Lead Optimisation Data Scientist

Harnham - Data & Analytics Recruitment
London
3 days ago
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Lead Optimisation Data Scientist London, Hybrid£600 - £900 per day
This is an exciting opportunity to take on high-impact optimisation challenges within a large and complex operational environment. You will be joining a central Data and AI team that is solving real operational problems at scale, with your work directly influencing critical decision making and efficiency across the organisation.
The Company They are an international organisation with extensive operational and logistics networks across multiple business units. Their central AI and Data Science function is expanding to deliver practical optimisation solutions that improve performance and reduce disruptions. The team partners closely with operational stakeholders to turn business challenges into deliverable optimisation models. Contractors play a key role in driving technical delivery and shaping solution design.
The Role and Deliverables * Take end-to-end ownership of optimisation problem statements from discovery through to delivery. * Build production-ready optimisation or simulation models using Python. * Translate operational challenges into well-structured optimisation approaches. * Develop solutions across areas such as logistics planning, resource allocation and supply chain optimisation. * Work closely with business and operational teams to gather requirements and validate outputs. * P...

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