Senior Data Engineer

Leeds Building Society
Leeds
2 months ago
Applications closed

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Senior Data Engineer

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Senior Data Engineer


How you'll help us live our purpose

We've been helping our members save for their future and buy their own home since 1875. Join us and you'll play a big role in helping us to put home ownership within reach of more people, generation after generation.

It's a purpose that drives everything we do. And you can play your part too join our Central Data Office as a Senior Data Engineer.

How you'll make a difference

As a Senior Data Engineer, you'll be the technical lead in one of our data delivery squads. As an SME, you'll develop and implement scalable and efficient data solutions using ADF and Databricks, build and maintain robust ETL pipelines for data transformation, and optimise data processing jobs for performance and cost.

What will you bring to the role?

  • Experienced Senior Data Engineer, technically skilled, always curious and highly passionate about using data to make an impact.
  • Significant experience with Azure Data Factory, Data Lake, Databricks and SQL.
  • A collaborative, supportive approach with the ability to step up as technical lead, communicate clearly and support colleagues
  • Proficiency in data modelling, ETL development, and data warehousing concepts.
  • Understanding of DevOps and Automation.
  • Strong analytical and problem-solving abilities

And in retu...

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