Book Image

HBase Administration Cookbook

By : Yifeng Jiang
Book Image

HBase Administration Cookbook

By: Yifeng Jiang

Overview of this book

As an Open Source distributed big data store, HBase scales to billions of rows, with millions of columns and sits on top of the clusters of commodity machines. If you are looking for a way to store and access a huge amount of data in real-time, then look no further than HBase.HBase Administration Cookbook provides practical examples and simple step-by-step instructions for you to administrate HBase with ease. The recipes cover a wide range of processes for managing a fully distributed, highly available HBase cluster on the cloud. Working with such a huge amount of data means that an organized and manageable process is key and this book will help you to achieve that.The recipes in this practical cookbook start from setting up a fully distributed HBase cluster and moving data into it. You will learn how to use all of the tools for day-to-day administration tasks as well as for efficiently managing and monitoring the cluster to achieve the best performance possible. Understanding the relationship between Hadoop and HBase will allow you to get the best out of HBase so the book will show you how to set up Hadoop clusters, configure Hadoop to cooperate with HBase, and tune its performance.
Table of Contents (16 chapters)
HBase Administration Cookbook
Credits
About the Author
Acknowledgement
About the Reviewers
www.PacktPub.com
Preface

Hot region—write diagnosis


As the data keeps growing, the HBase cluster may become unbalanced due to poorly designed table schema or row keys, or for some other reasons. Many requests may go to a small part of the regions of a table. This is usually called the hot spot region issue.

There are two types of hot spot region issues—hot write and hot read issues. Hot write is generally more important for us, because hot read would benefit greatly from the HBase internal cache mechanism. A solution for the hot write region issue is to find out the hot regions, split them manually, and then distribute the split regions to other region servers.

An HBase edit will firstly be written to the region server's Write-ahead-Log (WAL) . The actual update to the table data occurs once the WAL is successfully appended. This architecture makes it possible to get an approximate write diagnosis easily.

We will create a WriteDiagnosis.java Java source to get write diagnostic information from WAL, in this...