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I have a list of US addresses I need to break into city,state, zip code,state etc.

example address : "16100 Sand Canyon Avenue, Suite 380 Irvine, CA 92618"

Does anyone know of a library or a free API to do this? Google/Yahoo geocoder is forbidden to use by the TOS for commercial projects..

It would be awesome to find a python library that preforms this...


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You have to tell us the (exact) format that (string?) data is in. –  Mörre Noseshine Feb 27 '12 at 10:36

6 Answers 6

up vote 11 down vote accepted

Pyparsing has a bunch of functionality for parsing street addresses, check out an example for this here: http://pyparsing.wikispaces.com/file/view/streetAddressParser.py

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Thanks, Im checking this out. –  WeaselFox Feb 27 '12 at 10:50
This library is based on the script mentioned in this answer: github.com/pnpnpn/street-address –  zengr Jan 10 '14 at 23:46

Quite a few of these answers are a few years old now.

The most bulletproof library I've seen recently is usaddress: http://datamade.us/blog/parsing-addresses-with-usaddress/:

Pro tip: when testing addresses in all these libraries, use 1) no commas in your address, 2) multi-word city names preferably with "St." in the name to see if the library can differentiate between "street" and "Saint" (e.g., St. Louis), and 3) improper casing. This combo will typically make even the better parsers fall down.

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Carefully check your dataset to ensure that this problem hasn't already been handled for you.

I spent a fair amount of time first creating a taxonomy of probably street name ending, using regexp conditionals to try to pluck out the street number from the full address strings and everything and it turned out that the attributes table for my shapefiles had already segmented out these components.

Before you go forward with the process of parsing address strings, which is always a bit of a chore due to the inevitably strange variations (some parcel addresses are for landlocked parcels and have weird addresses, etc), make sure your dataset hasn't already done this for you!!!

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Check out this Python Package: https://github.com/SwoopSearch/pyaddress

It also allows flexibility if you know enough details about the addresses to be parsed.

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That pyparsing library looks very interesting and seems to do a nice job with a variety of examples. And I think that's a more readable alternative to raw regular expressions (which aren't really a good solution for this problem).

Be aware that that kind of solution implies that you will, at some point, be standardizing addresses that aren't valid...they'll just appear valid. If knowing whether an address is in fact, real (and perhaps deliverable) is important to your application then you should be using a USPS-Certified service that using Delivery Point Validation (DPV). I am a developer for SmartyStreets, which provides just such a service. Here's a really easy Python example that issues an HTTP request to our REST+JSON API:


The responses come back standardized according to USPS Publication 28. The API is free for non-profits and low-usage users.

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You can use re for this. You can create the pattern and parse the address. That will be return the data as you want from the raw data.

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thanks, but I want to avoid implementing myself. plus there are a lot of corner cases to handle. this is not a simple regex. –  WeaselFox Feb 27 '12 at 10:50
Then link provided by Karl is good :) –  Lafada Feb 27 '12 at 11:15

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