DevOps Engineer | AWS & Azure Migration Experience | 6 Month Contract

London
1 year ago
Applications closed

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I am partnered with an AI Software consultancy that are looking to hire a technical DevOps Engineer with experience delviering migrations between AWS and Azure. The ideal candidate will have some back-end exposure whilst being proficient across native technologies in AWS and Azure.

6 Month Contract
Outside IR35
£425-£475 per day
Fully Remote
Immediate starters preferableRequired Skills/Experience:

Hands on expertise across cloud technologies such as AWS and Azure
Prior experience delivering end to end migrations between major cloud platforms
Exposure to backend languages such as Python, GoLang, Java etc…
Come from an infrastructure background using technologies such as Lambda Functions, SAM Applications, Terraform, SQL and Data Factory
Good communications skills are essential, this role will be customer facing and involve communicating with senior stakeholders
Any Architectural and Machine Learning expertise would be considered nice to haveIf you have experience delivering similar migration projects and interested in hearing more then please send a copy of your CV to (url removed)

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