Technical Product Manager

Thyme
London
11 months ago
Applications closed

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Technical Product Manager - Hybrid, London - Salary Up to £90,000 + Benefits - Permanent


Overview

I'm currently partnered with a fin-tech organisation looking for a Product Manager to lead AI-driven initiatives that enhance customer and colleague experiences. You’ll leverage machine learning to streamline processes, improve efficiency, and drive business outcomes. This role offers an exciting opportunity to work with 18 years of historical data and lead transformative AI projects.


Responsibilities

  • Develop and execute the AI strategy, identifying high-impact initiatives.
  • Empower Customer Service teams to reduce resolution time and human interaction by 40% over the next year.
  • Automate tasks such as expense management to reduce administrative burden.
  • Collaborate with cross-functional teams (Data, Engineering, Design) to deliver innovative AI solutions.
  • Work with senior stakeholders and the Growth team to ensure AI products meet customer needs and are effectively marketed.


Requirements

  • Proven experience managing AI-driven customer-facing products and owning product roadmaps.
  • Ability to translate business and customer needs into actionable product specs and user stories.
  • Experience collaborating with developers, designers, and data scientists to build and launch products.
  • Strong prioritization and stakeholder management skills.
  • Familiarity with tools like Figma and Notion for collaboration.
  • Knowledge of payment technologies and regulatory trends is a plus, but not required.


*Please note this role does not offer sponsorship, Thank you*


If you are an Innovative Technical Product Manager with a strong focus on Machine Learning/Artificial Intelligence then don't hesitate to apply now - Your new career is waiting for you!


Technical Product Manager - Hybrid, London - Salary Up to £90,000 + Benefits - Permanent

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