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Udemy

Deploy ML Model in Production with FastAPI and Docker

via Udemy

Overview

Learn ML deployment using FastAPI, Docker, CI/CD, and Cloud platforms

What you'll learn:
  • Deploy machine learning models in production using FastAPI and Docker.
  • Create APIs for ML models using FastAPI with optimized endpoints.
  • Containerize ML applications with Docker for scalable deployments.
  • Set up CI/CD pipelines for automated deployment and testing.
  • Train, evaluate, and save ML models, focusing on real-world datasets.
  • Deploy ML models to cloud platforms like Heroku and Microsoft Azure.
  • Build and integrate a simple frontend for ML model APIs.
  • Implement logging, error handling, and request handling in APIs.

Stop building models that live and die in notebooks. It's time your ML creations actually see the light of day.

Transform your machine learning projects from academic exercises to production-ready applications with this comprehensive, hands-on course. Master the entire ML deployment pipeline using industry-standard tools that employers are actively seeking.

In this practical journey, you'll build real-world ML systems that deliver actual business value. Starting with fundamental ML concepts, you'll quickly progress to crafting robust APIs with FastAPI, containerizing applications with Docker, and deploying scalable solutions across multiple cloud platforms including Heroku and Microsoft Azure.

What sets this course apart:

  • Project-Based Learning: Build 4 complete end-to-end ML applications including score prediction, wine quality classification, and iris species identification

  • Production-Level Skills: Learn industry best practices for API development, containerization, error handling, and latency optimization

  • Full-Stack Integration: Connect your ML models to both backend systems and user-friendly frontends

  • CI/CD Implementation: Establish automated testing and deployment pipelines used by professional development teams

  • Cloud Deployment Mastery: Deploy your solutions to multiple cloud providers with monitoring and scaling capabilities

Whether you're a data scientist looking to operationalize your models or a developer wanting to integrate ML into production applications, this course provides the missing link between experimental machine learning and deploying systems that create real business impact.

By completion, you'll have a portfolio of deployed ML applications and the confidence to implement end-to-end ML systems that showcase your capabilities to potential employers.

Don't just be another data scientist with models trapped on your hard drive. Become the invaluable engineer who makes ML work in the real world.

Syllabus

  • Machine Learning Concepts
  • Score prediction ML Model with Liner Regression
  • Deploy ML Model with Streamlit Server
  • Introduction to FastAPI
  • Creating a FastAPI Application for Model Serving
  • Mini Project 1: Wine Value Classification with FastAPI
  • Preparing the Application for Production
  • Introduction to Docker
  • Score Prediction ML with FastAPI and Docker
  • Mini Project 2: Iris Flower classification with FastAPI and Docker
  • Deploy ML model with Fastapi and Docker (Heroku)
  • Mini Project 3: Deploy Iris ML model with Fastapi and Docker
  • Deploy Test Score prediction ML with Fastapi (Microsoft Azure)
  • Course Project: End-to-end deployment of a custom ML model with FastAPI and Dock

Taught by

Meta Brains and Skool of AI

Reviews

4.3 rating at Udemy based on 37 ratings

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