Lead Data Engineer Azure

Harnham - Data & Analytics Recruitment
Basingstoke
1 month ago
Applications closed

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Lead Data Engineer Hybrid (3 Days Office - Basingstoke) Up to £80,000 + 10% Bonus

We're partnering with a regulated financial services business on a Lead Data Engineer hire to drive the delivery of a next-generation cloud data platform.

This is a senior, hands-on leadership role owning architecture, governance and engineering standards across a modern Azure / Databricks ecosystem - enabling advanced analytics, financial modelling, and AI use cases across the organisation.

You'll lead a small team, shape long-term platform strategy, and work closely with senior stakeholders to ensure data becomes a true competitive advantage.

Why consider this role?

  • Lead delivery of a strategic cloud data platform

  • Own architecture across Azure, Databricks, Synapse & Delta Lake

  • Influence enterprise-wide data governance and standards

  • Hybrid working - 3 days per week in the office

  • Competitive salary, bonus & strong benefits

  • High-impact role within a regulated environment

What you'll be doing

  • Designing and evolving a modern Azure data architecture

  • Leading engineering best practice acro...

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