Data Cabling Engineer

Guildford
2 weeks ago
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IM LOOKING FOR X5 DATA CABLING ENGINEERS TEMP TO PERM!!!

Pay
£170 a day min of 8 Hours

Job type

Starting off temp for 3 months if good will go full time if your good enough!

Shift and schedule



Monday to Friday

*

Overtime ( Also when go full-time )

Location

Around A3/M3 Corridor Guildford area

Sites will vary across UK and Europe, there will be a large portion of away travel – we pay for hotel and a sustenance allowance ( when you go full time)

Full job description

Contract Options

I'm seeking skilled Data Engineers around Surrey

The companies started in 2001 with 24 years is to equip businesses with network infrastructure solutions that deliver high performance and longevity. By aligning service offerings to customer needs and advancements in technology, customers will benefit from first rate solutions that are cost effective and meet operational requirements.

Through excellent levels of customer service and reliability, we will add value and forge relationships that drive our business forward.

Responsibilities:

* Cat6a / Cat6 – Fibre Multi and single

* Must be proficient with Fluke testing including reports

Requirements:
- ECS, CSCS or relevant site certifications
-iPAF
-UK Driving License
-Recent References
-Own vehicle and tools ( till you go full time )

Join our team as a Data Engineer to contribute to the development of cutting-edge movmoment.

Expected start date: 03/02/35

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