MLOps on Azure: From Data Science to Deployment

About Course
The MLOps on Azure: From Data Science to Deployment course provides a comprehensive guide to implementing Machine Learning Operations (MLOps) on Microsoft Azure. This course covers end-to-end ML model lifecycle management, from model development and version control to automated deployment, monitoring, and scaling using Azure Machine Learning, Azure DevOps, and CI/CD pipelines.
Who Should Enroll Now?
- Data Scientists looking to streamline ML workflows.
- ML Engineers deploying scalable machine learning models.
- DevOps Professionals integrating AI models into production environments.
- Cloud & AI Architects optimizing ML model performance on Azure.
Key Learning Objectives:
- Understand MLOps principles and best practices.
- Automate model training, validation, and deployment using Azure ML.
- Implement CI/CD pipelines for ML workflows with Azure DevOps.
- Monitor model performance, drift, and retraining strategies.
- Optimize ML model performance using Azure Kubernetes Service (AKS) and Azure Functions.
Why Choose This Course?
✅ Hands-on experience with MLOps automation on Azure.
✅ Covers model versioning, reproducibility, and scaling.
✅ Learn to deploy, monitor, and manage ML models efficiently.
✅ Gain practical knowledge to operationalize AI solutions.
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