Technical Pricing Anlayst

Manchester
2 weeks ago
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Technical Pricing Analyst

Remote

Quarterly Office Meet up

Salary up to £45,000 + Package

Are you a skilled pricing analyst with a passion for data, modelling, and delivering commercial impact? This is a fantastic opportunity to join a growing and innovative insurance business where you’ll play a key role in shaping technical pricing strategy for delegated authority products.

We’re looking for a Technical Pricing Analyst who can drive improvements in risk model accuracy, collaborate with cross-functional teams, and help influence strategic decisions across the business.

What You’ll Be Doing:

Take ownership of risk pricing projects, including model builds and regular refreshes across multiple product lines
Collaborate with data teams to ensure high-quality, consistent datasets for modelling
Develop and maintain predictive risk models to support profitable growth
Work closely with Underwriting and Portfolio Management to align risk appetite and innovation with pricing models
Support key commercial projects and act as a pricing subject matter expert (SME)
Present complex findings in a clear, concise way to internal and external stakeholders
Help shape best practice and contribute to the continuous improvement of pricing capabilityKey Skills & Experience:

Previous experience in general insurance pricing (personal or commercial lines)
Skilled in predictive modelling techniques: GLMs, GBMs, Decision Trees, Random Forests, etc.
Proficient in data science tools such as R, Python, SAS, SQL, or PySpark
Familiarity with WTW’s Radar software is highly desirable
A strong academic background in a quantitative subject (e.g. Mathematics, Statistics, Engineering, Computer Science)
Ability to communicate technical analysis clearly to non-technical stakeholdersWho You Are:

1-2 years of experience in Insurance Pricing
A logical thinker with a curious, proactive mindset
Passionate about innovation, efficiency, and continuous improvement
Comfortable working independently or collaboratively as part of a high-performing team
Excellent communicator with the ability to build trust and influence
Please send your CV for immediate consideration

GWV Talent Solutions Limited (trading as Gerrard White Consulting and Vermelo RPO) acts as an employment agency for permanent recruitment and an employment business for the supply of temporary and contract workers. By applying for this job you accept the terms of our Privacy Policy and Terms of Service Agreement which can be found at

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