Integrating Precision Training for Building a Sustainable National Data Infrastructure in Wales: A Datacise Open Learning (DOL) Based Case Study

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Ting Wang
Stephanie Lee
Daniel Thayer
Jack Palmer
Chris Roberts
Michael Bale
Sinead Brophy
Adam Chee
Jonathan Smart
David Ford

Abstract

Objective
Construct an innovative open-learning solution that provides comprehensive training specific to Trusted Research Environments (TRE) and the broader research community of administrative data users, irrespective of their proficiency levels. DOL offers training opportunities tailored to meet each user's unique learning needs, enabling them to utilise complex, linked administrative datasets confidently and effectively for meaningful research outcomes, thereby building capacity for sustainable national data infrastructure.


Approach
DOL’s innovative open-learning solution offers two learning formats: adaptive and experiential. Adaptive learning provides registered users with bitesize self-paced training based on Administrative Data Research UK's priorities. Experiential learning involves online workgroups with real-world context and practical application. They meet twice a year and are designed around specific topics with frequent guest speakers who are experts in their fields.


Conclusion
DOL’s innovative open-learning solution empowers TREs, such as SAIL Databank, to provide well-rounded learning that fosters community support, knowledge-sharing, and networking opportunities for its users, while gathering valuable user feedback. Users can personalise learning and test their knowledge in a flexible training environment, allowing them to take charge of their learning journey.


Implication
In response to the increasing demand for training services from novice to advanced users, SAIL Databank adopted DOL's dual learning approach by (1) developing training courses that cover access, process, methodology, integration, and analytical tools for SAIL TRE users, (2) engaging users in a series of workgroups focused on themed datasets including Justice, Environmental, Maternal, Education, and Core Health.

Article Details

How to Cite
Wang, T., Lee, S., Thayer, D., Palmer, J., Roberts, C., Bale, M., Brophy, S., Chee, A., Smart, J. and Ford, D. (2024) “Integrating Precision Training for Building a Sustainable National Data Infrastructure in Wales: A Datacise Open Learning (DOL) Based Case Study”, International Journal of Population Data Science, 9(5). doi: 10.23889/ijpds.v9i5.2825.

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