User1342 commited on
Commit
4bcdd61
·
1 Parent(s): 2e18dd0

Update app.py

Browse files
Files changed (1) hide show
  1. app.py +7 -2
app.py CHANGED
@@ -35,7 +35,7 @@ h5 {font-family: "Poppins", sans-serif} body {font-size: 16px;} img {margin-bott
35
  class="w3-padding-large w3-white"> <div class="w3-row-padding-large"> <div class="w3-col"> <h1
36
  class="w3-jumbo"><b>Bubble Check-In🐦💭</b></h1> <h1 class="w3-xxxlarge w3-text-blue"><b>Check-in-on someone's Twitter 'bubble'.</b></h1> <p><span class="w3-xlarge">Scroll down to use Bubble Check-In 1.0. ⬇
37
  </span> Bubble Check-In is a tool designed to allow you to check-in-on the type of content someone on Twitter is
38
- being exposed to - be that yourself, a friend, loved one, etc. The goal here is to empower us to look out for
39
  each-other and identify early if someone is experiencing activity such as hate speech or extremism. We use a queue
40
  system, which means <b> you may need to wait your turn to run Bubble Check-In</b>. Bubble Check-In is simple to use simply enter the username of the Twitter account you want to check-in-on and click run!</p>
41
  <a href="https://www.jamesstevenson.me/cartographer-labs/"><button class="w3-button w3-light-grey w3-padding-large w3-section
@@ -373,9 +373,11 @@ def button_pressed(text_box):
373
  )])
374
 
375
  # Comprise text for summary label
376
- text = "A total number of {} recent tweets in @{}'s mentions and timeline were reviewed, of which @{} was exposed to {} users via mentions and " \
377
  "{} directly via following them.".format(tweets, text_box, text_box, mentions, following)
378
 
 
 
379
  high_identifiers = []
380
  extreme_identifiers = []
381
 
@@ -433,6 +435,9 @@ def button_pressed(text_box):
433
  elif total_average_neg_sentiment > 0.9 and total_average_neg_sentiment > total_average_pos_sentiment:
434
  text = text + " '{} is experiencing a significantly high amount of negative sentiment content.".format(text_box)
435
 
 
 
 
436
  return [toxicity_plot_fig, sentiment_plot_fig, fig, text]
437
 
438
 
 
35
  class="w3-padding-large w3-white"> <div class="w3-row-padding-large"> <div class="w3-col"> <h1
36
  class="w3-jumbo"><b>Bubble Check-In🐦💭</b></h1> <h1 class="w3-xxxlarge w3-text-blue"><b>Check-in-on someone's Twitter 'bubble'.</b></h1> <p><span class="w3-xlarge">Scroll down to use Bubble Check-In 1.0. ⬇
37
  </span> Bubble Check-In is a tool designed to allow you to check-in-on the type of content someone on Twitter is
38
+ being exposed to - be that yourself, a friend, loved one, etc. The goal here is to empower users to look out for
39
  each-other and identify early if someone is experiencing activity such as hate speech or extremism. We use a queue
40
  system, which means <b> you may need to wait your turn to run Bubble Check-In</b>. Bubble Check-In is simple to use simply enter the username of the Twitter account you want to check-in-on and click run!</p>
41
  <a href="https://www.jamesstevenson.me/cartographer-labs/"><button class="w3-button w3-light-grey w3-padding-large w3-section
 
373
  )])
374
 
375
  # Comprise text for summary label
376
+ original_text = "A total number of {} recent tweets in @{}'s mentions and timeline were reviewed, of which @{} was exposed to {} users via mentions and " \
377
  "{} directly via following them.".format(tweets, text_box, text_box, mentions, following)
378
 
379
+ text = original_text
380
+
381
  high_identifiers = []
382
  extreme_identifiers = []
383
 
 
435
  elif total_average_neg_sentiment > 0.9 and total_average_neg_sentiment > total_average_pos_sentiment:
436
  text = text + " '{} is experiencing a significantly high amount of negative sentiment content.".format(text_box)
437
 
438
+ if len(text) =- len(original_text):
439
+ text = text + " No excessive hate speech or low sentiment was observed in @{}'s mentions or timeline".format(text_box)
440
+
441
  return [toxicity_plot_fig, sentiment_plot_fig, fig, text]
442
 
443