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Fast Data Processing with Spark 2

You're reading from   Fast Data Processing with Spark 2 Accelerate your data for rapid insight

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Product type Paperback
Published in Oct 2016
Publisher Packt
ISBN-13 9781785889271
Length 274 pages
Edition 3rd Edition
Languages
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Authors (2):
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Krishna Sankar Krishna Sankar
Author Profile Icon Krishna Sankar
Krishna Sankar
Holden Karau Holden Karau
Author Profile Icon Holden Karau
Holden Karau
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Toc

Table of Contents (13) Chapters Close

Preface 1. Installing Spark and Setting Up Your Cluster 2. Using the Spark Shell FREE CHAPTER 3. Building and Running a Spark Application 4. Creating a SparkSession Object 5. Loading and Saving Data in Spark 6. Manipulating Your RDD 7. Spark 2.0 Concepts 8. Spark SQL 9. Foundations of Datasets/DataFrames – The Proverbial Workhorse for DataScientists 10. Spark with Big Data 11. Machine Learning with Spark ML Pipelines 12. GraphX

Deploying Spark with Chef (Opscode)

Chef is an open source automation platform that has become increasingly popular for deploying and managing both small and large clusters of machines. Chef can be used to control a traditional static fleet of machines and can also be used with EC2 and other cloud providers. Chef uses cookbooks as the basic building blocks of configuration and can either be generic or site-specific. If you have not used Chef before, a good tutorial for getting started with Chef can be found at https://learnchef.opscode.com/. You can use a generic Spark cookbook as the basis for setting up your cluster.

To get Spark working, you need to create a role for both the master and the workers as well as configure the workers to connect to the master. Start by getting the cookbook from https://github.com/holdenk/chef-cookbook-spark. The bare minimum requirements are to set the master host name (as master) to enable worker nodes to connect, and the username so that Chef can be installed in the correct place. You will also need to either accept Sun's Java license or switch to an alternative JDK. Most of the settings that are available in spark-env.sh are also exposed through the cookbook settings. You can see an explanation of the settings in the Configuring multiple hosts over SSH section. The settings can be set as per role or you can modify the global defaults.

Create a role for the master with a knife role; create spark_master_role -e [editor]. This will bring up a template role file that you can edit. For a simple master, set it to this code:

{ 
  "name": "spark_master_role", "description": "", "json_class": "Chef::Role",   "default_attributes": {   }, "override_attributes": { 
   "username":"spark", "group":"spark", "home":"/home/spark/sparkhome", "master_ip":"10.0.2.15", }, "chef_type": "role", "run_list": [ "recipe[spark::server]", "recipe[chef-client]", ], "env_run_lists": { 
  } 
} 

Then, create a role for the client in the same manner except that instead of spark::server, you need to use the spark::client recipe. Deploy the roles to different hosts:

knife node run_list add master role[spark_master_role]
knife node run_list add worker role[spark_worker_role]

Then, run chef-client on your nodes to update. Congrats, you now have a Spark cluster running!

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