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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 FREE CHAPTER 2. Creating a Neural Network in Spark 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

Preparing stock data for model performance


We are almost ready to build a prediction algorithm for the stock value performance of Apple. The remaining task at hand is to prepare the data in a manner that ensures the best possible predictive outcome.

Getting ready

We will perform transformations and visualizations on the dataframe in this section. This will require importing the following libraries in Python:

  • numpy
  • MinMaxScaler()

How to do it...

This section walks through the steps for preparing the stock market data for our model.

  1. Execute the following script to group the year column by the Adj Close count:
df.groupBy(['year']).agg({'Adj Close':'count'})\
     .withColumnRenamed('count(Adj Close)', 'Row Count')\
     .orderBy(["year"],ascending=False)\
     .show()
  1. Execute the following script to create two new dataframes for training and testing purposes:
trainDF = df[df.year < 2017]
testDF = df[df.year > 2016]
  1. Convert the two new dataframes  to pandas dataframes to get row and column counts...
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