Principal Pricing Analyst - General Insurance - Only x2 days in the office per month (London)

Hawksworth
London
1 year ago
Applications closed

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Hawksworth have a fantastic new opportunity for a ‘Principal Pricing Analyst’ to work for a giant of an Insurance company. The Senior position boasts a truly Hybrid way of working where the minimum expectation is you are on site twice a month.


The basic salary on offer is between £70,000 and £80,000 base + Outstanding package offering + Up to 30% Bonus, 30 days holiday, pension pay twice what you pay up to 14%, , flex benefits, private medical insurance, and more.


Location: London


Required Experience & Skills:

  • General Insurance experience – Essential
  • Some sort of coding understanding, ideally python. Not looking for a techie but you will be working with the Data Science / Technology teams and so some understanding and know how is needed. – Essential.
  • Significant pricing or reserving experience (5 years +) - Essential
  • Excellent communication skills, a people person. - Essential
  • Experience of working in an insurance pricing role and an understanding of modelling techniques
  • Knowledge of the general insurance regulatory environment.
  • Proficiency in Excel and MS Office or equivalent applications.
  • Experience of planning and managing projects from inception to completion within business timelines.


If you are lucky enough to have the skills and experience above please act now to be first to apply. You can also contact me on for a speedy response.

All candidates will need to be eligible to work in the UK now and in the future without the need of sponsorship for this role.


We look forward to hearing from you!

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