Product Manager

InterQuest Group
London
1 month ago
Applications closed

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Location:London (Hyrbid)Job Type:Full-time


InterQuest are currently working with an exciting fintech who are leveraging AI to revolutionize payment solutions.


Role Overview:

As an AI Product Manager, you will lead the strategy, development, and deployment of AI-driven financial products. You will collaborate with data scientists, engineers, and business stakeholders to create innovative solutions that leverage AI across the organization.


Key Responsibilities:

  • Define the product vision, roadmap, and strategy.
  • Work closely with data scientists and engineers to develop and deploy AI models for financial applications.
  • Identify opportunities to leverage AI in emerging areas.
  • Conduct market research to identify emerging fintech trends and AI-driven opportunities.
  • Monitor product performance, analyse key metrics, and iterate based on insights.
  • Collaborate with stakeholders to align AI initiatives with business and customer needs.


Requirements:

  • 6+ years working in Product management - preferably in fin-tech SME/Start-Up Environments
  • Strong understanding of AI technologies, including machine learning models, NLP, and predictive analytics - Gen AI also desirable.
  • Exposure and knowledge of Payments.
  • Ability to translate financial business needs into technical AI requirements.
  • Familiarity with cloud platforms.
  • Prior experience deploying AI models in real-world financial applications.


Benefits:

  • Be part of an innovative team, working in an AI first environment.
  • Competitive salary & equity on offer.
  • Private healthcare package.
  • Flexible work arrangements, including remote first options

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