Azure Data Engineer

GoFibre
Edinburgh
3 weeks ago
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GoFibre Edinburgh, Scotland, United Kingdom


Azure Data Engineer

£47,000 - £56,000


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


Who We Are

At GoFibre we’re 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. We’re growing fast and we don’t 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 we’re 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

Collaboration, innovation, commitment, continual improvement of our business and ourselves, are the cornerstones of what creates our collective success. No two days are the same; the landscape is constantly changing, and we think on our feet, move fast and tackle challenges and opportunities head on. We’re always learning and we thrive under pressure, because we support one another and have some laughs along the way. We’re all in this together, as we navigate the road less travelled, pushing the boundaries of what we can deliver and the professionals we can become. We take care of each other and care about work-life balance and wellbeing.


THE TEAM

The Azure Data Engineer will design, build and run scalable data solutions on Microsoft Azure. You’ll make sure data is easy to access, performs well, and meets security and governance standards across the business. This is a hands‑on role, combining strong ETL development with the design of modern data platforms that power reporting, analytics and data science. You’ll work in a Scrum/Agile environment, partnering closely with engineers, analysts and stakeholders to deliver value iteratively and at pace.


What You Will Be Working On

  • Design, build and run scalable, reliable data pipelines using Microsoft Azure
  • Architect and deliver data integration solutions that meet real business needs
  • Develop and maintain robust ETL processes for data ingestion, transformation and loading
  • Work closely with data and wider tech team and senior leadership team in a Scrum/Agile environment
  • Actively contribute to sprint planning, stand‑ups, reviews and retrospectives
  • Optimise data pipelines for performance, reliability and cost efficiency
  • Own data governance, quality and integrity across the full data lifecycle
  • Embed strong data security, privacy and compliance standards
  • Create and maintain clear documentation for data architecture, flows and processes
  • Continuously improve ways of working through Agile best practice and modern engineering standards

What You Will Bring To The Role

  • Experience delivering data engineering or data architecture solutions on Microsoft Azure
  • Extensive skills in data modelling, data warehousing and ETL development
  • Hands‑on experience with core Azure data services such as Data Factory, Data Lake and Azure SQL
  • Ability to write code and work confidently with data using Python and SQL
  • Collaborative working style within an Agile/Scrum environment

We love that everybody is different, and we believe a diverse workforce will be our strength. We ensure equal opportunity, champion inclusion and we actively encourage applications from suitably qualified candidates regardless of age, disability, gender, race, religion or orientation. Together, we’re all part of the rich GoFibre family and we’re unified by our goals, inspiring our teams to challenge the norm and deliver best‑in‑class service to our customers, all whilst encouraging and appreciating one another.


Are you ready for the challenge? Get in touch now, we can’t wait to hear from you! www.gofibre.co.uk


Seniority level

Entry level


Employment type

Full‑time


Job function

Information Technology


Industries

Telecommunications


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