Join a global project focused on the development and maintenance of an advanced recommender system that is already generating real business value across multiple countries. Your mission will be to elevate the system’s architecture and operational maturity. This is a technical leadership role, combining hands-on engineering with MLOps expertise and production-grade ML deployment.
Your responsibilities
Design and evolve the architecture of a live recommender system
Lead the MLOps strategy and implementation (GitLab CI/CD, monitoring, MLflow)
Collaborate with Data Scientists to deploy machine learning models to production using AWS SageMaker
Mentor and advise the team on ML engineering and DevOps best practices
Contribute hands-on to the Python codebase – ML + data infrastructure + deployment
Translate business needs into concrete technical solutions
Proactively propose and implement modern tools and technology improvements
Our requirements
5+ years of experience as a Machine Learning Engineer with a proven track record of deploying production ML models