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. Intenté el siguiente código:
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()
Pero es muy lento. ¿Cómo puedo optimizarlo?
costituences.json
relacionando elname_2
conname
deresearch.json
no sirve?Proxy
que relacionename_2
conname
. Siendo sincero, nunca he implementado nada parecido, pero losProxy
en JavaScript sirven, entre otras cosas, para hacer este tipo de metaprogramación.