Product Manager

Harnham
Bristol
1 year ago
Applications closed

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An exciting opportunity to join an incredible gaming company as a Product Manager!


THE COMPANY

A leading player in iGaming, and more, this company is looking for a Product Manager to lead the development of their insights and recommendations tool. If you have a drive to increase product success, this role is for you!


THE ROLE

As Product Manager, you’ll be leading the product lifecycle from strategy to execution and developing go-to-market plans and ensure successful product adoption. Joining the team, you’ll collaborate with cross-functional teams and use data-driven insights to guide strategic decisions.


YOUR SKILLS AND EXPERIENCE

  • Proven experience in product management, ideally in tech or gaming.
  • Strong track record of launching data-driven products.
  • Excellent communication and analytical skills.
  • Experience with AI, machine learning, or big data (preferable)
  • A passion for gaming and user behaviour insights.


THE BENEFITS

  • £75,000 - £85,000 salary


HOW TO APPLY

Please register your interest by sending your CV to Rina Raka at Harnham via the Apply link on this page

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