Espero que estén todos bien con todo el tema del Coronavirus. He aprovechado el confinamiento para retomar un práctico que tenía pendiente en mis estudios.
Estoy haciendo una búsqueda con la latitud y longitud de diversos barrios de Manhattan y luego usando el foursquare para obtener datos sobre locales comerciales.
El problema es que teniendo este DF:
Borough District latitude longitude 0 Manhattan CB 1 Battery Park City 40.711017 -74.016937 1 Manhattan CB 1 Financial District 40.707612 -74.009378 2 Manhattan CB 1 Tribeca 40.715380 -74.009306 3 Manhattan CB 2 Chinatown 40.716491 -73.996250 4 Manhattan CB 2 Greenwich Village 40.731980 -73.996566 5 Manhattan CB 2 Little Italy 40.719273 -73.998215 6 Manhattan CB 2 Lower East Side 40.715936 -73.986806 7 Manhattan CB 2 NoHo 40.725875 -73.993957 8 Manhattan CB 2 SoHo 40.722880 -73.998750 9 Manhattan CB 2 West Village 40.734186 -74.005580 10 Manhattan CB 3 Alphabet City 40.725102 -73.979583 11 Manhattan CB 3 Chinatown 40.716491 -73.996250 12 Manhattan CB 3 East Village 40.729269 -73.987361 13 Manhattan CB 3 Lower East Side 40.715936 -73.986806 14 Manhattan CB 3 Two Bridges 40.711288 -73.992233 15 Manhattan CB 4 Chelsea 40.746491 -74.001528 19 Manhattan CB 5 Midtown 40.762268 -73.979544 20 Manhattan CB 6 Gramercy Park 40.737925 -73.985932 21 Manhattan CB 6 Kips Bay 40.739546 -73.977083 22 Manhattan CB 6 Rose Hill 40.743338 -73.984159 23 Manhattan CB 6 Murray Hill 40.760000 -73.813056 24 Manhattan CB 6 Peter Cooper Village 40.733960 -73.977423 25 Manhattan CB 6 Stuyvesant Town 40.731971 -73.978093 26 Manhattan CB 6 Sutton Place 41.114852 -72.371285 27 Manhattan CB 6 Tudor City 40.748623 -73.971389 28 Manhattan CB 6 Turtle Bay 40.753467 -73.968866 29 Manhattan CB 6 Waterside Plaza 40.737581 -73.973242 30 Manhattan CB 7 Lincoln Square 40.772319 -73.984401 31 Manhattan CB 7 Manhattan Valley 40.799776 -73.967772 32 Manhattan CB 7 Upper West Side 40.787045 -73.975416 33 Manhattan CB 8 Lenox Hill 40.766437 -73.959017 34 Manhattan CB 8 Roosevelt Island 40.761418 -73.950228 35 Manhattan CB 8 Upper East Side 40.773702 -73.964120 36 Manhattan CB 8 Yorkville 40.778007 -73.948202 37 Manhattan CB 9 Hamilton Heights 40.824145 -73.950062 38 Manhattan CB 9 Manhattanville 40.815778 -73.951554 39 Manhattan CB 9 Morningside Heights 40.810000 -73.962500 40 Manhattan CB 10 Harlem 40.807879 -73.945415 41 Manhattan CB 10 Polo Grounds 41.101948 -72.373218 42 Manhattan CB 11 East Harlem 40.794722 -73.942500 43 Manhattan CB 11 Randall's Island 40.796768 -73.922082 45 Manhattan CB 11 Wards Island 40.787601 -73.925415 46 Manhattan CB 12 Inwood 40.869258 -73.920495 47 Manhattan CB 12 Washington Heights 40.840198 -73.940221
Al pasarlo por la siguiente iteración:
for i in np.arange(0, NY.shape[0]):
# We choose to search by category with a 500m radius.
radius = 600
LIMIT = 200
category_id = '4bf58dd8d48988d102951735' #ID for Accessory stores
latitude = NY['latitude'][i]
longitude = NY['longitude'][i]
# Define the corresponding URL
url = 'https://api.foursquare.com/v2/venues/search?client_id={}&client_secret={}&ll={},{}&v={}&categoryId={}&radius={}&limit={}'.format(CLIENT_ID, CLIENT_SECRET, latitude, longitude, VERSION, category_id, radius, LIMIT)
# Send the GET Request
results = requests.get(url).json()
# Get relevant part of JSON and transform it into a pandas dataframe
# assign relevant part of JSON to venues
venues = results['response']['venues']
# tranform venues into a dataframe
dataframe = json_normalize(venues)
dataframe.head()
# keep only columns that include venue name, and anything that is associated with location
filtered_columns = ['name', 'categories'] + [col for col in dataframe.columns if col.startswith('location.')] + ['id']
dataframe_filtered = dataframe.loc[:, filtered_columns]
# function that extracts the category of the venue
def get_category_type(row):
try:
categories_list = row['categories']
except:
categories_list = row['venue.categories']
if len(categories_list) == 0:
return None
else:
return categories_list[0]['name']
# filter the category for each row
dataframe_filtered['categories'] = dataframe_filtered.apply(get_category_type, axis=1)
# clean column names by keeping only last term
dataframe_filtered.columns = [column.split('.')[-1] for column in dataframe_filtered.columns]
print(str(i) + ') The number of shops in ' +NY['District'][i] + ' is ' +str(dataframe_filtered.shape[0]) + '\n')
N_shop.append(dataframe_filtered.shape[0])
Ocurre que va bien, hasta que llega a la fila nº16, donde da este error:
10) The number of shops in Alphabet City is 7 11) The number of shops in Chinatown is 39 12) The number of shops in East Village is 20 13) The number of shops in Lower East Side is 18 14) The number of shops in Two Bridges is 3 15) The number of shops in Chelsea is 14 --------------------------------------------------------------------------- KeyError Traceback (most recent call last) <ipython-input-24-5b54770e4fe0> in <module> 6 category_id = '4bf58dd8d48988d102951735' #ID for Accessory stores 7 ----> 8 latitude = NY['latitude'][i] 9 longitude = NY['longitude'][i] 10 # Define the corresponding URL /opt/conda/envs/Python36/lib/python3.6/site-packages/pandas/core/series.py in __getitem__(self, key) 866 key = com.apply_if_callable(key, self) 867 try: --> 868 result = self.index.get_value(self, key) 869 870 if not is_scalar(result): /opt/conda/envs/Python36/lib/python3.6/site-packages/pandas/core/indexes/base.py in get_value(self, series, key) 4372 try: 4373 return self._engine.get_value(s, k, -> 4374 tz=getattr(series.dtype, 'tz', None)) 4375 except KeyError as e1: 4376 if len(self) > 0 and (self.holds_integer() or self.is_boolean()): pandas/_libs/index.pyx in pandas._libs.index.IndexEngine.get_value() pandas/_libs/index.pyx in pandas._libs.index.IndexEngine.get_value() pandas/_libs/index.pyx in pandas._libs.index.IndexEngine.get_loc() pandas/_libs/hashtable_class_helper.pxi in pandas._libs.hashtable.Int64HashTable.get_item() pandas/_libs/hashtable_class_helper.pxi in pandas._libs.hashtable.Int64HashTable.get_item() KeyError: 16
He probado diversas opciones pero sin exito, no logro darme cuenta donde esta el error. Si alguien puede iluminarme, se lo agradecería mucho.