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Data Engineer

Explore Group
London
1 week ago
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Data Engineer – Hybrid - London

We’re working with a growing technology-driven business looking to add a Data Engineer to their team. This is a great opportunity to join a company that values clean, scalable data systems and a culture of collaboration and curiosity.

You’ll play a key role in building and maintaining the data pipelines, models, and architectures that power analytics and product innovation. The ideal candidate is someone who thrives on solving data challenges and enjoys turning complex datasets into well-structured, reliable systems.


What you’ll be doing

  • Designing, developing, and maintaining end-to-end data pipelines
  • Building and optimising data models and warehouse solutions
  • Performing ETL processes to ensure data quality and consistency
  • Collaborating with teams across engineering, analytics, and product
  • Supporting business intelligence and analytics efforts


What we’re looking for

  • Strong background in Data Engineering and Data Modelling
  • Solid experience with ETL processes and Data Warehousing
  • Proficiency with SQL and at least one programming language (e.g. Python)
  • Strong analytical and problem-solving skills
  • Comfortable working in a hybrid setup
  • Degree in Computer Science, IT, or a related field


If you’re passionate about building high-quality data systems and want to work in a collaborative, ambitious environment, apply today or message me directly for more details.

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