Senior DevOps Engineer

Better Placed Ltd - A Sunday Times Top 10 Employer in 2023!
1 year ago
Applications closed

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Senior DevOps Engineer

£70,000-£95,000

Remote – UK or EU based


I'm working with an AI start up that specialises in integrating AI into manufacturing processes. You'll be working on getting their AI product perfected and getting stuck into their infrastructure and pipelines making sure everything runs as efficiently as possible.


This role is a blend of cloud and on prem work with a real opportunity for you to take ownership over an ever growing product.


This is a global team distributed around the world who are really making an impact in their niche utilization of AI.


Skills required:


  • Docker, Docker Swarm
  • AWS, CI/CD Pipelines, on prem experience
  • Kubernetes, Any shell scripting
  • A desire to work in a start up environment
  • MLOps would be a bonus!


If this sounds like something of interest, apply with your CV or reach out directly to Ben Greensmith

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