The Machine Learning Pipeline on AWS (AWS-ML-PL)

PT25450
Training Summary
Learn how to use the machine learning (ML) pipeline with Amazon SageMaker with hands-on exercises and four days of instruction. You will learn how to frame your business problems as ML problems and use Amazon SageMaker to train, evaluate, tune, and deploy ML models. Hands-on learning is a key component of this course, so you’ll choose a project to work on, and then apply the knowledge and skills you learn to your chosen project in each phase of the pipeline. You’ll have a choice of projects: fraud detection, recommendation engines, or flight delays.
Prerequisites
Before taking this course, students should have:
  • Basic knowledge of Python
  • Basic understanding of working in a Jupyter notebook environment
  • Basic understanding of AWS Cloud infrastructure (Amazon S3 and Amazon CloudWatch)
Duration
4 Days/Lecture & Lab
Audience
This course is designed for:
  • Developers
  • Solutions architects
  • Data engineers
  • Anyone who wants to learn about the ML pipeline via Amazon SageMaker, even if you have little to no experience with machine learning
Course Topics
  • Introduction
  • Introduction to Machine Learning and the ML Pipeline
  • Introduction to Amazon SageMaker
  • Problem Formulation
  • Problem Formulation (continued)
  • Preprocessing
  • Model Training
  • Model Evaluation
  • Feature Engineering and Model Tuning
  • Deployment

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