Senior Azure Cloud Engineer

London
3 weeks ago
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Senior Azure Engineer (AI/Cloud Security) Remote, £100k

Are you a seasoned Azure Engineer looking to take the reigns on a high-impact cloud and AI transformation project for a prestigious global organisation?

Roles like this don't come around that often.

This is your chance to play a key role in my clients transition over to Microsoft Azure cloud. We will need to you be able to design and implement the system from scratch whilst ensuring it is compliant with ISO 27001 and GDPR. You will be working in a highly regulated environment where compliance is a huge part of every project, so experience in similar settings is a huge bonus.

My client is a huge advocate for progression within the team, keen to support the right person with obtaining new qualifications whilst making their way into management. If you're looking for a clear progression path in the cyber security space, with an employer who opens doors for you this could be exactly what you're looking for.

In essence - this role demands hands-on exposure in Microsoft Azure, Cloud security frameworks, and AI-driven cloud automation.

I'm only looking for the highest calibre of Azure enthusiasts for this role due to the complexity of the remit. You will lead the end-to-end migration of core infrastructure from on-prem to Azure - It's a high-profile and business-critical programme so you'll be able to back yourself and deliver the programme to a flawless standard

And the role doesn't stop there. You'll also get the chance to drive the adoption of AI and machine learning technologies in Azure; so AI-driven cloud automation experience here; is an absolute must.

I'd like you to be well certified, ideally Azure Solutions Architect Expert (AZ-305), Azure Security Engineer Associate (AZ-500), or equivalent and naturally have a good handle on ISO 27001 GDPR, and other regulatory frameworks.

Naturally, this role will also be heavily stakeholder management focused so you need to be the type of Engineer who can realistically manage expectations both diligently and confidently across the business.

As an individual, you'll be technically astute and one who delivers. It's also important that you thrive from working in a fast paced and truly enterprise environment.

This role is fully remote, in return you will receive a 10% bonus package based on personal performance and a basic salary ranging from 80k to 100k

Modis International Ltd acts as an employment agency for permanent recruitment and an employment business for the supply of temporary workers in the UK. Modis Europe Ltd provide a variety of international solutions that connect clients to the best talent in the world. For all positions based in Switzerland, Modis Europe Ltd works with its licensed Swiss partner Accurity GmbH to ensure that candidate applications are handled in accordance with Swiss law.

Both Modis International Ltd and Modis Europe Ltd are Equal Opportunities Employers.

By applying for this role your details will be submitted to Modis International Ltd and/ or Modis Europe Ltd. Our Candidate Privacy Information Statement which explains how we will use your information is available on the Modis website

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