Product Manager

Picture More
Ipswich, United Kingdom
Today
£60,000 – £65,000 pa

Salary

£60,000 – £65,000 pa

Job Type
Permanent
Work Location
Hybrid
Seniority
Mid
Education
Degree
Posted
30 Apr 2026 (Today)

Benefits

Private healthcare Strong pension offering Bonus and profit share scheme Flexible working culture Genuine work-life balance Clear progression within a growing digital function

Product Manager

Are you a Product Manager who wants to shape how AI transforms real-world professional services, rather than just building models in isolation?

We're working with a forward-thinking organisation investing heavily in AI to enhance client outcomes and internal workflows. They're looking for a Product Manager to lead AI-driven initiatives across legal and operational processes, with a strong emphasis on product thinking, stakeholder engagement, and delivery.

What's in it for you?

  • Salary up to £65,000
  • Hybrid working across East Anglia offices (Ipswich, Cambridge, Norwich, Chelmsford)
  • Private healthcare and strong pension offering
  • Bonus and profit share scheme
  • Flexible working culture with genuine work-life balance
  • Clear progression within a growing digital function

What you'll be doing

  • Own and shape the AI product roadmap aligned to business goals
  • Lead a cross-functional squad across product, engineering, and data
  • Work closely with stakeholders to identify opportunities for AI-driven improvements
  • Translate complex AI capabilities into clear, user-focused solutions
  • Drive discovery, workshops, and continuous product improvement
  • Ensure products meet regulatory, legal, and responsible AI standards
  • Use data and insights to measure success and guide decisions

Tech & environment

  • AI/ML concepts including LLMs, NLP, and automation tools
  • Agile product delivery
  • Workflow optimisation and service design
  • Regulated, data-sensitive environments
  • Strong focus on UX and user journeys

What we're looking for

  • Proven experience as a Product Manager in a digital or tech environment
  • Strong stakeholder management and communication skills
  • Experience delivering products in agile environments
  • Understanding of AI concepts without needing to be hands-on technical
  • A product mindset with a focus on outcomes and user value
  • Comfortable working in regulated or complex environments

If you're excited about owning impactful AI products and shaping how technology improves professional services, we'd love to hear from you.

Our client is an equal opportunity employer. They celebrate diversity and are committed to creating an inclusive workplace where all employees feel valued and respected. We encourage applications from candidates of all backgrounds.

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