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| import streamlit as st | |
| import pandas as pd | |
| import plotly.express as px | |
| import altair as alt | |
| def load_and_preprocess_data(file_path): | |
| # Read the data | |
| df = pd.read_csv(file_path) | |
| # Basic preprocessing | |
| df = df.drop(['X', 'Y'], axis=1) | |
| df.dropna(subset=['Incidentid', 'DateTime', 'Year', 'Latitude', 'Longitude'], inplace=True) | |
| # Convert Year to int | |
| df['Year'] = df['Year'].astype(int) | |
| # Fill missing values | |
| numeric = ['Age_Drv1', 'Age_Drv2'] | |
| for col in numeric: | |
| df[col].fillna(df[col].median(), inplace=True) | |
| categorical = ['Gender_Drv1', 'Violation1_Drv1', 'AlcoholUse_Drv1', 'DrugUse_Drv1', | |
| 'Gender_Drv2', 'Violation1_Drv2', 'AlcoholUse_Drv2', 'DrugUse_Drv2', | |
| 'Unittype_Two', 'Traveldirection_Two', 'Unitaction_Two', 'CrossStreet'] | |
| for col in categorical: | |
| df[col].fillna('Unknown', inplace=True) | |
| # Remove invalid ages | |
| df = df[ | |
| (df['Age_Drv1'] <= 90) & | |
| (df['Age_Drv2'] <= 90) & | |
| (df['Age_Drv1'] >= 16) & | |
| (df['Age_Drv2'] >= 16) | |
| ] | |
| # Create age groups | |
| bins = [15, 25, 35, 45, 55, 65, 90] | |
| labels = ['16-25', '26-35', '36-45', '46-55', '56-65', '65+'] | |
| df['Age_Group_Drv1'] = pd.cut(df['Age_Drv1'], bins=bins, labels=labels) | |
| df['Age_Group_Drv2'] = pd.cut(df['Age_Drv2'], bins=bins, labels=labels) | |
| return df | |
| def create_severity_violation_chart(df, age_group=None): | |
| # Apply age group filter if selected | |
| if age_group != 'All Ages': | |
| df = df[(df['Age_Group_Drv1'] == age_group) | (df['Age_Group_Drv2'] == age_group)] | |
| # Combine violations from both drivers | |
| violations_1 = df.groupby(['Violation1_Drv1', 'Injuryseverity']).size().reset_index(name='count') | |
| violations_2 = df.groupby(['Violation1_Drv2', 'Injuryseverity']).size().reset_index(name='count') | |
| violations_1.columns = ['Violation', 'Severity', 'count'] | |
| violations_2.columns = ['Violation', 'Severity', 'count'] | |
| violations = pd.concat([violations_1, violations_2]) | |
| violations = violations.groupby(['Violation', 'Severity'])['count'].sum().reset_index() | |
| # Create visualization | |
| fig = px.bar( | |
| violations, | |
| x='Violation', | |
| y='count', | |
| color='Severity', | |
| title=f'Crash Severity Distribution by Violation Type - {age_group}', | |
| labels={'count': 'Number of Incidents', 'Violation': 'Violation Type'}, | |
| height=600 | |
| ) | |
| fig.update_layout( | |
| xaxis_tickangle=-45, | |
| legend_title='Severity Level', | |
| barmode='stack' | |
| ) | |
| return fig | |
| def get_top_violations(df, age_group): | |
| if age_group == 'All Ages': | |
| violations = pd.concat([ | |
| df['Violation1_Drv1'].value_counts(), | |
| df['Violation1_Drv2'].value_counts() | |
| ]).groupby(level=0).sum() | |
| else: | |
| filtered_df = df[ | |
| (df['Age_Group_Drv1'] == age_group) | | |
| (df['Age_Group_Drv2'] == age_group) | |
| ] | |
| violations = pd.concat([ | |
| filtered_df['Violation1_Drv1'].value_counts(), | |
| filtered_df['Violation1_Drv2'].value_counts() | |
| ]).groupby(level=0).sum() | |
| # Convert to DataFrame and format | |
| violations_df = violations.reset_index() | |
| violations_df.columns = ['Violation Type', 'Count'] | |
| violations_df['Percentage'] = (violations_df['Count'] / violations_df['Count'].sum() * 100).round(2) | |
| violations_df['Percentage'] = violations_df['Percentage'].map('{:.2f}%'.format) | |
| return violations_df.head() | |
| def create_injuries_fatalities_chart(crash_data): | |
| # Filter rows where we have valid data for all necessary columns | |
| crash_data = crash_data[['DateTime', 'Totalinjuries', 'Totalfatalities', 'Unittype_One', 'Unittype_Two']].dropna() | |
| # Convert "DateTime" to datetime type | |
