rdose commited on
Commit
565c377
1 Parent(s): 4ac7c2d

Update app.py

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Files changed (1) hide show
  1. app.py +20 -2
app.py CHANGED
@@ -1,9 +1,20 @@
 
 
 
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  import numpy as np
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  import onnxruntime
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  import onnx
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  import gradio as gr
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  import requests
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  import json
 
 
 
 
 
 
 
 
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  from extractnet import Extractor
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  import math
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  from transformers import AutoTokenizer
@@ -275,8 +286,15 @@ def inference(input_batch,isurl,use_archive,limit_companies=10):
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  if archive['archived']:
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  url = archive['url']
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  #Extract the data from url
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- extracted = Extractor().extract(requests.get(url).text)
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- input_batch_content.append(extracted['content'])
 
 
 
 
 
 
 
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  else:
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  print("[i] Data is news contents")
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  if isinstance(input_batch_r[0], list):
 
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+ #Choose the extractor. Both extractnet & dragnet have dependency conflicts with bertopic
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+ EXTRACTOR_NET = 'trafilatura'
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+
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  import numpy as np
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  import onnxruntime
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  import onnx
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  import gradio as gr
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  import requests
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  import json
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+
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+ if(EXTRACTOR_NET == 'extractnet'):
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+ from extractnet import Extractor
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+ elif(EXTRACTOR_NET == 'dragnet'):
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+ from dragnet import extract_content
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+ elif(EXTRACTOR_NET == 'trafilatura'):
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+ import trafilatura
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+
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  from extractnet import Extractor
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  import math
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  from transformers import AutoTokenizer
 
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  if archive['archived']:
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  url = archive['url']
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  #Extract the data from url
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+ if(EXTRACTOR_NET == 'extractnet'):
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+ extracted = Extractor().extract(requests.get(url).text)
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+ input_batch_content.append(extracted['content'])
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+ elif(EXTRACTOR_NET == 'dragnet'):
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+ extracted = extract_content(requests.get(url).content)
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+ input_batch_content.append(extracted)
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+ elif(EXTRACTOR_NET == 'trafilatura'):
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+ extracted = trafilatura.extract(trafilatura.fetch_url(url), include_comments=False)
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+ input_batch_content.append(extracted)
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  else:
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  print("[i] Data is news contents")
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  if isinstance(input_batch_r[0], list):