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11adebb
1
Parent(s):
b5a92d0
Create app.py
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app.py
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1 |
+
import tweepy as tw
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2 |
+
import streamlit as st
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3 |
+
import pandas as pd
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4 |
+
import torch
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5 |
+
import numpy as np
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6 |
+
import regex as re
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7 |
+
import pysentimiento
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8 |
+
import geopy
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9 |
+
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10 |
+
from pysentimiento.preprocessing import preprocess_tweet
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11 |
+
from geopy.geocoders import Nominatim
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12 |
+
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13 |
+
from torch.utils.data import TensorDataset, DataLoader, RandomSampler, SequentialSampler
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14 |
+
from transformers import AutoTokenizer, AutoModelForSequenceClassification,AdamW
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15 |
+
tokenizer = AutoTokenizer.from_pretrained('hackathon-pln-es/twitter_sexismo-finetuned-robertuito-exist2021')
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+
model = AutoModelForSequenceClassification.from_pretrained("hackathon-pln-es/twitter_sexismo-finetuned-robertuito-exist2021")
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+
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+
import torch
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if torch.cuda.is_available():
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20 |
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device = torch.device( "cuda")
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21 |
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print('I will use the GPU:', torch.cuda.get_device_name(0))
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+
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else:
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print('No GPU available, using the CPU instead.')
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device = torch.device("cpu")
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+
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+
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28 |
+
consumer_key = "BjipwQslVG4vBdy4qK318KnoA"
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+
consumer_secret = "3fzL70v9faklrPgvTi3zbofw9rwk92fgGdtAslFkFYt8kGmqBJ"
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30 |
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access_token = "1217853705086799872-Y5zEChpTeKccuLY3XJRXDPPZhNrlba"
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31 |
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access_token_secret = "pqQ5aFSJxzJ2xnI6yhVtNjQO36FOu8DBOH6DtUrPAU54J"
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auth = tw.OAuthHandler(consumer_key, consumer_secret)
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33 |
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auth.set_access_token(access_token, access_token_secret)
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34 |
+
api = tw.API(auth, wait_on_rate_limit=True)
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35 |
+
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36 |
+
def preprocess(text):
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37 |
+
#text=text.lower()
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38 |
+
# remove hyperlinks
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39 |
+
text = re.sub(r'https?:\/\/.*[\r\n]*', '', text)
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40 |
+
text = re.sub(r'http?:\/\/.*[\r\n]*', '', text)
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41 |
+
#Replace &, <, > with &,<,> respectively
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42 |
+
text=text.replace(r'&?',r'and')
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43 |
+
text=text.replace(r'<',r'<')
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44 |
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text=text.replace(r'>',r'>')
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45 |
+
#remove hashtag sign
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46 |
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#text=re.sub(r"#","",text)
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47 |
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#remove mentions
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48 |
+
text = re.sub(r"(?:\@)\w+", '', text)
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49 |
+
#text=re.sub(r"@","",text)
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50 |
+
#remove non ascii chars
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51 |
+
text=text.encode("ascii",errors="ignore").decode()
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52 |
+
#remove some puncts (except . ! ?)
