Lead Data Engineer: Greenfield Azure Platform (Hybrid)

Nottingham Building Society
Nottingham
1 day ago
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Overview

Location: Head Office, Nottingham (Hybrid working, minimum 2 days per week)

Salary: Up to £90,000 depending on experience.

Application process: Please apply via the application button which will direct you to our careers site. If you require any adjustments to assist you in applying, please contact .

We’re on an exciting journey to build a brand-new greenfield Data Platform using Microsoft Fabric in Azure, unlocking next generation insights, innovation and personalised experiences for our members.

As our Lead Data Engineer, you’ll take a hands-on role in designing, building and running this capability from the ground up. Partnering with our Head of Data, you’ll set the technical foundations, create engineering standards and develop reusable frameworks that power enterprise grade integration, analytics, AI and regulatory reporting.

This is a unique chance to influence the entire data ecosystem, from architecture and ingestion through to consumption and innovation, in a forward-thinking organisation that champions curiosity, inclusivity and positive change.



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