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A global leader in premium lifestyle products is looking for an entry-level Data Scientist to join their Integrated Business Planning team. The ideal candidate will work on data preparation, apply machine learning methods, and collaborate with stakeholders to support business decisions. Key skills include proficiency in Python or R, strong analytical abilities, and effective communication skills. This role is a great opportunity to start your career in data science and make an impact in a renowned company.
Ralph Lauren Corporation (NYSE:RL) is a global leader in the design, marketing and distribution of premium lifestyle products in five categories: apparel, accessories, home, fragrances, and hospitality. For more than 50 years, Ralph Lauren's reputation and distinctive image have been consistently developed across an expanding number of products, brands and international markets. The Company's brand names, which include Ralph Lauren, Ralph Lauren Collection, Ralph Lauren Purple Label, Polo Ralph Lauren, Double RL, Lauren Ralph Lauren, Polo Ralph Lauren Children, Chaps, among others, constitute one of the world's most widely recognized families of consumer brands.
At Ralph Lauren, we unite and inspire the communities within our company as well as those in which we serve by amplifying voices and perspectives to create a culture of belonging, ensuring inclusion, and fairness for all. We foster a culture of inclusion through: Talent, Education & Communication, Employee Groups and Celebration.
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We are looking for a Data Scientist at the early stages of their career to join our Integrated Business Planning (IBP) Advance Analytics team. This role is ideal for individuals who are passionate about using data to solve real-world problems, uncover insights, and build scalable models to support business decision-making.
You will work closely with cross-functional teams including IT, merchandising, supply chain and external partners and receive guidance while progressively building your understanding of our data, processes, and business context.
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