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53 |
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text=re.sub(r'[:"#$%&\*+,-/:;<=>@\\^_`{|}~]+','',text)
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54 |
+
text=re.sub(r'[!]+','!',text)
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55 |
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text=re.sub(r'[?]+','?',text)
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56 |
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text=re.sub(r'[.]+','.',text)
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57 |
+
text=re.sub(r"'","",text)
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58 |
+
text=re.sub(r"\(","",text)
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59 |
+
text=re.sub(r"\)","",text)
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60 |
+
text=" ".join(text.split())
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61 |
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return text
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+
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63 |
+
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64 |
+
def highlight_survived(s):
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return ['background-color: red']*len(s) if (s.Sexista == 1) else ['background-color: green']*len(s)
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66 |
+
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67 |
+
def color_survived(val):
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68 |
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color = 'red' if val=='Sexista' else 'white'
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69 |
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return f'background-color: {color}'
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70 |
+
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71 |
+
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72 |
+
st.set_page_config(layout="wide")
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73 |
+
st.markdown('<style>body{background-color: Blue;}</style>',unsafe_allow_html=True)
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74 |
+
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75 |
+
colT1,colT2 = st.columns([2,8])
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76 |
+
with colT2:
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77 |
+
# st.title('Analisis de comentarios sexistas en Twitter')
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78 |
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st.markdown(""" <style> .font {
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font-size:40px ; font-family: 'Cooper Black'; color: #06bf69;}
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80 |
+
</style> """, unsafe_allow_html=True)
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81 |
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st.markdown('<p class="font">An谩lisis de comentarios sexistas en Twitter</p>', unsafe_allow_html=True)
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82 |
+
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83 |
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st.markdown(""" <style> .font1 {
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84 |
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font-size:28px ; font-family: 'Times New Roman'; color: #8d33ff;}
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85 |
+
</style> """, unsafe_allow_html=True)
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86 |
+
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87 |
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st.markdown(""" <style> .font2 {
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88 |
+
font-size:16px ; font-family: 'Times New Roman'; color: #3358ff;}
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89 |
+
</style> """, unsafe_allow_html=True)
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90 |
+
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91 |
+
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92 |
+
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93 |
+
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94 |
+
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95 |
+
def analizar_tweets(search_words, number_of_tweets ):
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96 |
+
tweets = api.user_timeline(screen_name = search_words, count= number_of_tweets)
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97 |
+
tweet_list = [i.text for i in tweets]
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98 |
+
text= pd.DataFrame(tweet_list)
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99 |
+
text[0] = text[0].apply(preprocess_tweet)
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100 |
+
text1=text[0].values
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101 |
+
indices1=tokenizer.batch_encode_plus(text1.tolist(), max_length=128,add_special_tokens=True, return_attention_mask=True,pad_to_max_length=True,truncation=True)
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102 |
+
input_ids1=indices1["input_ids"]
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103 |
+
attention_masks1=indices1["attention_mask"]
