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Non-Life Model Validation - CAT model - Internal Model

Employer
Oliver James
Location
France, Paris, Île-de-France / London, City of London, England
Salary
Negotiable
Closing date
3 Dec 2019
Reference
CARM0811

Job Details

Our client, a leading insurance group, requires a Contractor to support a model validation project. The chosen contractor will analyse, challenge and validate Nat Cat models in RMS.

You will support the project for 3 months on a Day-Rate contract basis.

Strong technical CAT modelling experience is required alongside knowledge of Natural Catastrophe risks

Our client, a prestigious insurance group, requires an independent contractor to support a business critical model validation project.

The chosen contractor will analyse, challenge and validate Nat Cat models.

Location: London/Paris split (flexibility to travel as required)

Start: Dec 2019 or Jan 2020

Duration: 3 months

Rate: Daily Rate (negotiable dependant on experience)

Required skills:

  • Strong technical modelling experience ideally in RMS (Risk Management Solutions, Risklink) for capital allocation, economic capital modelling, CAT pricing etc
  • Good knowledge of Natural Catastrophe models - earthquake, windstorm, hurricane, wind
  • Ability to analyse and challenge existing models as part of the validation process
  • Ideally knowledge of other modelling languages such as R, Excel or Python

The client will interview and provide feedback quickly so please do not hesitate to apply.


Please contact Chris.Armstrong@ojassociates.com with a copy of your CV.

Company

They have a global team of specialist and established consultants across the UK, Europe and Asia, giving them unparalleled knowledge of their market place. We place on a contract and a permanent basis, in roles ranging from Student Actuary to Chief Actuary.

Company info
Website
Telephone
+44 (0) 207-649-9464

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