Ebook: Apache Flume: Distributed Log Collection for Hadoop
Author: Steve Hoffman
- Series: What You Need to Know
- Year: 2013
- Publisher: Packt Publishing
- Language: English
- pdf
Stream data to Hadoop using Apache Flume
Overview
- Integrate Flume with your data sources
- Transcode your data en-route in Flume
- Route and separate your data using regular expression matching
- Configure failover paths and load-balancing to remove single points of failure
- Utilize Gzip Compression for files written to HDFS
In Detail
Apache Flume is a distributed, reliable, and available service for efficiently collecting, aggregating, and moving large amounts of log data. Its main goal is to deliver data from applications to Apache Hadoop's HDFS. It has a simple and flexible architecture based on streaming data flows. It is robust and fault tolerant with many failover and recovery mechanisms.
Apache Flume: Distributed Log Collection for Hadoop covers problems with HDFS and streaming data/logs, and how Flume can resolve these problems. This book explains the generalized architecture of Flume, which includes moving data to/from databases, NO-SQL-ish data stores, as well as optimizing performance. This book includes real-world scenarios on Flume implementation.
Apache Flume: Distributed Log Collection for Hadoop starts with an architectural overview of Flume and then discusses each component in detail. It guides you through the complete installation process and compilation of Flume.
It will give you a heads-up on how to use channels and channel selectors. For each architectural component (Sources, Channels, Sinks, Channel Processors, Sink Groups, and so on) the various implementations will be covered in detail along with configuration options. You can use it to customize Flume to your specific needs. There are pointers given on writing custom implementations as well that would help you learn and implement them.
What you will learn from this book
- Understand the Flume architecture
- Download and install open source Flume from Apache
- Discover when to use a memory or file-backed channel
- Understand and configure the Hadoop File System (HDFS) sink
- Learn how to use sink groups to create redundant data flows
- Configure and use various sources for ingesting data
- Inspect data records and route to different or multiple destinations based on payload content
- Transform data en-route to Hadoop
- Monitor your data flows
Approach
A starter guide that covers Apache Flume in detail.
Who this book is written for
Apache Flume: Distributed Log Collection for Hadoop is intended for people who are responsible for moving datasets into Hadoop in a timely and reliable manner like software engineers, database administrators, and data warehouse administrators.