Principal Data Engineer

Harnham - Data & Analytics Recruitment
Leeds
2 weeks ago
Applications closed

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PRINCIPAL DATA ENGINEER

£80,000 + BENEFITS

LEEDS (Hybrid)

Looking for a role where you can truly influence how data engineering is done-while still getting stuck into the tech yourself?

THE COMPANY:

I'm working with a central data function in the financial services industry that's undergoing a full modernisation of their data platform. They've got technically advanced teams across the wider business and are now building out a core engineering team to unify, elevate and support that community.

THE ROLE:

It's a strategic, hands-on role where you'll work closely with DevOps, Product, and business partners to unlock the value of data through modern, secure and governed pipelines.

  • Lead hands-on development work using Azure, Databricks, and Terraform (IaC)
  • Support the migration from legacy platforms to a more modern cloud stack
  • Act as a mentor and technical guide to the wider engineering team
  • Implement data governance requirements
  • Collaborate with non-technical stakeholders to ensure delivery aligns to business needs
  • Stay close to the ML lifecycle

YOUR SKILLS AND EXPERIENCE:

A successful Principal Data Engineer will have the following skills and experience:

  • Strong hands-on experience with Azure
  • Proficient in Databricks
  • Skilled in Terraform and Infrastructure as Code practices
  • Exposure to contai...

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