Head of Data Science, Games Tech (Hybrid London)

Aristocrat
London
2 days ago
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A leading gaming technology company seeks a Manager of Data Science to lead a team of data scientists and machine learning engineers in developing innovative data solutions. Responsibilities include mentoring staff, translating insights into business strategies, and coordinating with product teams to integrate analytical solutions. The ideal candidate will have over 5 years of experience in Data Science, including 2 years leading a team, and expertise in predictive modelling and machine learning practices. A hybrid work arrangement is available, with a minimum of 3 days per week in the London office.
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