Data Scientist - Commercial / Revenue Analytics

Principle
Reading
4 days ago
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If you enjoy using data science to drive real commercial decisions, this role is worth a look.


We are hiring a Senior Data Scientist for our client Global MarTech company to help uncover revenue opportunities across its global customer base. Your models will directly influence sales strategy, campaign targeting, and customer growth.


You'll work with commercial leaders to identify where the biggest opportunities exist and help teams prioritise the right customers.


The Offer:



  • Annual Salary up to £100,000 doe
  • 6-month contract - inside IR35 - PAYE - Paid weekly via Principle HR
  • Hybrid: Reading (50% onsite) + potential for extension

What you'll work on



  • Propensity modelling and predictive analytics
  • Customer segmentation and lifetime value modelling
  • Revenue forecasting and performance analysis
  • Turning complex data into clear business insights

What we're looking for



  • Strong SQL experience working with complex datasets
  • Experience building revenue-driving data science models
  • Python and Databricks experience beneficial
  • Ability to communicate insights to senior stakeholders

Interested?


If you'd like to apply data science to real commercial impact, apply now or contact Som at Principle HR.


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