Are you passionate about improving the way Machine Learning systems are developed, deployed, and scaled in real-world production environments? We are collaborating with a leading European Online Fashion & Beauty Retailer to find a highly capable and self-driven Machine Learning Engineer (MLE/MLOps Focus) to join a fast-moving and impactful team.
This role is centered around building robust ML workflows, streamlining feature creation, and standardizing ML components to ensure scalability, consistency, and speed across the organization. You’ll work at the intersection of engineering and data science, playing a key part in shaping how machine learning is delivered at scale.
Build and automate end-to-end ML workflows using Airflow (MWAA), integrating with feature stores, training, fine-tuning, deployment, and monitoring systems
Implement ML model lifecycle management using MLFlow and/or SageMaker (preferred)
Design and deploy infrastructure for ML workflows using Infrastructure-as-Code tools such as CloudFormation and YAML
Monitor and maintain ML services, leveraging observability tools (Grafana, custom metric logging, drift detection, and alerting)
Ensure robust testing of ML pipelines, including data validation, integration/unit tests, and performance monitoring within CI/CD workflows
Champion MLOps best practices and help enforce security and compliance standards (e.g., secrets management, training data retention)
Contribute to central feature store development and component standardization efforts
Integrate and optimize OpenAI APIs in production environments, with focus on prompt engineering and token handling
Deploy containerized ML applications using Docker and Kubernetes
5+ years of experience in Machine Learning Engineering or MLOps roles
Solid Python development skills
Strong hands-on experience with Airflow (MWAA), MLFlow, and/or SageMaker
Familiarity with ML observability tools such as Grafana, custom metric logging, model drift detection, and alerting mechanisms
Proficiency in building CI/CD pipelines for ML systems with automated testing and validation
Experience with Infrastructure-as-Code tools (CloudFormation, YAML)
Understanding of secure and compliant deployment of ML pipelines
Excellent debugging and problem-solving skills
Experience with OpenAI API usage in production, containerization, and Kubernetes orchestration is highly valued