Data Scientist - Insights & Growth (Hybrid, 12m FTC)

Very Group
Liverpool
6 days ago
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A digital retail company in Liverpool is seeking an outcome-driven data scientist for a 12-month fixed-term contract. The role involves leading analysis and modelling to drive data-driven media strategies, collaborating with different teams to optimize outcomes, and contributing to data science methodologies. Ideal candidates should be proficient in Python and SQL, possess strong problem-solving abilities, and be eager to collaborate and share knowledge. This position offers a flexible, hybrid working model with excellent benefits.
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