Head of Data Engineering - Preston

Circle Group
Preston
3 months ago
Applications closed

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Head of Data Engineering - Preston

A Head of Data Engineering / Data Engineering Manager to lead the design, development, and enhancement of the data infrastructure and pipelines is required by a leading company based in Preston. The role offers Hybrid working, so 2 - 3 days in the office a week.

You must have the following:

  • Proven experience as a lead data engineer / Data Engineering Manager with some management experience
  • Experience handling large datasets, complex data pipelines, big data processing frameworks and technologies
  • Experience with data modelling, Databricks, data integration ETL processes and designing efficient data structures
  • Strong programming skills in Python, Java, or Scala
  • Data warehousing concepts and dimensional modelling experience
  • Any data engineering skills in Azure Databricks and Microsoft Fabric would be a bonus

This new role involves building & managing a team of data engineers, fostering a culture of technical excellence and continuous improvement. Collaboration with cross-functional teams is essential to ensure robust, scalable, and aligned data solutions for delivering high-quality care.

The ideal candidate will lead the design and execution of cloud-based based scalable data s...

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