| import streamlit as st |
| from streamlit_tags import st_tags, st_tags_sidebar |
| from keytotext import pipeline |
| from PIL import Image |
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| st.write("# Code for Keywords to Text") |
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| st.markdown("***Idea is to build a model which will take keywords as inputs and generate information as outputs.***") |
| image = Image.open('1.png') |
| st.image(image) |
| |
| st.sidebar.write("# Parameter Selection") |
| maxtags_sidebar = st.sidebar.slider('Number of tags allowed?', 1, 10, 1, key='ehikwegrjifbwreuk') |
| keywords = st_tags( |
| label='# Enter Keywords:', |
| text='Press enter to add more', |
| value=['Summer'], |
| suggestions=['five', 'six', 'seven', 'eight', 'nine', 'three', 'eleven', 'ten', 'four'], |
| maxtags=maxtags_sidebar, |
| key="aljnf") |
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| |
| option = st.sidebar.selectbox( |
| 'Which model would you like to be selected?', |
| ('mrm8488/t5-base-finetuned-common_gen', 'k2t-base', 'k2t')) |
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| nlp=pipeline(option) |
| st.sidebar.success("Load Successfully!") |
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| st.write("## Results:") |
| if st.button('Generate Sentence'): |
| out=nlp(keywords) |
| st.success(out) |
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