Senior Data Scientist

Data Science Festival
London
1 month ago
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Senior Data Scientist

Data Idols are proud to be working with an iconic UK brand to assist them in building out their data team as they undertake a data-driven journey that will transform the business.

The Opportunity

This opportunity for a Senior Data Scientist will focus on setting technical standards and leadership. You will work on a variety of projects focused on delivering high quality data science to predict, measure and interpret business trends and commercial impact.

Within this role, they are looking for someone who is able to coach and support junior members of the team and help contribute to their development.

Skills and Experience

  • SQL
  • Python
  • Experience with Cloud computing, preferably Azure
  • Experience working in a production environment deploying and maintaining models
  • Strong stakeholder management
  • Ability to mentor other members of the team

What’s in it for you?

  • £85K – £95K
  • Bonus

Please send your CV for more information.

Senior Data Scientist
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