Senior Data Engineer

Data Science Festival
City of London
1 month ago
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Data Idols are working with a high-growth, product-led tech company on a mission to transform a global consumer category. With a rapidly growing customer base and a digital product used by millions, they are scaling their data team to power the next phase of growth and innovation. This role sits at the heart of their data platform strategy, perfect for an experienced Senior Data Engineer who wants to build infrastructure that shapes real-time decisions across Product, Growth, and Marketing teams.

The Opportunity

This is a hands-on, impactful position where you’ll have full ownership of the data engineering stack. You’ll be responsible for designing and maintaining scalable pipelines and orchestration systems that enable product innovation, campaign optimisation, and personalised user experiences at scale. Working closely with Engineering, Growth, and Product, you’ll ensure that data is reliable, unified, and readily accessible for both analytics and experimentation.

Skills & Experience
  • Strong expertise with Google Cloud Platform, especially BigQuery
  • Proficient in SQL and Python
  • Confident working with analytics engineering tools like dbt
Call now on 01908 465 570 or leave Courtney a message.

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