Senior Data Engineer Airflow

Harnham - Data & Analytics Recruitment
Leeds
3 days ago
Create job alert

SENIOR DATA ENGINEER

£75,000 + BENEFITS

PRIMARILY REMOTE

This is an opportunity to take real ownership of a modern data platform within a growing, technology-driven bank. You will join a collaborative data team, influence architectural direction, and shape the foundations that will support analytics, governance and future AI capabilities.

THE COMPANY:

I'm partnering with a fast-growing, UK-based financial services organisation that operates at the intersection of banking, technology and fintech enablement. Recently established as a fully licensed UK bank, they provide core banking infrastructure to hundreds of fintech and digital asset companies, alongside a growing SME lending operation.

THE ROLE:

  • Design and maintain scalable ELT and ETL pipelines
  • Own data warehousing architecture,
  • Introduce and enhance governance tooling,
  • Mentor a junior data engineer
  • Collaborate closely with data, product, and operational stakeholders to deliver high-impact solutions.

YOUR SKILLS AND EXPERIENCE:

  • Strong commercial experience as a Data Engineer working across AWS, Python, SQL, and Airflow.
  • Hands-on expertise designing and delivering end-to-end pipelines
  • Experience with data modelling, data warehousing, and architectural design.<...

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