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Python

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# from __future__ import division
from nltk import sent_tokenize, word_tokenize, pos_tag
from nltk.probability import FreqDist
from nltk.corpus import stopwords
import nltk
import codecs
import base64
nltk.download('stopwords')
# faceapp_file = open('faceapp.txt','r')
with open('tos_file/netflix.txt', 'r') as faceapp_file:
faceapp_text = faceapp_file.read()
faceapp_text_list = faceapp_text.split("\n\n")
#tos stopwords
tos_default_stopwords = set(stopwords.words('english'))
tos_custom_stopwords = set(codecs.open('stopwords.txt', 'r').read().splitlines())
tos_all_stopwords = tos_default_stopwords | tos_custom_stopwords
# multi-line string HTML
print('''<!DOCTYPE>
<html>
<head>
<script src="https://code.jquery.com/jquery-3.5.0.min.js"></script>
<script src="https://ajax.googleapis.com/ajax/libs/jquery/3.5.1/jquery.min.js"></script>
<link rel="stylesheet" href="faceapp.css">
<link rel="stylesheet" href="legend.css">
<script src="highlight.js"></script>
<meta charset="utf-8">
<title></title>
</head>
<body>''')
#wrapper
print('<div class ="tos_wrapper"><div class="intro">')
#insert an image
# https://upload.wikimedia.org/wikipedia/commons/1/15/Joffe_signing_the_Treaty_of_Tartu.jpg
FaceApp_img_url = base64.b64encode(open('img/netflix_logo.png', 'rb').read()).decode('utf-8')
FaceApp_image = '<div class="img" style="position: fixed; background-color: gainsboro;">Netflix</div><br><img class="image" src="data:img/netflix_logo.png;base64,{}">'.format(FaceApp_img_url)
print(FaceApp_image)
#info box
print('<div class ="info">')
infotext = [('Name of Service', 'Netflix'), ('Country of Origin', 'United States'), ('Initial release', 'August, 1997'), ('Type', 'Online Video Streaming'), ('Word Counts', '2,283'), ('Original Source', '<a href="https://help.netflix.com/legal/termsofuse" target="_blank">link</a>'), ('Description', 'Netflix is an American media-services provider and production company headquartered in Los Gatos, California. The company&#39;s primary business is its subscription-based streaming service which offers online streaming of a library of films and television programs, including those produced in-house.')]
for title, info in infotext:
print('<div class="info_{0}" ><div class="info_title" ><b>{0}</b></div><div class="info_content">{1}</div></div><br>'.format(title, info))
print('</div></div>')
print('''
<div class="legend">
<li class="legendhide eachlegend">stopwords</li>
<li class="legendadjective eachlegend">adjective</li>
<li class="legendverb eachlegend">verb</li>
<li class="legendnoun eachlegend">noun</li>
<li class="legendpropernoun eachlegend">proper noun</li>
<li class="legendadverb eachlegend">adverb</li>
<li class="legendpossesivepronoun eachlegend">possesive pronoun</li>
<li class="legendpresentparticiple eachlegend">present participle</li>
<li class="legendadjectivesuperlative eachlegend">adjective superlative</li>
<li class="legendadverb-comparative-superative eachlegend">adverb comparative + superative</li>
</div>
''')
#ToS text
print('<div class ="paragraph">')
tokenized_all = []
for paragraph in faceapp_text_list:
tokenized = word_tokenize(paragraph)
tokenized_all += tokenized # add to the tokenized_all
tagged = pos_tag(tokenized)
print('<p>')
for word, pos in tagged:
print('<span class="{0} {1} eachwords">{2}</span>'.format(pos.replace('PRP$', 'PRPS').replace('.', 'dot').replace(',', 'comma').replace('(', 'marks').replace(')', 'marks').replace(':', 'marks').replace(';', 'marks'), word.replace('', 'apostrophe').replace('.', 'dot').replace(',', 'comma').replace('(', 'marks').replace(')', 'marks').replace(':', 'marks').replace(';', 'marks').lower(), word))
print('</p>')
print('</div>')
#tos top words list
print('<div class="top_words"><div class="top_words_title" ><b>Frequent words</b></div>')
tokens_without_stopwords = nltk.FreqDist(words.lower() for words in tokenized_all if words.lower() not in tos_custom_stopwords)
frequency_word = FreqDist(tokens_without_stopwords)
top_words = tokens_without_stopwords.most_common(30)
for chosen_words, frequency in top_words:
print('<div class="chosen_words" >&nbsp;{}&nbsp;({}) </div>'.format(chosen_words, frequency))
print('</div></div></div>')
# at the end of wrapper
print('</div>')
print('</div>')
print('''</body></html>''')