Pricing Analyst

London
1 year ago
Applications closed

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Senior Insurance Pricing Analyst — Data Science & Modelling

Pricing Data Scientist - Hybrid ML for Insurance Pricing

Pricing Data Scientist - Hybrid ML for Insurance Pricing

Senior Data Scientist

Pricing Data Analyst — Hybrid, Impactful Insights & Growth

Data Analyst

We've multiple exciting opportunities for Pricing Analysts and Senior Pricing Analysts to join the Retail Pricing team with our presitgious insurance based client. You'll be involved in day-to-day analysis, modelling, and development of pricing recommendations alongside BAU analytics, with the support of more senior colleagues. You'll contribute to projects that continually improve the predictive power and segmentation of statistical models of claims and demand, using both traditional and data science and contemporary techniques.
Working on BAU and a large-scale project there are plenty of opportunities to suit; whether you're experienced and ready to take your career to the next level.
Our client prides themselves on working smart, empowering their people to balance their time between home and the office in a way that works best for them, their team and their customers. You'll work at least 40% of your week away from home, at the London office.

What you'll be doing:

Create, validate, reconcile, and transform datasets for analysis and modelling.
Undertake analysis and modelling by writing and manipulating code.
Support in the creation, maintenance and deployment of rating models that predict claims cost, conversion, or retention.
Contribute to the specification, development, and testing cycles for deployment of rates.
Consider the impact on customers of pricing actions and act to avoid any unfair treatment.
Assist in producing and developing appropriate monitoring for the Pricing team and other stakeholders.
Provide technical Underwriting and Pricing support to assist the business in achieving its plans.
Build strong relationships with managers, peers, and stakeholders.Essential:

Previous pricing analyst exprience from Insurance or Financial Services is essential
Degree is highly desirable
Experience with Python and pricing risk modelling is essential.
Ability to attend Central London offices when required.

On offer is a very generous bonus, pension and study package, with great career prospects. You will be eligable for an extensive benefits programme. We are seeking both experienced pricing anaysts and senior pricing analysts for this business, so please apply today to discuss further

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