Data Scientist - Inside IR35 - Optimisation

Lorien Resourcing
West Drayton
1 month ago
Applications closed

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Data Scientist - Optimisation & Applied Analytics

Contract duration: 6months (12months of work road mapped)

Day rate: 800 Inside IR35

Location/Hybrid: 2-3 days per week to Heathrow Airport

A major global airline, undergoing a multi-million-pound data and optimisation transformation, is looking for a Data Scientist to join their high-performing Decision Support & Optimisation function.

This role is end-to-end, hands-on, and deeply embedded in the business. You'll work at the start of new product builds, shaping and delivering AI-powered optimisation tools that keep people and aircraft moving efficiently in one of the most operationally complex industries in the world.

What You'll Do

  • Build and deploy applied statistics, machine learning and optimisation models that support mission-critical operational decisions.
  • Work closely with data engineers, understanding their workflows and collaborating to take models from ideation all the w...

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