Betting & Gaming Business Intelligence Analyst

888AFRICA
1 year ago
Applications closed

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Company Description

888AFRICA is a joint venture between 888 Holdings and a digital leadership group targeting Regulated Markets in African countries. The company offers Online Sportsbook, Online Casino, Live Dealer, Virtuals, Free To Play, and other verticals in partnership with best-of-breed partners. The leadership and strategic teams operate outside of Africa, while operational and specialist teams are based locally.


Role Description

This is a full-time remote role for a Betting & Gaming Business Intelligence Analyst at 888AFRICA. The Business Intelligence Analyst will be responsible for analyzing data, creating data models, designing dashboards, and utilizing business intelligence tools to provide insights and support decision-making in the sports betting and gaming industry.


Qualifications

  • Analytical Skills and Data Modeling proficiency
  • Experience in designing and utilizing Dashboards
  • Proficient in Business Intelligence Tools and Business Analysis
  • Strong problem-solving and critical thinking abilities
  • Ability to work collaboratively in a team setting
  • Experience in the betting and gaming industry is a plus
  • Bachelor's degree in Data Science, Business Analytics, or a related field

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