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Catastrophe Analytics Manager

Eames Consulting
London
10 months ago
Applications closed

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Claims / Underwriting Data Analyst.

Data Scientist

Job Description

A leading insurer is looking for a highly skilled Natural Catastrophe Analytics Manager to join their team. This is a key position, reporting directly to the Exposure Management Lead, where you'll play a crucial role in optimising natural catastrophe risk analytics and enhancing exposure management frameworks.


Key Responsibilities:

-Analyse and monitor natural catastrophe metrics, producing and refining group reports

-Optimise exposure management tools and drive automation

-Manage ceded contracts within exposure management systems

-Collaborate with stakeholders to deliver actionable data insights

-Mentor junior team members and contribute to analytical projects


Requirements:

- over 6 years of experience in exposure management/ natural catastrophe risk analytics in the London market

-Strong SQL, Excel, and programming skills (Python, Power BI is a plus)

-Experience with RMS RiskLink and catastrophe models

-Strong problem-solving and communication skills

...

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