Head of Data Science and Analytics

Harnham
London
4 days ago
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HEAD OF DATA SCIENCE & ANALYTICS

UP TO £120,000

HYBRID – LONDON – 2 days a week in the office


THE COMPANY

This media group are currently going through a huge growth period and are looking for a Head of Data Science & Analytics to support this expansion!


THE ROLE

As a Head of Data Science & Analytics, you can expect to be involved in the following:

  • Leading their UK based Data Science & Analytics function
  • Taking a strategic approach, to support the business’ growth across digital, product and commercial models
  • Supporting and mentoring the team with hands-on work occasionally
  • Drive value through advanced analytics, experimentation, insights, etc
  • Work closely with a variety of different stakeholders across content, product, commercial, and operations

YOUR SKILLS AND EXPERIENCE

  • Experience within the media industry is very much preferred
  • Experience within Data Science & Analytics strategic/leadership roles
  • Knowledge of SQL and Python needed
  • Strong communication and stakeholder management skills required

BENEFITS

  • Salary up to £120,000
  • Hybrid working in central London office
  • Great opportunity for ownership and growth

How to apply

Express your interest by sending your CV to Theo via the apply link on this page

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