Data Science - Contract - Fully Remote

Oliver Bernard
Bolton
10 hours ago
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🚀 Contract Data Scientist – Retail (Forecasting & Planning)

Fully Remote | Outside IR35 | 6-Month Initial


OB are supporting a high-growth retail business investing heavily in its data capability, now looking for a Data Scientist to drive forecasting and planning across key commercial functions.


⚡ What You’ll Be Doing:

  • Develop forecasting models across sales, demand, and stock
  • Improve planning accuracy across commercial and operational teams
  • Build and optimise data models to support scalable analytics
  • Partner with stakeholders to turn data into clear, actionable insight


🎯 What They’re Looking For:

  • Experience building forecasting / time series models in industry
  • Strong data modelling capability
  • Background in retail, e-commerce, or consumer-facing businesses
  • Solid Python & SQL skills + experience with cloud environments


đź’ˇ Why This Role:

  • High visibility — work directly impacts business performance
  • Fast-paced, commercially driven environment
  • Fully remote & Outside IR35 flexibility


đź“© Apply below or message me for more details.

Contract | Data Science | Retail | Remote | Outside IR35

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