qg-qa / app.py
ck46's picture
Update app.py
a1e2c6a
raw
history blame
No virus
763 Bytes
import re
import streamlit as st
from qg_pipeline import Pipeline
## Load NLTK
import nltk
nltk.download('punkt')
def preprocess_text(text):
text = re.sub('\[[0-9]+\]', '', text)
text = re.sub('[\s]{2,}', ' ', text)
text = text.strip()
return text
# Add a model selector to the sidebar
q_model = 'ck46/t5-base-hotpot-qa-qg'
a_model = 'ck46/t5-base-hotpot-qa-qg'
st.header('Question-Answer Generation')
st.write(f'Model: {q_model}')
txt = st.text_area('Text for context')
pipeline = Pipeline(
q_model=q_model,
q_tokenizer=q_model,
a_model=a_model,
a_tokenizer=a_model
)
if len(txt) >= 1:
autocards = pipeline(preprocess_text(txt))
else:
autocards = []
st.header('Generated question and answers')
st.write(autocards)