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Data Science Data Science Data Scientist (Remote)

Xcede
London
1 day ago
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Senior Data Scientist x2/3 days a week in the office

This is a leadership opportunity at a fast-scaling AI consultancy known for its technical excellence and track record in delivering real-world impact across some of the most important companies globally. The team helps major clients in the Retail sector apply cutting-edge data science in complex operational environments, balancing innovation with reliability and rigour.

Youll join a deeply technical, collaborative group working on custom AI and machine learning solutions that support automation, forecasting, and decision intelligence. Set the technical direction on multi-disciplinary data science & AI projects, from approach selection to architecture design
Work closely with senior client stakeholders to shape project scope, track value delivery, and communicate findings
Oversee a small team of data scientists on each project, supporting mentorship, quality control, and technical review
Collaborate with commercial and delivery teams to shape proposals and ensure feasibility of engagements
Contribute to internal capability-building by sharing knowledge, tools, and best practices within the wider team

Youve led the delivery of applied machine learning projects, ideally across commercial or regulated sectors
Strong Python skills and comfort using core libraries (e.g. Expertise in a wide range of ML methods, including supervised and unsupervised learning, time series, or NLP and LLM / GenAI based projects.

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