Head of Data Analytics

Buckinghamshire Council
Aylesbury
3 weeks ago
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Head of Data, Analytics and AI Automation

Buckinghamshire Council is driving forward a major transformation in how data, analytics and AI shape decision-making and service design across the organisation. To lead this ambitious agenda, we are seeking a highly experienced Head of Data, Analytics & AI Automationa senior leader with a track record of delivering large-scale data and AI transformation in complex environments.

This is a role with substantial visibility and influence. Reporting directly to the Director of IT, you will shape the future of our data strategy, strengthen our technical foundations, and steward the responsible and ethical use of data, automation and AI.
About us
At Buckinghamshire Council, youll be part of something bigger. As a large and forward-thinking unitary authority, were on a mission to make Buckinghamshire the best place to live, raise a family, work, and do business. This is your chance to help shape the future of our countysupporting residents, driving innovation, and making a real difference every day.

The IT Department is essential in provi...

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