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  4. Module 1: FAIR Data Management

Topic

Module 1: FAIR Data Management

This FAIR data management learning pathway empowers clinicians to effectively organise, document, and share patient data for research and improved care.”

Time estimation: 1 hour 20 minutes

Learning objectives:

  • Learn the FAIR principles
  • Recognise the relationship between FAIR and Open data
  • Learn best practices in data management
  • Learn how to introduce computational reproducibility in your research
  • Learn how to make clinical datasets FAIR
  • Recognise why FAIR datasets are important

Keywords

None

Owner

philreeddata (Phil Reed)
  • Materials (3)
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  • 1

    e-learning

    FAIR in a nutshell

    • beginner
    FAIR Data, Workflows, and Research data stewardship fair open
  • 2

    e-learning

    FAIR data management solutions

    • beginner
    FAIR Data, Workflows, and Research data stewardship dmp fair
  • 3

    e-learning

    Making clinical datasets FAIR

    • beginner
    FAIR Data, Workflows, and Research data stewardship fair open
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TeSS has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement No. 676559.