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Apache Spark Deep Learning Cookbook

You're reading from   Apache Spark Deep Learning Cookbook Over 80 best practice recipes for the distributed training and deployment of neural networks using Keras and TensorFlow

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Product type Paperback
Published in Jul 2018
Publisher Packt
ISBN-13 9781788474221
Length 474 pages
Edition 1st Edition
Languages
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Authors (2):
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Ahmed Sherif Ahmed Sherif
Author Profile Icon Ahmed Sherif
Ahmed Sherif
Amrith Ravindra Amrith Ravindra
Author Profile Icon Amrith Ravindra
Amrith Ravindra
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Toc

Table of Contents (15) Chapters Close

Preface 1. Setting Up Spark for Deep Learning Development 2. Creating a Neural Network in Spark FREE CHAPTER 3. Pain Points of Convolutional Neural Networks 4. Pain Points of Recurrent Neural Networks 5. Predicting Fire Department Calls with Spark ML 6. Using LSTMs in Generative Networks 7. Natural Language Processing with TF-IDF 8. Real Estate Value Prediction Using XGBoost 9. Predicting Apple Stock Market Cost with LSTM 10. Face Recognition Using Deep Convolutional Networks 11. Creating and Visualizing Word Vectors Using Word2Vec 12. Creating a Movie Recommendation Engine with Keras 13. Image Classification with TensorFlow on Spark 14. Other Books You May Enjoy

Starting and configuring a Spark cluster

For most chapters, one of the first things that we will do is to initialize and configure our Spark cluster.

Getting ready

Import the following before initializing cluster.

  • from pyspark.sql import SparkSession

How to do it...

This section walks through the steps to initialize and configure a Spark cluster.

  1. Import SparkSession using the following script:
from pyspark.sql import SparkSession
  1. Configure SparkSession with a variable named spark using the following script:
spark = SparkSession.builder \
.master("local[*]") \
.appName("GenericAppName") \
.config("spark.executor.memory", "6gb") \
.getOrCreate()

How it works...

This section explains how the SparkSession works as an entry point to develop within Spark.

  1. Staring with Spark 2.0, it is no longer necessary to create a SparkConf and SparkContext to begin development in Spark. Those steps are no longer needed as importing SparkSession will handle initializing a cluster.  Additionally, it is important to note that SparkSession is part of the sql module from pyspark.
  2. We can assign properties to our SparkSession:
    1. master: assigns the Spark master URL to run on our local machine with the maximum available number of cores.  
    2. appName: assign a name for the application
    3.  config: assign 6gb to the spark.executor.memory
    4. getOrCreate: ensures that a SparkSession is created if one is not available and retrieves an existing one if it is available

There's more...

For development purposes, while we are building an application on smaller datasets, we can just use master("local").  If we were to deploy on a production environment, we would want to specify master("local[*]") to ensure we are using the maximum cores available and get optimal performance.

See also

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