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104 |
+
prediction_inputs1= torch.tensor(input_ids1)
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105 |
+
prediction_masks1 = torch.tensor(attention_masks1)
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106 |
+
batch_size = 25
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107 |
+
# Create the DataLoader.
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108 |
+
prediction_data1 = TensorDataset(prediction_inputs1, prediction_masks1)
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109 |
+
prediction_sampler1 = SequentialSampler(prediction_data1)
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110 |
+
prediction_dataloader1 = DataLoader(prediction_data1, sampler=prediction_sampler1, batch_size=batch_size)
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111 |
+
#print('Predicting labels for {:,} test sentences...'.format(len(prediction_inputs1)))
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112 |
+
# Put model in evaluation mode
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113 |
+
model.eval()
|
114 |
+
# Tracking variables
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115 |
+
predictions = []
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116 |
+
for batch in prediction_dataloader1:
|
117 |
+
batch = tuple(t.to(device) for t in batch)
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118 |
+
# Unpack the inputs from our dataloader
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119 |
+
b_input_ids1, b_input_mask1 = batch
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120 |
+
|
121 |
+
#Telling the model not to compute or store gradients, saving memory and # speeding up prediction
|
122 |
+
with torch.no_grad():
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123 |
+
# Forward pass, calculate logit predictions
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124 |
+
outputs1 = model(b_input_ids1, token_type_ids=None,attention_mask=b_input_mask1)
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125 |
+
logits1 = outputs1[0]
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126 |
+
# Move logits and labels to CPU
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127 |
+
logits1 = logits1.detach().cpu().numpy()
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128 |
+
# Store predictions and true labels
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129 |
+
predictions.append(logits1)
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130 |
+
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131 |
+
#flat_predictions = [item for sublist in predictions for item in sublist]
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132 |
+
flat_predictions = [item for sublist in predictions for item in sublist]
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133 |
+
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134 |
+
flat_predictions = np.argmax(flat_predictions, axis=1).flatten()
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135 |
+
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136 |
+
probability = np.amax(logits1,axis=1).flatten()
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137 |
+
Tweets =['脷ltimos '+ str(number_of_tweets)+' Tweets'+' de '+search_words]
|
138 |
+
df = pd.DataFrame(list(zip(text1, flat_predictions,probability)), columns = ['Tweets' , 'Prediccion','Probabilidad'])
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139 |
+
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140 |
+
df['Prediccion']= np.where(df['Prediccion']== 0, 'No Sexista', 'Sexista')
|
141 |
+
df['Tweets'] = df['Tweets'].str.replace('RT|@', '')
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142 |
+
#df['Tweets'] = df['Tweets'].apply(lambda x: re.sub(r'[:;][-o^]?[)\]DpP3]|[(/\\]|[\U0001f600-\U0001f64f]|[\U0001f300-\U0001f5ff]|[\U0001f680-\U0001f6ff]|[\U0001f1e0-\U0001f1ff]','', x))
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143 |
+
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144 |
+
tabla = st.table(df.reset_index(drop=True).head(30).style.applymap(color_survived, subset=['Prediccion']))
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145 |
+
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146 |
+
return tabla
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147 |
+
|
148 |
+
def analizar_frase(frase):
|
149 |
+
#palabra = frase.split()
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150 |
+
palabra = [frase]
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151 |
+
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152 |
+
indices1=tokenizer.batch_encode_plus(palabra,max_length=128,add_special_tokens=True,
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153 |
+
return_attention_mask=True,
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154 |
+
pad_to_max_length=True,
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155 |
+
truncation=True)
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156 |
+
input_ids1=indices1["input_ids"]
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157 |
+
attention_masks1=indices1["attention_mask"]
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158 |
+
prediction_inputs1= torch.tensor(input_ids1)
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159 |
+
prediction_masks1 = torch.tensor(attention_masks1)
