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Administrative Assistant for Population Data Science

Swansea University
Swansea
1 day ago
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This is a Fixed Term role for 12 months working full-time.


Swansea University has a strong reputation in Health Informatics. A long track record of information system research and development, information standards, and public health research has been consolidated within the purpose-built Data Science Building (DSB): a strategic development providing a range of anonymised linked health and other public policy data on the population of Wales with state-of-the-art High Performance Computing facilities within an ISO accredited security environment.


We are looking for someone to:



  1. Support the Finance Team to contribute towards a focussed and efficient Finance function.
  2. Organise and facilitate the HR administrative day-to-day activities in a responsive and flexible manner
  3. Arrange and co-ordinate internal and external meetings.


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