2020
DOI: 10.3390/publications8020021
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FAIR Digital Objects for Science: From Data Pieces to Actionable Knowledge Units

Abstract: Data science is facing the following major challenges: (1) developing scalable cross-disciplinary capabilities, (2) dealing with the increasing data volumes and their inherent complexity, (3) building tools that help to build trust, (4) creating mechanisms to efficiently operate in the domain of scientific assertions, (5) turning data into actionable knowledge units and (6) promoting data interoperability. As a way to overcome these challenges, we further develop the proposals by early Internet pioneers for Di… Show more

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Cited by 77 publications
(29 citation statements)
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“…A resulting process provenance record is identified with one unique, hash-based identifier in the revision history, and can subsequently be used by authorized actors to automatically retrieve required components and re-execute the processing, irrespective of whether the original compute infrastructure is available 24 . This potential for full computational reproducibility of arbitrary processing steps not only increases the trustworthiness of the research process per se, but permits structured investigations of result variability, and furthermore provides the means to rerun any analysis on new data or a updated analysis components.…”
Section: Resultsmentioning
confidence: 99%
“…A resulting process provenance record is identified with one unique, hash-based identifier in the revision history, and can subsequently be used by authorized actors to automatically retrieve required components and re-execute the processing, irrespective of whether the original compute infrastructure is available 24 . This potential for full computational reproducibility of arbitrary processing steps not only increases the trustworthiness of the research process per se, but permits structured investigations of result variability, and furthermore provides the means to rerun any analysis on new data or a updated analysis components.…”
Section: Resultsmentioning
confidence: 99%
“…A non-exclusive list of FAIR-supporting infrastructures include: beacons [23,24], used primarily for discovering and sharing of genomic data; a federated semantic metadata registry framework [25], which also provides a potential model for population-based patient registries including CRs [26]; the MOLGENIS data platform for data sharing [27]; the Apache Atlas data governance and metadata framework [28]; the European Open Science Cloud (EOSC) interoperability framework [29]; and the FAIR digital object framework [30]. The way in which the FAIR digital object concept is able to support data interoperability, particularly with reference to EOSC, has been discussed in [31].…”
Section: Semantic Interoperabilitymentioning
confidence: 99%
“…Also mentioned is the "the atomic entity for a FAIR ecosystem", the FAIR Digital Object (European Commission 2018b). These FAIR Digital Objects, as explained in detail by De Smedt et al (2020) are self-contained, typed, machine-actionable data packages unambiguously identified with persistent identifiers.…”
Section: Persistent Identifiers and Fair For Open Digital Sciencementioning
confidence: 99%