DevOps Engineer

Cititec Talent
London
1 year ago
Applications closed

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Principal Cloud DevOps Engineer | Circa £150k | London | Permanent


Industry:Trading

Location:London (4 Days in Office, 1 Day Remote)

Job Type:Permanent


Our commodity trading client is seeking aCloud Platform DevOps Leadto oversee a skilled DevOps team, focusing on AWS-based data and analytics platforms. You’ll lead on solution architecture, POCs, and IaC automation, collaborating closely with data engineers and data scientists on CI/CD and MLOps.


Responsibilities:

  • Lead and mentor the DevOps team.
  • Design and manage AWS cloud infrastructure, focusing on automation with IaC (AWS CDK, Terraform).
  • Ensure platform security, monitoring, and support.
  • Implement CI/CD pipelines and support cloud applications.


Required Skills:

  • AWS, IAM, ECS/EKS, Kubernetes, Docker.
  • AWS CDK, Terraform, Ansible.
  • Python, Bash, secure container image management.
  • Significant Cloud DevOps experience
  • Leadership experience, preferably in Investment Banking/commodities
  • Bachelor’s degree in Engineering
  • Strong team management, communication, and problem-solving skills.
  • Ability to maintain confidentiality and build effective partnerships.


To find out more information please apply or message me on LinkedIn.

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