles for the European Open Science Cloud. Information Services and Use. 37 (1): pp. 49-56.
Information Services and Use
The FAIR Data Principles propose that all scholarly output should be Findable, Accessible, Interoperable, and Reusable. As a set of guiding principles, expressing only the kinds of behaviours that researchers should expect from contemporary data resources, how the FAIR principles should manifest in reality was largely open to interpretation. As support for the Principles has spread, so has the breadth of these interpretations. In observing this creeping spread of interpretation, several of the original authors felt it was now appropriate to revisit the Principles, to clarify both what FAIRness is, and is not.
Except where otherwise noted, this item's license is described as http://creativecommons.org/licenses/by-nc/4.0/
Showing items related by title, author, creator and subject.
Ivanova, Ivana ; Brown, N.; Fraser, R.; Tengku, N.; Rubinov, E. (2019)FAIR, which stands for Findable, Accessible, Interoperable and Reusable, are the main principles adopted for sharing scientific data across communities. Implementing FAIR principles in publishing increases the value of ...
Ivanova, Ivana ; Keenan, Ryan; Marshall, Christopher; Mancell, Lori; Rubinov, Eldar; Ruddick, Ryan; Brown, Nicholas; Kernich, Graham (2023)The FAIR principles of Wilkinson et al.  are finding their way from research into application domains, one of which is the precise positioning with global satellite navigation systems (GNSS). Current GNSS users demand ...
Global Community Guidelines for Documenting, Sharing, and Reusing Quality Information of Individual Digital DatasetsPeng, G.; Lacagnina, C.; Downs, R.R.; Ganske, A.; Ramapriyan, H.K.; Ivanova, Ivana ; Wyborn, L.; Jones, D.; Bastin, L.; Shie, C.L.; Moroni, D.F. (2022)Open-source science builds on open and free resources that include data, metadata, software, and workflows. Informed decisions on whether and how to (re)use digital datasets are dependent on an understanding about the ...