
Azure Data Scientist Associate Certification Guide
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Azure Data Scientist Associate Certification Guide
By:
Overview of this book
The Azure Data Scientist Associate Certification Guide helps you acquire practical knowledge for machine learning experimentation on Azure. It covers everything you need to pass the DP-100 exam and become a certified Azure Data Scientist Associate.
Starting with an introduction to data science, you'll learn the terminology that will be used throughout the book and then move on to the Azure Machine Learning (Azure ML) workspace. You'll discover the studio interface and manage various components, such as data stores and compute clusters.
Next, the book focuses on no-code and low-code experimentation, and shows you how to use the Automated ML wizard to locate and deploy optimal models for your dataset. You'll also learn how to run end-to-end data science experiments using the designer provided in Azure ML Studio.
You'll then explore the Azure ML Software Development Kit (SDK) for Python and advance to creating experiments and publishing models using code. The book also guides you in optimizing your model's hyperparameters using Hyperdrive before demonstrating how to use responsible AI tools to interpret and debug your models. Once you have a trained model, you'll learn to operationalize it for batch or real-time inferences and monitor it in production.
By the end of this Azure certification study guide, you'll have gained the knowledge and the practical skills required to pass the DP-100 exam.
Table of Contents (17 chapters)
Preface
Section 1: Starting your cloud-based data science journey
Chapter 1: An Overview of Modern Data Science
Chapter 2: Deploying Azure Machine Learning Workspace Resources
Chapter 3: Azure Machine Learning Studio Components
Chapter 4: Configuring the Workspace
Section 2: No code data science experimentation
Chapter 5: Letting the Machines Do the Model Training
Chapter 6: Visual Model Training and Publishing
Section 3: Advanced data science tooling and capabilities
Chapter 7: The AzureML Python SDK
Chapter 8: Experimenting with Python Code
Chapter 9: Optimizing the ML Model
Chapter 10: Understanding Model Results
Chapter 11: Working with Pipelines
Chapter 12: Operationalizing Models with Code
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