Data Scientist

Harnham - Data & Analytics Recruitment
London
3 weeks ago
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Data Scientist

London Hybrid - 2-3 days in office Competitive salary between £45,000 and £50,000 plus benefits

This is a great opportunity to join a high-impact data function within a major transport organisation, working on complex datasets, geospatial challenges, and predictive modelling that directly shapes customer experience and operational performance. If you are looking for a hands-on, traditional Data Science role with plenty of autonomy and greenfield opportunity, this is a strong next step.

The Company

They are a leading player in the UK transport sector, operating a large and busy network. With data playing an increasingly important role in decision-making, they are investing in a growing commercial and data function to drive insight, efficiency and innovation. The Data team sits within a wider commercial structure and works closely with stakeholders across the business to unlock value from complex, high-volume datasets.

The Role

As a Data Scientist, you will work on a broad range of modelling and analytical projects, from exploratory analysis to predictive modelling and geospatial insight. You will help the team extract deeper value from diverse datasets and shape how the organisation makes data-driven decisions.

Your responsibilities include:

  • Delivering end-to-end Data Science projects, from scoping through to modelling and stakeho...

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