🔥 Azure Machine Learning Training – Build, Automate & Scale Enterprise ML with Confidence
Accelerate your organization’s machine learning journey with Cluster Reply’s Azure Machine Learning Training: a hands-on, end-to-end program designed to equip teams with the skills to build, orchestrate, and deploy ML solutions at scale.
Delivered across 8 structured sessions, the course provides a complete immersion into the Azure ML ecosystem, covering data management, compute, environments, Feature Store, Components, AutoML, pipelines and deployment. Participants learn how modern ML teams can move from experimentation to governed, production-ready workflows using Azure ML as a unified platform.
Throughout highly interactive modules, attendees discover how Azure ML centralizes data access, standardizes preprocessing, orchestrates training workloads, and enables secure, scalable deployments. Real demonstrations and coding exercises illustrate how to structure ML projects with MLOps best practices—ensuring reproducibility, governance, versioning, and seamless collaboration across data science and engineering functions.
By the end of the program, Azure ML emerges as the backbone of an enterprise-grade ML lifecycle: managing data assets, orchestrating compute, streamlining model development, enabling consistent feature reuse, and automating production pipelines and deployment patterns.
This program delivers a complete, production-oriented journey across the core capabilities of Azure Machine Learning. Participants progress from foundational platform concepts to advanced operational practices, understanding not only how Azure ML works, but why each capability matters in real-world MLOps scenarios.
Learn the concepts behind workspaces, compute resources, governance boundaries and the architecture that powers Azure ML as a centralized ML platform.
Master Datastores and Data Assets for governed, versioned data access, and see how the Feature Store standardizes feature creation and reuse across teams.
Create and manage compute clusters and reproducible Docker-based Environments that guarantee consistency across development and training workloads.
Explore best practices for data ingestion, transformation and validation. Package logic into modular, reusable Components ready for automated pipelines.
Understand when to use AutoML for rapid experimentation and when to rely on custom training jobs for full control. Includes experiment tracking and metrics logging.
Register, version and govern models using the Model Registry with full lineage tracking and controlled promotion across environments.
Design orchestrated ML pipelines—covering data preparation, training, evaluation and deployment—using YAML, SDK or the Azure ML Studio UI.
Publish models as scalable Real-Time Endpoints or cost-efficient Batch Endpoints, with guidance on blue-green routing, rollback strategies, security and safe deployment workflows.
Explore advanced platform concepts such as monitoring, governance, security controls and cost optimization. Understand how Azure ML integrates with broader cloud architectures and DevOps practices to support enterprise-grade MLOps.