Databricks Data Engineer -London Up to £100K

Tenth Revolution Group
London
2 months ago
Applications closed

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Databricks Data Engineer London | Senior Manager | Up to £100K + Bonus

Ready to take your data engineering career to the next level?Join a global consultancy on a major transformation project within the insurance domain. This is your chance to work with cutting-edge technologies, influence strategic decisions, and make a real impact in a collaborative, forward-thinking environment.

Why This Role?

  • Be part of a high-profile project driving innovation in data and analytics.
  • Work with a global leader in digital transformation.
  • Enjoy senior-level responsibilities, clear progression, and exposure to decision-makers.
  • Competitive package: Up to £100K base + 12% bonus + benefits.
  • Hybrid role based in London.

What You'll Do

  • Design and develop data pipelines and transformation workflows using Azure Databricks.
  • Collaborate with cross-functional teams to deliver data-driven solutions.
  • Work on cloud-based data storage and processing platforms.
  • Contribute to strategic decision-making and innovation in the insurance domain.

What We're Looking For

  • Proven Data Engineer with 5+ years of hands-on Databricks experience.
  • Insurance domain expertise - essential.
  • Strong background in data management, ETL, and SQL.
  • Familiarity with ...

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