Data Science & Software Engineer Summer Internship

Frazer-Nash Consultancy
Leatherhead
1 day ago
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Job Description

Title

Data Science & Software Engineer Summer Internship

Role locations: Manchester, Leatherhead, Burton and Bristol  

Start Date: 29th June 2026

Role Closing Date: 11th January 2026

Contract length: 8-12 weeks 

Who We Are?

Frazer-Nash are an engineering, systems and technology consultancy. Through our meaningful innovations, our experts support organisations make lives safe, secure, sustainable and affordable.

In a nutshell, engineering consultancy is all about providing advice to positively impact our clients’ projects and businesses and the wider world around us.

Why Frazer-Nash?

The world and our clients have lots of problems and we get a kick out of finding digital and data solutions to these problems. As a Summer Intern, you will typically be supporting on multiple projects simultaneously, managing your time and accruing a wealth of experience and skills. Hence, no two days in Frazer-Nash will be the same.

As a Data Science and Software Summer intern you’ll be surrounded by experts in our teams and from our customers, covering software, data, modelling and simulation and in a range of other fields – whether it’s produ...

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