Data Engineering Manager

McGregor Boyall Associates
Manchester
2 days ago
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Data Engineering Manager
Asset Management
Location: Manchester
Working: 3 days onsite (Tues-Thurs)
Salary: £100k + extensive package (TC circa £150k)

The Role
Leading a team of Data, DataOps & MLOps Engineers within a global asset manager's European Data function. You'll drive delivery of scalable, cloud-based data solutions, supporting analytics, data science and business decision-making across the UK & EU.

This is a management role with a small amount of hands on work possible.

Key Responsibilities

  • Lead and develop a team of data engineers
  • Deliver largescale data pipelines (ETL/ELT)
  • Design and optimise data architecture and workflows
  • Partner with stakeholders to translate business needs
  • Ensure data quality, governance and best practice


Key Requirements

  • Strong leadership experience (5+ engineers)
  • Solid Data Engineering / DataOps background
  • Python / PySpark for data pipelines
  • AWS experience (design & deployment)
  • Strong data modelling & warehousing knowledge
  • Agile (Jira / Azure DevOps) experience


Get in touch for more details -

McGregor Boyall is an equal opportunity employer and do not discriminate on any grounds.


AMRT1_UKTJ

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