STATUS: IN DEVELOPMENT
Short description
Metadata is data about data. It comes in many types, such as descriptive metadata, provenance metadata, etc [cb_metadata]. Metadata helps people to locate the data and allows it to be reused and cited [GoFAIR]. Furthermore, metadata can be machine-actionable, allowing for automation of data handling and validation [RDMKit_MachineActionable]. Findability, accessibility and reusability of data can be improved by providing metadata with details about license, copyright, etc., as well as description of use conditions and access of data [Generic].
Maybe more how to:
Check whether metadata regarding regarding findability, accessibility, and reusability is already available and whether this metadata is already being collected using standardized vocabularies [Generic, FAIRopoly]. What metadata should be gathered may depend on the stakeholder community [Generic].
[FAIRopoly] Identify what metadata is already being collected by your registry (e.g., provenance, creation date, file type and size, timestamp). The result of this step will support defining the metadata model of your registry. Also, check if your metadata is already being collected using standardized vocabularies.
Why is this step important
Generally:
To be able to register resource level metadata you need to make sure you have/collect it.
with respect to HRI:
Health-RI is in the process of defining a metadata scheme for onboarding in the Health-RI metadata portal. To allow for onboarding of a dataset, the minimal metadata set must be provided. It is therefore essential that you assess whether this minimal set is collected/available or whether additional metadata needs to be collected.
How to
[FAIRopoly] → Doesn’t really sound like “assess” though?
Usually, terms from upper ontologies can be used to describe metadata. For example, use dcat:Dataset from Data Catalog Vocabulary (DCAT) [DCAT] to describe the type of any rare disease dataset and dct:creator from DCMI Metadata Terms (DCT) to indicate the relationship between a dataset and its creator.
Expertise requirements for this step
This section could describe the expertise required. Perhaps the Build Your Team step could then be an aggregation of all the “Expertise requirements for this step” steps that someone needs to fulfill his/her FAIRification goals.
Practical Examples from the Community
This section should show the step applied in a real project. Links to demonstrator projects.
Training
Add links to training resources relevant for this step. Since the training aspect is still under development, currently many steps have “Relevant training will be added in the future if available.”