Game Analytics Data Scientist

Rockstar Games
Leeds
1 month ago
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A leading game development company in Leeds seeks a passionate Data Scientist to design and deliver data analytics solutions for critical business questions. Candidates should have over 2 years of experience, proficiency in statistical theories, and strong skills in SQL and Python. This full-time role involves collaborating with various stakeholders, mentoring junior team members, and leveraging data to enhance game experiences. A passion for video games and data storytelling is essential. Join a dynamic team committed to innovation.
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