Pricing Data Scientist

KDR Talent Solutions
London
1 week ago
Applications closed

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Pricing Data Scientist | Hybrid (London) | Salary £70,000 - £95,000


KDR are working with a well known and established Lloyds of London insurer to help find a Lead Pricing Analyst / Pricing Data Scientist. You will join their Pricing and Analytics department. It is essential you have insurance experience to apply for this role.


You'll need to have an analytical mind, with the technical skills to steer and shape pricing strategies and build pricing models leveraging traditional pricing skills but also delve into the realms of data science!


This team are amazing!🚀

This role will see you working in a multi-disciplinary team who look after all the pricing, catastrophe modelling and analytics for the organisation. Giving you the opportunity to learn new skills whilst applying a more technical and data science oriented approach for pricing.

  • Leverage problem-solving capabilities to tackle pricing challenges.
  • Analyse historical data and industry trends to make strategic Pricing recommendations.
  • Develop and deploy pricing models for underwriters
  • Apply statistical methods to derive meaningful insights
  • Evaluate Pricing performance and suggest actionable strategies for revenue optimisation and margin management.
  • Demonstrate accuracy and integrity of Pricing data and models.
  • Create a Data-Driven decision-making culture within the organisation.


Tech Stack:

  • Excel guru! of course!
  • Advanced SQL
  • Python for analysis of large data sets
  • Creative mind in developing pricing models
  • Data Science methods and machine learning
  • Manage Data extraction from various sources (using API’s)


This is a great chance to challenge your Pricing skills and work in an environment that champions applying machine learning and data science techniques!


Hit apply, you don’t even need your most recent CV right now; we’ll be in touch to go through your experience and discuss the opportunity & client in more detail with you.


As an employer and service provider, we are committed to Equity, Equality, Diversity and Inclusion. Please feel comfortable to let us know if you have a difference or disability that would require us or our clients to make any helpful adjustments for you.

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