Data Engineering Team Lead

McCabe & Barton
Liverpool
8 months ago
Applications closed

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Data Engineering Team Lead - Onboarding & Data Products

Our client, a leading financial services organisation, is looking for a Data Solutions Manager to lead a small team of experienced data engineers.


You will be joining a fast growing team who are responsible for delivering, improving and maintaining robust data pipelines within an ambitious data architecture.


Our client has already fully transitioned to cloud, there is a mature platform in place, and you will be joining a high performing, proactive, and collaborative team.


To be successful in this role, you will need the following experience:

  • Strong hands-on data engineering experience
  • Previous experience managing and mentoring data engineering teams
  • Significant experience working with Snowflake, Azure, Data Factory and Azure DevOps
  • Strong communication and stakeholder management skills


This role is almost fully remote, with quarterly workshop visits to the clients office in the South East

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