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Microsoft Power Platform Functional Consultant: PL-200 Exam Guide

You're reading from   Microsoft Power Platform Functional Consultant: PL-200 Exam Guide Learn how to customize and configure Microsoft Power Platform and prepare for the PL-200 exam

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Product type Paperback
Published in Dec 2020
Publisher Packt
ISBN-13 9781838985684
Length 648 pages
Edition 1st Edition
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Author (1):
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Julian Sharp Julian Sharp
Author Profile Icon Julian Sharp
Julian Sharp
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Table of Contents (34) Chapters Close

Preface 1. Section 1: Introduction
2. PL-200 Exam FREE CHAPTER 3. Section 2: Microsoft Dataverse
4. Power Platform 5. Data Modeling 6. Business Rules 7. Classic Workflows 8. Managing Data 9. Dataverse Settings 10. Security 11. Section 3: Power Apps
12. Model-Driven Apps 13. Canvas Apps 14. Portal Apps 15. Section 4: Automation
16. Power Automate Flows 17. Business Process Flows 18. UI Flows 19. Section 5: Power Virtual Agents
20. Creating Chatbots 21. Configuring Chatbots 22. Section 6: Integrations
23. Power BI 24. AI Builder 25. Microsoft 365 Integration 26. Application Life Cycle Management 27. Tips and Tricks 28. Practice Test 1 29. Answers to Practice Test 1 30. Practice Test 2 31. Answers to Practice Test 2 32. Assessments 33. Other Books You May Enjoy

Preparing data for a model

ML models are very dependent upon the datasets used to train and test the given model. A frequent problem in ML is overfitting. Overfitting means that the model does not generalize well from training data to unseen data, especially data that is unlike the training data. Common causes include the presence of  bias in the training data, meaning the model cannot distinguish between the signal and the noise.

AI Builder implements many techniques to avoid such problems, but you will need to supply AI Builder with enough data to be able to create a model. The more data and the more varied the data, the better the model will behave.

AI Builder requires the training and test data to be stored in entities in the Common Data Service. If the data does not reside in the Common Data Service, you will need to import the data. You may need to create a custom entity for this data.

AI Builder provides a set of examples and labs with sample data that you can use to...
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