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Data Cabling Engineer

Manpower Careers
Musselburgh
6 months ago
Applications closed

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Are you an experienced Network Data Engineer based in or around Edinburgh, seeking your next contract role? Manpower Engineering is partnering with a leading company that ensures the data networks at racecourses across the UK run smoothly, particularly on race day. We are currently looking for a skilledCAT 6 Data Engineerto work atMusselburgh Racecourse.

Contract Dates:

  • 20th - 25th April
  • 28th April - 1st May


Rate:£20 per hour (All hours)
Key Responsibilities:


  • Pulling CAT 6 cabling

  • Swapping out access points to ensure optimal network performance on race day


Essential Requirements:

  • Proven experience in CAT 6 cabling
  • C&G 3667(or equivalent) qualification
  • CCNSG,CSCS, orECScard for site safety
  • MEWP 3a/3b
  • Pasma
  • Own transport and tools


This short-term contract offers the perfect opportunity for engineers looking for their next challenge. If you're ready to take on this exciting project, we want to hear from you!


Apply now to secure your place on this contract.


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