Senior Data Scientist

Vitality
London
4 days ago
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About The RoleTeam – Data ScienceWorking Pattern - Hybrid – 2 days per week in the Vitality London Office. Full time, 37.5 hours per week. We are happy to discuss flexible working! Top 3 skills needed for this role:

  • Deep Expertise in Machine Learning, Data Science & Technical Tooling
  • Strategic Project Leadership & Business Impact Delivery
  • High Level Stakeholder Engagement & Communication

What this role is all about:Vitality is entering a new era powered by Vitality AI. This is where intelligence, data, and personalisation come together to redefine how we help our members live healthier, happier, longer lives. As a Senior Data Scientist, you will play a pivotal role in designing, building, and executing advanced machine learning and AI solutions that sit at the heart of Vitality’s transformation. Your work will help shape the next generation of personalised health insurance and wellness experiences. You will be instrumental in embedding AI safely, responsibly, and at scale across the organisation.Key Actions

  • Lead advanced AI and machine-learning development, delivering the full model lifecycle and building scalable, explainable, production-ready solutions
  • Develop cutting-edge models including rec...

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