anonymizer / app.py
ziggycross's picture
Improved k-anonymizer.
003953a
raw history blame
No virus
3.68 kB
import modules
import streamlit as st
from streamlit_extras.let_it_rain import rain
# Options
DISCLAIMER = "*Lorem ipsum dolor sit amet, consectetur adipiscing elit. Aliquam urna sem, bibendum efficitur pellentesque a, sollicitudin pharetra urna. Nam vel lectus vitae elit luctus feugiat a a purus. Aenean mollis quis ipsum sed ornare. Nunc sit amet ultricies tellus. Vivamus vulputate sem id molestie viverra. Etiam egestas lobortis enim, sit amet lobortis ligula sollicitudin vel. Nunc eget ipsum sollicitudin, convallis.*"
K = 2
# Page Config
st.set_page_config(layout="wide")
### FILE LOADER for sidebar
with st.sidebar:
st.header("🕵️ 2anonymity")
st.markdown("*Clean and anonymize data*")
with st.container() as upload:
file = st.file_uploader(f"Upload dataset:", type=modules.SUPPORTED_TYPES, label_visibility="collapsed")
df, (filename, extension), result = modules.load_file(file)
### MAIN
if df is None: # Await file to be uploaded
rain("🤠")
else:
### PRE-TRANSFORM features for sidebar
with st.sidebar:
# Options for data loading
with st.container() as loading_options:
st.markdown("### Data loading options:")
remove_duplicates = st.checkbox("Remove duplicate rows", value=True)
drop_missing = st.checkbox("Remove rows with missing values", value=False)
# Options for data optimization
with st.container() as anonymizing_options:
st.markdown("### Anonymizing options:")
max_categorical_size = st.slider("Maximum number of categories", min_value=2, max_value=200, value=50)
bin_size = st.slider("Target bin size", min_value=2, max_value=200, value=20)
sensitivity_minimum = st.number_input("Minimum count", min_value=2, max_value=10, value=2)
### DATA PREVIEW AND TRANSFORM
# Preview data before transform
with st.container() as before_data:
s = df.style
s = s.set_properties(**{'background-color': '#fce4e4'})
st.dataframe(s)
# Transform data
df = modules.data_cleaner(df, drop_missing, remove_duplicates)
df, unprocessed = modules.data_anonymizer(df, K, max_categorical_size, bin_size, sensitivity_minimum)
# Preview data after before_data
with st.container() as after_data:
s = df.style
s = s.set_properties(**{'background-color': '#e4fce4'})
st.dataframe(s)
### POST-TRANSFORM features for sidebar
with st.sidebar:
# Options for download
with st.container() as download_header:
st.markdown("### Download options:")
output_extension = st.selectbox("File type", [".csv", ".json", ".xlsx"])
if unprocessed: st.markdown(f"Error encountered when processing columns {str(unprocessed)}")
# Prepare file for download
with st.container() as downloader:
if output_extension == ".csv": output_file = df.to_csv().encode("utf-8")
elif output_extension == ".json": output_file = df.to_json().encode("utf-8")
elif output_extension == ".xlsx": output_file = df.to_excel().encode("utf-8")
output_filename = f"""{filename.split(".")[:-1][0]}-clean{output_extension}"""
st.download_button("Download", output_file, file_name=output_filename)
# Add a disclaimer for data security
with st.container() as disclaimer:
st.markdown(
f"""
Disclaimer:
{DISCLAIMER}
"""
)
# Attribution
st.sidebar.markdown("Created by team #2hack2furious for the hackthethreat2023")