Data Architect — Enterprise Data Systems | Hybrid Work

Leonardo UK Ltd
Newcastle upon Tyne
3 weeks ago
Applications closed

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A leading technology company in Newcastle upon Tyne is seeking an experienced Data Architect. In this role, you will design, create, and manage data architecture solutions that ensure data is accurate, accessible, and secure. To succeed, you will need strong experience in data architecture and a collaborative approach to working with IT teams and stakeholders. This role offers a comprehensive benefits package, including generous leave and opportunities for professional development.
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