Free Coupon [New] Ultimate Docker Bootcamp for AI/ML,MLOps Practitioners
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This highly-rated course boasts a 4.8-star-star rating from 4 reviews and has successfully guided 4,008 students in mastering Other IT & Software skills. Featuring 5 hour(s) 30 minute(s) of expert-led content delivered in English, this course offers thorough training to enhance your Social Science expertise. The course details were last updated on December 24, 2024. This coupon code is brought to you by Anonymous.
  • Expires on: 2025/06/29
  • Last Update: June 25, 2025
  • Price: 44.99 $ 0 $

About This Course

Welcome to the ultimate project-based course on Docker for AI/ML Engineers.

Whether you're a machine learning enthusiast, an MLOps practitioner, or a DevOps pro supporting AI teams — this course will teach you how to harness the full power of Docker for AI/ML development, deployment, and consistency.


What’s Inside?

This course is built around hands-on labs and real projects. You'll learn by doing — containerizing notebooks, serving models with FastAPI, building ML dashboards, deploying multi-service stacks, and even running large language models (LLMs) using Dockerized environments.

Each module is a standalone project you can reuse in your job or portfolio.


What Makes This Course Different?

  • Project-based learning: Each module has a real-world use case — no fluff.

  • AI/ML Focused: Tailored for the needs of ML practitioners, not generic Docker tutorials.

  • MCP & LLM Ready: Learn how to run LLMs locally with Docker Model Runner and use Docker MCP Toolkit to get started with Model Context Protocol

  • FastAPI, Streamlit, Compose, DevContainers — all in one course.


Projects You'll Build

  • Reproducible Jupyter Scikit-learn dev environment

  • FastAPI-wrapped ML model in a Docker container

  • Streamlit dashboard for real-time ML inference

  • LLM runner using Docker Model Runner

  • Full-stack Compose setup (frontend model API)

  • CI/CD pipeline to build and push Docker images

By the end of the course, you’ll be able to:

  • Standardize your ML environments across teams

  • Deploy models with confidence — from laptop to cloud

  • Reproduce experiments in one line with Docker

  • Save time debugging “it worked on my machine” issues

  • Build a portable and scalable ML development workflow