Lead Data Architect

Sanderson Recruitment
Edinburgh
2 days ago
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Lead Data Architect

?? Edinburgh / Hybrid
?? Permanent
?? Up to £95,000 + benefits
?? Financial Services

We're supporting a major UK financial services organisation as they continue significant investment in modernising their enterprise data capabilities.

This is a senior leadership opportunity to define and drive the data architecture strategy within a large, complex and highly regulated environment.



The Opportunity

You will lead the data architecture domain, playing a critical role in:

  • Shaping and delivering a new enterprise data platform

  • Defining modern data standards, principles and architectural patterns

  • Embedding robust governance across the full data lifecycle

  • Enabling AI / ML capability at scale

  • Leading and developing a team of data architects and engineers

  • Influencing senior technology and business stakeholders

This role combines strategic ownership, transformation leadership and technical authority acros...

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