Data Engineer

Corecom Consulting
Leeds
1 month ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Location: Leeds (Hybrid – 2 days a week in the office)

Are you a data engineering expert ready to take the next step in your career? We're hiring a Senior Data Engineer to join our growing team in Leeds. You'll play a critical role in designing, building, and managing modern data pipelines and cloud-based data solutions.

What you��ll be doing:

  • Designing and maintaining scalable data pipelines
  • Building and optimising data warehousing solutions
  • Working with Databricks and modern cloud platforms (Azure or AWS)
  • Collaborating with cross-functional teams to deliver high-impact data products
  • Leading best practices in data engineering and pipeline architecture

What we’re looking for:

  • Proven experience in data engineering at a senior level
  • Strong hands-on knowledge of Databricks
  • Experience with Azure or AWS cloud platforms
  • Expertise in data warehousing and ETL processes
  • Ability to work both independently and as part of a collaborative team
  • Flexible hybrid working (2 days a week in our Leeds office)
  • Exciting projects using modern technologies
  • A supportive and innovative team culture
  • Ready to shape the future of data? Apply today and be part of something impactful.


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