Data Idols | Senior Data Scientist - Loyalty

Data Idols
London
1 year ago
Applications closed

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Senior Data Scientist - Loyalty
Salary: £80k - £90k
Location: London, Hybrid

Data Idols are working with one of the top global retail companies to expand its data capabilities by hiring a Senior Data Scientist within its loyalty scheme department.

The Opportunity

  • You will be working on various projects across loyalty, including customer segmentation, customer retention, customer profiling and customer marketing to help them leverage their data to increase customer sign-up
  • You will be helping to create and build various data science models using numerous technologies.
  • Coach and support junior members of the team and help contribute to their personal development

What's in it for you?

  • Up to £90k
  • Bonus scheme

Skills and Experience

  • Experience in using modern technologies such as Python, Pyspark, Databricks
  • Experience in using advanced SQL
  • Experience with Cloud computing, preferably Azure
  • Experience in working on loyalty scheme projects

If you would like to be considered for this exciting role, please submit your cv for initial screening

Senior Data Scientist - Loyalty
Desired Skills and Experience
Python|Loyalty|Customer

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