Head of Product

Intelligent People
Newcastle upon Tyne
1 year ago
Applications closed

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Head of Product | eLearning | £120-130k | Fully Remote


The Head of Product / Product Director needed by one of the UK’s fastest growing eLearning provider within the MedTech space with a 70% market share of their specific discipline!


The platform uses elements of gamification as well as machine learning to deliver a best-in-class, personalised educational experience that gives the students the opportunity to be the best version of themselves during critical exams and assessments.


Applicants must have MedTech experience or a medical/scientific academic background


Salary Package:£120,000 – £130,000

Location:Fully Remote


The Head of Product / Product Director will own the full product roadmap and set the strategy for a host of new product development aimed at elongating the customers engagement and subscription by providing them with added value in their post-exam lives!


The Head of Product / Product Director will lead a team of 3 comprising of a Product Manager, Product Designer and Product Marketer.


The Head of Product / Product Director must have:


  • An interest in learning, education or a curious mindset that enjoys understanding how things work.
  • Experience working on high volume, mobile responsive, consumer platforms.
  • Strong NPD experience with the ability to A/B test and validate MVP’s at pace.
  • Ideally with experience building digital products with a focus on driving engagement or providing personalised customer experiences.
  • Experience of making critical decisions and prioritisation calls based on data, insight, ROI and business context.

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