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import streamlit as st
import pandas as pd
import random
from datetime import datetime, timedelta
# Helper function to generate a random date within the last year
def random_date():
start_date = datetime.now() - timedelta(days=365)
random_days = random.randint(0, 365)
return (start_date + timedelta(days=random_days)).strftime("%Y-%m-%d")
# Function to load and cache the product catalog
@st.cache_data
def load_catalog():
review_statuses = [random.choice(["Approved", "Under Review", "Not Approved"]) for _ in range(50)]
not_approved_reasons = [
None if status != "Not Approved" else random.choice(["Security Concern", "Licensing Issue", "Privacy Issue", "Compliance Requirement"])
for status in review_statuses
]
products = {
"Product Name": [
"Notepad++", "WinRAR", "7-Zip", "CCleaner", "TeamViewer",
"FileZilla", "PuTTY", "WinSCP", "Everything", "Greenshot",
"Visual Studio Code", "JetBrains IntelliJ IDEA", "Sublime Text", "Atom", "Eclipse",
"PyCharm", "NetBeans", "Xcode", "Android Studio", "GitLab",
"Norton Antivirus", "McAfee Total Protection", "Kaspersky Internet Security", "Bitdefender Antivirus Plus", "Avast Free Antivirus",
"Sophos Home", "Trend Micro Antivirus+", "ESET NOD32 Antivirus", "F-Secure SAFE", "Malwarebytes",
"Microsoft Office 365", "Google Workspace", "Slack", "Trello", "Asana",
"Zoom", "Evernote", "Notion", "Dropbox", "Adobe Acrobat Reader",
"Adobe Photoshop", "Adobe Illustrator", "Adobe Premiere Pro", "Final Cut Pro", "Sketch",
"Blender", "Autodesk Maya", "CorelDRAW", "GIMP", "Inkscape"
],
"Category": [
"Utility Tools", "Utility Tools", "Utility Tools", "Utility Tools", "Utility Tools",
"Utility Tools", "Utility Tools", "Utility Tools", "Utility Tools", "Utility Tools",
"Development Tools", "Development Tools", "Development Tools", "Development Tools", "Development Tools",
"Development Tools", "Development Tools", "Development Tools", "Development Tools", "Development Tools",
"Security Software", "Security Software", "Security Software", "Security Software", "Security Software",
"Security Software", "Security Software", "Security Software", "Security Software", "Security Software",
"Productivity Software", "Productivity Software", "Productivity Software", "Productivity Software", "Productivity Software",
"Productivity Software", "Productivity Software", "Productivity Software", "Productivity Software", "Productivity Software",
"Creative Software", "Creative Software", "Creative Software", "Creative Software", "Creative Software",
"Creative Software", "Creative Software", "Creative Software", "Creative Software", "Creative Software"
],
"Cyber Approved": [random.choice([True, False]) for _ in range(50)],
"Accessibility Approved": [random.choice([True, False]) for _ in range(50)],
"Privacy Approved": [random.choice([True, False]) for _ in range(50)],
"Review Date": [random_date() for _ in range(50)],
"Review Status": review_statuses,
"Not Approved Reason": not_approved_reasons
}
return pd.DataFrame(products)
# Function to filter the catalog based on multiple attributes with AND logic
@st.cache_data
def filter_catalog(catalog, search_query=None, selected_category=None, cyber_approved=None, accessibility_approved=None, privacy_approved=None,review_status=None):
filtered = catalog
if search_query:
filtered = filtered[filtered.apply(lambda row: search_query.lower() in str(row).lower(), axis=1)]
if selected_category and selected_category != 'All':
filtered = filtered[filtered["Category"] == selected_category]
if cyber_approved:
filtered = filtered[filtered["Cyber Approved"] == True]
if accessibility_approved:
filtered = filtered[filtered["Accessibility Approved"] == True]
if privacy_approved:
filtered = filtered[filtered["Privacy Approved"] == True]
if review_status and review_status != 'All':
filtered = filtered[filtered["Review Status"] == review_status]
return filtered
catalog = load_catalog()
# Streamlit app layout
st.title("Enterprise Software Product Catalog")
st.write("This is the source of truth for app approval statuses within the enterprise.")
# Sidebar for Advanced Search and Filtering
with st.sidebar:
st.header("Advanced Search Options")
search_query = st.text_input("Search by Any Attribute", key='search_query')
selected_category = st.selectbox("Select Category", ['All'] + list(catalog["Category"].unique()), key='search_category')
cyber_approved = st.checkbox("Cyber Approved", key='cyber_approved')
accessibility_approved = st.checkbox("Accessibility Approved", key='accessibility_approved')
privacy_approved = st.checkbox("Privacy Approved", key='privacy_approved')
# Dropdown for selecting review status
review_status_options = ['All', 'Approved', 'Under Review', 'Not Approved']
review_status = st.selectbox("Select Review Status", options=review_status_options, key='review_status')
# Apply the enhanced filter based on user input
filtered_catalog = filter_catalog(catalog, search_query, selected_category, cyber_approved, accessibility_approved, privacy_approved, review_status)
# Display the filtered product catalog
st.header("Product Catalog")
st.dataframe(filtered_catalog) |