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Quantitative Analyst / Modeller - Sports Betting

Client Server
London
1 week ago
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Quantitative Analyst / Modeller (SQL Mathematics Statistics) London / WFH to £95k


Do you have advanced mathematical / data modelling skills combined with experience within the Sports Betting industry?


You could be progressing your career in a senior, hands-on Quantitative Analyst / Modeller role at a growing technology company that's advanced data analytics platform helps business within the online gaming and gambling industry to solve a range of problems.


As a Quantitative Analyst / Modeller you will build mathematical models and simulations to predict the likely outcomes of different scenarios in game play, rigorously backtest and validate models to ensure their robustness, accuracy and profitability in real-world betting scenarios and drive the quantitative modelling initiatives.


Working for a US Sports analytics client you'll collaborate with their technical team, providing advanced mathematical models derived from large datasets and statistics for the client's MLOps team to productionise.


Location / WFH:

You'll join a friendly and sociable team in the London office two days a week (Mondays and Thursdays) with flexibility to work from home the other three days and core hours of 1000-1600.


About you:

  • You have experience in a similar Quant focussed role within a sports betting company or other where working with sports data
  • You have advanced mathematics and statistics knowledge including Monte Carlo simulations
  • You have a strong understanding of databases and SQL
  • You have strong experience in backtesting, validation and performance evaluation of quantitative models
  • You have advanced communication and collaboration skills


What's in it for you:

As a Quantitative Analyst / Modeller, you will earn a competitive package:

  • Salary to £95k
  • Pension; Private Healthcare; Life Assurance and Income Protection
  • 25 days holiday plus ability to buy more
  • Discounts at hundreds of retailers, including 55% off cinema tickets
  • Season ticket loan, cycle to work scheme, gym discount
  • Hybrid working (x2 days London office per week)
  • Impactful role with excellent career growth potential


Apply now to find out more about this Quantitative Analyst / Modeller (SQL Mathematics Statistics) opportunity.


At Client Server we believe in a diverse workplace that allows people to play to their strengths and continually learn. We're an equal opportunities employer whose people come from all walks of life and will never discriminate based on race, colour, religion, sex, gender identity or expression, sexual orientation, national origin, genetics, disability, age, or veteran status. The clients we work with share our values.

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