->
Oreilly - Machine Learning Fundamentals with Amazon SageMaker on AWS - 9780135945131
Oreilly - Machine Learning Fundamentals with Amazon SageMaker on AWS
by Asli Bilgin | Publisher: Addison-Wesley Professional | Release Date: September 2019 | ISBN: 9780135945131


Sneak PeekThe Sneak Peek program provides early access to Pearson video products and is exclusively available to Safari subscribers. Content for titles in this program is made available throughout the development cycle, so products may not be complete, edited, or finalized, including video post-production editing.
  1. Introduction
    • Machine Learning Fundamentals with Amazon SageMaker on AWS: Introduction 00:09:34
  2. Module 1: What is Amazon SageMaker?
    • Module introduction 00:01:01
  3. Lesson 1: Amazon Artificial Intelligence and Machine Learning Overview
    • Learning objectives 00:01:06
    • 1.1 Evolution of Artificial Intelligence (AI) and Machine Learning (ML) 00:05:18
    • 1.2 What is ML? 00:09:30
    • 1.3 AWS ML & AI: Platform Services 00:05:40
    • 1.4 AWS ML & AI: Application Services 00:05:30
    • 1.5 AWS ML & AI: Foundational Services 00:00:44
    • 1.6 Sample AI/ML Case Studies with AWS 00:04:45
  4. Lesson 2: How Does Amazon SageMaker Work?
    • Learning objectives 00:00:35
    • 2.1 What is Amazon SageMaker? 00:02:50
    • 2.2 Who Should use Amazon SageMaker? 00:00:45
    • 2.3 What are the Benefits of Amazon SageMaker? 00:01:38
    • 2.4 High Level Overview 00:02:09
    • 2.5 Options for Data Sources 00:07:45
    • 2.6 Supervised Machine Learning 00:04:08
    • 2.7 Unsupervised Machine Learning 00:02:22
    • 2.8 Life Cycle of ML Processing 00:04:14
  5. Lesson 3: Which Use Cases Can Amazon SageMaker Solve?
    • Learning objectives 00:00:38
    • 3.1 Personalization 00:03:12
    • 3.2 Search 00:01:34
    • 3.3 Marketing 00:01:42
    • 3.4 Finance 00:02:50
    • 3.5 Personal Productivity 00:03:47
    • 3.6 Product Management 00:04:21
  6. Lesson 4: High Level Overview of the Amazon SageMaker Components
    • Learning objectives 00:00:36
    • 4.1 Components of Amazon SageMaker 00:01:54
    • 4.2 Demo: AWS SageMaker Console 00:01:59
    • 4.3 Amazon SageMaker Notebooks Service 00:01:31
    • 4.4 Amazon SageMaker Training Service 00:01:45
    • 4.5 Amazon SageMaker Hosting Service 00:00:56
    • 4.6 Pricing 00:05:22
  7. Module 2: Fundamental Machine Learning Concepts with Practical Applications
    • Module introduction 00:00:38
  8. Lesson 5: Machine Learning Concepts and Taxonomy
    • Learning objectives 00:00:25
    • 5.1 What is Input Data? 00:04:57
    • 5.2 What are Features? 00:03:38
    • 5.3 What is a Target? 00:02:39
    • 5.4 What are Observations? 00:02:23
    • 5.5 What is Labeled Data? 00:01:42
    • 5.6 What is Unlabeled Data? 00:01:37
    • 5.7 What is Ground Truth? 00:01:38
    • 5.8 What are Hyperparameters? 00:00:58
    • 5.9 What are Predictions or Inferences 00:00:49
  9. Lesson 6: Selecting the Appropriate Data
    • Learning objectives 00:00:24
    • 6.1 What is the Best Kind of Data? 00:07:43
    • 6.2 Academic and Commercial Sources for Data 00:05:16
    • 6.3 Sample Business Problem for This Course 00:04:40
  10. Lesson 7: Practical Applications for Machine Learning
    • Learning objectives 00:00:36
    • 7.1 How to Frame a Suitable Problem 00:01:57
    • 7.2 Scenarios 00:03:49
    • 7.3 Curator Project Sample Business Problem 00:01:58
    • 7.4 Best Practices for Selecting a Business Problem 00:01:40
  11. Module 3: Amazon SageMaker Supporting Tools and Technologies
    • Module introduction 00:00:45
  12. Lesson 8: Refresher on Technologies Leveraged by Amazon SageMaker
    • Learning objectives 00:00:32
    • 8.1 Amazon S3 00:02:10
    • 8.2 EC2 Instances 00:01:18
    • 8.3 Identity Access Management (IAM) 00:01:21
    • 8.4 Taxonomy 00:01:26
    • 8.5 Key Packages and Libraries 00:05:58
    • 8.6 Package Management and SDKs 00:06:06
  13. Lesson 9: Interactive Lab: Review the SageMaker Console
    • Learning objectives 00:00:31
    • 9.1 Login to AWS Console 00:02:40
    • 9.2 Amazon SageMaker Dashboard Walkthrough 00:04:01
  14. Lesson 10: Interactive Lab: Working with Jupyter Notebooks
