Design and implement scalable infrastructure for ML systems, collaborating with engineers to enhance model operationalization and automate workflows.
You are:
An experienced MLOps Engineer who thrives on building the backbone of production-grade ML systems. You enjoy bridging the gap between model development and production, creating scalable infrastructure, and empowering ML teams to ship models with confidence. You’re comfortable working across cloud services, containerized environments, and CI/CD pipelines—and you understand the importance of reproducibility, monitoring, and automation.
You will:
Design and implement infrastructure for ML model training, testing, deployment, and monitoring.
Collaborate with ML engineers and data scientists to streamline model operationalization and CI/CD integration.
Manage containerized environments (Docker, Kubernetes/ECS) and model serving infrastructure.
Monitor production ML systems for performance degradation, data drift, and retraining needs.
Use tools like MLflow to track experiments, manage model versions, and support model governance.
Automate workflows using tools like Airflow, Step Functions, or similar orchestration platforms.
Contribute to IaC (e.g., Terraform or CloudFormation) to ensure reproducible infrastructure deployments.
Flexible Work Hours
Flexible working hours
Health Insurance
Private health and life insurance
Lunch card
Lunch card - for employees who work in the office
Better Collective is a global sports media group that connects over 400 million sports fans each month through a portfolio of industry-leading brands like Action Network and HLTV. We focus on providing engaging content and expert insights across a range of sports and iGaming, making the world of sports betting accessible and exciting to users worldwide.
Understand the required skills and qualifications, anticipate the questions you may be asked, and study well-prepared answers using our sample responses.
Machine Learning Engineer Q&A's