MLOps Engineer

ALOIS Solutions
London
1 week ago
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Role Summary

We are seeking a highly skilled MLOps Engineer to focus on the deployment, monitoring, and maintenance of machine learning models in production environments. This role is platform-focused and does not involve model development or end-user support. The successful candidate will ensure reliability, scalability, and performance of ML platforms while managing API endpoints and deployment workflows.

Key Responsibilities

Platform Operations & Monitoring

  • Monitor ML model endpoints and platform health using tools such as Grafana and Domino Data Lab
  • Respond to incidents and alerts; perform code fixes and manage changes via ServiceNow
  • Liaise with Domino Data Lab support to resolve platform-related issues

Model Deployment

  • Deploy and maintain ML models in production environments
  • Ensure models integrate seamlessly into automated pipelines
  • Maintain reliability, version control, and governance standards

Pipeline Maintenance

  • Collaborate with Data Scientists and Engineers for smooth production handoff
  • Maintain and optimize ML pipelines for stability and scalability
  • Improve performance, resource usage, and automation

Automation & Tooling

  • Implement automation for deployment and monitoring
  • Contribute to continuous platform improvements

Required Skills & Experience

  • Strong Python programming experience
  • Proven experience deploying and monitoring ML models in production
  • Understanding of model evaluation metrics, data drift, overfitting, and feature importance
  • Experience with AWS services (S3, Redshift, etc.)
  • Hands-on experience with Grafana for monitoring
  • Familiarity with Domino Data Lab (desirable)
  • Strong knowledge of CI/CD, version control, Docker, Kubernetes
  • Excellent troubleshooting and incident management skills
  • Strong stakeholder communication skills

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