So, I have this huge DF which encoded in iso8859_15.

I have a few columns which contain names and places in Brazil, so some of them contain special characters such as "í" or "Ô".

I have the key to replace them in a dictionary {'í':'i', 'á':'a', ...}

I tried replacing it a couple of ways (below), but none of them worked.

df.replace(dictionary, regex=True, inplace=True) ###BOTH WITH AND WITHOUT REGEX AND REPLACE



None of them had the expected output, which would be for strings such as "NÍCOLAS" to become "NICOLAS".


  • How are you pulling the data in initially? CSV? – OverflowingTheGlass Aug 9 '17 at 17:09
  • Yes. It's a CSV. df=pd.read_csv('file.csv', sep='\t', low_memory=False, encoding='iso8859_15') – Raphael Hernandes Aug 9 '17 at 17:13
  • It must have to do with the encoding, because df.replace(dictionary, regex=True) works. – OverflowingTheGlass Aug 9 '17 at 17:19

The docs on pandas.DataFrame.replace says you have to provide a nested dictionary: the first level is the column name for which you have to provide a second dictionary with substitution pairs.

So, this should work:

>>> df=pd.DataFrame({'a': ['NÍCOLAS','asdč'], 'b': [3,4]})
>>> df
         a  b
1     asdč  4

>>> df.replace({'a': {'č': 'c', 'Í': 'I'}}, regex=True)
         a  b
1     asdc  4

Edit. Seems pandas also accepts non-nested translation dictionary. In that case, the problem is probably with character encoding, particularly if you use Python 2. Assuming your CSV load function decoded the file characters properly (as true Unicode code-points), then you should take care your translation/substitution dictionary is also defined with Unicode characters, like this:

dictionary = {u'í': 'i', u'á': 'a'}

If you have a definition like this (and using Python 2):

dictionary = {'í': 'i', 'á': 'a'}

then the actual keys in that dictionary are multibyte strings. Which bytes (characters) they are depends on the actual source file character encoding used, but presuming you use UTF-8, you'll get:

dictionary = {'\xc3\xa1': 'a', '\xc3\xad': 'i'}

And that would explain why pandas fails to replace those chars. So, be sure to use Unicode literals in Python 2: u'this is unicode string'.

On the other hand, in Python 3, all strings are Unicode strings, and you don't have to use the u prefix (in fact unicode type from Python 2 is renamed to str in Python 3, and the old str from Python 2 is now bytes in Python 3).

  • hmmm, not necessary - remove nested dict and same results. I think there is some problem with encodings :( – jezrael Aug 9 '17 at 17:04
  • Hmm, you're right, it seems to work.. But don't they say in the docs it has to be a nested dict? – randomir Aug 9 '17 at 17:07
  • nested lists are used if need replace only column a and column b with strings cannot be replaced. So instead subset like df[['a']] = df[['a']].replace(...) is possible used nested dict. – jezrael Aug 9 '17 at 17:09
  • Yeah. Tried using a nested in the whole df, and the output was the same. Then I tried doing the same to a specific column. No good either. – Raphael Hernandes Aug 9 '17 at 17:19
  • 1
    That's it! Just did it in Python3. df.replace(dictionary, regex=True, inplace=True). Without inplace it wouldn't work – Raphael Hernandes Aug 9 '17 at 18:23

replace works out of the box without specifying a specific column in Python 3.

Load Data:

df=pd.read_csv('test.csv', sep=',', low_memory=False, encoding='iso8859_15')


col1    col2
0   he  hello
1   Nícolas shárk
2   welcome yes

Create Dictionary:

dictionary = {'í':'i', 'á':'a'}


df.replace(dictionary, regex=True, inplace=True)


 col1   col2
0   he  hello
1   Nicolas shark
2   welcome yes
  • I tried it both ways (with and without regex=True, with and without inplace=True). None of them worked :( – Raphael Hernandes Aug 9 '17 at 17:36
  • was the output the same as the input? or was it different than the input, just not what you expected? – OverflowingTheGlass Aug 9 '17 at 17:38
  • @CameronTaylor - do you test it in python2? because – jezrael Aug 9 '17 at 17:43
  • Yes! It was. But it worked in Python3 :) had to use inplace, though – Raphael Hernandes Aug 9 '17 at 18:24
  • glad it worked! yes, in my example I was just printing it out, so i did not include inplace. I'll add it for completeness. – OverflowingTheGlass Aug 9 '17 at 18:30

If someone get the following error message

multiple repeat at position 2

try this df.replace(dictionary, regex=False, inplace=True)

instead of df.replace(dictionary, regex=True, inplace=True)

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