Senior Data Engineer

Red Engine
City of London
3 days ago
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About Us

Hello, we are Red Engine, the team behind the award-winning global brands Flight Club and Electric Shuffle. We're obsessed with disrupting the hospitality industry by creating and delivering the best possible experience - across all venues, products and brands.

Our central team covers the full spectrum of skills needed to bring each concept to life from design to marketing, sales to interior design, people and training, to finance, gaming and HR and everything in between. Were not just a team of people, we are dreamers, artists, rocket scientists, content curators, forward thinkers and the industrys finest. We love what we do and are proud to be included in the Sunday Times Best Places to Work 2025.

With a total of 19 incredible venues throughout the UK, and a further 16 around the globe, we have ambitious plans and are passionate about developing new and exciting products, which means were always growing and looking for passionate people to join the family.

The Job

As a Senior Data Engineer, you will be working in the Red Engine Business Intelligence team, helping to build out the existing data and analytics platform. This role is placed within a small team, allowing the successful candidate design freedom in implementing bespoke features and enhancements to our data platform using the latest technology. In this role you will assist other engineers in the development of ...

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