Portfolio Analytics Manager - Actuary

High Finance (UK) Limited T/A HFG
London
2 weeks ago
Applications closed

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We have partnered with the company that everybody wants to work for in the Lloyd's market to find them a Portfolio Analytics Manager. This is a great opportunity to work closely with an extremely impressive senior management team (Including the CUO who is an Actuary) and the best underwriters across Re/Insurance. The role is highly strategic and the successful person will drive an already hugely profitable book through portfolio analytics techniques. The role includes but is not limited to:

  • Working for a company that prioritises actuarial input and hires actuaries straight into UW regularly. The business has a culture of utilising data for decision making from top to bottom.
  • Reporting into, and working on a daily basis with the Chief Analytics Officer as well as dozens of other super talented people who are on the board of directors.
  • Leading a small team of highly talented Portfolio Managers/Management analysts.
  • Working closely with Underwriters, Actuaries, Data Scientists, Claims and Data/Tech teams to promote underwriting performance.
  • Develop the portfolio analytics strategy and roadmap.
  • Lead the design, delivery and embedding of pricing and analytics visualisation dashboard suites and other analytics tools to drive UW.
  • Monitor portfolios, aid risk selection, strengthen pricing, challenge business planning amongst many other duties.

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