Interim Principal Azure Data Architect

Communicate Recruitment Solutions LTD
London
3 days ago
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Interim Principal Azure Data Architect

Location: North London (hybrid)

Contract: Interim

Rate:£900 per day outside IR 35

A complex organisation based in North London is seeking an Interim Principal Azure Data Architect to reset, review, and re-implement its data architecture. This role is for a through-and-through data architect. It is not a solution architect or enterprise architect position.

You will take ownership of the data layer end to end, assessing the current state, defining the target data architecture, and leading the implementation across Azure.

The Role

This is a senior, hands-on role combining deep technical authority with clear executive communication. You will work closely with technology leadership, engineering teams, and senior stakeholders to bring clarity, structure, and momentum to the data estate.

Key responsibilities include:

  • Conducting a full data architecture review and reset, including platforms, models, pipelines, and governance
  • Designing and implementing a robust Azure data architecture aligned to business and analytics needs
  • Defining data models, data domains, lineage, quality, and governance standards

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