Pricing Manager

London
10 months ago
Applications closed

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Pricing Manager

I am working with a tech focused e-commerce business based in London who are looking for a Pricing Manager to join their team. This is a brand-new role sitting within the BI & Data team, and you will be responsible for leading on pricing initiatives for operations on a global scale.

You will be tasked with growing revenue via the implantation of data-driven pricing strategies with the goal of ensure the business can be as profitable as possible. You will work closely with Data Analysts and Data Scientists to design pricing experiments, monitor their outcomes and adjust pricing models accordingly.

As part of this role, you will be responsible for;

Develop and implement pricing strategies
Lead on the creating and implementation of pricing experiments
Conduct analysis on pricing performance, providing insights to senior leadership to increase revenue
Create a long-term pricing roadmap
Build commercial pricing modelsTo be successful in this role you will have.

Experience in a pricing strategy focused role
Knowledge of pricing and pricing models
Knowledge of statistical experimentation methods (A/B, elasticity)
Experience using SQL to extract data from data sources
Data visualisation or other coding experience would be beneficialThis is a home-based role, however travel to the London HQ will be required for team meetings no more than twice per month. Some of the benefits included in this role are -

Salary up to £80,000 depending on experience
24 days annual leave plus bank holidays
Company pension scheme
Healthcare benefits such as healthcare cash plan and EAP offerings
Lifestyle benefits such as cycle to work schemes, gym memberships and retail discountsThis is just a brief overview of the role. For the full information, simply apply to the role with your CV, and I will call you to discuss further. My client is looking to begin the interview process ASAP, so don't miss out, APPLY now! If interested send an up to date CV to Shoaib Khan - (url removed) or call (phone number removed) for a catch up in complete confidence

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