Beginning Apache Pig Beginning Apache Pig

Beginning Apache Pig

Big Data Processing Made Easy

    • 26,99 €
    • 26,99 €

Beschreibung des Verlags

Learn to use Apache Pig to develop lightweight big data applications easily and quickly. This book shows you many optimization techniques and covers every context where Pig is used in big data analytics. Beginning Apache Pig shows you how Pig is easy to learn and requires relatively little time to develop big data applications. 
The book is divided into four parts: the complete features of Apache Pig; integration with other tools; how to solve complex business problems; and optimization of tools. 
You'll discover topics such as MapReduce and why it cannot meet every business need; the features of Pig Latin such as data types for each load, store, joins, groups, and ordering; how Pig workflows can be created; submitting Pig jobs using Hue; and working with Oozie. You'll also see how to extend the framework by writing UDFs and custom load, store, and filter functions. Finally you'll cover different optimization techniques such as gathering statistics about a Pig script, joining strategies, parallelism, and the role of data formats in good performance.
What You Will Learn
• Use all the features of Apache Pig• Integrate Apache Pig with other tools• Extend Apache Pig• Optimize Pig Latin code• Solve different use cases for Pig Latin
Who This Book Is For
All levels of IT professionals: architects, big data enthusiasts, engineers, developers, and big data administrators

GENRE
Computer und Internet
ERSCHIENEN
2016
10. Dezember
SPRACHE
EN
Englisch
UMFANG
297
Seiten
VERLAG
Apress
GRÖSSE
3,2
 MB

Mehr ähnliche Bücher

Hadoop in Action Hadoop in Action
2010
Mastering SAP ABAP Mastering SAP ABAP
2019
Pro Python System Administration Pro Python System Administration
2010
PowerShell Deep Dives PowerShell Deep Dives
2013
IBM InfoSphere Streams: Accelerating Deployments with Analytic Accelerators IBM InfoSphere Streams: Accelerating Deployments with Analytic Accelerators
2014
Practical Concurrent Haskell Practical Concurrent Haskell
2017