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Head of Data Science

Burns Sheehan
Slough
6 days ago
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Head of Data Science - E-commerce - £110,000 - £130,000 - 3 days in office - Central London


One of our most established clients is in the market for a Head of Data Science to join their ranks and lead the Data Science function.


You will be responsible for taking over the initial team members as well as developing out the function in their Head of Data Science capacity.


You will be working on a multitude of problems such as recommendations, pricing, personalization and more, managing a team of circa 5 individuals.


If this Head of Data Science role is of interest to you then we need to see the following:


  • circa 8-12 years in Data Science experience, ideally some within a Data Science Manager or Head of Data Science capacity
  • A background within a multitude of areas such as Personalization, Pricing and more.
  • Track record in developing teams and putting leadership structure in place.
  • Product management experience as a plus
  • Excellent senior leadership skills


And for the most part with this Head of Data Science role, that is it so apply now for immediate consideration.


Head of Data Science - E-commerce - £110,000 - £130,000 - 3 days in office - Central London

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