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FAIR Introduction

Overview

Teaching: 5 min
Exercises: 0 min
Questions
  • What are the FAIR principles?

  • Why should I care to be FAIR?

  • How do I get started?

Objectives
  • Identify the FAIR principles

  • Recognize the importance of moving towards FAIR in research

  • Relate the components of this lesson to the FAIR principles

What is FAIR?

The FAIR principles for research data, originally published in a 2016 Nature paper, are intended as “a guideline for those wishing to enhance the reusability of their data holdings.” This guideline has subsequently been endorsed by working groups, funding bodies and institutions.

FAIR is an acronym for Findable, Accessible, Interoperable, Reusable.

The FAIR principles have a strong focus on “machine-actionability”. This means that the data should be easily readable by computers (and not only by humans). This is particularly relevant for working with and discovering new data.

What the FAIR principles are not

  • A standard: The FAIR principles need to be adopted and followed as much as possible by considering the research practices in your field.

  • All or nothing: making a dataset (more) FAIR can be done in small, incremental steps.

  • Open data: FAIR data does not necessarily mean openly available. For example, some data cannot be shared openly because of privacy considerations. As a rule of thumb, data should be “as open as possible, as closed as necessary.”

  • Tied to a particular technology or tool. There might be different tools that enable FAIR data within different disciplines or research workflows.

Why FAIR?

The original authors of the FAIR principles had a strong focus on enhancing reusability of data. This ambition is embedded in a broader view on knowledge creation and scientific exchange. If research data are easily discoverable and re-usable, this lowers the barriers to repeat, verify, and build upon previous work. The authors also state that this vision applies not just to data, but to all aspects of the research process.

What’s in it for you?

FAIR data sounds like a lot of work. Is it worth it? Here are some of the benefits:

  • Funder requirements
  • It makes your work more visible
  • Increase the reproducibility of your work
  • If others can use it easily, you will get cited more often
  • You can create more impact if it’s easier for others to use your data

Getting started with FAIR (climate) data

As mentioned above, the FAIR principles are intended as guidelines to increase the reusability of research data. However, how they are applied in practice depends very much on the domain and the specific use case at hand.

For the domain of climate sciences, some standards have already been developed that you can use right away. In fact, you might already be using some of them without realizing it. NetCDF files, for example, already implement some of the FAIR principles around data modeling. But sometimes you need to find your own way.

Challenge for yourself - Evaluate one of your own datasets

Pick one dataset that you’ve created or worked with recently, and answer the following questions:

  • If somebody gets this dataset from you, would they be able to understand the structure and content without asking you?
  • Do you know who has access to this dataset? Could somebody easily have access to this dataset? How?
  • Does this dataset needs proprietary software to be used?
  • Does this dataset have a persistent identifier or usage licence?

Attribution

Content of this episode was adapted from:

  • @@(https://esciencecenter-digital-skills.github.io/Lesson-FAIR-Data-Climate/)

Key Points

  • The FAIR principles state that data should be Findable, Accessible, Interoperable, and Reusable.

  • FAIR data enhance impact, reuse, and transparancy of research.

  • FAIRification is an ongoing effort accross many different fields.

  • FAIR principles are a set of guiding principles, not rules or standards.