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Data Analyst

QA Higher Education I.T. Conference 2018
City of London
4 days ago
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Data Analyst, QA Higher Education, 6-Month Fixed Term Contract

Primarily Home Based, Full Time

Closing Date: 31st October 2025

About The Role

You’ll play a key role in two critical areas:

  • Student Number Planning – supporting the development of course-level student number plans and related data insights.
  • Evaluation Work – contributing to informal evaluation activities, including stakeholder engagement and analysis of people-focused metrics.
Key Responsibilities
  • Analyse and interpret student data to support planning and evaluation.
  • Produce internal reports on at-risk students, student outcomes, and quality metrics.
  • Collaborate with stakeholders across academic, governance, and finance workstreams.
  • Contribute to the development of datasets required for OfS submissions, including Access & Participation and Student Outcomes dashboards.
  • Support reviews of current data systems.
Ideal Candidate Profile
  • Strong data handling skills, particularly in Excel – we do not have a requirement that you know a specific software package.
  • Experience working with student data or in the education sector is highly desirable.
  • Comfortable with evaluation methodologies and stakeholder engagement.
  • Able to work independently and manage multiple deliverables to tight deadlines.
  • A proactive problem-solver with a collaborative mindset.
Why QAHE?

At QAHE, We Don’t Just Build Systems—we Build Futures. You’ll join a respected project team that values creativity, autonomy, and continuous learning. We offer a collaborative and inclusive culture, opportunities to lead and grow, and the chance to work on meaningful projects that shape the future of education.

The successful candidate will be required to undertake the Basic DBS Check.

Ready to Apply?

If you're ready to take your career to the next level and help us unlock the full potential of our data, we’d love to hear from you.

Vacancy location
London, London, London (Middlesex Street)


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