Skip to main content

USA zipcode programmable database, includes up-to-date census and geometry information.

Project description

Documentation Status https://travis-ci.org/MacHu-GWU/uszipcode-project.svg?branch=master https://codecov.io/gh/MacHu-GWU/uszipcode-project/branch/master/graph/badge.svg https://img.shields.io/pypi/v/uszipcode.svg https://img.shields.io/pypi/l/uszipcode.svg https://img.shields.io/pypi/pyversions/uszipcode.svg https://img.shields.io/badge/STAR_Me_on_GitHub!--None.svg?style=social
https://img.shields.io/badge/Link-Document-blue.svg https://img.shields.io/badge/Link-API-blue.svg https://img.shields.io/badge/Link-Source_Code-blue.svg https://img.shields.io/badge/Link-Install-blue.svg https://img.shields.io/badge/Link-GitHub-blue.svg https://img.shields.io/badge/Link-Submit_Issue-blue.svg https://img.shields.io/badge/Link-Request_Feature-blue.svg https://img.shields.io/badge/Link-Download-blue.svg

Welcome to uszipcode Documentation

If you are on www.pypi.org or www.github.com, this is not the complete document. Here is the Complete Document.

uszipcode is the most powerful and easy to use programmable zipcode database in Python. It comes with a rich feature and easy-to-use zipcode search engine. And it is easy to customize the search behavior as you wish.

Data Points

From version 0.2.0, uszipcode use a more up-to-date database, and having a crawler running every week to collection different data points from multiple data source. And API in 0.2.X NOT COMPATIBLE with 0.1.X, please read Document for more information.

Address, Postal

  • zipcode

  • zipcode_type

  • major_city

  • post_office_city

  • common_city_list

  • county

  • state

  • area_code_list

Geography

  • lat

  • lng

  • timezone

  • radius_in_miles

  • land_area_in_sqmi

  • water_area_in_sqmi

  • bounds_west

  • bounds_east

  • bounds_north

  • bounds_south

  • border polygon

Stats and Demographics

  • population

  • population_density

  • population_by_year

  • population_by_age

  • population_by_gender

  • population_by_race

  • head_of_household_by_age

  • families_vs_singles

  • households_with_kids

  • children_by_age

Real Estate and Housing

  • housing_units

  • occupied_housing_units

  • median_home_value

  • median_household_income

  • housing_type

  • year_housing_was_built

  • housing_occupancy

  • vancancy_reason

  • owner_occupied_home_values

  • rental_properties_by_number_of_rooms

  • monthly_rent_including_utilities_studio_apt

  • monthly_rent_including_utilities_1_b

  • monthly_rent_including_utilities_2_b

  • monthly_rent_including_utilities_3plus_b

Employment, Income, Earnings, and Work

  • employment_status

  • average_household_income_over_time

  • household_income

  • annual_individual_earnings

  • sources_of_household_income____percent_of_households_receiving_income

  • sources_of_household_income____average_income_per_household_by_income_source

  • household_investment_income____percent_of_households_receiving_investment_income

  • household_investment_income____average_income_per_household_by_income_source

  • household_retirement_income____percent_of_households_receiving_retirement_incom

  • household_retirement_income____average_income_per_household_by_income_source

  • source_of_earnings

  • means_of_transportation_to_work_for_workers_16_and_over

  • travel_time_to_work_in_minutes

Education

  • educational_attainment_for_population_25_and_over

  • school_enrollment_age_3_to_17

Example Usage

>>> from uszipcode import SearchEngine
>>> search = SearchEngine(simple_zipcode=True)
>>> zipcode = search.by_zipcode("10001")
>>> zipcode
SimpleZipcode(zipcode=u'10001', zipcode_type=u'Standard', major_city=u'New York', post_office_city=u'New York, NY', common_city_list=[u'New York'], county=u'New York County', state=u'NY', lat=40.75, lng=-73.99, timezone=u'Eastern', radius_in_miles=0.9090909090909091, area_code_list=[u'718', u'917', u'347', u'646'], population=21102, population_density=33959.0, land_area_in_sqmi=0.62, water_area_in_sqmi=0.0, housing_units=12476, occupied_housing_units=11031, median_home_value=650200, median_household_income=81671, bounds_west=-74.008621, bounds_east=-73.984076, bounds_north=40.759731, bounds_south=40.743451)

