MLOps Engineer

Harnham
London
1 week ago
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MLOps Engineer | London (3 days on-site) | £80,000–£110,000 + bonus


A rapidly scaling cleantech company is looking for a mid-level MLOps Engineer to help productionise a range of ML models. The team operates across the energy market working in a fast, customer-focused environment.


You will join a small, high-quality Data and AI function, working closely with Data Engineers and AI Engineers to build, deploy and monitor production-grade ML systems. Ideal for someone who wants ownership, strong engineering standards and the pace of a scale-up.


Requirements

  • 2+ years MLOps experience
  • Strong Python, ML engineering and deployment foundations.
  • Hands-on experience with AWS and SageMaker (essential).
  • MLOps best practice: MLflow, CI/CD for ML, monitoring, reproducibility.
  • Cloud and DevOps knowledge: AWS, Docker, IaC (CDK preferred).
  • Experience deploying scalable pipelines and ML endpoints.
  • Collaborative, proactive and comfortable with 3 days per week in the office.


Why Join

  • Mission-driven cleantech scale-up accelerating the transition to clean energy.
  • Opportunity to own and deliver impactful ML systems end-to-end.
  • Backed by major partners and growing internationally.
  • Exposure to diverse ML workloads including computer vision.


No sponsorship available.


If you are interested, get in touch or share your CV.

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