Data Engineer - Newcastle

Accenture
Newcastle upon Tyne
4 days ago
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Data Engineer

Role: Data EngineerLocation: Newcastle Upon TyneSalary: TBC – Depending on experienceLevels: Senior Analyst, Specialist

Hybrid Working: 3 days per week in our Newcastle, Cobalt business park office

Please Note: Any offer of employment is subject to satisfactory BPSS and SC security clearance which requires 5 years continuous UK address history (typically including no periods of 30 consecutive days or more spent outside of the UK) and declaration of being a British or EU  passport holder or hold Indefinite Leave to remain within the UK at the point of application.

Note: The above information relates to a specific client requirement

About the Team

Our Advanced Technology Centre is a hub of innovation where we deliver high-quality data and technology services to clients across both the public and private sectors. You’ll join a collaborative culture that values diverse thinking, continuous learning, and opportunities for career growth within a global network of experts.

If you're looking for a dynamic role that offers hands-on experience with modern data technologies and the chance to shape large-scale data solutions, this position offers you the opportunity to develop and progress rapidly.

Role Overview

As a Data Engineer, you will design, build, and maintain scalable data solutions that enable analytics, AI, and operational insights. You’ll work alongs...

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