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Distributed Data Systems with Azure Databricks

You're reading from   Distributed Data Systems with Azure Databricks Create, deploy, and manage enterprise data pipelines

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Product type Paperback
Published in May 2021
Publisher Packt
ISBN-13 9781838647216
Length 414 pages
Edition 1st Edition
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Author (1):
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Alan Bernardo Palacio Alan Bernardo Palacio
Author Profile Icon Alan Bernardo Palacio
Alan Bernardo Palacio
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Table of Contents (17) Chapters Close

Preface 1. Section 1: Introducing Databricks
2. Chapter 1: Introduction to Azure Databricks FREE CHAPTER 3. Chapter 2: Creating an Azure Databricks Workspace 4. Section 2: Data Pipelines with Databricks
5. Chapter 3: Creating ETL Operations with Azure Databricks 6. Chapter 4: Delta Lake with Azure Databricks 7. Chapter 5: Introducing Delta Engine 8. Chapter 6: Introducing Structured Streaming 9. Section 3: Machine and Deep Learning with Databricks
10. Chapter 7: Using Python Libraries in Azure Databricks 11. Chapter 8: Databricks Runtime for Machine Learning 12. Chapter 9: Databricks Runtime for Deep Learning 13. Chapter 10: Model Tracking and Tuning in Azure Databricks 14. Chapter 11: Managing and Serving Models with MLflow and MLeap 15. Chapter 12: Distributed Deep Learning in Azure Databricks 16. Other Books You May Enjoy

Tuning hyperparameters with AutoML

In machine learning and deep learning, hyperparameter tuning is the process in which we select a set of optimal hyperparameters that will be used by our learning algorithm. Here, hyperparameters are values that are used to control the learning process. In contrast, other parameters will be learned from the data. In this sense, a hyperparameter is a concept that follows its statistical meaning; that is, it's a parameter from a prior distribution that captures the prior belief before we start to learn from the data.

In machine learning and deep learning, it is also common to call hyperparameters the parameters that are set before we start to train our model. These parameters will control the training process. Some examples of hyperparameters that are used in deep learning are as follows:

  • Learning rate
  • Number of epochs
  • Hidden layers
  • Hidden units
  • Activation functions

These parameters will directly influence the performance...

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