Tapestry Data Science Manager
Tapestry, a leading house of modern luxury accessories and lifestyle brands, is renowned for its commitment to craftsmanship and innovation. As part of a global conglomerate, Tapestry offers a dynamic and inclusive work environment that fosters creativity and professional growth.
- Lead and manage a team of data scientists to develop advanced analytics models.
- Collaborate with cross-functional teams to identify data-driven business opportunities.
- Oversee the design and implementation of machine learning algorithms.
- Ensure the integrity and accuracy of data analysis and reporting.
- Drive the adoption of data science best practices across the organization.
- Proven experience in managing data science teams.
- Strong background in statistical modeling and machine learning.
- Excellent problem-solving skills and strategic thinking.
- Ability to communicate complex data insights to non-technical stakeholders.
- Proficiency in programming languages such as Python or R.
- Expertise in data visualization tools.
- Strong analytical and quantitative skills.
- Familiarity with big data technologies.
A minimum of 5 years of experience in data science or a related field, with at least 2 years in a managerial role.
Bachelor's degree in Data Science, Computer Science, Statistics, or a related field. A Master's degree is preferred.
Comprehensive benefits package including health insurance, retirement plans, and employee discounts on luxury products.
Tapestry prides itself on a culture of inclusivity, innovation, and collaboration. Employees are encouraged to bring their unique perspectives and ideas to the table, contributing to a vibrant and dynamic workplace.


Tapestry Jobs
- TodayShanghai • China
- AUG 20Hai Phong • Vietnam
- AUG 19New York City • USA
- AUG 17London • UK
- AUG 17Cambridge • UK
- AUG 14North Bergen • USA
- AUG 14New York • USA
- AUG 13New York • USA
- AUG 11London • UK
- JUL 30Tokyo • Japan
Keep looking…
Use Cerulean's Luxury Job Search to find other open roles similar to this one: