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Data Architect

NatWest Group
Manchester
2 days ago
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What you'll do

As a Data Architect, you’ll be supporting the realization of the enterprise and data architecture, working as part of development teams throughout the data development lifecycle. This will include providing technical guidance, resolving architectural impediments, and championing the adoption of data architecture patterns and standards.



  • Developing data architecture models and artefacts, ensuring alignment with the bank’s strategic target data architecture, templates and toolsets.
  • Supporting the adoption of domain data architecture enablers and creating playbooks, collaborating with peers, and educating stakeholders on best practices.
  • Supporting design reviews for change programmes, ensuring solutions align with data architecture principles, standards and best practices.
  • Validating data solution quality, identifying architectural risks, and escalating findings to stakeholders.
  • Defining how data will be stored, consumed, integrated, and managed by different data entities and systems.
  • Building effective relationships across organisational levels to align on data architecture goals.
  • Working with dynamic cross‑functional teams including business areas, central architecture team, solution architects & data engineers.
  • Monitoring emerging technologies, identifying opportunities or risks, raising them within the architecture governance framework.
  • Bringing the architecture community together to drive a common data architecture strategy through communities of practice.

Skills & Qualifications

  • Experience in producing clear data architecture diagrams at various levels of detail and for different audiences.
  • Engagement with stakeholders across business to define architectures delivering tangible business outcomes, including creating business cases.
  • Collaborative decision‑making experience, partnering with business, technology, and data architecture colleagues to evolve direction, adhering to principles.
  • Working knowledge of data mesh principles, understanding of data products, federated data principles, and ownership.
  • Strong experience in ETL, ideally from previous data engineer roles.
  • Experience managing complex data environments.
  • Knowledge of modern technologies such as Cloud, microservices, AI, and AWS Sagemaker is highly desirable.
  • Strong presentation and stakeholder engagement skills.
  • Expertise in data management, lifecycle management, data modelling, and database design.

Seniority level

Mid‑Senior level


Employment type

Full‑time


Job function

Information Technology


Industries

Software Development


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