import pandas as pd from collections import Counter df = pd.read_csv('data_final/hasil_cluster.csv') # Use MAXIMUM cluster per region (peak risk - academically valid for risk map) agg = df.groupby('nama_kabupaten_kota').agg( cluster_max=('cluster', 'max'), banjir_total=('jumlah_banjir', 'sum'), sampah_total=('jumlah_sampah', 'sum'), lat=('lat', 'first'), lon=('lon', 'first') ).reset_index() label_map = {0: 'Wilayah Risiko Rendah', 1: 'Wilayah Risiko Sedang', 2: 'Wilayah Risiko Tinggi'} agg['kategori'] = agg['cluster_max'].map(label_map) print('Distribusi:', Counter(agg['kategori'].tolist())) print() print('=== TSX DATA (sorted by cluster) ===') for _, r in agg.sort_values(['cluster_max','nama_kabupaten_kota']).iterrows(): print(f' {{ nama: "{r["nama_kabupaten_kota"]}", lat: {r["lat"]}, lon: {r["lon"]}, cluster: {int(r["cluster_max"])}, kategori: "{r["kategori"]}", banjir: {int(r["banjir_total"])}, sampah: {r["sampah_total"]:.2f} }},')