Lead Data Engineer

VIQU IT Recruitment
Manchester
2 days ago
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Job Description

Role: Lead Data Engineer

Salary: £85,000 - £95,000 per annum

Location: Manchester (Remote/ Once a month)


VIQU have partnered with a national organisation going through an exciting transformation in their data infrastructure and so are hiring a principal data engineer to lead the design of their platform within the Google Cloud Platform (GCP). The role will involve an even split of technical engineering, architecture and leadership/people management.


Requirements for the Lead Data Engineer:

  • Experience as a lead or principal data engineer.
  • Prior experience designing data platform(s) within GCP, working hands on with; Airflow, Big Query, Data Flow, Data Fusion, and Data Stream.
  • Deep understanding of Data Mesh/ decentralised design and Data Lake/Warehouse solutions.
  • Previously led teams of data engineers.
  • Hands on skills across the GCP tech stack, SQL and Python.
  • Ability to lead cultural change across organisations, and manage senior stakeholders.
  • Ability to work across multiple contexts and teams.


Job Duties of the Lead Data Engineer:

  • Lead the architecture, best practise and engineering strategy of data squads.
  • Hands on data engineering work, utilising both python and SQL.
  • Mentor and lead teams of engineers, checking and reviewing code, and setting stand...

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