Senior Data Architect — Secure Defence Data Platforms

NPAworldwide
Bristol
2 days ago
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A Defence and National Security consultancy in the UK is seeking a Data Architect to lead architecture design and modernisation across secure environments. You will create scalable data architectures that support mission-critical operations, ensuring compliance and governance. The role requires strong experience in complex environments, expertise in various data architectures, and offers hybrid working with competitive benefits. Join a collaborative team dedicated to national security.
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