Manufacturing Engineer Advanced Electronics Automation

Redkite Engineering Recruitment
Shropshire
3 weeks ago
Applications closed

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Manufacturing Engineer Advanced Electronics & Automation

Competitive Salary Career Growth Benefits

Are you a Manufacturing Engineer looking to work with stateoftheart automation robotics and AIdriven processes This is an exciting opportunity to join a leading electronics manufacturer playing a key role in the design and development of advanced production systems for microcontrollerbased power electronics products.

Why Apply
Work on cuttingedge manufacturing technologies
Involvement in robotics AI PLCs and automated testing
Career progression & training opportunities
Competitive salary & benefits package

The Role

As a Manufacturing Engineer you will:
Develop automated test & inspection systems for hightech electronics manufacturing
Collaborate with Innovation & R&D teams to define and implement test strategies
Design electrical and mechanical test equipment with a focus on machine safety
Work with NI LabVIEW SolidWorks and Allen Bradley PLCs to optimise production processes

What We re Looking For
HNC or Degree in Engineering or Technology
Experience in electronics manufacturing & production processes
Software programming & CAD skills (LabVIEW SolidWorks PLCs)
Strong problemsolving organisational and teamwork skills

Bonus Skills (Nice to Have)
Experience in test equipment design & machine safety
Knowledge of functional & compliance testing for electronics

This is a fantastic opportunity for an innovative manufacturing engineer to work on advanced automation projects within a fastgrowing technologydriven company.




HNC or Degree in Engineering or Technology Experience in electronics manufacturing & production processes Software programming & CAD skills (LabVIEW, SolidWorks, PLCs) Strong problem-solving, organisational, and teamwork skills

Education

Electrical Engineering


Key Skills
Embedded Software,Electrical Engineering,System Design,Firmware,C/C++,LabView,PCB,Sensors,Signal Processing,Matlab,Fpga,Assembly
Employment Type :Full Time
Experience:years
Vacancy:1
Monthly Salary Salary:60000 - 60000

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