Summer Internship Programme 2026 - Net Zero Data Science

Scottish Water
Glasgow
2 weeks ago
Applications closed

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Summer Internship Programme 2026 – Net Zero Data Science

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Job Description

Ready to own your future? At Scottish Water, our Summer Internship Programme empowers you to gain hands-on experience, tackle real challenges, and contribute to shaping Scotland’s future. This is more than just a summer job – it’s an opportunity to make a meaningful impact. As part of our team, you’ll play a key role in delivering essential services and infrastructure that help Scotland flourish every day. 


You’ll be joining us at a fascinating time, as we transform into a more agile, innovative organisation that delivers outstanding service, provides great value for money, and works in an environmentally sustainable way that goes beyond Net Zero. 


Graduating in 2027? Kickstart your career with a 12-week summer placement and start building your future today. 



What you’ll do 


As a Zero Emissions Carbon Data Science Intern, you will dive into real-world challenges centred on the core of our Net Zero reporting. You will become familiar with the intricacies of our Net Zero reporting, assist in data analysis, identify areas for improvement, and contribute to the streamlining of emission data reporting. 

Your strong analytical brain will give you the ability to gather, i...

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