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Pricing Product Manager

Haywards Heath
2 weeks ago
Applications closed

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Pricing Product Manager

This role is largely remote but will involve the occasional travel. 

We are seeking an experienced Pricing Product Owner to lead the development and optimisation of our pricing and underwriting capabilities. You’ll translate business objectives into product backlogs and work closely with pricing, underwriting, data science, and technical teams to deliver iterative, high-impact solutions.

This role is critical to shaping how we understand and develop our people and technology capabilities, from pricing risks, looking at automation opportunities, and improve customer experience through data-led decisions and frictionless trading.

Key Accountabilities & Responsibilities:

Own and maintain the product backlog for pricing capability initiatives, aligned with the Trading Transformation deliverables.

Define clear user stories, acceptance criteria, and prioritisation based on business value and technical feasibility.

Act as the voice of the business and end-user, bridging underwriting, pricing, and technology teams.

Work closely with Scrum Masters and development teams to ensure sprint goals are well-defined and achievable.

Partner with Underwriters, Actuaries, Data Scientists, and other stakeholders to gather requirements and define features.

Assist with the development of pricing models, underwriting workflows, and self-service tools for internal users or relevant business partners.

Use market insight, data, and feedback loops to drive continuous improvement.

Ensure product deliverables align with regulatory standards, risk appetite, and strategic underwriting objectives.

Monitor KPIs such as quote accuracy, time-to-underwrite, conversion rates, and pricing model performance.

Skills, Experience & Knowledge:

Proven experience as a Product Owner (or similar change delivery focused role) in insurance, ideally within pricing or underwriting.

Deep understanding of agile product delivery, backlog grooming, and stakeholder engagement.

Ability to articulate pricing or underwriting logic in business and technical terms.

Strong collaboration skills working with data, actuarial, and software engineering teams.

Experience with Jira, Confluence, or similar tools.

Knowledge of insurance pricing tools such as Radar, Earnix or custom pricing APIs (advantageous).

Familiarity with personal/commercial lines underwriting workflows or automation platforms (advantageous).

Product Owner certification (e.g., CSPO, SAFe POPM) would be preferred.

About our organisation:

Markerstudy is one of the largest insurance intermediaries in the UK, insuring over 8 million customers, accredited Investor in People employing more than 7,000 staff across the UK with a vision to be the No.1 provider of general insurance services and innovative solutions to customers in the UK.

Benefits:

Company Funded Private Medical cover

28 days Holiday

Opportunity for yearly bonus

Collaborative, fast paced working environment

Please apply with your up-to-date CV

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