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import streamlit as st
import pandas as pd
import streamlit.components.v1 as components
import textwrap as tw
#st.set_page_config( initial_sidebar_state="expanded", margin_top = 20, margin_left = 20, margin_right = 10, margin_bottom=50, footer_text = "Creative Commons ... " )
st.set_page_config(page_title='Portparser', layout="wide")
##9bc2d1,#9bc2d1,#2f76a3
page_bg_img = f"""
<style>
[data-testid="stAppViewContainer"] > .main {{
background: linear-gradient(180deg, #88bbcf,#f1f1f1,#f1f1f1,#f1f1f1); /**#ccebff 10%, #f1f1f1 90% #0088be);
padding-left:4rem;
padding-right:4rem;
background-image: url("img/nilc.png");
background-repeat: repeat;
background-position: center center;
background-attachment: local;
/**#f1f1f1/** #008fb3/**#accad2;/**#b3b3ff;**/
/**background-image: url("https://i.postimg.cc/4xgNnkfX/Untitled-design.png");
background-position: center center;
background-repeat: no-repeat;
background-attachment: local;**/
}}
[data-testid="stForm"] {{
background-color: #9bc2d1;/**#7ebac9;/**#0086b3;**/
}}
.appview-container .main .block-container {{
padding-top: 1rem;
padding-bottom: 3rem;
}}
h1 {{
color:#003d66;/**#143350**/;
padding-left:1rem;
padding-right:1rem;
}}
[class="css-1n543e5 e1ewe7hr5"] {{
background-color: #ffffff /**#000066; /**#9bc2d1;/**#7ebac9;/**#0086b3;**/
}}
[class="css-1n543e5 e1ewe7hr5"]:hover {{
background-color: #8080ff; /**#9bc2d1;/**#7ebac9;/**#0086b3;**/
color:white;
border: solid 1px #000066;
}}
a:link{{
color:#0088be;
}}
a:hover {{
color: #7733ff/**#8080ff**/;
}}
button{{
padding-left:1rem;
padding-right:1rem;
border-radius: 15%;
}}
button:hover {{
color:#7733ff;
border:solid 1px #7733ff;
}}
</style>
"""
# head style
head_css = """
<style>
[class="css-ocqkz7 esravye3"] {
/**background-color: #9bc2d1;**/
}
[class="css-ocqkz7 esravye3"]{
/**row1**/
margin:0px 0px 0px 0px;
padding:0;
}
.stApp {
background-image: url("portparser_brasil1.jpg");
background-repeat: repeat;
background-position: center;
}
</style>
"""
#class="css-o7kwkx esravye0"]
a = """
<style>
div.css-10r1649 esravye0 {
background-color: red;
}
</style>
"""
custom_html = """
<div class="banner" style="background-color:#0088be; color:white">
<h1>PortParser</h1>
<!--<img src="https://img.freepik.com/premium-photo/wide-banner-with-many-random-square-hexagons-charcoal-dark-black-color_105589-1820.jpg" alt="Banner Image">-->
</div>
<style>
.banner {
width: 160%;
height: 200px;
overflow: hidden;
}
.banner img {
width: 100%;
object-fit: cover;
}
</style>
"""
#<div width="449" data-testid="stVerticalBlock" class="css-10r1649 esravye0">
#components.html(custom_html)
st.markdown(page_bg_img, unsafe_allow_html=True)
st.markdown(head_css, unsafe_allow_html=True)
row2 = st.columns([6,2,3])
with row2[0]:
st.markdown("<p style='padding-bottom:25px; padding-top:50px'><b style='font-size:calc(40px + 2vw); color:#003d66;line-height: 40px'><i>Portparser</i></b><br><b style='font-size:18px;color:#266087;line-height:4px'>\
A parsing model for Brazilian Portuguese</b></p>",unsafe_allow_html=True)
st.write('This is Portparser, a parsing model for Brazilian Portuguese that follows the Universal Dependencies (UD) framework.\
We built our model by using a recently released manually annotated corpus, the Porttinari-base, \
and we explored different parsing methods and parameters for training. We also test multiple embedding models and parsing methods. \
Portparse is the result of the best combination achieved in our experiments.')
st.write('Our model is explained in the paper https://aclanthology.org/2024.propor-1.41.pdf, and all datasets and full instructions to reproduce our experiments \
freely available at https://github.com/LuceleneL/Portparser. More details about this work may also be found at \
the POeTiSA project webpage at https://sites.google.com/icmc.usp.br/poetisa/.')
