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Strategic Quantitative Risk Manager

Arthur
City of London
1 week ago
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A leading international insurer is seeking a Risk Strategy Manager to drive the design and delivery of its Stress & Scenario Testing Framework. This high-impact role will shape how the organisation anticipates and responds to systemic risks, supporting smarter capital, liquidity, and business resilience decisions across global markets.


What you’ll be doing:

  • Leading the development of systemic and targeted scenarios including climate, geopolitical, credit, casualty, and cyber risks
  • Embedding scalable approaches to scenario testing
  • Partnering with senior stakeholders worldwide to ensure stress testing insights inform strategy and risk appetite

What we’re looking for:

  • Strong experience in enterprise risk, scenario analysis, or capital modelling in the insurance sector
  • Experience with stress testing frameworks and engaging senior executives
  • Excellent analytical and communication skills
  • Knowledge of climate and sustainability risk is a strong plus

This is an exciting opportunity to play a pivotal role in shaping risk strategy on a global scale.



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