Lead Data Scientist - Routing

Data Science Festival
London
1 month ago
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Lead Data Scientist – RoutingSalary: Up to £100k + BenefitsLocation: London, Hybrid

Data Idols is working with a leading logistics company that’s reshaping how operations, data, and technology come together. As part of their growth, they’re hiring a Data Scientist to join the Routing & Optimisation team, working on complex decision problems that drive real-world efficiencies.

This is an opportunity to be part of a high-impact, production-focused environment where data science meets operational excellence.

The Opportunity

Working closely with the Head of Routing & Optimisation, you’ll design and develop scalable algorithms, heuristics, and ML/optimisation models that tackle some of the most critical challenges in logistics, from routing and pricing to planning and forecasting.

You’ll collaborate cross-functionally with product and tech teams to bring models into production, writing production-ready code and delivering end-to-end solutions.

What’s in it for you?

  • Hybrid working
  • 25 days holiday + bank holidays, plus Christmas Eve off
  • Private medical cover, enhanced sick pay, and in-house gym
  • Free breakfast, barista coffee, and Thursday social drinks
  • Pension scheme with employer contributions
  • Enhanced maternity leave
  • Travel perks including Cycle to Work and EV scheme
  • Be part of a high-growth tech-led logistics company that values innovation and impact

Skills and Experience

  • Experience building optimisation or ML models in logistics, transport, or consulting
  • Expertise in Mixed Integer Programming, heuristics, approximate algorithms, constraint programming, or ML/DL
  • Hands-on with Python and SQL
  • Domain knowledge in areas like routing, pricing, forecasting, or procurement planning
  • Excellent communication skills
  • Comfortable working in agile teams with a fast-delivery mindset
  • A proactive mindset with a bias for action and alignment with values like collaboration, curiosity, and getting things done

If you’re a data scientist who thrives on complex decision-making problems and wants to make a tangible impact in a fast-moving, tech-led logistics business, we’d love to hear from you.

Click Apply to send your CV and start the conversation


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