Senior Data Engineer (GCP)

Uneek Global
Sheffield
1 day ago
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Senior Data Engineer (GCP) - Hybrid (Very Flexible - London) - Up to £100k + bonus + great benefits - Permanent


We’re recruiting on behalf of a UK organisation building a brand new GCP data analytics platform from the ground up. This is a greenfield opportunity for a hands-on Senior Data Engineer to shape architecture, standards, and delivery from day one. You’ll provide technical leadership across the data engineering team, working closely with senior stakeholders to design and deliver a scalable, reliable analytics platform that drives real business value.


On Offer

  • Salary up to £100k + bonus + great benefits
  • Very flexible hybrid working


What You’ll Do

  • Lead technical design and implementation decisions across the GCP data platform
  • Define engineering standards, patterns, and best practice
  • Deliver end-to-end data products, from ingestion to curated datasets and marts
  • Mentor and support data engineers in a collaborative, Agile environment


What We’re Looking For

  • 5+ years’ experience as a Data Engineer, including production data pipelines
  • 3+ years’ hands-on GCP experience
  • Solid understanding of medallion architecture
  • Strong communication skills and Agile experience

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