An interface to explore and query the US Census API and return Pandas
Dataframes. This package is intended for exploratory data
analysis and draws inspiration from sqlalchemy-like interfaces and
acs.R
. With separate APIs for application developers and folks who
only want to get their data quickly & painlessly, cenpy
should meet
the needs of most who aim to get US Census Data from Python.
A few examples are available from our website:
- getting data quickly using Cenpy.
- analyzing segregation over time & across space using cenpy and segregation
- a road to frictionless urban data science using cenpy and osmnx
- developer building blocks.
- piecing together the developer building blocks (by @dfolch)
Cenpy is easiest to install using conda
, a commonly-used package manager for scientific python. First, install Anaconda.
Then, cenpy
is available on the conda-forge
channel:
conda install -c conda-forge cenpy
Alternatively, you can install cenpy via pip
, the python package manager, if you have installed geopandas
and rtree
:
pip install cenpy
Most of the time, users want a simple and direct interface to the US Census Bureau's main products: the 2010 Census and the American Community Survey. Fortunately, cenpy provides a direct interface to these products. For instance, the American Community Survey's most recent 5-year estimates can be accessed using:
import cenpy acs = cenpy.products.ACS() acs.from_place('Chicago, IL')
Likewise, the decennial census can be accessed using:
import cenpy decennial = cenpy.products.Decennial2010() decennial.from_place('Seattle, WA')
For more information on how the product API works, consult the notebook on the topic.
The API reference is available at cenpy-devs.github.io/cenpy. The products
are typically what most end-users will want to interact with. If you want more fine-grained access to the USCB APIs, you will likely want to build on top of APIConnection
and TigerConnection
.
At a high level, the APIConnection
object connects to resources exposed on the US Census Bureau's API at https://api.census.gov/data.json
. Its methods and relevant utilities are defined in cenpy.remote
. The TigerConnection
wraps one map service exposed at http://tigerweb.geo.census.gov/arcgis/rest/services/TIGERweb
and is defined in cenpy.tiger
. Each TigerConnection
is composed of many ESRILayer
objects, which wrap an individual geography within the ESRI map service. For instance, an ACS TigerConnection
may contain State, County, and Tract ESRILayer
objects within their layer
attribute.
To use the developer-focused API, you can create an APIConnection
using its shortcode:
cxn = cenpy.remote.APIConnection('DECENNIALSF12010')
Check the variables required and geographies supported:
cxn.variables #is a pandas dataframe containing query-able vbls cxn.geographies #is a pandas dataframe containing query-able geographies
Note that some geographies (like tract) have requirements higher in the hierarchy that you'll have to specify for the query to work.
The structure of the query function maps to the Census API's use of
get
, for
, and in
. The main arguments for the query function
are cols
, geo_unit
and geo_filter
, and map back to those predicates, respectively. If more predicates are required for the
search, they can be added as keyword arguments at the end of the query.
The cols
argument must be a list of columns to retrieve from the
dataset. Then, you must specify the geo_unit
and geo_filter
,
which provide what the unit of aggregation should be and where the
units should be. geo_unit
must be a string containing the unit of
analysis and an identifier. For instance, if you want all counties in
Arizona, you specify geo_unit = 'county:*'
and geo_filter =
{'state':'04'}
.
To create a TigerConnection
:
cxn = cenpy.tiger.TigerConnection('tigerWMS_ACS2013')
Then, all of the ESRILayer
objects are contained in the layer
attribute:
cxn.layers
the cxn.query
method passes the relevant query down to the chosen layer and returns a geopandas
dataframe. The actual query is structured like SQL
, and follows the ESRI documentation.
To contribute to cenpy
:
- Use
cenpy
! Every user is a contributor in kind. If you feel like it, file an issue:- to tell us how you use
cenpy
. - to post a code snippit, a jupyter notebook, or whatever you can.
- to tell us about your blog posts!
- to ask questions about how you might use census data from Python, and we'll try to help.
- to tell us how you use
- If you're using
cenpy
and something goes wrong, file an issue telling us:- what you want that is not in
cenpy
or doesn't work well in other packages - what functionality in
cenpy
isn't working how you believe it ought - what in the documentation isn't spelled correctly or is confusing
- what you want that is not in
- Fork the
cenpy-devs/cenpy
github repository, make changes, and send us a pull request
- A product in
cenpy.products
for County Business Statistics