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Senior Electronics Test Engineer

Littlehampton
4 months ago
Applications closed

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NEW SENIOR TEST ENGINEER BASED IN LITTLEHAMPTON.
Our client based in West Sussex has a new quality engineer role, which is responsible for investigating and analysing the root cause of product failures. Working collaboratively with cross-functional engineering teams to identify root causes and implement corrective actions.
Responsibilities as a Senior Test Engineer in Littlehampton.

  • Conduct visual, electrical, mechanical, and other testing methods (both destructive and non-destructive) to isolate failure modes.
  • Identify and document root causes of failures, ensuring data integrity and accuracy.
  • Analyse failure trends and provide quantitative insights to drive quality improvements.
  • Prepare detailed and concise Failure Analysis reports for internal teams and external customers.
  • Collaborate with engineering teams to implement corrective actions and improve product performance.
    Requirements as a Senior Test Engineer in Littlehampton.
  • Degree in Electrical & Electronic Engineering or other relevant Engineering discipline.
  • 2-3 years experience of engineering or failure analysis experience.
    If you are interested in this Senior Test Engineer job in Littlehampton. then APPLY NOW - please contact Adam on (phone number removed)

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