Data Science Actuary (PHD Graduates)

Arthur Recruitment
Liverpool, England
11 months ago
Applications closed

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Lead Data Scientist / Deep Learning Practitioner

Capital One Calwich, Staffordshire, United Kingdom
Posted
1 Jun 2025 (11 months ago)

I am working with a leading Personal Lines Insurer who are seeking an individual to join their Technical Pricing team. This team is responsible for specialist actuarial analyses of U/W performance within different products such as Home/Motor.


This role offers the opportunity to use new technologies and be involved in delivering strategic change such as improving the sophistication of models and deploying the latest data science techniques.


This vacancy can be fully remote.


Responsibilities:

  • Building predictive/machine learning models
  • Predict perils for claims/severity
  • Producing reports and presentations to communicate the results of actuarial analyses to key stakeholders


Requirements:

  • PhD/Masters in a research based subject
  • Experience of actuarial pricing or statistical modelling
  • Knowledge of R or Python

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