Risk Manager

Arthur Recruitment
London
3 weeks ago
Create job alert

I am looking for a Risk Manager to join a mixed Risk role in a Leading Lloyds Syndicate.


Responsibilities

  • Support ERM Framework improvements, deliver Board-level reports, and enhance risk MI reporting.
  • Lead or assist in root cause analysis, Deep Dives, risk assessments, and P&L attribution analysis.
  • Assist in internal model validation, develop test schedules, and conduct 2nd line reviews of standard formula calculations.
  • Develop scenario tests for ORSA and validation, engaging senior stakeholders and providing quantitative estimates.
  • Review and assess key risks in pricing, underwriting, exposure management, and reinsurance through periodic deep dives.


Skills Desired

  • 5 + years risk experience
  • Extensive experience in risk management within the Lloyd’s Market.
  • Capable of demonstrating proficiency in supporting the validation of Internal Models.
  • Strong stakeholder management experience

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