GlotWeb / app.py
kargaranamir's picture
add ace, min, mui and filter green ones.
fccef12
raw
history blame contribute delete
No virus
5.32 kB
import pandas as pd
import streamlit as st
from utils import df_to_html, render_svg, combine_json_files, render_metadata, color_mapping
data = combine_json_files('./languages')
@st.cache_data
def render_home_table():
"""Renders home table."""
# Compute number of unique domains/urls
for key in data.keys():
data[key]['Number of Sites'] = len(data[key].get('Sites', []))
data[key]["Number of Links"] = sum(len(url_data["Links"]) for url_data in data[key].get('Sites', []))
# Convert dict to df
df_data = pd.DataFrame(data).transpose()
df_data['ISO Code'] = df_data.index
df_data['Number of Sites'] = df_data['Number of Sites'].astype(str) # Convert to string
df_data['ISO Code'] = df_data['ISO Code'].astype(str) # Convert to string
df_data['Number of Sites'] = df_data.apply(lambda row: '<a href="/?isocode={}&site=True" target="_self">{}</a>'.format(row['ISO Code'], row['Number of Sites']), axis=1)
df_data['Number of Links'] = df_data.apply(lambda row: '<a href="/?isocode={}&links=True" target="_self">{}</a>'.format(row['ISO Code'], row['Number of Links']), axis=1)
df_data["Support by MADLAD400, FLORES200, GLOT500"] = df_data.apply(lambda row: color_mapping([row["Supported by allenai/MADLAD-400"] + row["Supported by facebook/flores"] + row["Supported by cis-lmu/Glot500"]]), axis =1)
df_data['Color_Order'] = pd.Categorical(df_data['Support by MADLAD400, FLORES200, GLOT500'], categories=['πŸŸ₯', '🟧', '🟨', '🟩'], ordered=True)
# Sort by Color_Order then ISO Code
df_data = df_data.sort_values(by=['Color_Order', 'ISO Code'])
# Filter 🟩
df_data = df_data[df_data["Support by MADLAD400, FLORES200, GLOT500"]!= '🟩']
# Display the table
df_data = df_data[['ISO Code', 'Language Name', 'Family', 'Subgrouping', 'Number of Sites', 'Number of Links', 'Number of Speakers', 'Support by MADLAD400, FLORES200, GLOT500']]
st.write(df_to_html(df_data), unsafe_allow_html=True)
@st.cache_data
def render_site_table(isocode):
# back
back_text = '<a href="/?home=True" target="_self">[Back]</a>'
st.markdown(back_text, unsafe_allow_html=True)
# site
urls = data[isocode].get('Sites', [])
df_urls = pd.DataFrame(urls)
df_urls['Number of Links'] = df_urls['Links'].apply(len)
df_urls = df_urls.sort_values(by='Number of Links', ascending=False)
df_urls = df_urls.reset_index(drop=True)
df_urls['Number of Links'] = df_urls.apply(lambda row: '<a href="/?isocode={}&siteurl={}" target="_self">{}</a>'.format(isocode, row['Site URL'], row['Number of Links']), axis=1)
df_urls['Site URL'] = df_urls['Site URL'].apply(lambda url: f'<a href="{url}">{url}</a>' if url != 'misc' else url)
df_urls['Language Name'] = data[isocode]['Language Name']
df_urls['ISO Code'] = isocode
# Display the table
df_urls = df_urls[['ISO Code', 'Site URL', 'Category', 'Number of Links', 'Possible Parallel Languages', 'Confidence']]
st.write(df_to_html(df_urls), unsafe_allow_html=True)
@st.cache_data
def render_siteurl_table(isocode, url):
# back
back_text = '<a href="/?isocode={}&site=True" target="_self">[Back]</a>'.format(isocode)
st.markdown(back_text, unsafe_allow_html=True)
# Find selected domain
urls = data[isocode].get('Sites', [])
selected_domain = next((d for d in urls if 'Site URL' in d and d['Site URL'] == url), None)
if selected_domain:
st.write({'Language Name': data[isocode]['Language Name'], 'ISO Code': isocode, 'Site URL': url, 'Links': selected_domain['Links']})
@st.cache_data
def render_links_table(isocode):
# back
back_text = '<a href="/?home=True" target="_self">[Back]</a>'
st.markdown(back_text, unsafe_allow_html=True)
# output
urls = data[isocode].get('Sites', [])
lang_name = data[isocode]['Language Name']
all_urls = [{'Site URL': du['Site URL'], 'Links': du['Links']} for du in urls]
st.write({'Language Name': lang_name, 'ISO Code': isocode, 'URLs': all_urls})
# show logo
render_svg(open("assets/glotweb_logo.svg").read())
def main():
params = st.query_params
if 'isocode' in params:
if 'siteurl' in params:
render_siteurl_table(params['isocode'], params['siteurl'])
if 'site' in params:
render_site_table(params['isocode'])
if 'links' in params:
render_links_table(params['isocode'])
else:
# show home
render_metadata()
st.markdown("**GlotWeb** is an indexing service for low-resource languages. It indexes **non-religous** sites or links written in each language. This list can be used to create raw text or parallel corpora and to study low-resource languages on the web.\n")
render_home_table()
st.markdown("\n\n<font color='gray'>We compare the level of support for these languages in the three big datasets ([MADLAD400](https://huggingface.co/datasets/allenai/MADLAD-400), [FLORES200](https://huggingface.co/datasets/facebook/flores), [GLOT500](https://huggingface.co/datasets/cis-lmu/Glot500)) of low-resource languages (πŸŸ₯ 0/3 < 🟧 1/3 < 🟨 2/3 < 🟩 3/3). Although the support in these datasets for some of these languages could be just the religious texts.</font>", unsafe_allow_html=True)
main()