Senior Data Engineer, Azure

Arc IT Recruitment
London
1 week ago
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Senior Data Engineer, Azure

London/hybrid

Circa £90k-£100k + bonus + benefits

Senior Data Engineer required by global banking organisation to help build and scale a modern data platform within a complex financial services environment. This role plays a key part in bringing together data from multiple regions into a single, well-governed and scalable platform built on Microsoft Fabric and Azure.

You'll work closely with business stakeholders, product owners and federated data teams to design and deliver a shared data model that supports incremental business outcomes while improving consistency, quality and reuse across the organisation.

This is a hands-on role with real influence over data architecture, engineering standards and ways of working.

Key responsibilities:

  • Designing and evolving a shared enterprise data model in collaboration with stakeholders
  • Translating product and business requirements into robust data solutions
  • Building secure, observable and performant data pipelines using modern engineering practices
  • Integrating, cleansing and curating data using a medallion architecture approach
  • Ensuring data quality, integrity and completeness across datasets
  • Optimising pipelines, processing workflows and warehouses for performance and cost
  • Working closely with analysts and data...

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