Pricing Manager - e-commerce

London
11 months ago
Applications closed

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I'm recruiting for a Pricing Manager to join a growing e-commerce business on a predominantly remote basis, with travel to Stratford for occasional meetings (1-2 times per month). As the fastest-growing business in their particular niche, this is an incredibly important role for them.

As the dedicated Pricing Manager, you will aim to drive profitability through the implementation of data-driven pricing strategies, and the formulation of long-term pricing roadmaps.

This will involve creating pricing experiments to refine models (e.g. through A/B testing and price elasticity methods), and conducting market and competitor analysis to inform pricing decisions.

You'll work closely with various stakeholder groups including the Data Science team to leverage techniques like predictive analytics, the Sales team, and Senior Management to ensure you strategies are aligned with business goals.

This role would be well-suited to a pricing professional with strong skills in SQL, who is keen to play a crucial role in driving this business' continued success.

Requirements

Experience in designing and implementing pricing strategies
Experience working in the e-commerce space is highly desirable
Experience designing pricing experiments - A/B testing, elasticity etc.
Strong SQL skills
Skills in R or Python would be desirable
Excellent stakeholder engagement and relationship building skillsBenefits

Salary up to around £80,000 depending on experience
24 days annual leave, increasing to 27 days with service
Health cash plan

Please Note: This is a permanent role for UK residents only. This role does not offer Sponsorship. You must have the right to work in the UK with no restrictions. Some of our roles may be subject to successful background checks including a DBS and Credit Check.

Tenth Revolution Group / Nigel Frank are the go-to recruiter for Power BI and Azure Data Platform roles in the UK, offering more opportunities across the country than any other. We're the proud sponsor and supporter of SQLBits, and the London Power BI User Group. To find out more and speak confidentially about your job search or hiring needs, please contact me directly at

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