Data Engineer

GoFibre Broadband
Edinburgh
5 days ago
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Data Engineer

Edinburgh Hybrid

£46,800 - £56,000

31 days holiday, discounted gym membership, enhanced pension, private healthcare, employee wellbeing support and career coaching

WHO WE ARE

At GoFibre were on an exciting journey to revolutionise broadband capabilities for homes and businesses in rural towns and villages across Scotland and the north of England, connecting communities and affording them digital capability equal to their city counterparts; whilst being as environmentally conscious as possible, and creating social value in the areas we serve.

Our story is only just beginning. Were growing fast and we dont intend to slow down anytime soon as we play our part in ensuring future-proof full fibre coverage. We continue to raise investment for our infrastructure, service and people through our top-notch partnerships, and were confident and enthusiastic about what is coming next for the GoFibre family, as we strive to connect hundreds of thousands of homes and businesses. We have fantastic offices to allow colleagues to connect and catch up, one in central Edinburgh (with stunning 360 views of the city) and another in the coastal town of Berwick Upon Tweed; both a short walk from transport links.

HOW WE WORK

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