Data Engineer

Harvey Nash
Tyne and Wear
3 days ago
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Job Description

Are you ready to be part of an exciting digital transformation using innovative technologies?

This is an opportunity for a mid-level Data Engineer to play a key role in a major digital transformation. You will be shaping the future of data using innovative technologies like Azure Databricks and Fabric.

You'll design and optimise modern data pipelines, work with diverse data sources, and collaborate with BI teams and stakeholders to deliver high-quality, well-modelled data that powers analytics and AI-driven solutions.

What You'll Do

  • Build and maintain scalable data pipelines in a cloud environment.
  • Develop transformations using PySpark, Python, and SQL.
  • Model data for analytics and reporting.
  • Ensure data quality and performance.
  • Opportunity to engage with stakeholders and challenge external partners.

What We're Looking For

  • Solid foundations in data engineering with experience in cloud-based platforms.
  • Hands-on experience with Databricks or Fabric.
  • Strong SQL and PySpark skills.
  • Understanding of ETL and dimensional modelling.
  • Excellent communication and problem-solving mindset.

Why Join?

  • Work on modernisation projects including real-time reporting and AI.
  • Structured learning and certification opportunities.
  • Hybrid working, competitive...

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