Lead Data Engineer

Harrington Starr
Newcastle upon Tyne
1 month ago
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We’re looking for a hands‑on Data Engineering & Analytics Team Lead to guide a talented team of engineers and deliver mission‑critical data and reporting solutions for a fast‑growing, global payments platform.


You’ll lead a team of 6 data engineers while remaining deeply technical—designing scalable data pipelines, shaping data strategy, and solving complex data challenges. This role is key to supporting rapid international growth and building best‑in‑class reconciliation and reporting capabilities.


What you’ll do

  • Lead, mentor and grow a high‑performing data engineering team
  • Design and build scalable ELT/ETL pipelines and data models
  • Own data strategy, architecture and best practices
  • Work closely with product, engineering and customer teams
  • Tackle complex data problems and optimise performance at scale
  • Translate business needs into clear, reliable data solutions

What They’re looking for

  • 5–8 years’ experience in data engineering, with 2+ years in a lead role
  • Strong experience with Snowflake and Azure (or similar)
  • Excellent SQL skills and experience with BI tools (Looker or similar)
  • Proficiency in Python, C#, Java or similar
  • Comfortable explaining complex data concepts to non‑technical audiences
  • Curious, proactive and driven by client outcomes
  • Payments or financial services experience is a plus, not a must
  • Lead a critical team in a high‑growth SaaS environment
  • Real influence over data strategy and technology choices
  • Remote‑first role with occasional collaboration days in Newcastle
  • Work on complex, meaningful data challenges at global scale

If you’re excited by ownership, leadership, and building data systems that really matter—we’d love to hear from you.


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