Data Architect

4it Recruitment
Manchester
1 month ago
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Data Architect - Bradford (Hybrid – 1–2 days per month in the office) - up to £90,000 + 12.5% bonus + excellent benefits

The Opportunity

We’re looking for an experienced Data Architect to play a key role in shaping and delivering a modern, scalable data platform. This is a high-impact position where you’ll define data architecture strategy, influence technical direction, and work closely with engineering, analytics, and business teams to unlock real value from data.

You’ll be joining a forward-thinking organisation investing heavily in its data estate, with the autonomy to design robust solutions and set the roadmap for future growth.

What You’ll Be Doing

  • Designing and owning end-to-end data architecture across complex environments
  • Defining data models, data flows, and architectural standards
  • Building and evolving data roadmaps aligned with business strategy
  • Leading the design and implementation of Medallion Architecture (Bronze, Silver, Gold layers)
  • Working extensively with Databricks and SQL to support analytics and data engineering use cases
  • Collaborating with stakeholders to ensure data solutions are scalable, secure, and fit for purpose
  • Providing architectural guidance and best practices across data teams

What We’re Looking For

  • Extensive experience in Data Architecture within enterprise-scale environments
  • Strong hands-on knowledge of Databricks and advanced SQL
  • Proven experience designing data models, data flows, and data platforms
  • Deep understanding of Medallion Architecture and modern data design principles
  • Experience creating and owning data architecture roadmaps
  • Exposure to cloud platforms such as AWS and/or Azure (highly beneficial)
  • Strong communication skills with the ability to engage both technical and non-technical stakeholders

What’s In It for You

  • Salary up to £90,000 depending on experience
  • 12.5% annual bonus
  • Hybrid working with only 1–2 days per month in the Bradford office
  • A comprehensive benefits package (pension, holidays, wellbeing support, and more)
  • The chance to influence and shape a modern data architecture from the ground up

Due to the high volume of applications we receive, we may not be able to respond to all applications. Should you not hear from us in 5 working days then your application has not been successful.


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