Tengo un archivo geojson con resultados para cada provincia y una que da otros resultados para cada circunscripción (una parte administrativa de la provincia). Es decir, en el dibujo:
Me gustaría hacer una tercera que ponga los resultados de la primera para cada nivel constituency
de la segunda que tenga la misma province con la primera:
Significa que todos los constituences de la misma provincia tendrán los mismos resultados que provienen de research.json
. Ahora mismo estoy tratando de hacerlo en la clave name_2.
Aqui esta constituences.json
:
{
"type": "FeatureCollection",
"totalFeatures": 1515,
"features": [
{
"type": "Feature",
"id": "fd597jf1799.1",
"geometry": {
"type": "MultiPolygon",
"coordinates": [
[
[
[
-7.27163887,
33.24041367
],
[
-7.27286911,
33.24623871
],
[
-7.26732922,
33.25904083
]
]
]
]
},
"geometry_name": "geom",
"properties": {
"id_0": 152,
"iso": "MAR",
"name_0": "Morocco",
"id_1": 1,
"name_1": "Chaouia - Ouardigha",
"id_2": 1,
"name_2": "Ben Slimane",
"id_3": 1,
"name_3": "Ben Slimane",
"id_4": 1,
"name_4": "Ahlaf",
"varname_4": null,
"ccn_4": 0,
"cca_4": null,
"type_4": "Commune Rural",
"engtype_4": "Rural Commune",
"bbox": [
-7.27286911,
33.22112656,
-6.93353081,
33.38970184
],
"swing_count": 1,
"polling_station_count": 15,
"turnout": 0.4780299144225693,
"results": {
"PI": 187,
"PJD": 88,
"PAM": 59,
"USFP": 1530,
"APFGD": 2,
"PPS": 15,
"RNI": 708,
"MP": 56,
"UC": 3,
"FFD": 0,
"MDS": 0,
"AAR": 0,
"P Neo-Democrates": 8,
"PEDD": 0,
"PRD": 2,
"PRV": 0,
"PDI": 0,
"PGVM": 0,
"PALAMAL": 0,
"PCS": 0,
"PUD": 0,
"PDN": 1,
"PLJS": 0,
"PSD": 0,
"P Annahda": 0,
"PA": 0,
"UMD": 0,
"USAPMD": 10
},
"voter_file": {
"nbre_sieges": 3,
"nbre_inscrits": 5953,
"nbre_votants": 2997,
"nbre_nuls": 328,
"nbre_exprimees": 2669
},
"swing_ratio": 0.06666666666666667
}
},
{
"type": "Feature",
"id": "fd597jf1799.2",
"geometry": {
"type": "MultiPolygon",
"coordinates": [
[
[
[
-7.00001287,
33.63414383
],
[
-7.00081205,
33.6269989
],
[
-6.99825382,
33.60465622
]
]
]
]
},
"geometry_name": "geom",
"properties": {
"id_0": 152,
"iso": "MAR",
"name_0": "Morocco",
"id_1": 1,
"name_1": "Chaouia - Ouardigha",
"id_2": 1,
"name_2": "Ben Slimane",
"id_3": 1,
"name_3": "Ben Slimane",
"id_4": 2,
"name_4": "Ain Tizgha",
"varname_4": null,
"ccn_4": 0,
"cca_4": null,
"type_4": "Commune Rural",
"engtype_4": "Rural Commune",
"bbox": [
-7.12737417,
33.57954407,
-6.99144888,
33.78071213
],
"swing_count": 11,
"polling_station_count": 23,
"turnout": 0.3912592182242994,
"results": {
"PI": 1837,
"PJD": 366,
"PAM": 143,
"USFP": 22,
"APFGD": 44,
"PPS": 773,
"RNI": 109,
"MP": 111,
"UC": 9,
"FFD": 0,
"MDS": 0,
"AAR": 0,
"P Neo-Democrates": 76,
"PEDD": 27,
"PRD": 2,
"PRV": 0,
"PDI": 0,
"PGVM": 0,
"PALAMAL": 0,
"PCS": 0,
"PUD": 0,
"PDN": 1,
"PLJS": 0,
"PSD": 0,
"P Annahda": 0,
"PA": 0,
"UMD": 2,
"USAPMD": 514
},
"voter_file": {
"nbre_sieges": 3,
"nbre_inscrits": 8262,
"nbre_votants": 4479,
"nbre_nuls": 443,
"nbre_exprimees": 4036
},
"swing_ratio": 0.4782608695652174
}
}
],
"crs": {
"type": "name",
"properties": {
"name": "urn:ogc:def:crs:EPSG::4326"
}
},
"bbox": [
-13.2287693,
27.62881088,
-0.93655348,
35.96390533
]
}
Y aqui esta research.json
:
{
"type": "FeatureCollection",
"features": [
{
"geometry": {
"type": "MultiPolygon",
"coordinates": [
[
[
[
-7.18458319,
33.81124878
],
[
-7.18458319,
33.81097412
],
[
-7.18319511,
33.81097412
]
]
]
]
},
"type": "Feature",
"id": "md898kw3185.1",
"properties": {
"name": "Ben Slimane",
"type": "Province",
"segments": {
"UND": {
"I don't know yet": 16,
"No": 3,
"Yes": 5,
"total": 24,
