Strategic Data Architect: Aligning Data & Business Vision

NatWest Group
Edinburgh
2 weeks ago
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A leading banking institution in the United Kingdom is seeking an experienced Data Architect to define strategic target data architecture and align it with business objectives. You will play a key role in leading architecture reviews, driving technology innovation, and fostering collaborative decision-making processes. Candidates should have expert knowledge in data architecture frameworks, cloud technologies, and DevOps practices. Strong communication and relationship-building skills with stakeholders are essential in this role.
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