Data Scientist

FORT
Leeds
5 days ago
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A rare opportunity to join a high-traffic UK digital marketplace that’s building a brand new data function as part of a major strategic shift.

This business sits on billions of data points across pricing, demand, seasonality and customer behaviour. They are now investing heavily in turning that data into a core revenue stream, building commercial data products for both internal teams and external partners.

You’ll report into a newly appointed Chief Data Officer and play a key role in shaping the next phase of growth.

Working Pattern

Hybrid working - 1 day per week onsite in Leeds.

The Why? (Top 3 Reasons to Apply)

1. Build a Data Revenue Engine

This isn’t incremental optimisation. You’ll help transform a mature digital platform into a data-led, B2B-focused business where insight directly drives recurring revenue.

2. High Impact Commercial Modelling

Work on pricing optimisation, forecasting, attribution, propensity modelling and real-time behavioural insights across millions of records.

3. Influence & Ownership

Join at an inflection point under a new CDO. High visibility, genuine autonomy, and scope to shape tooling, standards and direction.

The What…

As a Senior Data Scientist, you’ll design and deploy production-ready models that influence commercial performance and strategic decision making.

Core responsibilities include:
  • Building demand forecasting and price sensitivity models
  • Developing marketing attribution and Media Mix frameworks
  • Designing propensity and conversion scoring models
  • Deploying models into production using modern cloud tooling
  • Partnering with engineering to build scalable pipelines
  • Working directly with stakeholders to translate modelling into action
What You’ll Bring
  • Strong Python and SQL capability
  • Experience building and deploying ML models in production
  • Background in forecasting, pricing, behavioural or attribution modelling
  • Experience operating within AWS, GCP, Azure, Snowflake or Databricks
  • Commercial mindset with the ability to influence non-technical stakeholders


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