SSSTS Data Engineers, Senior Data Engineers, Data Engineers & Mates

DT Source Limited
Hayes, UB3 2HW, United Kingdom
Last month
Applications closed
Posted
14 Mar 2026 (Last month)

Job Title: SSSTS Data (Fibre) Engineers, Senior Data (Fibre) Engineers, Data (Fibre) Engineers & Data (Fibre) Mates

Location: Hayes, West London (Data Centre)

Start Date: 23.03.2026

Duration: 3 Month Project (Projects to Follow)

Hours: 07:00 – 17:00

We are currently recruiting SSSTS Data (Fibre) Engineers, Senior Data (Fibre) Engineers, Data (Fibre) Engineers & Data (Fibre) Mates for an upcoming Data Centre fibre and connectivity installation project in Hayes. This is a great opportunity to join a busy site with 3 months of work available, with other projects after this project finishes.

Available Roles & Rates

* SSSTS Data (Fibre) Engineers: £33.50 per hour

* Senior Data (Fibre) Engineers: £30.00 per hour

* Data (Fibre) Engineers: £24.00 per hour

* Data (Fibre) Mates: £20.00 per hour

Project Details

* Large Data Centre fibre and connectivity installation project

* 3 month project duration

* Opportunity for further projects following completion

Requirements

* Relevant experience in fibre and connectivity installations

* Valid ECS/CSCS card (relevant to role)

* SSSTS required for SSSTS Engineer roles

* Ability to work effectively within a team on a busy construction site

Duties May Include

* Installation of fibre and connectivity systems

* Containment, trunking, tray and basket work

* Termination and testing of fibre and connectivity cables

* Assisting engineers with installations (Mates)

* Following site health & safety procedures

How to Apply

If you are available and interested, please apply via CV-Library or submit your CV and contact details for immediate consideration.

We are looking for reliable candidates ready to start in approximately 3 weeks, so early applications are encouraged

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