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Senior Quantitative Analyst (Sports)

Source Technology
London
9 months ago
Applications closed

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Quantitative Software Developer

Are you someone who is looking to take your career to the next level? If so, this is a unique opportunity to join a growing sportsbook. As the senior quantitative analyst, you'll be working on the full project lifecycle from gather data to building the algorithms to predict certain sporting outcomes.


Having had a successful last 12 months, they're have ambitious growth plans to become the number 1 sportsbook globally. As the company grows, the opportunity will be there for you to progress as well. Apply now if you're looking to accelerate your career working for a rapidly growing company!


Key Responsibilities:

  • Build models to predict certain sporting outcomes
  • Full autonomy on each projects where your ideas will be implemented.
  • Work on a number of exciting projects across different sports.
  • Big focus on bet builders and player props.


Experience Required:

  • Experience with building probablistic models
  • Experience within the sporting industry


Package:

  • Up to £120,000
  • Market leading bonus
  • Hybrid model in London office


How to Apply:

If you’re interested, submit your CV and Daniel Akanni will be in contact with you to discuss the next steps.

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