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2 x Data Cabling Engineer

Chaucer
5 months ago
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Data Science Trainee. Job in Telford Education & Training Jobs

Team of 2 x Data Engineer / Cabling Engineer - NIGHTS - Sunday 11th May - 7 Months - £225PD - 8 hour working NIGHT - Various locations around London / South East ****
Location: - Various locations around London / South East
Duration: - 7 months
Start Date: Sunday 11th May
Day Rate: £225PN - based on 8 hour working nights
Certs - 2 X Engineer - ECS/CSCS - 1 x Engineer IPAF
Job Responsibilities: Cat6a install, Wi-Fi install, commercial work outside working hours, Client will supply all the relevant kit required on a weekly basis to be installed.
Vechile / Tools / PPE - Need to have own van, Basic Hand tools, Full PPE
If you are interested in the above contract role please feel free to contact me ASAP to discuss further.
**** Team of 2 x Data Engineer / Cabling Engineer - NIGHTS - Sunday 11th May - 7 Months - £225PD - 8 hour working NIGHT - Various locations around London / South East

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