Graduate Hydrogeologist

Wolverhampton
10 months ago
Applications closed

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Graduate Hydrogeologist | Wolverhampton | £26,000

Are you a graduate hydrogeologist or geologist looking for an exciting new opportunity? A talented team of hydrogeologists in Wolverhampton are looking for a new member to join the team.

Company benefits:

Competitive salary
Great progression opportunities
Flexible working
Healthy pension scheme
Full training provided

As the graduate Hydrogeologist you will be working on a variety of responsibilities. From office to site, you will be working on desk studies writing factual reports, collecting ground water samples, applying geological and hydrogeological skills to developing water supplies and working on detailed quantitative risk assessments.

You will receive full training for this role, so no experience is required! We have a talented team of hydrogeologists who are ready to provide all the training necessary for you to be able to carry out the role.

Although it is not essential, a MSc in hydrogeology is desirable.

If you meet the following criteria, we would love to hear from you!

Essential criteria:

Must hold a geology BSc
MSc in hydrogeology (desirable)
Must live within a commutable distance from the Wolverhampton office
Must hold a UK driving licence
Must have full working rights to work in the UK

Please email your CV to or call me on (phone number removed) if you are interested in applying

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