Mobile Electrician

Facilitate Search Ltd
Cambridge
10 months ago
Applications closed

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About the Role: * One of the world's largest Facilities Management companies, are seeking an Electrical Engineer to join their mobile maintenance team in Cambridgeshire. * This is excellent opportunity for someone to develop and further their career in varying fast paced environments.Key Responsibilities: * Perform routine maintenance checks and inspections to ensure compliance. * React to breakdown maintenance requests within the required SLA’s * Able to support various disciplines, capable of handling a range of maintenance and repairs on-site. * Assure compliance and health and safety on site.Requirements: * Electrical Engineer Qualifications: 18th Edition & NVQ Level 3 & 2391 Test and Inspection * Proven track record within a similar role * Full UK driving License * Excellent communication skills as it is a Client facing roleBenefits: * Salary could reach up to £50,000 with Overtime Availability & On Call * 25 days Annual Leave plus 8 bank holiday. * Company pension scheme. * Continuous training and development on offer (AP)How to Apply: * Want to find out more? * Apply through this advert or get in touch with Gina Fairlie in the Facilitate Search team. * Phone: (phone number removed)

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