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Principal Cloud DevOps Engineer

Harnham - Data & Analytics Recruitment
London
8 months ago
Applications closed

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PRINCIPAL CLOUD DEVOPS ENGINEER

£110,000 - £140,000 PER ANNUM

CENTRAL LONDON (4 DAYS PER WEEK)

A leading player in the global Commodities market is hiring for a Principal Cloud DevOps Engineer to take the lead on the implementation of containerisation strategy, as well as managing the infrastructure of an AWS Data Analytics platform.

THE COMPANY:

This is a leading player i the global Commodities, heavily involved in providing supply chains with the infrastructure needed, trading and creating a pathway for key resources.

THE ROLE:

As a Principal Cloud DevOps Engineer you will be responsible for managing the infrastructure of the AWS platform. In specific, you can expect to be involved in the following:

  • Oversee the execution of the containerization strategy.
  • Assist in the continuous design, development, and management of an advanced data and analytics platform on AWS.
  • Collaborate on proofs of concept and solution architecture for container orchestration systems and new platform features.
  • Automate AWS infrastructure using Infrastructure as Code (IaC).
  • Collaborate closely with Data Engineering and Data Science teams on CI/CD pipelines and MLOps.

YOUR SKILLS AND EXPERIENCE:

The successful Principal Cloud DevOps Engineer will have the following skills and experien...

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