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Senior Data Scientist (GI Pricing)

Date Posted
7th November 2018
Reference
GM0711182
Sector
General Insurance, IT
Job Type
Permanent
Location
London
Benefits
Excellent Benefits
Salary
£90,000 Per Annum

Job Description Apply: Senior Data Scientist (GI Pricing)

Goodman Masson are working with a large UK insurance firm who are searching for a Senior Data Scientist to work alongside their Actuarial & Pricing teams to lead the R&D activity within their Insurance team.

In the role you will be using your knowledge of data science and machine learning techniques to push forward their pricing and predictive modelling capabilities.

Your responsibilities will include:

  • Developing quantative and qualitative methods to evaluate performance of existing pricing methods
  • Research, design and test alternative methods
  • Support data enrichment through the evaluation of the plethora of data that is available
  • Engage with and influence senior stakeholders to make recommendations for alternative approaches to pricing

You will ideally have a background within general insurance and have a good knowledge of GLM pricing. You will also need to have proven experience working in a programming language such as R or Python. You will be the lead in the data science team and so in time will have the opportunity to grow this team.

If you think this sounds like an exciting role and a team you'd want to be a part of then please get in contact...  bill.burton@goodmanmasson.com or call 020 7324 0568


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