Data Engineering Manager

McCabe & Barton
Nottingham
5 months ago
Applications closed

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A leading Financial Services client in the City of London is now seeking an experienced Data Engineering Manager to join on a permanent basis. This role is offering a base of £85,000 + a strong benefits package and flexible working.


The ideal Data Engineering Manager will come from a data engineering background and have strong knowledge in SQL, Snowflake, Microsoft Azure, Azure Data Factory and Azure DevOps. The Engineering Manager will design, improve and maintain robust data pipelines within data architecture.


To be considered for this role you will need the following:


  • Experience designing, improving and maintaining robust data pipelines
  • Strong SQL programming skills. Knowledge of other programming languages such as Python, C++ and Java, is beneficial
  • Possesses a strong understanding of Snowflake - beneficial
  • Experience managing small teams of Data Engineers
  • Strong experience working in a cloud environment and knowledge in the following very beneficial: Microsoft Azure, Azure Data Factory and Azure DevOps
  • Experience working in fast-paced Agile environments
  • Creativity and curiosity for solving complex problems.


If you are an experienced Data Engineering Manager with the required skills, please respond with an up-to-date version of your CV for review.

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