Principal Data Engineer

VIQU IT
Manchester
2 weeks ago
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Principal Data Engineer

Salary: £85,000 - £95,000 per annum


Location: Manchester (Remote/Hybrid)


VIQU have partnered with a national organisation going through an exciting transformation in their data infrastructure and 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

  • Experience as a lead or principal data engineer.
  • Prior experience designing data platform(s) within GCP, working hands on with Airflow, BigQuery, DataFlow, DataFusion, and DataStream.
  • 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.

Duties

  • Lead the architecture, best practice 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 standards.
  • Ensure all data platform processes—including ingestion, quality, transformation, security, batch management, monitoring, alerting, and cost control—are efficient.
  • Design and help build the data platform—ensuring data is processed through semantic layers and can be modelled effectively.
  • Suggest improvements for automation and cost savings.
  • Lead changes across the organisation, adopting a decentralised design.

Apply now to speak with VIQU IT in confidence. Or reach out to Jack McManus via the (url removed).


Do you know someone great? We'll thank you with up to £1,000 if your referral is successful (terms apply). For more exciting roles and opportunities like this, please follow us on LinkedIn @VIQU IT Recruitment.


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