Data Engineer

Tenth Revolution Group
London
1 week ago
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Data Engineer - Azure - Remote-First - £55,000-£70,000 - Multiple Opportunities

I am currently supporting two rapidly growing technology consultancies, each looking to expand their Microsoft Data practices with experienced Data Engineers. Both organisations are working on cutting-edge modern data platform projects and offer fully remote working with strong career development paths.

You will be working on

  • Designing and delivering modern Azure and Microsoft Fabric data platforms
  • Running client workshops and helping shape solution requirements
  • Producing high-level and low-level design documentation
  • Building robust data pipelines across SQL, cloud services, and APIs
  • Collaborating with Data & Analytics teams to deliver end-to-end solutions

They are looking for

  • Strong experience with Azure Data Services, Microsoft Fabric, and SQL (T-SQL)
  • Ideally consultancy experience with confidence in client-facing work
  • Knowledge of data architecture and data modelling principles
  • Exposure to Power BI (experience with Databricks or Python is a bonus)

Interested?

If these roles sound like a good match, click Apply Now. I will get in touch to talk through both opportunities and help you decide which role would be the best fit for you.

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