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Senior Data Scientist

JR United Kingdom
Ipswich
18 hours ago
Applications closed

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Join an incredible Data Science team led by a prominent leader in the insurance space, focusing on the growth and development of a best-in-class team.

Work on data science and machine learning models, with a key focus on marketing, customer insights, LTV, and churn, as they elevate their central business functions with a new brand approach.

Summary

  • Benefits: Bonus, flexible work from abroad, very generous pension scheme.
  • Remote working: 1-2 days per month in the London HQ - highly flexible.
  • Interview process: 3 stages.
  • Reporting to: Head of Data Science.
  • Company size: Approximately 2,500 employees.
  • Role focus: Developing new data science models for the customer and marketing teams at the group level.

What are we looking for?

  • Good experience working with Python and SQL.
  • Domain knowledge in customer and marketing analytics, including LTV, churn, segmentation, etc.
  • Ability to build machine learning models in Python.

Candidates must be based in the UK. Unfortunately, we cannot offer sponsorship for this role.


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