Clinical Engineering Apprentice (Data Scientist, Clinical Engineering)

Royal Wolverhampton NHS Trust
Nottingham
3 days ago
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The successful candidate will be enrolled onto the Level 6 Apprenticeship Standard - Data scientist (integrated degree) and will undergo a 4-year Data Scientist Apprenticeship program of work-based learning combined with academic courses at the University of Nottingham. The successful completion of which, will see the apprentice achieve a BSc (Hons)Data Science. Depending on the route of the successful candidate this may lead to a future progressive pathway within the CIS team, Clinical Engineering. Applicants should hold a minimum of an level 3 qualification in an Engineering subject or equivalent. All successful candidates will be offered a position conditionally, subject to achieving the required grades alongside mandatory checks (e.g. Disclosure and Barring Service, references, and Occupational Health). It is also desirable that the apprentice is familiar and comfortable using Microsoft Word, Excel, and PowerPoint.


Responsibilities

  • To observe, learn and assist, under supervision, in the full range of work in the Clinical Engineering Department. This work will include medical 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 maintenance of records, equipment evaluation, development, and audit.
  • To progress towards acquiring the academic knowledge and practical skills necessary to complete medical device maintenance work, completing the Clinical Apprentice Logbook, feedback and reflective forms as required, to support CPD evidence and RCT registration.
  • To ensure that any cleaning, calibration, safety checks and maintenance of medical devices and test equipment is carried out as instructed and in strict compliance with agreed instructions, maintaining accurate records of work undertaken.
  • To follow department technical procedures and safety standards applicable to medical devices.
  • To conform to all departmental safe working practices, and departmental policies and procedures.

Applicants who are non-UK nationals must have been ordinarily resident in the UK for at least three years, and not resident for the purposes of education to be eligible for an UK apprenticeship. Please check your suitability before applying. This role does not come with a visa sponsorship.


A valid driving licence will be beneficial for this post.


The Royal Wolverhampton NHS Trust is one of the largest NHS trusts in the West Midlands providing primary, acute and community services and we are incredibly proud of the diversity of both our staff and the communities we serve. We are building a workforce that can help us to fulfil our values, improve the quality of care for patients, and solve the health care problems of tomorrow. We're passionate about the value that diversity of thinking and lived experience brings in enabling us to become a learning organisation and leader in delivering compassionate care for our patients.


We are delighted that we have been rated as "Good" by CQC. We have achieved numerous awards; The Nursing Times Best Diversity and Inclusion Practice and Best UK Employer of the Year for Nursing Staff in 2020.


The Trust is a supportive working environment committed to creating flexible working arrangements that suit your needs and as such will consider all requests from applicants who wish to work flexibly.


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