I will simplify as much as possible. I have a DataFrame with a list of businesses by state. Some States are abbreviated, some are not. I want to replace the full state name with the Abbreviation (ex: New Jersey to NJ).

I found a cool module "US" found here that lists all the states and their abbreviations in a dictionary. What I would like to do is replace the full name with the abbreviations.


import pandas as pd
import numpy as np
import us
dfp = pd.DataFrame({'A' : [np.NaN,np.NaN,3,4,5,5,3,1,5,np.NaN], 
                    'B' : [1,0,3,5,0,0,np.NaN,9,0,0], 
                    'C' : ['Pharmacy of Oklahoma','NY Pharma','NJ Pharmacy','Idaho Rx','CA Herbals','Florida Pharma','AK RX','Ohio Drugs','PA Rx','USA Pharma'], 
                    'D' : [123456,123456,1234567,12345678,12345,12345,12345678,123456789,1234567,np.NaN],
                    'E' : ['Assign','Unassign','Assign','Ugly','Appreciate','Undo','Assign','Unicycle','Assign','Unicorn',]})

statez = us.states.mapping('abbr', 'name')
lst_of_abbrv = statez.keys()
lst_of_states = statez.values()

phrase = "Pharmacy of Oklahoma"

for x in phrase.split():
    if x in lst_of_states:
        x= x.replace(x, 'State')

Right now the only thing I'm able to do is use a string and replace it with the word "State". How do i replace the name with the abbreviations from the dictionary? I've tried and want something like x= x.replace(x, lst_of_abbrv) but it errors because you obviously can't replace with dict_keys.

Extra points if you are able to explain how to apply this to column "C" of the Dataframe

  • x = x.replace(x, statez[x])? Feb 24 '17 at 19:30
  • don't separate the keys and values into a different lists. Just check if x in statez. Feb 24 '17 at 19:32
  • @BallpointBen that was my first go-to but i get a KeyError. KeyError: 'Oklahoma' in my specific example above
    – MattR
    Feb 24 '17 at 19:32
  • Replace if x in lst_of_states: with if x in lst_of_abbrv: Feb 24 '17 at 19:33
  • Also, you won't see the change reflected in phrase... you can Google why. But to fix it, do L = phrase.split(), for (i,x) in enumerate(L): and then L[i] = x.replace(x, statez[x]). Then, print L instead of phrase.split() Feb 24 '17 at 19:35

First I would define a function that would replace the full name of states in a string if any exist or return the original string.

def replace_states(company):
    # find all states that exist in the string
    state_found = filter(lambda state: state in company, statez.keys())

    # replace each state with its abbreviation
    for state in state_found:
        company = company.replace(state, statez[state])
    # return the modified string (or original if no states were found)
    return company

then you can apply this function to the entire column of the dataframe

dfp['C'] = dfp['C'].map(replace_states)
  • this is exactly what I was looking for. I'll be looking more into the steps you used to come to this solution (mainly .map and using lambda. If I could trouble you, do you have any documentation or links that I could learn up on?
    – MattR
    Feb 24 '17 at 19:54
  • 1
    @MattR pandas map in a dataframe column / series pandas.pydata.org/pandas-docs/stable/…. SO question related to lambda usage stackoverflow.com/questions/890128/…
    – MarkAWard
    Feb 24 '17 at 19:59
  • Thanks for those links! I think i understand .map(). But your lambda function still has me beat... I don't see how it is working; particularly lambda state: state in company. It's not your job to spoon feed me, but if you have the time I would greatly appreciate any help
    – MattR
    Feb 24 '17 at 21:50
  • The lambda defines an unnamed function that takes one argument state and returns the boolean value for the statement state in company. This could be written equivalently as a function like def f(state): return state in company
    – MarkAWard
    Feb 27 '17 at 0:24
  • 1
    statez = us.states.mapping('name', 'abbr') and you should be set
    – MarkAWard
    Feb 27 '17 at 18:59

Here is the complete solution:

# Note the difference here
statez = us.states.mapping('name', 'abbr')
lst_of_states = statez.keys()
lst_of_abbrv = statez.values()

def sentence_with_states_abbreviated(phrase):
    words = phrase.split()
    for (i,word) in enumerate(words):
        if word in lst_of_states:
            words[i] = statez[word]
    return ' '.join(words)

dfp['C'] = dfp['C'].apply(sentence_with_states_abbreviated)
  • 1
    @MattR: to complete the solution, you'll need to rejoin the words into the phrase with ' '.join(words), and then put that into column C.
    – Prune
    Feb 24 '17 at 19:46
  • I appreciate the help! I wish I could give two answered checks.
    – MattR
    Feb 24 '17 at 19:52

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