>>> zipcode.values() # to list
[u'10001', u'Standard', u'New York', u'New York, NY', [u'New York'], u'New York County', u'NY', 40.75, -73.99, u'Eastern', 0.9090909090909091, [u'718', u'917', u'347', u'646'], 21102, 33959.0, 0.62, 0.0, 12476, 11031, 650200, 81671, -74.008621, -73.984076, 40.759731, 40.743451]

>>> zipcode.to_dict() # to dict
{'housing_units': 12476, 'post_office_city': u'New York, NY', 'bounds_east': -73.984076, 'county': u'New York County', 'population_density': 33959.0, 'radius_in_miles': 0.9090909090909091, 'timezone': u'Eastern', 'lng': -73.99, 'common_city_list': [u'New York'], 'zipcode_type': u'Standard', 'zipcode': u'10001', 'state': u'NY', 'major_city': u'New York', 'population': 21102, 'bounds_west': -74.008621, 'land_area_in_sqmi': 0.62, 'lat': 40.75, 'median_household_income': 81671, 'occupied_housing_units': 11031, 'bounds_north': 40.759731, 'bounds_south': 40.743451, 'area_code_list': [u'718', u'917', u'347', u'646'], 'median_home_value': 650200, 'water_area_in_sqmi': 0.0}

>>> zipcode.to_json() # to json
{
    "zipcode": "10001",
    "zipcode_type": "Standard",
    "major_city": "New York",
    "post_office_city": "New York, NY",
    "common_city_list": [
        "New York"
    ],
    "county": "New York County",
    "state": "NY",
    "lat": 40.75,
    "lng": -73.99,
    "timezone": "Eastern",
    "radius_in_miles": 0.9090909090909091,
    "area_code_list": [
        "718",
        "917",
        "347",
        "646"
    ],
    "population": 21102,
    "population_density": 33959.0,
    "land_area_in_sqmi": 0.62,
    "water_area_in_sqmi": 0.0,
    "housing_units": 12476,
    "occupied_housing_units": 11031,
    "median_home_value": 650200,
    "median_household_income": 81671,
    "bounds_west": -74.008621,
    "bounds_east": -73.984076,
    "bounds_north": 40.759731,
    "bounds_south": 40.743451
}

Rich search methods are provided for getting zipcode in the way you want.

>>> from uszipcode import Zipcode
# Search zipcode within 30 miles, ordered from closest to farthest
>>> result = search.by_coordinates(39.122229, -77.133578, radius=30, returns=5)
>>> len(res) # by default 5 results returned
5
>>> for zipcode in result:
...     # do whatever you want...

# Find top 10 population zipcode
>>> result = search.by_population(lower=0, upper=999999999,
... sort_by=Zipcode.population, ascending=False, returns=10)

# Find top 10 largest land area zipcode
>>> res = search.by_landarea(lower=0, upper=999999999,
... sort_by=Zipcode.land_area_in_sqmi, ascending=False, returns=10)

Fuzzy city name and state name search does not require developer to know the exact spelling of the city or state. And it is case, space insensitive, having high tolerance to typo. This is very helpful if you need to build a web app with it.

# Looking for Chicago and IL, but entered wrong spelling.
>>> res = search.by_city_and_state("cicago", "il")
>>> len(res) # 56 zipcodes in Chicago
56
>>> zipcode = res[0]
>>> zipcode.major_city
'Chicago'
>>> zipcode.state_abbr
'IL'

You can easily sort your results by any field, or distance from a coordinates if you query by location.

# Find top 10 population zipcode
>>> res = search.by_population(lower=0, upper=999999999,
... sort_by=Zipcode.population, ascending=False, returns=10)
>>> for zipcode in res:
...     # do whatever you want...

Install

uszipcode is released on PyPI, so all you need is:

$ pip install uszipcode

To upgrade to latest version:

$ pip install --upgrade uszipcode

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

uszipcode-0.2.0.tar.gz (121.0 kB view hashes)

Uploaded Source

Built Distribution

uszipcode-0.2.0-py2.py3-none-any.whl (149.2 kB view hashes)

Uploaded Python 2 Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page