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Enterprise Data Architect

TRIA
City of London
3 weeks ago
Applications closed

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Enterprise Data Architect Global Consumer Business London (2-3 days in NW London) - Up to 112k + bonus + Benefits


A global leader in consumer services is seeking an experienced Enterprise Data Architect to lead strategic data initiatives and shape enterprise-wide data architecture. This organisation operates across multiple countries and specialises in delivering high-quality customer experiences in fast-paced environments.


Key Responsibilities:

  • Develop and maintain enterprise data architecture strategy
  • Design conceptual, logical, and physical data models
  • Define and enforce data standards, policies, and governance
  • Collaborate across IT, business, and data teams
  • Lead horizon scanning and strategic planning
  • Mentor and guide architecture teams


Requirements:

  • 5+ years in senior architecture roles, 3+ years as an enterprise architect
  • Experience in consumer-facing sectors such as retail, hospitality or food services
  • TOGAF or similar architecture framework qualification
  • Deep knowledge of modern data architectures (Data Mesh, Fabric, Virtualisation)
  • Strong stakeholder engagement and mentoring skills


Location: London (Hybrid 2 to 3 days per week onsite)


If you're looking to shape the future of data strategy in a global business, wed love to hear from you.

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