Toolmaker

Sheffield
9 months ago
Applications closed

Toolmaker

Sheffield

Days

We are looking for a motivated Toolmaker to join a market leading manufacturer. Reporting directly to the Tooling Supervisor you will be a key member in ensuring the production facility is kept running. You will be involved in all aspects of planned and reactive maintenance within their operation. With progressive training and development this company is always looking to enhance its employees and their skill sets, whilst additionally being supported by a welcoming team of engineers. The position will appeal to a strong tooling engineer looking for their next challenging role within in a secure and stable company.

Role Description:

Press Tooling & Injection Mould Tooling
Machining, Grinding & EDM Spark & Wire Erosion
Use Of All Precision Measuring Equipment
Interpreting Engineering CAD Drawings

Skills and Qualifications:

3+ Years Experience
Apprentice Trained - Tooling
Press & Mould Tooling Experience
CAD Experience/Qualification - Advantageous

In return for your commitment my client offers a stable and secure career for a technically motivated engineer. If you feel this is of interest, please send your CV directly to Jordan Hindhaugh at or call for a confidential discussion on (phone number removed)

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