Data Engineer (UKIC DV Clearance)

City of London
1 week ago
Applications closed

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Data Engineer (UKIC DV Clearance)

Remote

£75,000 - £90,000 + Training + Progression + Company Benefits

Are you a Data Engineer with developed vetting looking to join on of the worlds most renowned multinational technology businesses where you will be working on some of the world's most TOP SECRET software and defence contracts?

Do you want to join an organisation where you are in control of how quickly you progress with access to constant personal and professional development opportunities?

On offer is the exciting opportunity for a Linux Infrastructure Engineer who currently has developed vetting to join one of the world's most well known, multinational, technology business who have consistently been in the spot light regarding global research, development and innovation in the IT industry.

Founded in 1911 and with offices in most of the world and well over 250,000 staff, you will be playing a critical role within this global tech giant as well as a vital role within the UK and Global Defence industry.

In this role, the successful Linux Infrastructure Engineer will be responsible for both continuous improvement and continuous deployment across many different projects and teams.

The ideal Data Engineer would have developed vetting on application, that wants to work with a highly skilled team to solve complex technical challenges.

The Role:

Daily stand-ups, sprint planning.
Data Engineering Activities
Innovate solutions and remain ahead of the curve on Linux Technologies.
Work collaboratively to ensure you build robust and secure systemsThe Person:

UKIC DV Clearance on application.
Happy to travel to site as/when needed.Keywords:Data, DevOps, Engineer, CI, CD, Continuous Deployment, Continuous Integration, eDV Cleared, Developed Vetting, Secure Sites, MoD. AWS, Cloud, Linux, Infra, Infrastructure,

Reference: BBBH19517

If you're interested in this role, click 'apply now' to forward an up-to-date copy of your CV.

We are an equal opportunities employer and welcome applications from all suitable candidates. The salary advertised is a guideline for this position. The offered renumeration will be dependent on the extent of your experience, qualifications, and skill set.

Ernest Gordon Recruitment Limited acts as an employment agency for permanent recruitment and employment business for the supply of temporary workers. By applying for this job, you accept our terms of business

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