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import streamlit as st |
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import pandas as pd |
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import numpy as np |
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import re |
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from datetime import datetime |
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import subprocess |
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from fairseq.models.transformer import TransformerModel |
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time_interval=0 |
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st.title('Knowledge Distillation for Multi-Domain Neural Machine Translation') |
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title = st.text_input('English Text', 'We are not inclined to entertain this petition under Article 32 of the Constitution of India.') |
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if st.button('Law En-Hi Teacher'): |
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time_1 = datetime.now() |
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zh2en = TransformerModel.from_pretrained('law/out/tokenized.en-hi/', checkpoint_file='../../checkpoint_best.pt',bpe='subword_nmt', bpe_codes='/home/sakharam/RnD/translation/en-hi/bpe-codes/codes.en',tokenizer='moses') |
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time_2 = datetime.now() |
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time_interval = time_2 - time_1 |
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st.write('Hindi Translation: ',zh2en.translate([title.lower()])[0]) |
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st.write('Inference Time: ',time_interval) |
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if st.button('Sports En-Hi Teacher'): |
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time_1 = datetime.now() |
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zh2en = TransformerModel.from_pretrained('sports/out/tokenized.en-hi/', checkpoint_file='../../checkpoint_best.pt',bpe='subword_nmt', bpe_codes='/home/sakharam/RnD/translation/en-hi/bpe-codes/codes.en',tokenizer='moses') |
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time_2 = datetime.now() |
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time_interval = time_2 - time_1 |
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st.write('Hindi Translation: ',zh2en.translate([title.lower()])[0]) |
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st.write('Inference Time: ',time_interval) |
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if st.button('Tourism En-Hi Teacher'): |
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time_1 = datetime.now() |
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zh2en = TransformerModel.from_pretrained('tourism/out/tokenized.en-hi/', checkpoint_file='../../checkpoint_best.pt',bpe='subword_nmt', bpe_codes='/home/sakharam/RnD/translation/en-hi/bpe-codes/codes.en',tokenizer='moses') |
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time_2 = datetime.now() |
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time_interval = time_2 - time_1 |
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st.write('Hindi Translation: ',zh2en.translate([title.lower()])[0]) |
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st.write('Inference Time: ',time_interval) |
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if st.button('Multi-Domain En-Hi Student'): |
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time_1 = datetime.now() |
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zh2en = TransformerModel.from_pretrained('multi/out/tokenized.en-hi/', checkpoint_file='../../checkpoint_best.pt',bpe='subword_nmt', bpe_codes='/home/sakharam/RnD/translation/en-hi/bpe-codes/codes.en',tokenizer='moses') |
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time_2 = datetime.now() |
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time_interval = time_2 - time_1 |
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st.write('Hindi Translation: ',zh2en.translate([title.lower()])[0]) |
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st.write('Inference Time: ',time_interval) |
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