Product Manager

BettingJobs
London
1 year ago
Applications closed

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BettingJobsare working with an AI-powered B2B marketing company based in London. Our client are a fully automated, AI-driven marketing SaaS product, which enables clients to use artificial intelligence to find the next best marketing action for their customers based on their behaviour and characteristics.


As they continue to scale their B2B SaaS platform, they're looking for a hands-onProduct Manager/Engineerwho can bridge the gap between technical implementation and user needs, taking ownership of key product features from conception to delivery.



Responsibilities:


You will have the opportunity to shape and build critical features of a B2B platform, working closely with engineering and data science teams to deliver exceptional user experiences.


Your key responsibilities will be to:


  • Design and implement new features for their B2B SaaS platform, with a focus on intuitive user experiences
  • Create and maintain modern, responsive frontend applications
  • Conduct user research and translate findings into actionable product improvements
  • Create intuitive interfaces for complex AI-driven features
  • Define and track product metrics to measure feature success and user engagement
  • Collaborate with clients to understand their needs and incorporate feedback into the product roadmap



Required Qualifications:


  • 3+ years of experience designing and implementing B2B SaaS applications
  • Strong frontend development skills with frontend frameworks like React
  • Demonstrated understanding of UX/UI principles and best practices
  • Experience with user research, prototyping, and iterative design processes
  • Strong problem-solving skills and attention to detail
  • Excellent communication skills and ability to work with both technical and non-technical stakeholders



Bonus Points:


  • Experience with design tools such as Figma or Sketch
  • Knowledge of AI/ML concepts and experience working with data visualization
  • Experience with agile development methodologies
  • Background in marketing technology or customer engagement platforms
  • Experience with analytics tools and data-driven decision making


The ideal candidate will be both strategic and hands-on, able to think through complex product challenges while also implementing solutions directly. You should be comfortable working without detailed guidance and have a track record of shipping successful B2B products.

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