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You're reading from  Jupyter Cookbook

Product typeBook
Published inApr 2018
Reading LevelIntermediate
PublisherPackt
ISBN-139781788839440
Edition1st Edition
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Author (1)
Dan Toomey
Dan Toomey
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Dan Toomey

Dan Toomey has been developing application software for over 20 years. He has worked in a variety of industries and companies, in roles from sole contributor to VP/CTO-level. For the last few years, he has been contracting for companies in the eastern Massachusetts area. Dan has been contracting under Dan Toomey Software Corp. Dan has also written R for Data Science, Jupyter for Data Sciences, and the Jupyter Cookbook, all with Packt.
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Analyzing big-text data


We can run an analysis on large text streams, such as news, articles, to attempt to glean important themes. Here we are pulling out bigrams—combinations of two words—that appear in sequence throughout the article.

How to do it...

For this example, I am using text from an online article from Atlantic Monthly called The World Might Be Better Off Without College for Everyone at https://www.theatlantic.com/magazine/archive/2018/01/whats-college-good-for/546590/.

I am using this script:

import pyspark
if not 'sc' in globals():
 sc = pyspark.SparkContext()

sentences = sc.textFile('B09656_09_article.txt') \
    .glom() \
    .map(lambda x: " ".join(x)) \
    .flatMap(lambda x: x.split("."))
print(sentences.count(),"sentences")

bigrams = sentences.map(lambda x:x.split()) \
    .flatMap(lambda x: [((x[i],x[i+1]),1) for i in range(0,len(x)-1)])
print(bigrams.count(),"bigrams")

frequent_bigrams = bigrams.reduceByKey(lambda x,y:x+y) \
    .map(lambda x:(x[1],x[0])) \
    .sortByKey...
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Jupyter Cookbook
Published in: Apr 2018Publisher: PacktISBN-13: 9781788839440

Author (1)

author image
Dan Toomey

Dan Toomey has been developing application software for over 20 years. He has worked in a variety of industries and companies, in roles from sole contributor to VP/CTO-level. For the last few years, he has been contracting for companies in the eastern Massachusetts area. Dan has been contracting under Dan Toomey Software Corp. Dan has also written R for Data Science, Jupyter for Data Sciences, and the Jupyter Cookbook, all with Packt.
Read more about Dan Toomey