Data Engineers

Scantec
Liverpool
6 days ago
Create job alert
Data Engineer / Fibre & Data Cable Installer – Liverpool

Rate: £21.25 per hour (CIS)
Hours: Monday–Friday, 08:00–16:30
Location: Hospital sites across Liverpool & surrounding areas (Royal Liverpool, Aintree, Walton, Halton)
Contract: Minimum 2–3 months (potential to extend)
Start: Immediate


Key Responsibilities

  • Install, terminate, and test Cat5 and Cat6a data cabling to industry standards
  • Install containment, data points, cabinets, and comms room infrastructure
  • Patch and dress cabinets, racks, and patch panels

Essential Requirements

  • ECS Card (mandatory)
  • DBS check
  • Own vehicle and tools (pool vehicle may be available if required)
  • Ability to work to industry and structured cabling standards

If you are an experienced Data Engineer and are looking for a short-term contract opportunity, we would love to hear from you. Please apply with your CV or contact me for further details below.


Email –
Phone – (phone number removed)


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