EdX

Introduction to Machine Learning on AWS (edX)

Offered by AWS,
Introduction to Machine Learning on AWS (edX)

This course is intended for software developers and engineers taking their first steps with the AWS services that do much of heavy lifting of Machine Learning for you. In this course, we start with some services where the training model and raw inference is handled for you by Amazon. We'll cover services which do the heavy lifting of computer vision, data extraction and analysis, language processing, speech recognition, translation, ML model training and virtual agents.

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You'll think of your current solutions and see where you can improve these solutions using AI, ML or Deep Learning. All of these solutions can work with your current applications to make some improvements in your user experience or the business needs of your application.

What you'll learn
At the end of this course, students will be able to:

  • Apply machine learning and artificial intelligence to tasks that you'd normally think you'd need a human to do
  • Understand the differences between Machine Learning, Artificial Intelligence and Deep Learning
  • Analyze labels and images using advanced technology
  • Learn how to host your own machine learning models with Amazon Sagemaker

Syllabus

Week 1:
Video :Course Introduction
Video : Week 1 Introduction
Video : Computer Vision: Amazon Rekognition
Video : Exercise Introduction: Amazon Rekognition
Exercise : Amazon Rekognition
Video : Exercise Walkthrough: Amazon Rekognition
Video : Data extraction and analysis: Amazon Textract
Video : Exercise Introduction: Amazon Textract
Exercise: Amazon Textract
Video : Exercise Walkthrough: Amazon Textract
Video : Language Processing: Amazon Comprehend
Video : Exercise Introduction: Amazon Comprehend
Exercise : Amazon Comprehend
Video : Exercise Walkthrough: Amazon Comprehend
Quiz : Week 1 Quiz

Week 2:
Video : Week 2 Introduction
Video : Speech Recognition: Amazon Transcribe
Video: Language Translation: Amazon Translate
Video: Exercise Introduction: Amazon Transcribe and Amazon Translate
Exercise: Amazon Transcribe and Amazon Translate
Video: Exercise Walkthrough: Amazon Transcribe and Amazon Translate
Video: Virtual Agents: Amazon Lex
Video: Exercise Introduction: Amazon Lex
Exercise: Amazon Lex
Video: Exercise Walkthrough: Amazon Lex
Video: Amazon SageMaker
Video: Demo: Amazon SageMaker
Quiz: Week 2 Quiz

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