Hadoop Hands-on: Difference between revisions

From Gridkaschool
Jump to navigationJump to search
No edit summary
No edit summary
Line 2: Line 2:


=Prerequisites=
=Prerequisites=


* Basic understanding of Unix/Linux OS management is needed to do the exercises.
* Basic understanding of Unix/Linux OS management is needed to do the exercises.

* No prior knowledge of Hadoop is required, as we go through the basic concepts.
* No prior knowledge of Hadoop is required, as we go through the basic concepts.
* For this workshop a personal notebook is recommendet.
* For this workshop a personal notebook is recommendet.
* If you use Windows: please install "PuTTY" and the VMWare-Player.
* If you use Windows: please install "PuTTY" and the VMWare-Player.





=Recommendet Material=
=Recommendet Material=


==Books==
==Books==
* Hadoop the Defenitive Guide [Amazon|http://www.amazon.de/Hadoop-Definitive-Guide-Tom-White/dp/1449311520/ref=sr_1_fkmr1_1?ie=UTF8&qid=1345918087&sr=8-1-fkmr1]
* Hadoop the Defenitive Guide [http://www.amazon.de/Hadoop-Definitive-Guide-Tom-White/dp/1449311520/ref=sr_1_fkmr1_1?ie=UTF8&qid=1345918087&sr=8-1-fkmr1]
* Hadoop in Action
* Hadoop in Action
* Data Intensive Text Processing with MapReduce
* Data Intensive Text Processing with MapReduce

Revision as of 20:10, 25 August 2012

Tuesday, 28.8.2012, 13:00 - 18:30

Prerequisites

  • Basic understanding of Unix/Linux OS management is needed to do the exercises.
  • No prior knowledge of Hadoop is required, as we go through the basic concepts.
  • For this workshop a personal notebook is recommendet.
  • If you use Windows: please install "PuTTY" and the VMWare-Player.

Recommendet Material

Books

  • Hadoop the Defenitive Guide [1]
  • Hadoop in Action
  • Data Intensive Text Processing with MapReduce

Content

Session A

  • The hadoop ecosystem: HDFS, MR, HUE, Sqoop, Hive, Pig, HBase, Flume, Oozie
  • What is CDH and the Cloudera-Manager?
  • Installation, starting and basic configurations of a small cluster

Session B

  • HDFS intro (Name Node, Data Node, Secondary Name Node)
  • How is data stored in HDFS?
  • Properties and configurations, relevant for efficient working with HDFS.
  • HDFS commands

Session C

  • Working with the webbased-GUI
  • Running and tracking jobs
  • Java-API and samples
  • Streaming API sample

Session D

  • Map Reduce details, Java-API and Streaming (awk sample)
  • HDFS details, using the webbased-GUI for deeper insights
  • Breaking down a cluster and heal it

Session E

  • Intro to Hive and Sqoop
  • Dataimport via Sqoop
  • Hive scripts

Session F (optional)

  • Serialisation and deserialisation (SerDe) and user defined functions (UDF) with Hive
  • Workflows with oozie