2026 Industrial Placement Quantitative Research (Analytics)

Glencore Careers
London
3 months ago
Applications closed

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2026 Glencore Industrial Placement Quantitative Research (Analytics)


Glencore is one of the worlds largest global diversified natural resource companies and a major producer and marketer of more than 60 commodities that advance everyday life. Through a network of assets, customers and suppliers that spans the globe, we produce, process, recycle, source, market and distribute the commodities that support decarbonisation while meeting the energy needs of today.


We provide people the opportunity to develop their expertise and the confidence to grow their careers.


The Glencore 2026 Industrial Placement Programme


Designed to accelerate your career in the commodities trading, technology, engineering, or environmental science spheres, this 12-month programme gives talented undergraduates exposure to the world-class people and careers on offer at Glencore.


This is a fast-paced placement in our London office. You will be given your own areas of responsibility and have the opportunity to contribute to the work of the business from day one.

By the end of the programme, you will have d...

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