Mastering MLOps: From Model Development to Deployment


A Practical Guide to Building, Automating, and Scaling Machine Learning Pipelines with Modern Tools and Best Practices

What you will learn


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Understand the core concepts, benefits, and evolution of MLOps.

Learn the differences between MLOps and DevOps practices.

Set up a version-controlled MLOps project using Git and Docker.

Build end-to-end ML pipelines from data preprocessing to deployment.

Transition ML models from experimentation to production environments.

Deploy and monitor ML models for performance and data drift.

Gain hands-on experience with Docker for ML model containerization.

Learn Kubernetes basics and orchestrate ML workloads effectively.

Set up local and cloud-based MLOps infrastructure (AWS, GCP, Azure).Troubleshoot common challenges in scalability, reproducibility, and reliability.

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