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Head of Data Architecture

TRIA
Worcestershire
1 week ago
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Head of Data Architecture

Hybrid – 3 days – Worcestershire

£90,000 - £100,000


Our client are looking for a Head of Data Architecture to join their organisation focused on driving value through data. You’ll play a leading role in shaping and delivering the group’s data strategy ensuring data is structured, integrated, and aligned with business objectives.


Working within the technology function, you’ll define and oversee the frameworks, standards, and data models that underpin the organisation’s digital and analytical capabilities. You’ll also collaborate across teams to champion data as a strategic asset, promoting governance, quality, and innovation.


You’ll need to have experience with the following:

  • Proven background in Data Architecture or Data Modelling at a senior level
  • Strong knowledge of data integration, metadata, and data lifecycle management
  • Experience with data modelling frameworks
  • Sound understanding of governance, compliance, and data ethics
  • Must have experience managing a team
  • Exceptional communication skills


If you’re passionate about shaping enterprise-level data capability and driving a data-driven culture, we’d love to hear from you.

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