SQL Data Scientist

Oliver Bernard
London
3 months ago
Applications closed

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Data Scientist, Supply Chain Optimisation Up to £600 per day
Contract. Start ASAP.

You will build and productionise large scale optimisation models for supply chain planning. The goal is to create a high performing optimisation capability that integrates with Anaplan and supports key planning decisions across the business.

Design and build optimisation models for supply chain use cases using Python and MILP
• Work with data from BigQuery and ensure model data pipelines are efficient and reliable
• Support integration of optimisation outputs into Anaplan and wider planning tools

5 plus years experience as a Data Scientist or Operations Research specialist
• Strong background in Operations Research and Mixed Integer Linear Programming
• Proven experience building and tuning large scale optimisation models in production
• Strong Python skills for modelling and optimisation
• Solid SQL skills with experience working with BigQuery
• Contract Details
• 6 month contract
• ASAP

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