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Pensions Data Science Actuary

Actuarial Futures
City of London
1 week ago
Applications closed

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Pensions Data Strategy Actuary

Senior Data Scientist

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Quantitative Engineer

Audit Analyst - Quantitative, Actuarial & AI Models

Assistant Data Analyst

Are you dedicated to providing innovative solutions in the pensions industry? We are looking for talented, techy actuarial pensions actuaies who are passionate about leveraging data science to drive impactful results.

In this super, newly created opportunity, your mission will be to enhance pension schemes through advanced data analytics.

The successful candidate will have experience of the following:

  • Developing and implementing data-driven models to analyse and optimise pension schemes.
  • Collaborate with cross-functional teams to integrate data science solutions into actuarial processes.
  • Conduct in-depth analysis of pension data to identify trends, risks, and opportunities.
  • Provide actuarial insights and recommendations based on data analysis to support decision-making.
  • Stay updated with the latest advancements in data science and actuarial practices to continuously improve methodologies.

Please get in touch for further details.


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