Data Architect

University of the Arts London
London
3 days ago
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University of the Arts London (UAL) is a world-leading creative University for teaching and research in art, design, fashion, communication and performing arts. UAL is made up of six renowned colleges and hosts several centres and institutes that further the University’s mission and social purpose, through the students and ideas we send out into the world and the partnerships we build to achieve social, environmental, and economic progress.

Digital & Technology at UAL is on an exciting journey, transitioning from a ‘classic’ IT approach to a user-centred product approach to technology. We are investing in our people, and the processes enabled by digital, to evolve and transform the student and staff experience at UAL.

As an Enterprise Data Architect, you’ll play a key role in designing and delivering UAL’s enterprise data and information management frameworks. Reporting to the Head of Data Architecture, you’ll lead the development of data-centric solutions that support the full data lifecycle from planning and acquisition to governance and usage.

You’ll translate business strategy into scalable data architectures, define high-level integrated designs, and develop reference models that align with UAL’s strategic goals. You’ll also lead the creation of business information models, support data governance, and help surface the most valuable data assets to drive evidence-based decision-...

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