A simple wrapper for the United States Census Bureau's API.
Provides access to ACS and SF1 data sets.
pip install census
You may also want to install a complementary library, us, which help you figure out the FIPS codes for many geographies. We use it in the examples below.
pip install us
First, get yourself a Census API key.
from census import Census from us import states c = Census("MY_API_KEY") c.acs5.get(('NAME', 'B25034_010E'), {'for': 'state:{}'.format(states.MD.fips)})
The call above will return the name of the geographic area and the number of homes that were built before 1939 for the state of Maryland. Helper methods have been created to simplify common geometry calls:
c.acs5.state(('NAME', 'B25034_010E'), states.MD.fips)
Full details on geometries and the states module can be found below.
The get method is the core data access method on both the ACS and SF1 data sets. The first parameter is either a single string column or a tuple of columns. The second parameter is a geoemtry dict with a for key and on option in key. The for argument accepts a "*" wildcard character or Census.ALL. The wildcard is not valid for the in parameter.
By default, the year for a dataset is the most recent year available. To access earlier data, pass a year parameter to the API call:
c.acs5.state(('NAME', 'B25034_010E'), states.MD.fips, year=2010)
The default year may also be set client-wide:
c = Census("MY_API_KEY", year=2010)
Detailed information about the API can be found at the Census Data API User Guide.
For each dataset, the first year listed is the default.
- acs5: ACS 5 Year Estimates (2022, 2021, 2020, 2019, 2018, 2017, 2016, 2015, 2014, 2013, 2012, 2011, 2010, 2009)
- acs3: ACS 3 Year Estimates (2013, 2012)
- acs1: ACS 1 Year Estimates (2022, 2021, 2019, 2018, 2017, 2016, 2015, 2014, 2013, 2012, 2011)
- acs5dp: ACS 5 Year Estimates, Data Profiles (2022, 2021, 2019, 2018, 2017, 2016, 2015, 2014, 2013, 2012, 2011, 2010, 2009)
- acs3dp: ACS 3 Year Estimates, Data Profiles (2013, 2012)
- acs1dp: ACS 1 Year Estimates, Data Profiles (2022, 2021, 2019, 2018, 2017, 2016, 2015, 2014, 2013, 2012, 2011)
- acs5st: ACS 5 Year Estimates, Subject Tables (2022, 2021, 2019, 2018, 2017, 2016, 2015, 2014, 2013, 2012, 2011, 2010, 2009)
- sf1: Census Summary File 1 (2010)
- pl: Redistricting Data Summary File (2020, 2010, 2000)
The API supports a wide range of geographic regions. The specification of these can be quite complicated so a number of convenience methods are provided. Refer to the Census API documentation for more geographies beyond the convenience methods.
Not all geographies are supported in all years. Calling a convenience method with a year that is not supported will raise census.UnsupportedYearException.
Geographic relationship files are provided on the Census developer site as a tool to help users compare the geographies from the 1990, 2000 and 2010 Censuses. From these files, data users may determine how geographies from one Census relate to those from the prior Census.
- state(fields, state_fips)
- state_county(fields, state_fips, county_fips)
- state_county_blockgroup(fields, state_fips, county_fips, blockgroup)
- state_county_subdivision(fields, state_fips, county_fips, subdiv_fips)
- state_county_tract(fields, state_fips, county_fips, tract)
- state_place(fields, state_fips, place)
- state_congressional_district(fields, state_fips, congressional_district)
- state_legislative_district_upper(fields, state_fips, legislative_district)
- state_legislative_district_lower(fields, state_fips, legislative_district)
- us(fields)
- state_zipcode(fields, state_fips, zip5)
- state(fields, state_fips)
- state_congressional_district(fields, state_fips, district)
- us(fields)
- state(fields, state_fips)
- state_county(fields, state_fips, county_fips)
- state_county_subdivision(fields, state_fips, county_fips, subdiv_fips)
- state_county_tract(fields, state_fips, county_fips, tract)
- state_place(fields, state_fips, place)
- state_congressional_district(fields, state_fips, district)
- state_msa(fields, state_fips, msa)
- state_csa(fields, state_fips, csa)
- state_district_place(fields, state_fips, district, place)
- state_zipcode(fields, state_fips, zip5)
- state(fields, state_fips)
- state_county(fields, state_fips, county_fips)
- state_county_subdivision(fields, state_fips, county_fips, subdiv_fips)
- state_county_tract(fields, state_fips, county_fips, tract)
- state_county_blockgroup(fields, state_fips, county_fips, blockgroup)
- state_place(fields, state_fips, place)
- state_congressional_district(fields, state_fips, district)
- state_legislative_district_upper(fields, state_fips, legislative_district)
- state_legislative_district_lower(fields, state_fips, legislative_district)
This package previously had a census.states module, but now uses the us package.
>>> from us import states >>> print states.MD.fips u'24'
Convert FIPS to state abbreviation using lookup():
>>> print states.lookup('24').abbr u'MD'
If you'd prefer to use a custom configured requests.Session, you can pass it to the Census constructor:
s = requests.session() s.headers.update({'User-Agent': 'census-demo/0.0'}) c = Census("MY_API_KEY", session=s)
You can also replace the session used by a specific data set:
c.sf1.session = s
The geographic name for all census tracts for county 170 in Alaska:
c.sf1.get('NAME', geo={'for': 'tract:*', 'in': 'state:{} county:170'.format(states.AK.fips)})
The same call using the state_county_tract convenience method:
c.sf1.state_county_tract('NAME', states.AK.fips, '170', Census.ALL)
Total number of males age 5 - 9 for all states:
c.acs5.get('B01001_004E', {'for': 'state:*'})
The same call using the state convenience method:
c.acs5.state('B01001_004E', Census.ALL)
Don't know the list of tables in a survey, try this:
c.acs5.tables()