Data Scientist

COREcruitment
London
4 days ago
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We’re looking for a Data Scientist to join a fast growing, ambitious team at an exciting stage of its data journey. Over the past few years, a strong data foundation has been built using best in class technologies, and now the focus is on unlocking greater value through advanced analytics, AI, and machine learning.

This is a great opportunity for someone who wants real ownership, close collaboration with the business, and the chance to see their work make a tangible impact.

The role:

Partner with business leaders to identify, understand, and prioritise AI/ML opportunities. Take models from initial concept through to deployment, monitoring, and continuous improvement. Deliver clear, actionable insights through data visualisation and reporting. Work closely with product, engineering, and commercial teams to design and implement impactful solutions. Write scalable, maintainable, well tested code following modern development and deployment standards.


Experience


1–2 years professional experience as a Data Scientist in a commercial environment.Bachelor’s degree in Computer Science, Software Engineering, Mathematics, Physics, or a related discipline.Strong Python skills with a focus on clean, scalable code.Solid SQL knowledge.Hands on experience with cloud platforms (GCP, AWS, or Azure).Familiarity with Git and CI/CD pipelines.Background in retail or demand forecasting.

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