Packt
DevOps to MLOps Bootcamp– Build & Deploy ML Systems
Packt

DevOps to MLOps Bootcamp– Build & Deploy ML Systems

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Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace
Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Implement end-to-end MLOps pipelines from data preparation to production deployment.

  • Containerize ML models using Docker and deploy with FastAPI and Streamlit interfaces.

  • Build scalable model inference infrastructure using Kubernetes clusters and services.

  • Automate CI/CD pipelines and monitoring workflows using GitHub Actions and KEDA.

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Recently updated!

October 2025

Assessments

10 assignments

Taught in English

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There are 8 modules in this course

In this module, you will be introduced to MLOps, its core principles, and its importance in modern machine learning workflows. The evolution from traditional MLOps to emerging paradigms like LLMOps and AgenticAIOps will be covered. You'll also compare DevOps and MLOps, examining their similarities and differences, and explore the growing role of the MLOps Engineer.

What's included

7 videos1 reading1 assignment

In this module, you will set up the environment and tools necessary to work on the house price prediction project. You'll get hands-on experience in setting up Docker containers, configuring MLflow for experiment tracking, and creating isolated Python virtual environments for reproducibility. Additionally, you'll understand the end-to-end ML lifecycle and how MLOps practices integrate into it.

What's included

10 videos1 assignment

This module focuses on preparing and transforming raw data for modeling. You will learn essential data engineering and feature engineering techniques, including how to split data for training and testing. Additionally, you will experiment with different algorithms and hyperparameter tuning to identify the optimal model configuration.

What's included

10 videos1 assignment

In this module, you’ll transition from model development to deployment. You’ll learn to package your model with FastAPI and create a user interface with Streamlit. The module focuses on containerizing the application with Docker and Docker Compose to ensure the deployment is scalable and production-ready.

What's included

10 videos1 assignment

This module covers the automation of MLOps pipelines using GitHub Actions for continuous integration (CI). You’ll learn to create workflows that automate the model training, testing, and deployment processes. The integration of MLflow and Docker will streamline model tracking and container management as part of the CI pipeline.

What's included

10 videos1 assignment

This module introduces Kubernetes as a platform for deploying scalable machine learning models in production. You will learn how to architect and deploy ML model serving infrastructure using Kubernetes, including configuring pods, services, and deployments. You'll also generate and customize Kubernetes YAML manifests to automate deployment and scaling.

What's included

11 videos1 assignment

In this module, you will focus on monitoring and autoscaling of machine learning models in production. Using Prometheus and Grafana, you'll implement system monitoring and visualize performance metrics. You'll also learn to automate scaling using KEDA and VPA based on resource usage, and conduct load testing to evaluate system capacity under stress.

What's included

14 videos1 assignment

This module introduces GitOps principles and how they can streamline deployment in MLOps. You will learn how to use ArgoCD to implement continuous delivery (CD) pipelines and manage ML/LLM application deployments. By designing end-to-end CI/CD workflows, you’ll understand how GitOps ensures a seamless, automated deployment process for machine learning models.

What's included

8 videos3 assignments

Instructor

Packt - Course Instructors
Packt
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