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160 |
+
batch_size = 25
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161 |
+
prediction_data1 = TensorDataset(prediction_inputs1, prediction_masks1)
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162 |
+
prediction_sampler1 = SequentialSampler(prediction_data1)
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163 |
+
prediction_dataloader1 = DataLoader(prediction_data1, sampler=prediction_sampler1, batch_size=batch_size)
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164 |
+
model.eval()
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165 |
+
predictions = []
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166 |
+
# Predict
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167 |
+
for batch in prediction_dataloader1:
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168 |
+
batch = tuple(t.to(device) for t in batch)
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169 |
+
# Unpack the inputs from our dataloader
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170 |
+
b_input_ids1, b_input_mask1 = batch
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171 |
+
# Telling the model not to compute or store gradients, saving memory and # speeding up prediction
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172 |
+
with torch.no_grad():
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173 |
+
# Forward pass, calculate logit predictions
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174 |
+
outputs1 = model(b_input_ids1, token_type_ids=None,attention_mask=b_input_mask1)
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175 |
+
logits1 = outputs1[0]
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176 |
+
# Move logits and labels to CPU
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177 |
+
logits1 = logits1.detach().cpu().numpy()
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178 |
+
# Store predictions and true labels
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179 |
+
predictions.append(logits1)
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180 |
+
flat_predictions = [item for sublist in predictions for item in sublist]
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181 |
+
flat_predictions = np.argmax(flat_predictions, axis=1).flatten()
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182 |
+
tokens = tokenizer.tokenize(frase)
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183 |
+
# Convertir los tokens a un formato compatible con el modelo
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184 |
+
input_ids = tokenizer.convert_tokens_to_ids(tokens)
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185 |
+
attention_masks = [1] * len(input_ids)
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186 |
+
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187 |
+
# Pasar los tokens al modelo
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188 |
+
outputs = model(torch.tensor([input_ids]), token_type_ids=None, attention_mask=torch.tensor([attention_masks]))
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189 |
+
scores = outputs[0]
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190 |
+
#prediccion = scores.argmax(dim=1).item()
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191 |
+
# Obtener la probabilidad de que la frase sea "sexista"
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192 |
+
probabilidad_sexista = scores.amax(dim=1).item()
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193 |
+
#print(probabilidad_sexista)
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194 |
+
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195 |
+
# Crear un Dataframe
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196 |
+
text= pd.DataFrame({'Frase': [frase], 'Prediccion':[flat_predictions], 'Probabilidad':[probabilidad_sexista]})
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197 |
+
text['Prediccion'] = np.where(text['Prediccion'] == 0 , 'No Sexista', 'Sexista')
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198 |
+
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199 |
+
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200 |
+
tabla = st.table(text.reset_index(drop=True).head(30).style.applymap(color_survived, subset=['Prediccion']))
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201 |
+
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202 |
+
return tabla
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203 |
+
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204 |
+
def tweets_localidad(buscar_localidad):
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205 |
+
geolocator = Nominatim(user_agent="nombre_del_usuario")
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206 |
+
location = geolocator.geocode(buscar_localidad)
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207 |
+
radius = "200km"
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208 |
+
tweets = api.search(lang="es",geocode=f"{location.latitude},{location.longitude},{radius}", count = 50)
|
209 |
+
#for tweet in tweets:
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210 |
+
# print(tweet.text)
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211 |
+
tweet_list = [i.text for i in tweets]
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212 |
