The MLOps Engineering on AWS Training course helps organisations automate the development, training, deployment, and operational management of machine learning models using AWS services and modern MLOps practices. By combining DevOps principles with Machine Learning Operations (MLOps), the course promotes effective collaboration between data engineers, data scientists, developers, and operations teams.
Participants will learn how to design and automate end-to-end machine learning workflows using Amazon SageMaker, AWS CodeBuild, Apache Airflow, Kubernetes, and other MLOps technologies. Key topics include model development, Continuous Training, CI/CD for Machine Learning, model deployment, performance monitoring, Data Drift and Model Drift detection, governance, and production-grade ML operations.
Through hands-on labs and real-world scenarios, learners will gain practical experience building scalable, secure, and reliable machine learning pipelines while applying industry best practices for managing ML workloads in production environments.
























