Buckeyes2019 commited on
Commit
2e6f5d4
1 Parent(s): 672ef3c

Update app.py

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Files changed (1) hide show
  1. app.py +3 -8
app.py CHANGED
@@ -1,15 +1,14 @@
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  import streamlit as st
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- import torch
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  from transformers import pipeline
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  import spacy
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  from spacy import displacy
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  import plotly.express as px
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  import numpy as np
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- st.set_page_config(page_title="NIU NLP Prototype")
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  st.title("Natural Language Processing Prototype")
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- st.write("_This web application is intended for educational use, please do not upload any classified, proprietary, or sensitive information._")
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  st.subheader("__Which natural language processing task would you like to try?__")
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  st.write("- __Sentiment Analysis:__ Identifying whether a piece of text has a positive or negative sentiment.")
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  st.write("- __Named Entity Recognition:__ Identifying all geopolitical entities, organizations, people, locations, or dates in a body of text.")
@@ -67,7 +66,6 @@ with st.spinner(text="Please wait for the models to load. This should take appro
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  if option == 'Text Classification':
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  cat1 = st.text_input('Enter each possible category name (separated by a comma). Maximum 5 categories.')
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  text = st.text_area('Enter Text Below:', height=200)
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- #uploaded_file = st.file_uploader("Choose a file", type=['txt'])
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  submit = st.button('Generate')
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  if submit:
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  st.subheader("Classification Results:")
@@ -82,18 +80,16 @@ if option == 'Text Summarization':
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  max_lengthy = st.slider('Maximum summary length (words)', min_value=30, max_value=150, value=60, step=10)
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  num_beamer = st.slider('Speed vs quality of summary (1 is fastest)', min_value=1, max_value=8, value=4, step=1)
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  text = st.text_area('Enter Text Below (maximum 800 words):', height=300)
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- #uploaded_file = st.file_uploader("Choose a file", type=['txt'])
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  submit = st.button('Generate')
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  if submit:
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  st.subheader("Summary:")
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  with st.spinner(text="This may take a moment..."):
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  summWords = sum2(text, max_length=max_lengthy, min_length=15, num_beams=num_beamer, do_sample=True, early_stopping=True, repetition_penalty=1.5, length_penalty=1.5)
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- text2 =summWords[0]["summary_text"] #re.sub(r'\s([?.!"](?:\s|$))', r'\1', )
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  st.write(text2)
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  if option == 'Sentiment Analysis':
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  text = st.text_area('Enter Text Below:', height=200)
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- #uploaded_file = st.file_uploader("Choose a file", type=['txt'])
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  submit = st.button('Generate')
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  if submit:
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  st.subheader("Sentiment:")
@@ -104,7 +100,6 @@ if option == 'Sentiment Analysis':
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  if option == 'Named Entity Recognition':
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  text = st.text_area('Enter Text Below:', height=300)
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- #uploaded_file = st.file_uploader("Choose a file", type=['txt'])
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  submit = st.button('Generate')
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  if submit:
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  entities = []
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  import streamlit as st
 
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  from transformers import pipeline
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  import spacy
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  from spacy import displacy
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  import plotly.express as px
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  import numpy as np
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+ st.set_page_config(page_title="NLP Prototype")
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  st.title("Natural Language Processing Prototype")
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+ st.write("_This web application is intended for educational use, please do not upload any sensitive information._")
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  st.subheader("__Which natural language processing task would you like to try?__")
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  st.write("- __Sentiment Analysis:__ Identifying whether a piece of text has a positive or negative sentiment.")
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  st.write("- __Named Entity Recognition:__ Identifying all geopolitical entities, organizations, people, locations, or dates in a body of text.")
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  if option == 'Text Classification':
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  cat1 = st.text_input('Enter each possible category name (separated by a comma). Maximum 5 categories.')
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  text = st.text_area('Enter Text Below:', height=200)
 
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  submit = st.button('Generate')
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  if submit:
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  st.subheader("Classification Results:")
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  max_lengthy = st.slider('Maximum summary length (words)', min_value=30, max_value=150, value=60, step=10)
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  num_beamer = st.slider('Speed vs quality of summary (1 is fastest)', min_value=1, max_value=8, value=4, step=1)
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  text = st.text_area('Enter Text Below (maximum 800 words):', height=300)
 
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  submit = st.button('Generate')
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  if submit:
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  st.subheader("Summary:")
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  with st.spinner(text="This may take a moment..."):
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  summWords = sum2(text, max_length=max_lengthy, min_length=15, num_beams=num_beamer, do_sample=True, early_stopping=True, repetition_penalty=1.5, length_penalty=1.5)
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+ text2 =summWords[0]["summary_text"]
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  st.write(text2)
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  if option == 'Sentiment Analysis':
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  text = st.text_area('Enter Text Below:', height=200)
 
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  submit = st.button('Generate')
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  if submit:
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  st.subheader("Sentiment:")
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  if option == 'Named Entity Recognition':
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  text = st.text_area('Enter Text Below:', height=300)
 
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  submit = st.button('Generate')
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  if submit:
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  entities = []