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Sports Statistician (Data Collection)

Genius Sports
Dingwall
6 days ago
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Sports Statistician (Data Collection)

Join Genius Sports as a Sports Statistician (Data Collection) based in Dingwall, Scotland. The role involves collecting live match data from local sporting events, providing real‑time statistics for clients.


Key Responsibilities

  • Attend football matches to record every pass, tackle, goal, and save using our smartphone‑based software.
  • Work independently to ensure data accuracy and completeness during live matches.
  • Submit recorded data promptly to our data processing team.
  • Participate in e‑learning courses and hands‑on training before match days.

Requirements

  • Basic level of English proficiency.
  • Availability on weekends, weekdays, and evenings.
  • Comfortable using a smartphone or tablet.
  • Willingness to travel to nearby venues.
  • Strong knowledge and passion for football.
  • High reliability, organization, and attention to detail.

Compensation & Benefits

  • Guaranteed base pay of €70.
  • Performance‑based rewards per game.
  • Travel expenses covered.
  • Join a global community of sports data professionals.

Employer

Genius Sports is a global leader in sports data, technology, and media. We connect sports, betting, and broadcasting through cutting‑edge data solutions.


Senior Level / Contractual Details

  • Seniority level: Not applicable.
  • Employment type: Contract.
  • Job function: Management, Information Technology, and Other.


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