"intention_rate": 20.83
},
"ABS": {
"I don't know yet": 1,
"No": 10,
"Yes": 1,
"total": 12,
"intention_rate": 8.33
},
"PJD": {
"I don't know yet": 1,
"Yes": 3,
"total": 4,
"intention_rate": 75
},
"PAM": {
"I don't know yet": 1,
"Yes": 1,
"total": 2,
"intention_rate": 50
},
"OTH": {
"I don't know yet": 1,
"No": 4,
"Yes": 4,
"total": 9,
"intention_rate": 44.44
},
"RNI": {
"Yes": 2,
"total": 2,
"intention_rate": 100
},
"IST": {
"I don't know yet": 1,
"Yes": 1,
"total": 2,
"intention_rate": 50
}
},
"sample_size": 55
}
},
{
"geometry": {
"type": "MultiPolygon",
"coordinates": [
[
[
[
-6.3649292,
33.22292328
],
[
-6.38369083,
33.21116257
],
[
-6.39487886,
33.19342422
]
]
]
]
},
"type": "Feature",
"id": "md898kw3185.2",
"properties": {
"name": "Khouribga",
"type": "Province",
"segments": {
"UND": {
"I don't know yet": 46,
"No": 12,
"Yes": 13,
"total": 71,
"intention_rate": 18.31
},
"ABS": {
"I don't know yet": 4,
"No": 79,
"Yes": 1,
"total": 84,
"intention_rate": 1.19
},
"PJD": {
"I don't know yet": 14,
"No": 1,
"Yes": 4,
"total": 19,
"intention_rate": 21.05
},
"PAM": {
"I don't know yet": 12,
"No": 1,
"Yes": 7,
"total": 20,
"intention_rate": 35
},
"OTH": {
"I don't know yet": 3,
"No": 3,
"Yes": 2,
"total": 8,
"intention_rate": 25
},
"RNI": {
"I don't know yet": 3,
"Yes": 3,
"total": 6,
"intention_rate": 50
},
"IST": {
"I don't know yet": 5,
"Yes": 1,
"total": 6,
"intention_rate": 16.67
}
},
"sample_size": 214
}
},
{
"geometry": {
"type": "MultiPolygon",
"coordinates": [
[
[
[
-3.77662611,
34.86683655
],
[
-3.7705431,
34.86468506
],
[
-3.75482011,
34.86924362
]
]
]
]
},
"type": "Feature",
"id": "md898kw3185.57",
"properties": {
"name": "Taza",
"type": "Province",
"segments": {
"UND": {
"I don't know yet": 16,
"No": 28,
"Yes": 14,
"total": 58,
"intention_rate": 24.14
},
"ABS": {
"I don't know yet": 2,
"No": 29,
"Yes": 1,
"total": 32,
"intention_rate": 3.12
},
"PJD": {
"I don't know yet": 9,
"No": 4,
"Yes": 23,
"total": 36,
"intention_rate": 63.89
},
"PAM": {
"I don't know yet": 4,
"No": 1,
"Yes": 1,
"total": 6,
"intention_rate": 16.67
},
"OTH": {
"I don't know yet": 3,
"No": 3,
"Yes": 5,
"total": 11,
"intention_rate": 45.45
},
"RNI": {
"total": 0,
"intention_rate": 0
},
"IST": {
"I don't know yet": 2,
"No": 2,
"Yes": 5,
"total": 9,
"intention_rate": 55.56
}
},
"sample_size": 152
}
}
]
}
He empezado un script en Python, lo compartiré con vosotros tan pronto como salga al menos algo sin errores, pero estaré contento con javascript tambien.
import json
import pandas as pd
def find_segment(province_queried):
with open('research.geojson', encoding='utf-8-sig') as f:
dct_research = json.load(f)
for feature in dct_research['feature']:
for key in feature.get("properties", {}).get("results", {}):
province = feature.get("properties", {}).get("name")
segments = feature.get("properties", {}).get("segments")
if province == province_queried:
return segments
def main():
with open('constituencies.json') as f:
dct_constituencies = json.load(f)
for feature in dct_constituencies['features']:
for key in feature.get("properties", {}).get("results", {}):
province = feature.get("properties", {}).get("name_1")
constituency = feature.get("properties", {}).get("name_4", {})
segments = find_segment(province)
d.append({"Party Affiliation": key,
"Province": province,
"Constituency Name": constituency,
"segments": segments})
column_names = ["Province", "Constituency Name", "Party Affiliation", "segments"]
df = pd.DataFrame(d, columns=column_names)
df.to_csv("constituencies_with_segments.csv")
if __name__ == '__main__':
main()