Product Performance and Data Scientist

Manpower
Merseyside
1 month ago
Applications closed

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Manpower are currently seeking an interim Product Performance and Data Scientist to work with our global FMCG client Unilever, renowned for brands such as Dove, Sure, Persil, and Simple, and become an integral part of their fast-paced FMCG environment.

The position is based at our client's scientific Research & Development facility in Port Sunlight Village, Wirral easily accessible by train and car. This is a full-time temporary role to run for 12 months, requiring 37.5 hours per week, Monday to Friday. Compensation for this role is competitive, paying up to £31,205 per annum, pro rata, depending upon experience.

Unilever is a major worldwide player in the hair care industry with a significant number of leading brands, including Tresemme, Sunsilk, Dove and Nexxus, that rely on innovation and functional performance to deliver to every consumer's diverse product needs.

A role is available for a motivated and creative individual within our Consumer and Technology Insights team. In this role, you will have responsibility in generating new insights and data from our extensive Hair Category instrumental and consumer evaluation capability. This role will require the mining of large data sets, the manipulation of data and generation of new insights that are clearly communicated to direct product innovation. There maybe a requirement to create new empirical data through several meas...

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