Data Engineer (structured cabling)

Southend-on-Sea
1 month ago
Applications closed

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Data Engineer

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Data Engineer

Data Engineer (structured cabling)

Job Types: Permanent Full-time

Salary: £32,000 to £36,000 dependant on experience

Morgan King are actively recruiting on behalf of our client. We are looking for experienced Data Engineer. This company are are a leading telecommunications solutions provider specialising in mobile network infrastructure and in-building wireless solutions. As they continue to grow, they are seeking a highly skilled and experienced Telecoms Rigger with a strong background in Indoor DAS (Distributed Antenna Systems) and structured cabling to join our dynamic team.

This role does requires regular travel across the UK and occasionally working away from home, depending on project requirements - notice given in advance.

Key Responsibilities:

  • Structured cabling installation, including fibre and copper (Cat6, and Cat6A).

  • Installing and working with various cable types, Mainly COAX, Fibre cabling, FILA etc.

  • Working at heights to install antennas, feeders, and associated hardware.

  • Ensuring compliance with health and safety standards and maintaining high-quality workmanship.

  • This is a hybrid role. Working on mainly large commercial projects.

    Skills & Experience Required

  • Proven experience and relevant experience is required.

  • Ideally have CNET and PEARSONS (copper and fibre) qualifications

  • ECS, CSCS, or equivalent certification

  • Full UK driving licence.

  • Excellent problem-solving skills and attention to detail.

  • Ability to travel and work flexible hours when required.

    Benefits:

  • 40hrs per week - Monday - Friday 8am – 4.30pm

  • 20 days holiday, increase with length of service plus 8 bank holidays

  • Additional 2 days across the festive period and birthday

  • PPE & uniform provided

  • Online health & wellbeing support & shop discount

  • Company Pension

  • Company Social Events

    If you are interested in the above role, please apply with your CV or contact Luke at Morgan King for more information on (phone number removed).

    INDC

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