Skip to content
Cristian Jara Figueroa edited this page Jan 11, 2017 · 2 revisions

cities.tsv

Column Descriptions

Column ID Description
geonameid Unique place ID
city_name Display name of Place
lat Latitude
lon Longitude
pop Population
ccode Country code (using current country borders)
cname Country name (using current country borders)
region Country's region (using current country borders)
continent Country continent (using current country borders)
least_developed Boolean according to least developed countries UN classification
metroid Metro area ID

Sample Rows

(first 5 rows)

geonameid city_name lat lon pop ccode cname region continent least_developed
5210117.0 Saint Marys 41.42784 -78.56086 13070 USA United States Northern America Americas False
524294.0 Murom 55.575 42.0426 126931 RUS Russia Eastern Europe Europe False
2883591.0 Kropp 54.41667 9.51667 6320 DEU Germany Western Europe Europe False
3407882.0 Altamira -3.20333 -52.20639 70888 BRA Brazil South America Americas False
8224780.0 Cradley Heath 52.47214 -2.08212 5001 GBR United Kingdom Northern Europe Europe False
...

(last 5 rows)

geonameid city_name lat lon pop ccode cname region continent least_developed
5211683.0 Sharon 41.23311 -80.4934 14038 USA United States Northern America Americas False
3014646.0 Grigny 48.65412 2.39343 24940 FRA France Western Europe Europe False
2981879.0 Saint-Alban 43.6927 1.4102 5379 FRA France Western Europe Europe False
2850808.0 Rain 48.69029 10.91611 8438 DEU Germany Western Europe Europe False
2162683.0 Innisfail -17.52209 146.03102 8262 AUS Australia Australia and New Zealand Oceania False

Pandas import

pd.read_csv("cities.tsv", sep="\t", na_values="null", true_values="true", false_values="false", converters={"geonameid":float}, usecols=("geonameid", "ccode", "cname", "region", "continent"))
Clone this wiki locally