Lead Data Engineer - UK

MathCo
London
3 weeks ago
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Lead Data Engineer – UK (MathCo)

Location: Paddington, England, United Kingdom


We are seeking a Data Engineering Manager with expertise in the CPG domain and hands‑on knowledge of Azure Cloud technologies. Based in the UK, you will lead client‑facing programmes, guide engineering teams, and ensure scalable, modern data solutions are delivered to support supply chain, sales, and consumer analytics for global CPG clients.


Key responsibilities and qualifications:



  • Lead programme delivery for client‑facing initiatives, translating business objectives into data strategies.
  • Coach and manage engineering teams, ensuring delivery excellence and adoption of modern data practices.
  • Design, develop and maintain scalable data pipelines and data architecture using Azure Cloud services.
  • Engage with stakeholders across supply chain, sales, and consumer analytics to understand data needs and drive outcomes.
  • Demonstrate strong communication and stakeholder management skills, with experience mentoring and developing talent.

Seniority level: Mid‑Senior level


Employment type: Full‑time


Job function: Information Technology


Industries: IT Services and IT Consulting


Salary: £50,000.00 – £85,000.00


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