#!/usr/bin/env python3 """Generate new data and display sample showing upward trend""" import subprocess import pandas as pd # Run data generator result = subprocess.run(['python3', 'Data Gen.py'], capture_output=True, text=True) print(result.stdout) if result.stderr: print("Errors:", result.stderr) # Load and display trend analysis df = pd.read_csv('organization_happiness_study_data.csv') df['Habits_Count'] = ( (df['Calendar_Adherence'] == 'Yes').astype(int) + (df['Cleanliness_Adherence'] == 'Yes').astype(int) + (df['Punctuality_Adherence'] == 'Yes').astype(int) ) intervention = df[df['Group'] == 'Intervention'] control = df[df['Group'] == 'Control'] print("\n" + "="*70) print("UPWARD TREND ANALYSIS") print("="*70) print("\n[INTERVENTION GROUP] - Should show upward trend") early_int = intervention[intervention['Day'] <= 7] late_int = intervention[intervention['Day'] >= 24] print(f"Days 1-7: Avg Happiness = {early_int['Happiness'].mean():.2f}") print(f"Days 24-30: Avg Happiness = {late_int['Happiness'].mean():.2f}") print(f"GROWTH: +{late_int['Happiness'].mean() - early_int['Happiness'].mean():.2f} points\n") print("[CONTROL GROUP] - Should show flat/random pattern") early_ctl = control[control['Day'] <= 7] late_ctl = control[control['Day'] >= 24] print(f"Days 1-7: Avg Happiness = {early_ctl['Happiness'].mean():.2f}") print(f"Days 24-30: Avg Happiness = {late_ctl['Happiness'].mean():.2f}") print(f"CHANGE: {late_ctl['Happiness'].mean() - early_ctl['Happiness'].mean():+.2f} points\n") print("[HABIT CORRELATION] - More habits = Higher happiness") for habits in range(4): subset = intervention[intervention['Habits_Count'] == habits] if len(subset) > 0: print(f"{habits} habits/day: Avg Happiness = {subset['Happiness'].mean():.2f} ({len(subset)} observations)")