Data Scientist – 6 Month FTC
London / £45000 - £60000
£45000 - £60000
Data Scientist - 6 Month FTC
£50,000 - £60,000
This is an exciting new opportunity for a Data Scientist to work for successful Telecoms giant!
This well-known data savvy telecoms giant are continuously investing in their Data function meaning they are hiring Data Scientists across the UK to work on their consumer brands. You would be working in a small Data Science team in the marketing / consumer space, focusing largely on machine learning deployment and cloud migration, as well as some modelling projects.
As a Data Scientist for the business you will:
- Collaborate with other Data Scientists and Machine Learning Engineers in the marketing/customer team
- Help deploy machine learning models into production and monitor model performance
- Help with migration from AWS to GCP
- Build customer lifetime value models, propensity models and some more complex machine learning models
SKILLS AND EXPERIENCE
- Degree in a numerical or relevant field is preferred
- Strong experience of deploying machine learning models
- Cloud migration experience would be useful
- Commercial experience building machine learning models
- Tech: Python, SQL, GCP / AWS
SALARY AND BENEFITS
- Basic salary £50,000 - £60,000
- Benefits package
HOW TO APPLY
Please register your interest for this role by sending your CV to Rosie O'Callaghan via the apply link on this page
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