Mid-Level/Principal Data Scientist

JR United Kingdom
London
3 days ago
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Mid-Level/Principal Data Scientist, London

Location: London, United Kingdom

Job Category: Other

EU work permit required: Yes

Job Views: 4

Posted: 26.04.2025

Expiry Date: 10.06.2025

Job Description:

Role Overview:Mid-Level / Principal Data Scientist based in London, with a hybrid working model (3 days a week). This role is suitable for candidates at either the Mid-Level or Principal level, with salary differences noted accordingly. Join a globally established marketing consultancy and work on cutting-edge projects.

Key Responsibilities:

  • Drive machine learning projects including recommenders, segmentation, forecasting, and marketing spend optimization.
  • Engage in advanced projects involving GenAI and NLP.
  • Collaborate closely with engineering teams while remaining full-stack in your projects.
  • Report directly to the Head of Data Science.
  • Work with senior stakeholders to drive commercial value.
  • Opportunity to upskill and mentor within a strong team of 8 (Principal level).

Skills and Experience:

  • MSc in a STEM field such as Mathematics, Physics, Data Science, Computer Science, or Engineering.
  • Strong fundamental knowledge in Data Science and Statistics.
  • Experience with AI technologies (GenAI, Computer Vision), recommenders, forecasting, pricing, churn, or marketing analytics—this is a generalist role.
  • Excellent communication skills and a commercially driven mindset.

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