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Pricing Manager and Principle Pricing Analyst

Charing Cross
1 week ago
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Pricing Manager / Principle Pricing Analyst

Locations available: Peterborough, Manchester, Stoke-On-Trent or London (flexible hybrid working)

We have offices based in the above locations, however, we are open to largely remote working with the occasional travel to an office.

We’re looking for talented individuals at multiple levels (Principal Analyst and Pricing Manager) to join a fast-paced, innovative environment who are leaders in the insurance industry.

Role purpose

Responsible for mentoring or leading a team of analysts to develop and deliver pricing solutions that support and influence the company’s strategic goals.

This includes team leadership, strategic input and process management. The role combines technical expertise with people management and cross-functional collaboration.

Key Responsibilities:

Strategic input into pricing solutions.

Effective management of pricing processes.

Combine pricing expertise and commercial acumen to deliver outcomes which optimise the P&L.

Ensure all activity is compliant with pricing governance and follows established controls.

Work closely with the Modelling & Optimisation Pricing Team to ensure pricing models/approaches meet business objectives.

Manage relationships with key stakeholders around the business.

Manage, mentor and coach more junior members of the team.

Key Skills, Knowledge and Experience required:

Experience mentoring or managing pricing teams.

Experience managing general insurance products, including knowledge of current trends and issues.

Strong commercial acumen

Strong communication skills across a variety of audiences

Experience with predictive modelling techniques

Experience in statistical and data science programming languages

Exposure to or expertise in WTW’s Radar, Emblem software or Earnix software.

A quantitative degree (Mathematics, Statistics, Engineering, Physics, Computer Science, Actuarial Science) or qualified by experience

Strong understanding of retail pricing optimisation and concepts (advantageous, but not essential)

What we offer in return?

A collaborative and fast paced work environment

Private medical health care plan

28 days annual leave plus of Bank Holidays and the ability to buy additional leave

Life Assurance 4x annual salary

Vibrant, modern offices

About the business:

Markerstudy is a leading provider of private insurance in the UK, insuring around 5% of the private cars on the UK roads, 20% of commercial vehicles and over 30% of motorcycles in total premium levels of circa £1.2b. Markerstudy also has a large and growing direct presence in the market as well.

Having acquired and successfully integrated Co-op Insurance Services in 2021, BGLi in 2022 & Atlanta in 2024. Markerstudy are now pursuing innovative pricing techniques, taking advantage of an award-winning insurer hosted rating platform, whilst challenging existing embedded processes

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