Pricing Specialist

MERJE
Southampton
11 months ago
Applications closed

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Pricing Data Scientist: Real-Time Modeling & APIs

Pricing Specialist

Hybrid working across various locations

Up to £100K!

One of my Clients are on the search for a Pricing Specialist to join their fast growing team within a well known organisation.

Key Responsibilities:

  • Develop and optimise pricing strategies to deliver financial plans
  • Drive efficiencies and automisation in pricing strategy execution
  • Identify new pricing factors and new opportunities to drive competitive advantage
  • Maintain MI which facilitates effective performance monitoring
  • Provide analysis and insights for Management Committee and Board

Key Requirements:

  • Strong pricing experience within financial services
  • Hands on data analysis using tools like SAS/SQL/Python
  • Some machine learning/ data science experience

​Send your CV to *No s

p

onsorship can be provided*

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