Senior Data Engineer (Databricks)

IO Associates
West Bromwich
2 days ago
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Title: Senior Data Engineer (Databricks)

Salary: Up to £60,000

Location: Birmingham (Hybrid)

Are you a Data Engineer looking to work on large-scale, global data solutions that actually make an impact?

This is a fantastic opportunity to join a market-leading automotive technology company that's shaping the future of connected data and intelligent platforms worldwide.

You'll be joining a collaborative, forward-thinking data team focused on building a modern, scalable data infrastructure that powers insights for thousands of dealerships across the globe.

What you'll be doing:

  • Building and maintaining a unified data platform for global data processing.
  • Developing reusable and scalable data solutions using Databricks, Python/PySpark, and Azure.
  • Working closely with the data visualisation team to align back-end and front-end needs.
  • Designing secure data access models and integrating external data sources via Azure Data Factory.
  • Supporting CI/CD processes, implementing testing practices, and optimising performance.
  • Troubleshooting and resolving data-related issues to keep things running smoothly.

What we're looking for:

  • Strong understanding of data engineering principles, Lakehouse architecture, ETL/ELT, warehousing, and stream processing.
  • Hands-...

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