Book Image

Learning Storm

By : Ankit Jain, Anand Nalya
Book Image

Learning Storm

By: Ankit Jain, Anand Nalya

Overview of this book

<p>Starting with the very basics of Storm, you will learn how to set up Storm on a single machine and move on to deploying Storm on your cluster. You will understand how Kafka can be integrated with Storm using the Kafka spout.</p> <p>You will then proceed to explore the Trident abstraction tool with Storm to perform stateful stream processing, guaranteeing single message processing in every topology. You will move ahead to learn how to integrate Hadoop with Storm. Next, you will learn how to integrate Storm with other well-known Big Data technologies such as HBase, Redis, and Kafka to realize the full potential of Storm.</p> <p>Finally, you will perform in-depth case studies on Apache log processing and machine learning with a focus on Storm, and through these case studies, you will discover Storm's realm of possibilities.</p>
Table of Contents (16 chapters)
Learning Storm
Credits
About the Authors
About the Reviewers
www.PacktPub.com
Preface
Index

Summary


In this chapter, we learned how to set up a distributed Storm cluster and how to set up the prerequisites such as ZooKeeper. We also learned how to deploy a topology on a Storm cluster and how to control the parallelism of a topology. Finally, we saw the various ways in which we can partition streams in Storm using various stream groupings provided by Storm. Now, you should be able to develop basic Storm topologies and deploy them.

In the next chapter, we will see how we can monitor the Storm cluster using the Storm UI and also how to collect topology statistics using the Nimbus thrift interface.