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Data Architect

NatWest Group
City of London
2 days ago
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Data Architect

Join us as a Data Architect.


What You’ll Do

As a Data Architect, you’ll support the realization of enterprise and data architecture across the data development lifecycle. You will provide technical guidance, resolve architectural impediments, champion data architecture patterns, and ensure robust and reliable data solutions that support business intelligence, analytics, AI, and decision‑making.


Key Responsibilities

  • Design and implement data architecture across multiple domains while ensuring alignment with enterprise standards.
  • Collaborate with stakeholders to develop reusable and scalable capabilities supporting the bank’s strategic target data architecture.
  • Mentor less experienced colleagues and contribute to the data community.
  • Develop data architecture models and artefacts that align with strategic goals, templates, and toolsets.
  • Support adoption of domain data architecture enablers and create playbooks.
  • Provide input to design reviews, ensuring solutions align with data architecture principles and standards.
  • Validate data solution quality, identify architectural risks, and raise findings to stakeholders.
  • Define how data will be stored, consumed, integrated, and managed across entities and systems.
  • Build relationships across all organizational levels to unify understanding of strategic data architecture goals.
  • Collaborate with business, central architecture, solution architects, and data engineers.
  • Monitor emerging technologies, identify opportunities or risks, and incorporate them into governance.
  • Lead and enable communities of practice around data architecture strategy.

Qualifications & Skills

  • Experience producing clear data architecture diagrams at various levels of detail.
  • Engaged with stakeholders across business to define architectures that deliver tangible outcomes.
  • Collaborative decision‑making, partnering with business and technology to evolve architectural direction.
  • Knowledge of data mesh principles, data products, federated data governance.
  • Strong experience in ETL and data engineering.
  • Experience managing complex data environments.
  • Strong presentation, stakeholder engagement, and communication skills.
  • Knowledge of modern cloud (AWS, Azure, GCP) and microservices, AI, and DevOps practices.
  • Understanding of data lifecycle management, data modeling, and database design.
  • Experience with AWS SageMaker highly desirable.

Senior Level

Mid‑senior level


Employment Type

Full‑time


Job Function

Information Technology / Software Development


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