Lead Data Engineer

Cathcart Technology
Biggar
1 week ago
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Job Description

I'm working with a world-class technology company in Edinburgh to help them find a Lead Data Engineer to join their team (hybrid working but there is flex on this for the right person). This is your chance to take the technical lead on complex, large-scale data projects that power real-world products used by millions of people. The organisation has been steadily growing for a number of years and have become a market leader in their field so it's genuinely a really exciting time to join!

You'll be joining a forward-thinking team that's passionate about doing things properly using a modern tech stack, cloud-first approach, and a genuine commitment to engineering excellence. As Lead Data Engineer, you'll be hands-on in designing and building scalable data platforms and pipelines that enable advanced analytics, machine learning, and business-critical insights. You'll shape the technical vision, set best practices, and make key architectural decisions that define how data flows across the organisation.

You won't be working in isolation either as collaboration is at the heart of this role. You'll work closely with engineers, product managers, and data scientists to turn ideas into high-performing, production-ready systems. You'll also play a big part in mentoring others...

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