Data Architect / Head of Data / Head of Development

Seymour John
West Bromwich
3 days ago
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Role: Data Architect / Head of Data / Head of Development

Client: NHS Trust – High-Profile Data Programme

Salary: Outside IR35 | Competitive Day Rate | Long-Term Contract

An NHS Trust is seeking an experienced Data Architect— though we will also consider an exceptional Head of Development or Head of Data— to play a pivotal role in the design and delivery of a scalable data platform that will model how hospitals operate.

This is a unique opportunity to be part of a high-profile programme shaping the next generation of NHS data capability.

About the Role

We are building a scalable Federated Data Platform (FDP)-style tool, and we need a senior data leader who can:

  • Architect and oversee the development of a complex, enterprise-wide data platform
  • Shape a tool that translates real-world hospital operations into a robust operationally aligned data product
  • Identify, define, and embed best practice in data architecture and engineering
  • Provide technical leadership across data modelling, governance, interoperability, and platform design
  • Bring proven experience implementing a large-scale data platform within a complex environment
  • Work closely with clinical...

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