+
text= pd.DataFrame(tweet_list)
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213 |
+
text[0] = text[0].apply(preprocess_tweet)
|
214 |
+
text1=text[0].values
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215 |
+
print(text1)
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216 |
+
indices1=tokenizer.batch_encode_plus(text1.tolist(), max_length=128,add_special_tokens=True, return_attention_mask=True,pad_to_max_length=True,truncation=True)
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217 |
+
input_ids1=indices1["input_ids"]
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218 |
+
attention_masks1=indices1["attention_mask"]
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219 |
+
prediction_inputs1= torch.tensor(input_ids1)
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220 |
+
prediction_masks1 = torch.tensor(attention_masks1)
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221 |
+
batch_size = 25
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222 |
+
# Create the DataLoader.
|
223 |
+
prediction_data1 = TensorDataset(prediction_inputs1, prediction_masks1)
|
224 |
+
prediction_sampler1 = SequentialSampler(prediction_data1)
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225 |
+
prediction_dataloader1 = DataLoader(prediction_data1, sampler=prediction_sampler1, batch_size=batch_size)
|
226 |
+
#print('Predicting labels for {:,} test sentences...'.format(len(prediction_inputs1)))
|
227 |
+
# Put model in evaluation mode
|
228 |
+
model.eval()
|
229 |
+
# Tracking variables
|
230 |
+
predictions = []
|
231 |
+
for batch in prediction_dataloader1:
|
232 |
+
batch = tuple(t.to(device) for t in batch)
|
233 |
+
# Unpack the inputs from our dataloader
|
234 |
+
b_input_ids1, b_input_mask1 = batch
|
235 |
+
|
236 |
+
#Telling the model not to compute or store gradients, saving memory and # speeding up prediction
|
237 |
+
with torch.no_grad():
|
238 |
+
# Forward pass, calculate logit predictions
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239 |
+
outputs1 = model(b_input_ids1, token_type_ids=None,attention_mask=b_input_mask1)
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240 |
+
logits1 = outputs1[0]
|
241 |
+
# Move logits and labels to CPU
|
242 |
+
logits1 = logits1.detach().cpu().numpy()
|
243 |
+
# Store predictions and true labels
|
244 |
+
predictions.append(logits1)
|
245 |
+
|
246 |
+
#flat_predictions = [item for sublist in predictions for item in sublist]
|
247 |
+
flat_predictions = [item for sublist in predictions for item in sublist]
|
248 |
+
|
249 |
+
flat_predictions = np.argmax(flat_predictions, axis=1).flatten()
|
250 |
+
|
251 |
+
probability = np.amax(logits1,axis=1).flatten()
|
252 |
+
Tweets =['脷ltimos 50 Tweets'+' de '+ buscar_localidad]
|
253 |
+
df = pd.DataFrame(list(zip(text1, flat_predictions,probability)), columns = ['Tweets' , 'Prediccion','Probabilidad'])
|
254 |
+
|
255 |
+
df['Prediccion']= np.where(df['Prediccion']== 0, 'No Sexista', 'Sexista')
|
256 |
+
#df['Tweets'] = df['Tweets'].str.replace('RT|@', '')
|
257 |
+
#df_filtrado = df[df["Sexista"] == 'Sexista']
|
258 |
+
#df['Tweets'] = df['Tweets'].apply(lambda x: re.sub(r'[:;][-o^]?[)\]DpP3]|[(/\\]|[\U0001f600-\U0001f64f]|[\U0001f300-\U0001f5ff]|[\U0001f680-\U0001f6ff]|[\U0001f1e0-\U0001f1ff]','', x))
|
259 |
+
|
260 |
+
tabla = st.table(df.reset_index(drop=True).head(50).style.applymap(color_survived, subset=['Prediccion']))
|
261 |
+
|
262 |
+
df_sexista = df[df['Sexista']=="Sexista"]
|
263 |
+
df_no_sexista = df[df['Probabilidad'] > 0]
|
264 |
+
sexista = len(df_sexista)
|
265 |
+
no_sexista = len(df_no_sexista)
|
266 |
+
|
267 |
+
# Crear un gr谩fico de barras
|
268 |
+
labels = ['Sexista ', ' No sexista']
|
269 |
+
counts = [sexista, no_sexista]
|
270 |
+
plt.bar(labels, counts)
|
271 |
+
plt.xlabel('Categor铆a')
|
272 |
+
plt.ylabel('Cantidad de tweets')
|
273 |
+
plt.title('Cantidad de tweets sexistas y no sexistas')
|
274 |
+
plt.show()
|
275 |
+
|
276 |
+
return df
|
277 |
+
|
278 |
+
|
279 |
+
|
280 |
+
|
281 |
+
def run():
|
282 |
+
with st.form("my_form"):
|
283 |
+
col,buff1, buff2 = st.columns([2,2,1])
|
284 |
+
st.write("Escoja una Opci贸n")
|
285 |
+
search_words = col.text_input("Introduzca el termino, usuario o localidad para analizar y pulse el check correspondiente")
|
286 |
+
number_of_tweets = col.number_input('Introduzca n煤mero de tweets a analizar. M谩ximo 50', 0,50,10)
|
287 |
+
termino=st.checkbox('T茅rmino')
|
288 |
+
usuario=st.checkbox('Usuario')
|
289 |
+
localidad=st.checkbox('Localidad')
|
290 |
+
submit_button = col.form_submit_button(label='Analizar')
|
291 |
+
error =False
|
292 |
+
|
293 |
+
if submit_button:
|
294 |
+
# Condici贸n para el caso de que esten dos check seleccionados
|
295 |
+
if ( termino == False and usuario == False and localidad == False):
|
296 |
+
st.text('Error no se ha seleccionado ningun check')
|
297 |
+
error=True
|
298 |
+
elif ( termino == True and usuario == True and localidad == True):
|
299 |
+
st.text('Error se han seleccionado varios check')
|
300 |
+
error=True
|
301 |
+
|
302 |
+
if (error == False):
|
303 |
+
if (termino):
|
304 |
+
analizar_frase(search_words)
|
305 |
+
|
306 |
+
elif (usuario):
|
307 |
+
analizar_tweets(search_words,number_of_tweets)
|
308 |
+
elif (localidad):
|
309 |
+
tweets_localidad(search_words)
|
310 |
+
|
311 |
+
run()
|