Data Engineering & Analytics Team Lead

CRS
Newcastle upon Tyne
4 days ago
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🚀 Data Engineering & Analytics Team Lead

Remote-first (UK) | Occasional travel to Newcastle


I’m working with my client, a high-growth FinTech SaaS business specialising in payments reconciliation and reporting, who are scaling rapidly and investing heavily in their data function.

They’re looking for a hands-on Data Engineering & Analytics Team Lead to take ownership of a talented team of 6 engineers and play a critical role in delivering mission-critical data and reporting solutions to global clients across the payments ecosystem.


This is a key hire for the business and a genuine opportunity to shape data strategy, influence architecture, and lead from the front in a company where data sits at the heart of the product.


The role is ideal for someone who enjoys staying hands-on while also mentoring others and driving best practice at scale.


You’ll be:

  • Leading and developing a high-performing team of data engineers
  • Designing and building robust, scalable ELT/ETL pipelines
  • Working extensively with Snowflake and Azure
  • Partnering closely with Product and Customer Success to deliver real client outcomes
  • Playing a central role in defining and evolving the company’s data strategy
  • Solving complex data challenges across performance, scalability and reliability
  • Translating business requirements into clear, well-estimated technical solutions
  • Presenting complex data concepts to non-technical stakeholders


What they’re looking for

  • 5–8 years’ experience in data engineering / analytics
  • 2+ years in a senior or lead role
  • Strong experience with Snowflake and Azure (or similar cloud platforms)
  • Excellent SQL skills and experience with BI tools (Looker or similar)
  • Proficiency in Python, C#, Java or similar
  • Proven experience designing and maintaining scalable data platforms
  • A proactive, solutions-focused mindset with strong stakeholder skills
  • Exposure to payments, financial services or regulated environments is a plus, but not essential


If you’re a data leader who wants real ownership, impact and progression in a scaling FinTech, this is a brilliant opportunity.

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