Azure Data Engineer

Elephant & Castle
2 weeks ago
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Join Our Team as an Azure Data Engineer!

Are you passionate about data and looking to make a significant impact in a dynamic and innovative environment? UK Power Networks is seeking an experienced Azure Data Engineer to join our team and help us transform the way we deliver value from data.

As an Azure Data Engineer, you will be a key player in our ambitious plans for growth in our information landscape. You will work on multiple projects to bring important data-driven capabilities to all partners. You will be one of the Technical Leads on our Azure data platform, developing simple, reusable solutions that are scalable and using appropriate technologies and engineering best practices.

We offer a competitive salary of £76,229.00 plus a 3% bonus, along with a range of additional benefits including 25 days of annual leave plus bank holidays, a personal pension plan, tax-efficient benefits, and more. You will have the opportunity to work in a blended environment with 3 days in the office and 2 days remote after the probationary period.

If you are ready to take on this exciting challenge and be part of a team that is leading the way in data engineering, apply now! The closing date for applications is 02/03/2025. Join us at UK Power Networks and help us achieve our vision of being an industry leader in asset information.

For more information and to view the full job description please click apply

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