Data Scientist | Health & Fitness

Nicholson Glover
London
2 weeks ago
Applications closed

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Job Description

Data Scientist | Health & Fitness | London / Hybrid | Up to £65,000 DOE + 10% Bonus


We’re currently working with one of the UK’s most recognised names in the Health & Fitness industry. They're looking to hire a Data Scientist to join their ambitious and growing team.


The Company


With over a decade of industry presence, this brand has expanded to more than 200 locations across the UK and proudly supports a community of over 500,000 members. They’ve built a reputation not just for their size and scale, but for a people-first culture and strong core values that are truly embedded across the business.


The Role


This is an exciting opportunity for a commercially minded Data Scientist to take ownership of end-to-end modelling and ML pipeline development within a fast-paced, consumer-focused organisation.


You’ll lead impactful work across the full lifecycle — from exploration and predictive modelling to deployment and automation — using modern cloud tooling to shape smarter pricing, retention, and customer insight. Alongside hands-on modelling, you’ll help strengthen MLOps practices and contribute to emerging AI initiatives, working closely with engineering and analytics teams to deliver scalable, high-value ...

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