Actuarial Life Manager, Leading Consultancy

Clarence George
Bristol
1 year ago
Applications closed

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Clarence George is currently working on a fantastic opportunity with a prestigious Consultancy in their Life Actuarial practice. They are looking for an exceptional individual at the Manager level to be based in their Bristol branch.


Overview:

  • Qualified Actuary with experience in Life Insurance
  • Competitive Salary and Package
  • Excellent exposure and opportunity to gain a diverse range of experience. If you want exposure to a specific area, they do their best to accommodate that
  • Opportunity to work on very interesting projects such as M&A, ALM and investment advisory work, structuring, capital optimisation, and advanced modelling projects (AI and machine learning)
  • This consultancy wins a lot of work with top-tier insurers, asset managers, hedge funds and start-ups, offering the chance to network with key contacts in the industry
  • Excellent career progression opportunities within the firm to fast-track your career and open doors to more left-field opportunities in the future


If you are interested in finding out more or would like to review the job spec, please get in contact

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