Senior Data Scientist

JR United Kingdom
Slough
1 day ago
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Senior Data Scientist - Up to £75,000

Join an incredible Data Science leader and contribute to the growth and development of a best-in-class team in the insurance space. Work on data science and machine learning models, focusing on marketing, customer lifetime value (LTV), and churn, as the company elevates its central function with a new business approach.

Summary:

  • Salary: £60,000 to £75,000
  • Benefits: Bonus, flexible work from abroad, very generous pension scheme
  • Remote working: 1-2 days per month in 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

Requirements:

  • Strong experience with Python and SQL
  • Domain knowledge in customer and marketing analytics, including LTV, churn, segmentation
  • Ability to build and deploy machine learning models in Python
  • Production and MLOps skills
  • Candidates must be based in the UK; unfortunately, sponsorship cannot be provided

If interested, please apply!


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