Senior Data Engineer

1st Central
London
19 hours ago
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  • Data & Technology: You'll have a deep passion for data, analytics and technology, along with proven experience in designing and managing metadata-driven pipelines.
  • Self-Starter: You proactively manage workloads, make informed decisions, and work independently to deliver results.
  • Mentorship: You'll lead by example, mentoring and inspiring fellow data professionals to grow and succeed.
  • Data Lifecycle Expertise: You'll appreciate the full data lifecycle and can demonstrate thoughtful upfront design while adhering to established standards and best practices.
  • Cloud Data Engineering: You'll bring deep expertise in data engineering across modern cloud platforms, delivering scalable and robust solutions.

We're 1st Central, a market-leading insurance company utilising smart data and technology at pace. Rapid growth has been based on giving our 1.4 million customers exactly what they want: great value insurance with an excellent service. And that's the same for our colleagues too; we won Insurance Employer of the Year at the British Insurance Awards 2024 and our Glassdoor score is pretty mega too!


Ready to take the next step in your data career within a fast-paced, dynamic environment? Today could be your moment. We're looking for a passionate and experienced Senior Data Engineer to join our forward-thinking technology and data teams. In this hands-on technical role, you'll be responsible for building technical data solutions for various projects and persistent data products. You'll design and implement complex data pipelines and manage database population, ensuring the data solutions align with the technical design and overall data platform patterns. While the role does not include direct people‑management responsibilities, you'll provide invaluable support, coaching and mentoring to data engineers and associate engineers, helping them develop and grow their skills. We're big on flexibility – you'll spend most of your time working from home, with the occasional visit to the office, but of course, it's your choice – if you prefer to be in the office more, that's good with us too. Our offices are in Haywards Heath West Sussex, Salford Quays Manchester, and Guernsey. If you're based further afield, we're happy to consider applications from remote workers – just as long as you're located in the UK or Guernsey!


Core skills we're looking for to succeed in the role


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