Data Architect

Robert Walters
Harrogate
6 days ago
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Data Architect

Harrogate- Hybrid workingUp to £80,000 (DOE) + Benefits

Are you an experienced Data Architect looking to shape the data foundations of a modern, forward-thinking organisation? This is a rare opportunity to take ownership of enterprise-wide data architecture and play a central role in how data is structured, governed, protected, and leveraged across the business.

In this role, you'll define the organisation's data vision and turn strategic goals into real, scalable data capabilities - ensuring data is trusted, secure, and treated as a strategic asset. You'll work closely with senior leaders, architects, engineers, analysts, and cybersecurity specialists to design robust data environments that support operational excellence and innovation in areas such as AI, analytics and cloud-based delivery.

Key Responsibilities

  • Define the organisation's data architecture strategy, aligning it to business goals and regulatory standards.
  • Apply best practices from DMBOK and other recognised frameworks to build a modern, scalable data ecosystem.
  • Implement and maintain strong governance frameworks, including data quality, stewardship, ownership, and consistency processes.
  • Embed security and risk-management into all architectural design.
  • Oversee data across its full lifecycle - from acquisition and modelling through to storage, ...

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