Data Engineer

SR2 | Socially Responsible Recruitment | Certified B Corporation
Exeter
2 days ago
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Data Engineer - Python / SQL / Databricks - Healthcare Tech - Hybrid (2 Days Onsite) - £50,000


The Role

We’re working with a healthcare technology company investing in their data capability and hiring a Data Engineer to work directly alongside Product and Engineering.

This is not a “report factory” role - you’ll analyse data, challenge assumptions and influence product direction.


What You’ll Be Doing

  • Designing and developing scalable data solutions
  • Python & SQL development
  • ETL and data transformation
  • Working with Databricks (certification desirable, not essential)
  • Power BI reporting
  • Writing unit tests and mocking
  • Presenting insights to internal stakeholders
  • Collaborating closely with Product Owners and Developers


Tech Stack

  • Python
  • T-SQL
  • Databricks
  • Power BI
  • ETL pipelines
  • Zoho Creator/Analytics (desirable, not required)


What They’re Looking For

  • Strong communicator - confident presenting insights
  • Curious mindset - challenges assumptions
  • Experience analysing data, not just visualising it
  • Comfortable working directly with Product
  • Unit testing & mocking experience
  • Proactive and collaborative personality


Location

Hybrid - 2 days per week onsite (1 fixed team day + 1 flexible).

Easy access from M5/A30.


Process

  • 30 min intro
  • Python & SQL tech test
  • Technical deep dive
  • Final 90 min interview

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