with st.expander('How to cite?', expanded=False):
st.code("""
@inproceedings{lopes2024towards,
title={Towards Portparser-a highly accurate parsing system for Brazilian Portuguese following the Universal Dependencies framework},
author={Lopes, Lucelene and Pardo, Thiago},
booktitle={Proceedings of the 16th International Conference on Computational Processing of Portuguese},
pages={401--410},
year={2024}
}""")
with row2[2]:
st.image('img/wordcloud_brasil5.png')
#wordcloud_vertical1.png
#st.markdown('##### Write a sentence and run to parse:')
#with st.sidebar:
# st.header("About Portparser")
# with st.expander('How was Portparser developed?'):
# st.write('We build our model by using a recently released manually annotated corpus, the Porttinari-base, \
# and explored different parsing methods and parameters for training. We also test multiple embedding models and parsing methods. \
# Portparse is the result of the best combination achieved in our experiments.' )
print('---------------------------')
st.markdown("""
<script language="JavaScript" type="text/javascript" src="arborator-draft.js"></script>
<script language="JavaScript" type="text/javascript" src="https://cdnjs.cloudflare.com/ajax/libs/d3/4.10.0/d3.js"></script>
<script src="https://code.jquery.com/jquery-3.2.1.min.js" integrity="sha256-hwg4gsxgFZhOsEEamdOYGBf13FyQuiTwlAQgxVSNgt4=" crossorigin="anonymous"></script>
<link rel="stylesheet" href="arborator-draft.css" type="text/css" />
<script src="d3.js"></script>
<script src="jquery-3.2.1.min.js"></script>
<script>
new ArboratorDraft();
</script>"""
,unsafe_allow_html=True)
def make_conllu(path_text, path_input):
try:
os.system(f'python portTokenizer/portTok.py -o {path_input} -m -t -s S0000 {path_text}')
return 'Converti o texto para conllu.'
#st.text(open(path_input,'r',encoding='utf-8').read())
except Exception as e:
return str(e)
def make_embedding(path_input, path_embedding, model_selected):
try:
os.system(f'python ./wembedding_service/compute_wembeddings.py {path_input} {path_embedding} --model {model_selected}')
return 'Fiz as embeddings.'
except Exception as e:
return str(e)
def make_predictions(path_input, path_prediction):
try:
os.system(f'python ./udpipe2/udpipe2.py Portparser_model --predict --predict_input {path_input} --predict_output {path_prediction}')
return f'Fiz a predição.'# {path_input}, {path_prediction}'
except Exception as e:
return str(e)
def get_predictions(path_prediction):
try:
with open(path_prediction, 'r') as f:
st.text(f.read())
except Exception as e:
st.text('Resposta: '+e)
st.write('Write a sentence and run to parse:')
with st.form("parser"):
text = st.text_input('Text: ')
model = st.selectbox('Pick a model (Pick a embedding model:):', ['bert-base-portuguese-cased','bert-base-multilingual-uncased','robeczech-base','xlm-roberta-base'])
model_selected = model+'-last4'
submit = st.form_submit_button('Run')
tab1, tab2, tab3, tab4 = st.tabs(["Running status" ,"Table", "Raw", "Tree"])
if submit:
import sys, os
print(type(text))
tab1.text('input: '+text)
files = 'temp'
input_text = 'text_input.txt'
input_conllu = 'input.conllu' #'h2104_0_test.conllu'
embedding_conllu = 'input.conllu.npz' #'h2104_0_test.conllu.npz'
prediction_conllu = 'input_prediction.conllu'
model = 'Portparser_model'
path_text = os.path.join(files, input_text)
path_input = os.path.join(files, input_conllu)
path_prediction = os.path.join(files, prediction_conllu)
path_embedding = os.path.join(files,embedding_conllu)
with open(path_text,'w',encoding='utf-8') as f:
f.write(text)
import time
with st.spinner('Transforming text into .conllu...'): #st.progress(0,text="Transformando texto para o formato .conllu"):
time.sleep(3)
tab1.text(make_conllu(path_text, path_input))
with st.spinner('Processing embeddings...'): #st.progress(0,text="Processando embeddings"):
time.sleep(6)
tab1.text(make_embedding(path_input, path_embedding, model_selected))
with st.spinner('Making predictions...'): #st.progress(0,text="Realizando a predição"):
time.sleep(6)
tab1.text(make_predictions(path_input, path_prediction))
try:
with open(path_prediction, 'r', encoding='utf-8') as f:
content = f.read()
tab3.text(content)
#tab4.markdown(f'<conll>{content[4:]}</conll>',unsafe_allow_html=True)
content = content.split('\n')
#tab2.text(content[:4])
table = pd.DataFrame([line.split('\t') for line in content[4:]])
table.columns = ['ID','FORM','LEMMA','UPOS','XPOS','FEATS','HEAD','DEPREL','DEPS','MISC']
tab2.dataframe(table, use_container_width=True)
except Exception as e:
st.text('Não deu certo a predição.'+str(e)+repr(e))
row1 = st.columns([18,3,4,4])
with row1[1]:
st.image('img/nilc-removebg.png')
with row1[2]:
st.image('img/poetisa2.png')
with row1[3]:
st.image('img/icmc.png')
st.markdown("""
<script language="JavaScript" type="text/javascript" src="arborator-draft.js"></script>
<script language="JavaScript" type="text/javascript" src="https://cdnjs.cloudflare.com/ajax/libs/d3/4.10.0/d3.js"></script>
<script src="https://code.jquery.com/jquery-3.2.1.min.js" integrity="sha256-hwg4gsxgFZhOsEEamdOYGBf13FyQuiTwlAQgxVSNgt4=" crossorigin="anonymous"></script>
<link rel="stylesheet" href="arborator-draft.css" type="text/css" />
<script src="d3.js"></script>
<script src="jquery-3.2.1.min.js"></script>
<script>
new ArboratorDraft();
</script>"""
,unsafe_allow_html=True)