Data Scientist

Freshminds
united kingdom of great britain and northern ireland, uk
3 months ago
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Our client is a global leader in premium lifestyle products, specializing in apparel, accessories, home, fragrances, and hospitality. They have restructured to better leverage consumer insights and predictive analytics, driving personalized experiences at scale. To support this transformation, they are expanding their Data Science function to extract actionable insights from customer data and optimize experiences for business growth.ResponsibilitiesData Analysis: Use Dataiku and other tools to clean, explore, and analyze customer data to uncover insights.Model Development: Build predictive models and machine learning algorithms to forecast customer behavior and personalize marketing strategies.CRM & Intelligence: Collaborate across teams to enhance CRM strategies and generate actionable customer profiles to improve engagement and loyalty.Requirements1-2 years of experience in data analysis, statistical modeling, and machine learning.Proficiency with Python, and preferably Dataiku or similar platforms; with strong skills in R, or SQL.Excellent communication skills, able to present technical findings to non-technical stakeholders.Experience working with customer data or analytics to provide actionable insights.Fashion or luxury retail experience.DetailsDuration: 12-month fixed-term contractSalary: £50 - 60kStart date: ASAPHybrid working

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