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Azure Databricks Cookbook

You're reading from   Azure Databricks Cookbook Accelerate and scale real-time analytics solutions using the Apache Spark-based analytics service

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Product type Paperback
Published in Sep 2021
Publisher Packt
ISBN-13 9781789809718
Length 452 pages
Edition 1st Edition
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Authors (2):
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Vinod Jaiswal Vinod Jaiswal
Author Profile Icon Vinod Jaiswal
Vinod Jaiswal
Phani Raj Phani Raj
Author Profile Icon Phani Raj
Phani Raj
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Toc

Table of Contents (12) Chapters Close

Preface 1. Chapter 1: Creating an Azure Databricks Service 2. Chapter 2: Reading and Writing Data from and to Various Azure Services and File Formats FREE CHAPTER 3. Chapter 3: Understanding Spark Query Execution 4. Chapter 4: Working with Streaming Data 5. Chapter 5: Integrating with Azure Key Vault, App Configuration, and Log Analytics 6. Chapter 6: Exploring Delta Lake in Azure Databricks 7. Chapter 7: Implementing Near-Real-Time Analytics and Building a Modern Data Warehouse 8. Chapter 8: Databricks SQL 9. Chapter 9: DevOps Integrations and Implementing CI/CD for Azure Databricks 10. Chapter 10: Understanding Security and Monitoring in Azure Databricks 11. Other Books You May Enjoy

Learning about output partitions 

Saving partitioned data using the proper condition can significantly boost performance while you're reading and retrieving data for further processing.

Reading the required partition limits the number of files and partitions that Spark reads while querying data. It also helps with dynamic partition pruning.

But sometimes, too many optimizations can make things worse. For example, if you have several partitions, data is scattered within multiple files, so searching the data for particular conditions in the initial query can take time. Also, memory utilization will be more while processing the metadata table as it contains several partitions.

While saving the in-memory data to disk, you must consider the partition sizes as Spark produces files for each task. Let's consider a scenario: if the cluster configuration has more memory for processing the dataframe and saving it as larger partition sizes, then processing the same data...

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