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| import dash | |
| from dash import dcc, html, Input, Output | |
| import pandas as pd | |
| import plotly.express as px | |
| # Load the data | |
| def load_data(): | |
| file_path = 'digital_identity_data.xlsx' | |
| return pd.read_excel(file_path) | |
| data = load_data() | |
| # Initialize Dash app | |
| app = dash.Dash(__name__) | |
| app.title = "Digital Identity Dashboard" | |
| # Layout | |
| def generate_layout(): | |
| return html.Div([ | |
| html.H1("Digital Identity Dashboard", style={"textAlign": "center"}), | |
| html.Div([ | |
| html.Label("Select Countries:"), | |
| dcc.Checklist( | |
| id="country-filter", | |
| options=[{"label": country, "value": country} for country in data["Country"].unique()], | |
| value=data["Country"].unique().tolist(), | |
| inline=True | |
| ), | |
| html.Label("Select Genders:"), | |
| dcc.Checklist( | |
| id="gender-filter", | |
| options=[{"label": gender, "value": gender} for gender in data["Gender"].unique()], | |
| value=data["Gender"].unique().tolist(), | |
| inline=True | |
| ), | |
| html.Label("Select Account Status:"), | |
| dcc.Checklist( | |
| id="status-filter", | |
| options=[{"label": status, "value": status} for status in data["Account Status"].unique()], | |
| value=data["Account Status"].unique().tolist(), | |
| inline=True | |
| ), | |
| ], style={"marginBottom": "20px"}), | |
| html.Div(id="filtered-data-table"), | |
| html.Div([ | |
| dcc.Graph(id="logins-by-country"), | |
| dcc.Graph(id="session-duration-by-gender") | |
| ], style={"display": "flex", "flexWrap": "wrap"}), | |
| html.Div([ | |
| dcc.Graph(id="data-breaches-by-country"), | |
| dcc.Graph(id="two-fa-usage") | |
| ], style={"display": "flex", "flexWrap": "wrap"}) | |
| ]) | |
| app.layout = generate_layout | |
| # Callbacks for filtering data and updating graphs | |
| def update_dashboard(selected_countries, selected_genders, selected_statuses): | |
| # Filter data | |
| filtered_data = data[ | |
| (data["Country"].isin(selected_countries)) & | |
| (data["Gender"].isin(selected_genders)) & | |
| (data["Account Status"].isin(selected_statuses)) | |
| ] | |
| # Logins by country | |
| logins_by_country = filtered_data.groupby("Country")["Number of Logins"].sum().reset_index() | |
| fig1 = px.bar(logins_by_country, x="Country", y="Number of Logins", title="Logins by Country", color="Country") | |
| # Session duration by gender | |
| session_duration_by_gender = filtered_data.groupby("Gender")["Session Duration (Minutes)"].mean().reset_index() | |
| fig2 = px.bar(session_duration_by_gender, x="Gender", y="Session Duration (Minutes)", title="Session Duration by Gender", color="Gender") | |
| # Data breaches by country | |
| fig3 = px.pie(filtered_data, names="Country", values="Data Breaches Reported", title="Data Breaches by Country") | |
| # 2FA usage | |
| two_fa_usage = filtered_data["2FA Enabled"].value_counts().reset_index() | |
| two_fa_usage.columns = ["2FA Enabled", "Count"] | |
| fig4 = px.pie(two_fa_usage, names="2FA Enabled", values="Count", title="2FA Usage") | |
| # Filtered data table | |
| table_html = html.Div([ | |
| html.H3("Filtered Data Table"), | |
| dash.dash_table.DataTable( | |
| data=filtered_data.to_dict('records'), | |
| columns=[{"name": i, "id": i} for i in filtered_data.columns], | |
| page_size=10, | |
| style_table={"overflowX": "auto"} | |
| ) | |
| ]) | |
| return fig1, fig2, fig3, fig4, table_html | |
| # Run app | |
| if __name__ == "__main__": | |
| app.run_server(host='0.0.0.0', port=7860, debug=False) |