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Sports Analyst

Gamdom
London
6 months ago
Applications closed

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Gamdom is home to thousands of betting options for both sports and casino players to wager on. Since 2016, we have been steadily growing to provide more than just casino games and sports betting events to enjoy; With us, you can enjoy unique bonuses and earn massive rewards simultaneously. Discover all the rewarding features Gamdom can offer you below.

Gamdom is seeking a highly motivated and detail-oriented Trading Analyst to join our dynamic team. This role is integral to ensuring the accuracy and efficiency of our sportsbook operations. As a Trading Analyst, you will focus on real-time monitoring, data analysis, and reporting, enabling informed decision-making and risk management across our betting markets.

key responsibilities

daily responsibilities:

  • monitor betting activity in real-time through ticker systems to identify and flag dangerous patterns
  • report top event liabilities by the end of each shift
  • provide detailed analysis and reporting on trading activity, including bet rejections and potential profit/loss impacts
  • analyze connected user accounts and their related betting activities, drafting detailed reports for senior management

weekly responsibilities:

  • conduct analysis on user categorization and recommend individual measures
  • propose changes to users’ customer classification framework (ccf) based on insights
  • identify and report on sports or league-specific trends

monthly responsibilities:

  • create comprehensive closing reports on overall sports and betting performance
  • summarize top user activity and provide actionable insights

ad hoc responsibilities:

  • serve as the point of contact (poc) for customer support queries via internal communication channels
  • draft on-demand trading reports for individual users as requested

required qualifications

experience:

  • previous experience in a sportsbook trading or similar role is highly desirable
  • strong understanding of sports and sports betting markets, including odds compilation, risk management, and market dynamics

technical skills:

  • familiarity with sportsbook trading platforms and systems
  • proficiency in data analysis tools (excel, python, r, sql); experience with statistical modeling is a plus

analytical abilities:

  • strong numerical and analytical skills, with the ability to make quick, data-driven decisions
  • skilled in identifying trends, patterns, and anomalies within large datasets

communication skills:

  • excellent written and verbal communication abilities
  • capable of presenting complex data in a clear, actionable format

attention to detail:

  • high accuracy and meticulous attention to detail
  • ability to meet deadlines and deliver timely reports within expected etas

problem-solving skills:

  • proactive in identifying issues and implementing effective solutions in a fast-paced environment

preferred qualifications:

  • experience with advanced trading tools and algorithms
  • passion for sports and a deep understanding of market trends and customer behavior
  • knowledge of machine learning or predictive modeling applied to sports betting markets is a plus

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