Book Image

Learning Apache Spark 2

Book Image

Learning Apache Spark 2

Overview of this book

Apache Spark has seen an unprecedented growth in terms of its adoption over the last few years, mainly because of its speed, diversity and real-time data processing capabilities. It has quickly become the preferred choice of tool for many Big Data professionals looking to find quick insights from large chunks of data. This book introduces you to the Apache Spark framework, and familiarizes you with all the latest features and capabilities introduced in Spark 2. Starting with a detailed introduction to Spark’s architecture and the installation procedure, this book covers everything you need to know about the Spark framework in the most practical manner. You will learn how to perform the basic ETL activities using Spark, and work with different components of Spark such as Spark SQL, as well as the Dataset and DataFrame APIs for manipulating your data. Then, you will perform machine learning using Spark MLlib, as well as perform streaming analytics and graph processing using the Spark Streaming and GraphX modules respectively. The book also gives special emphasis on deploying your Spark models, and how they can be operated in a clustered mode. During the course of the book, you will come across implementations of different real-world use-cases and examples, giving you the hands-on knowledge you need to use Apache Spark in the best possible manner.
Table of Contents (18 chapters)
Learning Apache Spark 2
Credits
About the Author
About the Reviewers
www.packtpub.com
Customer Feedback
Preface

DStream best practices


  • Setting the right batch interval is most crucial for Spark Streaming. Your batch processing time should be less than the batch interval. You should monitor end-to-end delay for each batch, and if they are consistent and comparable to the batch size, your system can be considered stable. If your batch processing time is bigger than your batch interval , you will run out of memory. You can use spark.streaming.receiver.maxRate to limit the rate of the receiver.
  • Transformations will determine the amount of memory used by Spark Streaming. If you are maintaining a large key table using updateStateByKey, do account for the memory required.
  • Each Spark receiver runs within an executor and needs a single core. If you are configuring parallel reads using multiple receivers, make sure that spark.cores.max is configured by taking the receiver slots in the account.
  • Spark generates N number of blocks per n batch interval milliseconds. For example, during a 5 millisecond batch interval...