Data Engineering Manager

McCabe & Barton
City of London
1 week ago
Applications closed

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Job Description

A leading Financial Services organisation in London is seeking an experienced Data Engineering Manager to join on a permanent basis. This role offers a base salary of up to £90,000, alongside a strong benefits package and flexible working arrangements.


This is a hands-on leadership role where you will be responsible for building, scaling, and optimising data engineering capability. You will lead a team of engineers while remaining closely involved in the design, development, and ongoing improvement of robust, cloud based data platforms and pipelines.


Key responsibilities include:

  • Leading and mentoring a team of Data Engineers, driving high engineering standards and delivery quality
  • Designing, building, and maintaining scalable and reliable data pipelines and data architecture
  • Driving continuous improvement across tooling, processes, and engineering best practice
  • Supporting cloud platform development and optimisation within Azure environments


Key skills and experience required:

  • Proven experience in a Data Engineering Manager or Lead Data Engineer role
  • Strong SQL development skills, with experience using Snowflake highly desirable
  • Strong hands-on experience working within Microsoft Azure environments, including Azure Data Factory and Azure DevOps
  • Expe...

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