Actuarial Data Scientist

High Finance Limited
London
1 week ago
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We have partnered with a leading commercial insurer to recruit a Data Science Analyst to join a newly created Transformation function within Underwriting. This is an exciting opportunity to support the development of a centralised analytics capability, helping drive improved insight and decision-making across the business.

This role includes but is not limited to:

  • Supporting the delivery of the transformation of the organisation's data analytics environment, driving improvements across underwriting and wider business functions.
  • Building and delivering a clear roadmap for a robust data science infrastructure to support long-term commercial success.
  • Developing a holistic data science environment, leveraging insight and data from across the business.
  • Working closely with Data Engineering to create, maintain and enhance reports, tools, datasets and dashboards to support business performance monitoring.
  • Delivering data science outputs into clear formats for presentation to senior stakeholders and management.
  • Supporting the development of processes and procedures aligned with data science best practice, including the use of AI, machine learning and automation where appropriate.

Please apply for more information:


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