Cover art for Hadoop in 24 Hours, Sams Teach Yourself
Published
Sams, April 2017
ISBN
9780672338526
Format
Softcover, 496 pages
Dimensions
23.4cm × 18.1cm × 2.5cm

Hadoop in 24 Hours, Sams Teach Yourself

Not in stock
Fast $7.95 flat-rate shipping!
Only pay $7.95 per order within Australia, including end-to-end parcel tracking.
100% encrypted and secure
We adhere to industry best practice and never store credit card details.
Talk to real people
Contact us seven days a week – our staff are here to help.

Hadoop is the technology at the heart of the Big Data revolution, and Hadoop skills are in enormous demand. Now, in just 24 lessons of one hour or less, students can learn all the skills and techniques they'll need to deploy each key component of a Hadoop platform in a local environment or in the cloud, building a fully functional Hadoop cluster and using it with real programs and datasets.

Each short, easy lesson builds on all that's come before, helping students master all of Hadoop's essentials, and extend it to meet real-world challenges. Sams Teach Yourself Hadoop in 24 Hours covers all this, and much more:

Understanding Hadoop and the Hadoop Distributed File System (HDFS)

Importing data into Hadoop, and process it there

Mastering basic MapReduce Java programming, and using advanced MapReduce API concepts

Making the most of Apache Pig and Apache Hive

Implementing and administering YARN

Taking advantage of the full Hadoop ecosystem

Managing Hadoop clusters with Apache Ambari

Working with the Hadoop User Environment (HUE)

Scaling, securing, and troubleshooting Hadoop environments

Integrating Hadoop into the enterprise

Deploying Hadoop in the cloud

Getting started with Apache Spark

Step-by-step instructions walk students through common questions, issues, and tasks; Q-and-As, Quizzes, and Exercises build and test your knowledge; "Did You Know?" tips offer insider advice and shortcuts; and "Watch Out!" alerts help avoid pitfalls. By the time they're finished, they'll be comfortable using Apache Hadoop to solve a wide spectrum of Big Data problems.

Related books