Data Scientist

MarkJames Search
London
7 months ago
Applications closed

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Data Scientist

Our client, a global consumer business, are currently hiring for a Data Scientist to create market analysis and forecasts to drive pricing decisions. The primary responsibility is to develop, test and operate pricing systems and algorithms using SQL, Python, data analysis and statistics.

Responsibilities

  • Design and develop methodology, algorithmic pricing actions and tests
  • Revenue management research
  • Analyse and present results to subject matter experts
  • Forecasting and demand modelling
  • Liaising with stakeholders in Commercial, IT and Operations to explore ideas and develop solutions.
  • Maintaining codebase and documentation

Requirements

  • Minimum 5 years' experience with applied statistical modelling with R, Python, Julia, SAS, Stata, SPSS, JMP, Minitab or other software
  • Willingness to work in Python and SQL
  • Experience in C is an advantage
  • Experience in pricing/revenue management forecasting and inventory management.
  • Results-oriented. Collaborative.
  • Continuous improvement and continuous learning
  • Comfortable in a fast-paced and challenging environment.
  • High tolerance for ambiguity and change

This is a full time, permanent position working on a hybrid basis, with the requirement to be in the office in Luton, Beds 2-3 days per week.

Our client offers excellent remuneration and benefits package.

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Created on 22/06/2025 by TN United Kingdom


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