Senior Data Engineer, ML and AI Platform Engineering

Datatech Analytics
London
19 hours ago
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Job Description

Senior Data Engineer, ML and AI Platform Engineering, Hybrid

London, Monday to Wednesday in office

Up to £80,000 DOE

We’re partnering with an AI-first SaaS business turning messy first-party data into trusted, decision-ready insight.

They’re scaling with intention, building an engineering team where you’re heard, supported, and trusted to grow.

This role suits someone who loves building reliable, production-grade data and ML pipelines, and wants to do it in a culture that backs collaboration, psychological safety, and genuine progression, including for engineers who’ve not always been given the space to step up.


What you’ll be doing

  • Building and productionising cloud-native data and ML pipelines
  • Improving CI/CD, deployment, monitoring, and platform reliability
  • Working closely with product, engineering, and data science to ship real outcomes
  • Helping shape “how we do things” as the platform and team evolve


What you’ll bring

  • Strong Python, solid SQL
  • Experience delivering production systems at scale, not just prototypes
  • Cloud experience plus modern CI/CD practices
  • A collaborative mindset, you share ideas, ask questions, and bring others with you...

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