
Data Scientist
eFinancialCareersData Scientist
London | Hybrid
McCabe & Barton is supporting the growth of a newly established Analytics & Advisory function within a global insurance organisation.
This is an exciting opportunity for a commercially minded Data Scientist to work with real-world insurance, market and client data, helping drive insight-led decision making across pricing, portfolio analytics, client segmentation and operational performance.
Key experience sought:
• Strong Python or R capability
• SQL and relational database experience
• Data visualisation skills using tools such as Power BI or Tableau
• Strong analytical and problem-solving capability
• Ability to communicate insights clearly to technical and non-technical audiences
• Exposure to machine learning techniques advantageous
• Insurance or regulated industry experience beneficial
This role offers strong career development potential within a growing data function and would suit candidates looking to combine technical capability with commercial impact.
London based with hybrid working.
Opens the company's application page
Listed via
Reed
reed.co.uk
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