1

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.

code:

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',]})
print(dfp)

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')
        print(phrase.split())

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

7
  • 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
3

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)
6
  • 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
2

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)
2
  • 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

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.