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Data Architect

Robert Half Careers
Oxford
3 days ago
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Robert Half has partnered with a global client in Central Oxford to recruit a permanent Data Architect to join the team. This is a unique opportunity you will be leading on all data architecture, building the data layer from scratch. You will also be part of the Technical Design Authority, involved in defining processes and practices to ensure they are scalable, secure and robust.

Key Responsibilities:

  • Leadon all data architecture initiatives for a global business
  • Partner with the senior leadership team to ensure designs meet business objectives
  • Steer key decisions on how data flows between business systems/applications

About You:

  • Strong data architecture experience
  • Understanding of Fabric, Snowflake, Databricks, Power BI
  • Strong stakeholder management experience
  • Experience in end-to-end design and delivery of data solutions

On Offer:

  • Competitive salary
  • Private medical insurance
  • Pension contribution 5-8%
  • Hybrid working - Central Oxford 3 days a week in the office

Robert Half Ltd acts as an employment business for temporary positions and an employment agency for permanent positions. Robert Half is committed to diversity, equity and inclusion. Suitable candidates with equivalent qualifications and more or less experience can apply. Rates of pay and ...

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