Data Scientist

Oliver Bernard
Newcastle upon Tyne
2 weeks ago
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Newcastle | Hybrid (2 to 3 days in office)


We are hiring a Data Scientist to join a growing technology team building data-driven products used across the business. This role sits at the intersection of analytics, machine learning, and real-world decision making.


You will work with large, complex datasets, build models that are used in production, and partner closely with product, engineering and commercial teams to solve meaningful problems.


This is a hands‑on role for someone who enjoys owning problems end to end rather than just producing reports.


What you will do

  • Build and deploy machine learning and statistical models to solve business problems
  • Work with structured and unstructured data to generate insight and predictions
  • Design experiments, evaluate models, and improve performance over time
  • Translate business questions into analytical solutions
  • Work with data engineers and software engineers to productionise models
  • Communicate results clearly to technical and non‑technical stakeholders

What we are looking for

  • A strong Data Scientist with experience working in a commercial environment
  • Degree in a quantitative subject such as Computer Science, Mathematics, Statistics, Physics, Engineering or Data Science
  • Strong Python and SQL
  • Experience with machine learning, statistics, and data modelling
  • Comfortable working with large datasets and messy real‑world data
  • Able to explain complex results in a simple, practical way


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