Machine LearningAI Operations Engineer

OHO Group Ltd.
London
1 year ago
Applications closed

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Machine Learning Operations Engineer - London - Exciting AI Start-Up

Permanent Fun Social Team Equity

Are you a Machine Learning Operations Engineer looking for an exciting and challenging position?

Here's a fantastic opportunity for you to join a small and all-star team! This AI start-up has just raised a large seed round and are looking to use AI agents with their unique platform to assess the reliability and security of AI applications while optimising their performance. This is a great chance to make a real-world impact and ensure the reliability of all AI systems.

They're looking for someone who is looking to work with the best of the best and has a high level of work ethic and teamwork. Not only will you get to work with cutting-edge AI technology, but also have an opportunity to make waves within the team as one of their earliest team members.

What you would ideally have:

  • Degree from top UK universities in a relevant field (e.g. Computer Science, Maths, Physics, Engineering)
  • 3 years of professional work experience
  • Strong Python programming experience - production-level code
  • Experience with deploying LLM/ML models to production
  • Experience with LLMOps and/or MLOps
  • Experience with Kubernetes, Docker, AWS/Azure, API servers, SQL, NoSQL
  • Full Stack experience (Proficiency with Next.js, Node.js, React)
  • A passion for pushing boundaries in technology
  • Great problem-solving abilities
  • Excellent time management and communication skills


What s in it for you:

  • Competitive salary (depending on experience!)
  • Equity
  • Private health insurance
  • Free lunch gym
  • Additional wellbeing allowances
  • Fun socials as a team


and more!

If this sounds like the role for you, apply now for immediate consideration!

Machine Learning Operations Engineer - London - Exciting AI Start-Up

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