Pricing Data Science Manager

Arthur Recruitment
Birmingham
4 months ago
Applications closed

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A global leading Insurer are looking for a commercially minded and analytically driven Pricing Actuary/Pricing Data Science Lead to join their growing commercial lines pricing function. This senior position is pivotal in steering their pricing strategy and driving portfolio performance across multiple lines of business – including Property, Casualty, Financial Lines and Commercial Motor.

You’ll lead a talented of 8 (2 direct reports), collaborating closely with underwriting, actuarial and senior leadership to ensure our pricing remains both competitive and profitable.


You’ll find a supportive, inclusive and empowering culture where ideas are valued, individuality is celebrated, and innovation is encouraged.


Role Summary

Lead, mentor, and develop a team of pricing and portfolio analysts


Drive data-led pricing strategy and model development across key lines of business
Analyse performance and market trends to recommend pricing improvements
Collaborate with underwriters to align pricing tools with commercial strategy
Champion innovation, data science, and automation within pricing

Requirements

Proven experience in general insurance pricing 


Experience in Property and Casualty 
Some experience in motor (commercial or personal lines) is advantageous
Strong leadership and stakeholder engagement skills
Expertise in pricing tools and data platforms (SQL and Python)
Strategic mindset with commercial and regulatory awareness

Benefits
Hybrid environment with exceptional benefits, including:

30 days holiday (plus option to buy 2 more)


Annual bonus
Flexible working arrangements
10% employer pension contribution
Fully funded private medical cover for you and your family
26 weeks’ full parental pay for all parents
Option to work remotely abroad for up to 20 days a year
Cycle-to-Work scheme and sustainable pension investing

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