Publication | Open Access
FAIR Digital Objects for Science: From Data Pieces to Actionable Knowledge Units
102
Citations
13
References
2020
Year
EngineeringFair Digital ObjectData CurationFair Digital ObjectsSemantic WebData EcosystemE-scienceData ScienceManagementData IntegrationActionable Knowledge UnitsFair Data PrincipleData InteroperabilityData ManagementOpen DataMetadata IntegrationData ModelingData-driven ScienceFair KnowledgeKnowledge DiscoveryData PrivacyComputer ScienceFrom Data PiecesAutomated ReasoningCloud ComputingData VirtualizationScience And Technology StudiesTechnologyBig DataSemantic Interoperability
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 Digital Objects as encapsulations of data and metadata made accessible by persistent identifiers. In the past decade, this concept was revisited by various groups within the Research Data Alliance and put in the context of the FAIR Guiding Principles for findable, accessible, interoperable and reusable data. The basic components of a FAIR Digital Object (FDO) as a self-contained, typed, machine-actionable data package are explained. A survey of use cases has indicated the growing interest of research communities in FDO solutions. We conclude that the FDO concept has the potential to act as the interoperable federative core of a hyperinfrastructure initiative such as the European Open Science Cloud (EOSC).
| Year | Citations | |
|---|---|---|
Page 1
Page 1