What will you in MLOps Fundamentals – Learn MLOps Concepts with Azure demo Course
-
Understand the core principles and lifecycle of MLOps (Machine Learning Operations).
-
Learn to integrate CI/CD pipelines in machine learning projects.
-
Explore model versioning, deployment strategies, and monitoring techniques.
-
Gain hands-on skills in automation, orchestration, and collaboration across ML teams.
-
Apply tools like Git, Docker, MLflow, Kubernetes, and more in real-world scenarios.
Program Overview
Module 1: Introduction to MLOps
⏳ 30 minutes
-
What is MLOps and why it’s critical in modern ML systems.
-
Key challenges in deploying and managing ML models.
Module 2: ML Lifecycle & Pipeline Structure
⏳ 45 minutes
-
Understanding stages: development, training, validation, deployment, and monitoring.
-
Building scalable and repeatable pipelines.
Module 3: Version Control with Git & DVC
⏳ 60 minutes
-
Tracking code and dataset versions for reproducibility.
-
Using Git and DVC for collaborative ML development.
Module 4: MLflow for Experiment Tracking
⏳ 60 minutes
-
Logging experiments, models, and metrics with MLflow.
-
Model registry, tracking server, and reproducible pipelines.
Module 5: Containerization with Docker
⏳ 45 minutes
-
Creating containerized environments for ML projects.
-
Building portable and consistent deployment setups.
Module 6: CI/CD Pipelines for ML Projects
⏳ 60 minutes
-
Automating training, testing, and deployment steps.
-
Tools like GitHub Actions and Jenkins in ML workflows.
Module 7: Orchestration with Airflow/Kubeflow
⏳ 60 minutes
-
Managing end-to-end workflows for model training and deployment.
-
Scheduling, monitoring, and retry mechanisms.
Module 8: Model Serving & Monitoring
⏳ 60 minutes
-
Deployment strategies: batch, real-time, and A/B testing.
-
Monitoring model performance, drift, and feedback loops.
Module 9: Real-World Project: End-to-End MLOps
⏳ 75 minutes
-
Implementing a complete MLOps project pipeline from data to deployment.
-
Best practices and lessons learned.
Get certificate
Job Outlook
-
High Demand: MLOps is a top skill for AI infrastructure and DevOps careers.
-
Career Advancement: Roles like ML Engineer, MLOps Engineer, and AI Platform Architect are booming.
-
Salary Potential: $100K–$160K/year depending on location and experience.
-
Freelance Opportunities: MLOps consulting, deployment automation, and AI infrastructure design.
Explore More Learning Paths
Build a strong foundation in MLOps and Azure Machine Learning with these carefully curated programs designed to guide you through practical projects and end-to-end ML workflows.
Related Courses
-
Complete MLOps Bootcamp With 10+ End To End ML Projects Course – Gain hands-on experience with multiple ML projects, covering the full MLOps lifecycle from model development to deployment.
-
Azure Machine Learning & MLOps: Beginner to Advance Course – Master Azure-based MLOps workflows, including model building, deployment, and monitoring in production environments.
Related Reading
-
What Does a Data Engineer Do? – Learn how data engineering practices underpin effective MLOps workflows, model deployment, and system scalability.