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Head of Data Engineering

Harnham - Data & Analytics Recruitment
Walsall
3 days ago
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Head of Data Engineering


Location: West Midlands Hybrid Policy : 3 days per week in the office (flexible on which days) Salary : £120,000 - £130,000 + £7,500 car allowance + exceptional bonus & benefits


An established, financial services group is on the lookout for a Head of Data Engineering to lead their data platform transformation - a critical migration from legacy systems (SQL Server) to modern Azure cloud technologies.


You'll oversee a 40-person team of engineers (across the UK and offshore), guide delivery of critical regulatory and treasury projects, and work closely with senior leaders to ensure smooth delivery and long-term modernization. This is a hands‑on leadership role - ideal for someone who thrives in both strategy and delivery.


Ideal Candidate

  • Proven leadership of large data engineering teams (UK and offshore)
  • Deep expertise in SQL Server, and experience migrating to Azure cloud
  • Experience managing third‑party partners / vendors
  • Ability to stay hands‑on to mentor teams on technical delivery
  • Background in the banking / financial services sector
  • Strategic mindset with a delivery‑focused leadership style

Tech Environment

Azure Data Stack (Synapse, Databricks, Azure SQL, Power ...


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