Data Engineer

Chertsey
3 days ago
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Data Engineer (x2) – Permanent

Β£30,000 – Β£35,000 + Van + Fuel Card + Overtime
πŸ“ Must live within 25 miles of Chertsey
πŸ“ Majority of work in London
πŸ—“ Start: ASAP

We are currently recruiting 2x experienced Data Engineers to join a growing specialist contractor delivering structured cabling and fibre installations across commercial and data centre environments.

This is a permanent opportunity offering stability, overtime and long-term progression.

πŸ”§ The Role:



Installation, testing and termination of Cat5e / Cat6 cabling

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Fibre installation, termination and testing

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Working across commercial and secure data centre sites (primarily London-based)

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Overseas project opportunities (must be willing to travel when required)

βœ… Essential Requirements:

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Valid ECS card with Data qualification listed (essential)

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Proven structured cabling and fibre experience

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Must live within 25 miles of Chertsey

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Able to pass high-level security clearance (processed by employer)

πŸ‘ Desirable:

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IPAF

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PASMA

🚐 What’s on Offer:

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Β£30,000 – Β£35,000 salary (DOE)

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Company van & fuel card

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Overtime available

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Permanent role with long-term opportunity

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