Sports Statistician (Data Collection)

Genius Sports
Chester
1 week ago
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Overview

Genius Sports is the official data, technology, and commercial partner driving the connection between sports, betting, and media on a global scale. Our mission is to create a more sustainable sports data network powered by rich, official live data. To achieve this, we\'re seeking enthusiastic Statisticians to join our team and collect match data while attending live sporting events.


ARE YOU PASSIONATE ABOUT ICE HOCKEY?


If you love ice hockey and want to be part of the action while getting paid, this is your opportunity! We are looking for individuals in the Chester area to collect official live data from ice hockey events.


As a Statistician, you will use our user-friendly smartphone-enabled software to report live events, including every shot, goal, tackle, and save. Don’t worry if you lack previous reporting experience — we provide comprehensive e-learning courses and practical training to ensure you’re fully prepared to cover live games. This is the perfect chance for sports enthusiasts to earn extra income while doing something they love.


What we offer

  • Guaranteed base pay of €70 per game
  • A performance-based reward system
  • Coverage of travel expenses

If you’re eager to immerse yourself in the world of sports and want to be part of our global network of statisticians, we want to hear from you!


Job requirements

  • Basic level in English
  • Regular availability for a few hours on weekends and weekday evenings
  • Familiarity with using a smartphone
  • Willingness to travel
  • A strong knowledge of ice hockey
  • Reliability, commitment, organization, and integrity
  • Exceptional attention to detail

Get to know us

For more information about our mission and values, visit: Genius Sports


If you’re excited about this opportunity, we’d love to hear from you! Apply now and become a vital part of our team!


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