Head of Data Engineering (AI)

Harnham - Data & Analytics Recruitment
Edinburgh
3 days ago
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HEAD OF ENGINEERING

Up to £130,000 + BENEFITS

Remote UK based

This is a rare opportunity to lead engineering at scale while working on genuinely complex technical challenges. You'll own the engineering roadmap across all products, driving architectural decisions for distributed data processing, ML pipelines, and modern web systems that handle massive datasets for enterprise clients.

THE COMPANY:

This is a business built on innovation, stability, and genuine technical excellence. Recently recognized for cutting-edge GenAI data work, they're operating at the absolute intersection of large-scale distributed systems, ML, and the rapid evolution of search technology.

THE ROLE:

  • Own and execute the engineering roadmap
  • Drive architectural decisions for distributed data processing, ML pipelines, and web architecture
  • Ensure systems can scale to handle massive datasets and evolving ML workloads
  • Champion best practices around testing, observability, incident response, and documentation
  • Set standards for AI-assisted development practices at scale

YOUR SKILLS AND EXPERIENCE:

  • Lead multi-disciplinary teams across Backend, Web, Data Engineering, Data Science, QA, and DevOps
  • Understanding how ML models are delivered, deployed, and maintained in production
  • Familiarity with the ML lifecycle: feature stores, model deploy...

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