Clinical Engineering Apprentice (Data Scientist, Clinical Engineering)

Popular Plumbing and Heating Corp
Wolverhampton
3 days ago
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The Royal Wolverhampton NHS Trust is one of the largest NHS Trusts in the West Midlands providing primary, acute and community services. We have been nationally recognised for providing excellence in healthcare; we are home to the busiest and most technologically advanced Cardiac Centre in the West Midlands.



  • Depending on the route of the successful candidate this may lead to a future progressive pathway within the CIS team, Clinical Engineering

Observe, learn and assist, under supervision, in the full range of work in the Clinical Engineering Department.


This Work Will Include

  • Device safety for patients and staff
  • Planned preventative/corrective maintenance
  • Inventory management
  • Medical device lifecycle management
  • Acceptance and safety testing
  • Medical device decommissioning
  • Assistance in the maintenance of records
  • Equipment evaluation, development and audit
  • Complete the Clinical Apprentice Logbook, feedback forms and reflective forms as required
  • Ensure cleaning, calibration, safety checks and maintenance of medical devices and test equipment is carried out as instructed and in strict compliance with instructions
  • Maintain accurate records of work undertaken

Monday - Friday generally, however, will be required to work flexibly to meet unpredictable demands on the service.


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