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Azure Data Engineer

Accelero
London
1 week ago
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Lead Data Engineer (Azure Stack)

£95k + 10% bonus

Hybrid – 1 day a week

Central London


I’m helping a growing fintech find their next Lead Data Engineer, they are looking for someone who loves building modern data platforms in Azure and wants to make a genuine impact.


This role offers the best of both worlds by allowing you to lead from the front while staying hands-on with the tech. You’ll shape the architecture, mentor the team, and help drive a modern, data-driven culture all within a collaborative environment that values innovation and ownership.


Tech you’ll be working with:

  • Azure Data Lake
  • Azure Synapse
  • Databricks
  • Data Factory
  • Python, SQL, PySpark
  • Terraform, GitHub Actions, CI/CD pipelines


You’ll thrive here if you:

  • Have strong experience building and leading Azure-based data platforms
  • Enjoy mentoring and guiding other engineers
  • Love designing scalable, automated data pipelines
  • Bring a hands-on approach and enjoy problem-solving
  • Want to shape data strategy in a growing fintech


If you’re an experienced Azure Data Engineer who enjoys leading without losing your hands-on edge, then this is a great opportunity to make an impact.


Apply with your latest CV if your interested! :)

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