Principle Pricing Analyst

Manchester
1 year ago
Applications closed

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Job Title: Principle Pricing Analyst

Locations: Manchester (flexible)

Role Overview

This role is for Atlanta Group, part of the Markerstudy Group.

Markerstudy Group are looking for a Principal Pricing Analyst to join a quickly growing and developing pricing department across a range of insurance lines.

You will Utilise your technical expertise, in-depth knowledge of insurance industry and market leading tools to produce creative and actionable pricing solutions. This is to maximise Atlanta’s ability to meet its strategy and annual plan but should also influence that strategy through regular identification of opportunities to Pricing Managers, Head of Pricing and Executive Committee. This role requires a large element of coaching team members and championing best practice across the department.

Reporting to the Head of Pricing, you will make use of WTW Radar and Emblem and you will have responsibility for the development and maintenance of predictive models (GLM) and price optimisation including machine learning algorithms (GBM), LTV (Lifetime Value) and fair pricing principles. Ultimately creating value for our customers and Atlanta.

Bringing best in class pricing experience, you’ll be expected to provide pricing proposals considering customer and commercial outcomes, communicating these in a compelling, impactful way to all levels of stakeholders to help us make the right decisions at the right times.

You’ll work on multiple priorities within a fast paced, dynamic environment. You’ll need to be able to manage the expectations of stakeholders alongside prioritising your workload.   

As a Principle Pricing Analyst, you will use your advanced analytical skills to:

Be a key stakeholder influencing the direction & outcome of projects

Provide technical leadership on WTW toolkit (in particular Radar Optimiser) to drive forward effective and efficient solutions

Provide thought leadership on optimisation and modelling concepts

Research, develop and champion the use of best practice methods and standards and ensure they are embedded throughout the department

Lead the development of the Groups pricing capability

Query large databases to extract and manipulate data that is fit for purpose

Oversee and assist in the development and implementation of the market leading methodologies you've identified

Deliver regular management information on specific KPI's relating to Atlanta's performance

Continuously evaluate methodologies, understanding how they fit into the wider piece, and identify where they can be improved

Key Skills and Experience:

Previous experience within general insurance pricing

Experience with some of the following predictive modelling techniques; Logistic Regression, GBMs, Elastic Net GLMs, GAMs, Decision Trees, Random Forests, Neural Nets and Clustering

Experience in statistical and data science programming languages (e.g. R, Python, PySpark, SAS, SQL)

A good quantitative degree (Mathematics, Statistics, Engineering, Physics, Computer Science, Actuarial Science)

Experience of WTW’s Radar software is preferred

Proficient at communicating results in a concise manner both verbally and written

Behaviours:

Self-motivated with a drive to learn and develop

Logical thinker with a professional and positive attitude

Passion to innovate, improve processes and challenge the norm

Personality and a sense of humour

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