| crash_data['DateTime'] = pd.to_datetime(crash_data['DateTime'], errors='coerce') | |
| crash_data['Month'] = crash_data['DateTime'].dt.month_name() | |
| # sort months in order | |
| month_order = ['January', 'February', 'March', 'April', 'May', 'June', 'July', 'August', 'September', 'October', 'November', 'December'] | |
| crash_data['Month'] = pd.Categorical(crash_data['Month'], categories=month_order, ordered=True) | |
| # Dropdown for Unit Type selection | |
| unit_type_pairs = set() | |
| for _, row in crash_data[['Unittype_One', 'Unittype_Two']].dropna().iterrows(): | |
| if row['Unittype_One'] != 'Driverless' or row['Unittype_Two'] != 'Driverless': | |
| pair = ' vs '.join(sorted([row['Unittype_One'], row['Unittype_Two']])) | |
| unit_type_pairs.add(pair) | |
| unit_type_pairs = sorted(list(unit_type_pairs)) | |
| unit_type = st.selectbox("Select Unit Type Pair", options=['Total'] + unit_type_pairs) | |
| # Filter data based on the selected unit type | |
| if unit_type == 'Total': | |
| filtered_data = crash_data | |
| else: | |
| unit_one, unit_two = unit_type.split(' vs ') | |
| filtered_data = crash_data[((crash_data['Unittype_One'] == unit_one) & (crash_data['Unittype_Two'] == unit_two)) | | |
| ((crash_data['Unittype_One'] == unit_two) & (crash_data['Unittype_Two'] == unit_one))] | |
| # Group data by month and calculate total injuries and fatalities | |
| monthly_sum = filtered_data.groupby('Month').agg({'Totalinjuries': 'sum', 'Totalfatalities': 'sum'}).reset_index() | |
| # Reshape the data for easier plotting | |
| injuries = monthly_sum[['Month', 'Totalinjuries']].rename(columns={'Totalinjuries': 'Value'}) | |
| injuries['Measure'] = 'Total Injuries' | |
| fatalities = monthly_sum[['Month', 'Totalfatalities']].rename(columns={'Totalfatalities': 'Value'}) | |
| fatalities['Measure'] = 'Total Fatalities' | |
| combined_data = pd.concat([injuries, fatalities]) | |
| # Plot line chart | |
| line_chart = alt.Chart(combined_data).mark_line(point=True).encode( | |
| x=alt.X('Month:N', sort=month_order, title='Month'), | |
| y=alt.Y('Value:Q', title='Total Injuries & Fatalities'), | |
| color=alt.Color('Measure:N', title='', scale=alt.Scale(domain=['Total Injuries', 'Total Fatalities'], range=['blue', 'red'])), | |
| tooltip=['Month', 'Measure:N', 'Value:Q'] | |
| ).properties( | |
| title=f'Total Injuries and Fatalities by Month for Unit Type Pair: {unit_type}', | |
| width=600, | |
| height=400 | |
| ) | |
| return line_chart | |
| def main(): | |
| st.title('Traffic Crash Analysis') | |
| # Load data | |
| df = load_and_preprocess_data('1.08_Crash_Data_Report_(detail).csv') | |
| # Create simple dropdown for age groups | |
| age_groups = ['All Ages', '16-25', '26-35', '36-45', '46-55', '56-65', '65+'] | |
| selected_age = st.selectbox('Select Age Group:', age_groups) | |
| # Create and display crash severity vs violation type chart | |
| fig = create_severity_violation_chart(df, selected_age) | |
| st.plotly_chart(fig, use_container_width=True) | |
| # Create and display injuries and fatalities chart | |
| injuries_fatalities_chart = create_injuries_fatalities_chart(df) | |
| st.altair_chart(injuries_fatalities_chart, use_container_width=True) | |
| # Display statistics | |
| if selected_age == 'All Ages': | |
| total_incidents = len(df) | |
| else: | |
| total_incidents = len(df[ | |
| (df['Age_Group_Drv1'] == selected_age) | | |
| (df['Age_Group_Drv2'] == selected_age) | |
| ]) | |
| # Create two columns for statistics | |
| col1, col2 = st.columns(2) | |
| with col1: | |
| st.markdown(f"### Total Incidents") | |
| st.markdown(f"**{total_incidents:,}** incidents for {selected_age}") | |
| # Display top violations table | |
| with col2: | |
| st.markdown("### Top Violations") | |
| top_violations = get_top_violations(df, selected_age) | |
| st.table(top_violations) | |
| if __name__ == "__main__": | |
| main() | |