Data Engineers - Glasgow City Centre (nightshift)

Glasgow
3 weeks ago
Create job alert

Boyd Recruitment are currently recruiting Data Engineers on behalf of our client for work in Glasgow City Centre on a nightshift 

Requirements : 

The work will consist of installation of Fibre, Voice, and Data cabling across various environments, including Commercial, Government, Education, Healthcare, and Listed Buildings.

Must be able to cable, work to drawings and terminating cat 6 and cat 6a to a decent standard

Shift Details : 

£22 - £24 per hour (DOE) 

Nightshift 7pm-5am

Requirements:

CSCS Grade Card.

Customer-focused with a proactive approach.

Right to work in UK 

Must pass drug & alcohol test 

Must pass disclosure 

Start Date: 

Immediate 

Interested? 

If you would like to find out more about the role, please contact me on:

· Email – (url removed)

· Text / Call - (phone number removed)

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