Pricing Data Scientist - ML Solutions for Retail

Tesco - Corporate
Welwyn Garden City
5 days ago
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A leading retail company in the United Kingdom is looking for a Data Scientist to develop machine learning solutions that optimize pricing and enhance customer experience. This role includes designing robust models, working with large data sets, and collaborating with engineers. Candidates should have a strong background in machine learning and programming, along with a higher degree in a quantitative field. The position offers a full-time permanent contract with extensive employee benefits and a focus on professional growth and inclusive culture.
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