Data Scientist

Harnham
england, england, united kingdom
8 months ago
Applications closed

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DATA SCIENTIST - Product/customer

REMOTE - 1 day per month in Greater London offices

Up to £65,000 + cash allowance + 10% bonus


COMPANY:

We are working with a market leading Telecommunications company with an established Data Science and AI team to bring a product focused Data Scientist into the team to work on a new product/service offering.


They are looking for a candidate with proven experience inSegmentation, Propensity, Audience targetting etc.


ROLE:

  • Work directly with senior stakeholders within and outside the team
  • Design and conduct experiments to better understand their customer base/products
  • Conduct work such as Segmentation, Propensity, Audience targetting
  • Focus on product analytics in the wider DS team
  • Design, analyse and interprate experiments to drive product development
  • Guide implementation of findings to maximise ROI


REQUIREMENTS:

  • Proven experience working within product teams
  • Proven experience in designing deploying relevant ML models.
  • 2/3+ years of experience
  • Strong stakeholder communication skills.


If this role looks of interest, please reach out to Joseph Gregory


Please note that this role cannot offer sponsorship

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