CDT Administrator for Designing Responsible Natural Language Processing CDT

The University of Edinburgh
Edinburgh
4 days ago
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CDT Administrator for Designing Responsible Natural Language Processing CDT


Grade UE05: £29,588- £33,951 per annum pro rata


College of Science & Engineering, School of Informatics


Part Time: 24.5 hours per week (0.7 FTE)


Fixed Term: Until April 2028


The Opportunity

The School of Informatics is looking for one part time CDT Administrator to support the Centre for Doctoral Training (CDT) in Designing Responsible Natural Language Processing (NLP), based at the University of Edinburgh. Please see our website here for more information on our training programme.


This position is available from 27th April 2026 until 1st April 2028. We are open to requests for hybrid working (on a non-contractual basis) that combines a mix of remote and regular on-campus working.


Your Skills and Attributes for Success

  • Trustworthy and reliable, with a genuine desire to support our students
  • Accurate and meticulous with all tasks, simple or complex
  • Able to prioritise and respond well during peak times of activity
  • Excellent communication skills and a team player

Application Information

Please ensure you include the following documents in your application:



  • CV
  • Cover letter

As a valued member of our team you can expect:



  • A competitive salary
  • An exciting, positive, creative, challenging and rewarding place to work
  • To be part of a diverse and vibrant international community, and a high performing Informatics Graduate School
  • Comprehensive Staff Benefits, such as a generous holiday entitlement, a defined benefits pension scheme, staff discounts, family‑friendly initiatives, and flexible work options. Check out the full list on our staff benefits page and use our reward calculator to discover the total value of your pay and benefits

Championing equality, diversity and inclusion

The University of Edinburgh holds a Silver Athena SWAN award in recognition of our commitment to advance gender equality in higher education. We are members of the Race Equality Charter and we are also Stonewall Scotland Diversity Champions, actively promoting LGBT equality.


Prior to any employment commencing with the University you will be required to evidence your right to work in the UK. Further information is available on our right to work webpages.


The University is unable to sponsor the employment of international workers in this role. International applicants will therefore be unable to apply for and secure a Skilled Worker visa. They will only be able to take up this role if they can demonstrate an alternative right to work in the UK.


Key Dates to Note

The closing date for applications is 15th January 2026.


Interviews will be held early February.


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