Sports Statistician (Data Collection)

Genius Sports
Stirling
5 months ago
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Overview

Join to apply for the Sports Statistician (Data Collection) role at Genius Sports

Become a Football Statistician in Stirling with Genius Sports. Genius Sports is a global leader in sports data, technology, and media. We partner with leagues and organizations worldwide to deliver official live data that powers the future of sports entertainment.

We’re looking for passionate Football Statisticians in Stirling, Scotland to join our network and capture the action by reporting real-time match data from live football events.

Love Football? Get Paid to Be Part of the Game!

If you’re a football fan in Stirling, this is your chance to turn passion into opportunity. Using our easy-to-use smartphone app, you’ll record every key moment—goals, shots, fouls, and more—directly from the stadium.

No previous experience? No worries! We provide full online and practical training so you’ll be ready to cover live games with confidence.

What You’ll Get
  • Extra rewards based on performance
  • The chance to join a global sports data community
What We’re Looking For
  • Basic English skills
  • Availability on weekends and some evenings
  • Confidence using a smartphone
  • Willingness to travel locally
  • Strong football knowledge
  • Reliability, accuracy, and commitment

Love football? Ready to earn while being part of the live action? We’d love to hear from you!

Seniority level
  • Not Applicable
Employment type
  • Contract
Job function
  • Management, Information Technology, and Other
Industries
  • Spectator Sports, IT Services and IT Consulting, and Information Services

Referrals increase your chances of interviewing at Genius Sports by 2x

Get notified about new Statistician jobs in Stirling, Scotland, United Kingdom.

Note: This description preserves the original job information while removing irrelevant boilerplate and structuring content for clarity.


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