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Data Scientist / Analyst

Intellect Group
London
1 day ago
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🚀 Junior Data Scientist – Sport & Data Analytics

📍 London (Hybrid) | 💰 £35,000 – £40,000 + Benefits


Are you passionate about sport, data, and innovation? This is an exciting opportunity to join a global sports organisation that’s using analytics to shape performance, marketing, and commercial strategy across international events.


You’ll work closely with senior stakeholders to turn data into insight - building dashboards, validating key datasets, and supporting decision-making across finance, marketing, and operations.


We’re looking for someone who:

⚙️ Has 1-4 years’ experience in data science or analytics

🐍 Is confident using Python and SQL

📊 Can visualise data in Power BI or Tableau

💡 Communicates complex insights clearly to non-technical teams

🔥 Brings curiosity, creativity, and a genuine passion for sport


Benefits

💰 Competitive Salary: £35,000 – £40,000

🏡 Hybrid Working: London HQ, with flexible structure

📈 Career Growth: Learning and development budget for courses, books, and events

🤝 Collaborative Culture: Work with an expert team from F1, UFC, and leading tech organisations

Perks: Private healthcare, 25 days’ holiday + Christmas break, flexible hours, and complimentary access to global sporting events


This is a great fit for an early-career data scientist or analyst who wants to see their work have visible impact in the world of sport.


How to Apply:

Please apply with your most up-to-date CV and we will be in touch ASAP to arrange an initial call.

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