    • Learning objectives 00:00:35
    • 10.1 Components of Jupyter Notebooks 00:05:29
    • 10.2 Jupyter Notebooks and Amazon SageMaker 00:02:37
    • 10.3 Tips for Code Execution 00:01:19
    • 10.4 Demo: Create a Notebook Instance 00:13:28
  15. Lesson 11: Interactive Lab: Example SageMaker Notebooks
    • Learning objectives 00:00:37
    • 11.1 High Level Overview 00:03:26
    • 11.2 Common Algorithms with Amazon SageMaker Samples 00:09:01
    • 11.3 How to Bring Your Own Algorithm 00:01:40
    • 11.4 Interactive Lab: Review Amazon SageMaker Pre-built Notebook Types 00:04:27
    • 11.5 Interactive Lab: Walkthrough of a Pre-built Sample Jupyter Notebook 00:09:22
  16. Module 4 Data and Model Management with Amazon SageMaker
    • Module introduction 00:01:27
  17. Lesson 12: Interactive Lab: Working with Jupyter Notebooks
    • Learning objectives 00:00:39
    • 12.1 Best Practices for Scrubbing Data 00:04:14
    • 12.2 Best Practices for Handling Missing Values 00:03:13
    • 12.3 Demo: Source Data from SQL Server 00:08:53
    • 12.4 Demo: Feature Selection 00:02:48
    • 12.5 Interactive Lab: Create an S3 Bucket and Folder 00:01:48
    • 12.6 Interactive Lab: Upload Data through AWS Console 00:01:11
    • 12.7 Interactive Lab: Visualization Demo 00:07:44
  18. Lesson 13: A Closer Look at Algorithms
    • Learning objectives 00:00:40
    • 13.1 How to Approach Learning ML Algorithms 00:03:03
    • 13.2 Sample Popular Algorithms 00:08:36
    • 13.3 Choosing an Algorithm 00:00:43
    • 13.4 Interactive Lab: Demo of a Popular Algorithm 00:09:47
  19. Lesson 14: Algorithm Selection
    • Learning objectives 00:00:34
    • 14.1 Choose the Appropriate Algorithm 00:01:24
    • 14.2 Create Features and Labels 00:03:56
    • 14.3 Split Data - Training, Validation, Test 00:03:26
  20. Lesson 15: Model Training
    • Learning objectives 00:01:18
    • 15.1 Overview of Model Training with Amazon SageMaker 00:02:05
    • 15.2 Model Training Workflow 00:01:36
    • 15.3 Model Training and Evaluation Tips 00:01:52
    • 15.4 Running High Compute Taining Jobs with EC2 Instances 00:01:29
  21. Lesson 16: Assess Model Performance
    • Learning objectives 00:00:42
    • 16.1 How to Evaluate Model Performance 00:01:32
    • 16.2 Sample Metrics for Assessing Accuracy Using Common Models 00:02:48
    • 16.3 Subjective Analysis 00:01:32
    • 16.4 Objective Analysis Using Tools 00:01:48
    • 16.5 Common Causes of Poor Performance 00:04:29
    • 16.6 How to Refine Your Model 00:01:23
  22. Module 5 Predictions and Deployment with Amazon SageMaker
    • Module introduction 00:00:52
  23. Lesson 17: Deploy Model
    • Learning objectives 00:00:22
    • 17.1 Overview Amazon SageMaker Hosting Services 00:03:30
    • 17.2 How to Create an Endpoint with Elastic Inference 00:01:53
    • 17.3 Deploy Model 00:00:49
    • 17.4 Demo: Curator 00:05:09
  24. Lesson 18: Predictions or Inferences
    • Learning objectives 00:01:21
    • 18.1 How do Predictions Work? 00:01:27
    • 18.2 What are the Types of Predictions? 00:03:12
    • 18.3 Generate Real Time Predictions 00:01:10
    • 18.4 Batch Predictions 00:01:14
    • 18.5 Cleanup 00:01:28
  25. Lesson 19: Call to Action & Conclusion
    • Learning objectives 00:00:43
    • 19.1 Final Review 00:02:03
    • 19.2 Next Steps 00:01:54
    • 19.3 References 00:01:29
  26. Summary
    • Machine Learning Fundamentals with Amazon SageMaker on AWS: Summary 00:00:52
  27. Oreilly - Machine Learning Fundamentals with Amazon SageMaker on AWS

    9780135945131.Machine.Learning.Fundamentals.with.Amazon.SageMaker.on.AWS.part1.OR.rar

    9780135945131.Machine.Learning.Fundamentals.with.Amazon.SageMaker.on.AWS.part2.OR.rar

    9780135945131.Machine.Learning.Fundamentals.with.Amazon.SageMaker.on.AWS.part3.OR.rar


 TO MAC USERS: If RAR password doesn't work, use this archive program: 

RAR Expander 0.8.5 Beta 4  and extract password protected files without error.


 TO WIN USERS: If RAR password doesn't work, use this archive program: 

Latest Winrar  and extract password protected files without error.


 Coktum   |  

Information
Members of Guests cannot leave comments.




rss