Senior Data Engineer

Morson Edge Careers
Edinburgh
3 months ago
Applications closed

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Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer


Senior Data Engineer – Hybrid London £75K - £95K

Salary: £65,000 – £85,000
Location: London (Hybrid – 2 days per week in office)

ECOM Recruitment are working with a growing digital consultancy that delivers data and technology solutions for some of the UK's best-known brands.

We're looking for a Senior Data Engineer to join their growing data team.

You'll be working with a talented group of engineers to design and build modern, cloud-based data platforms and pipelines that make a real impact.

This is a great opportunity to get hands-on with the latest tools and technologies within a business that truly values collaboration, innovation, and quality.

The Role

As a senior member of the team, you'll be responsible for building and maintaining scalable data pipelines that drive insights and decision-making for clients in fast-moving industries including the gambling sector, so it's important you're comfortable working in that space.

You'll work closely with other engineers, analysts, and client stakeholders to deliver reliable, automated, and high-performing data solutions end to end.

What We're Looking For

  • Strong experience with Python, Databricks and tools like Airflow
  • Confident working across Cloud Platforms (AWS, Azure, GCP)
  • Great communication skills and the ability to wor...

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