51

Given a fairly long array that looks like the following, I want to replace commas with dots:

array(['0,140711', '0,140711', '0,0999', '0,0999', '0,001', '0,001',
       '0,140711', '0,140711', '0,140711', '0,140711', '0,140711',
       '0,140711', 0L, 0L, 0L, 0L, '0,140711', '0,140711'], dtype=object)

I've been trying different ways but I can't figure out how to do this. Also, I have imported it as a pandas DataFrame but can't apply the function:

      1-8        1-7
H0   0,140711   0,140711
H1     0,0999     0,0999
H2      0,001      0,001
H3   0,140711   0,140711
H6          0          0
H8   0,140711   0,140711
H9   0,140711   0,140711
H10  0,140711  0,1125688

My code:

df.applymap(lambda x: str(x.replace(',','.')))

How do I solve this?

6
  • 4
    df.applymap(lambda x: str(x.replace(',','.'))) does work, replaces comma to dot on pd.__version__ == '0.18.1'
    – Zero
    Commented Oct 17, 2016 at 9:53
  • Did you assign back the result? df =df.applymap(lambda x: str(x.replace(',','.')))
    – EdChum
    Commented Oct 17, 2016 at 9:53
  • 2
    Also it'd be quicker to do this for each column: df = df.apply(lambda x: x.str.replace(',','.'))
    – EdChum
    Commented Oct 17, 2016 at 9:54
  • Great @EdChum. I didn't assign back the result. Btw, apply is faster than applymap()? Commented Oct 17, 2016 at 10:13
  • 1
    apply works column-wise or row-wise, applymap operates on each element so yes in this case apply would be faster. You could also do df.stack().str.replace(',','.').unstack()
    – EdChum
    Commented Oct 17, 2016 at 10:17

4 Answers 4

64

If you are reading in with read_csv, you can specify how it interprets decimals with the decimal parameter.

e.g.

your_df = pd.read_csv('/your_path/your_file.csv',sep=';',decimal=',')

From the man pages:

thousands : str, optional

Thousands separator.

decimal : str, default ‘.’

Character to recognize as decimal point (e.g. use ‘,’ for European data).

2
  • Sweet! With previous suggestions I was getting errors with treating my data as strings.
    – jared
    Commented Oct 14, 2020 at 10:11
  • It does not have the same effect that what the person is asking. By doing so when using to_dict on the dataframe for exemple, it will export with a comma decimal separator while it should be dot.
    – bloub
    Commented Nov 21, 2022 at 17:19
45

You need to assign the result of your operate back as the operation isn't inplace, besides you can use apply or stack and unstack with vectorised str.replace to do this quicker:

In [5]:
df.apply(lambda x: x.str.replace(',','.'))

Out[5]:
          1-8        1-7
H0   0.140711   0.140711
H1     0.0999     0.0999
H2      0.001      0.001
H3   0.140711   0.140711
H4   0.140711   0.140711
H5   0.140711   0.140711
H6          0          0
H7          0          0
H8   0.140711   0.140711
H9   0.140711   0.140711
H10  0.140711  0.1125688
H11  0.140711  0.1125688
H12  0.140711  0.1125688
H13  0.140711  0.1125688
H14  0.140711   0.140711
H15  0.140711   0.140711
H16  0.140711   0.140711
H17  0.140711   0.140711
H18  0.140711   0.140711
H19  0.140711   0.140711
H20  0.140711   0.140711
H21  0.140711   0.140711
H22  0.140711   0.140711
H23  0.140711   0.140711

In [4]:    
df.stack().str.replace(',','.').unstack()

Out[4]:
          1-8        1-7
H0   0.140711   0.140711
H1     0.0999     0.0999
H2      0.001      0.001
H3   0.140711   0.140711
H4   0.140711   0.140711
H5   0.140711   0.140711
H6          0          0
H7          0          0
H8   0.140711   0.140711
H9   0.140711   0.140711
H10  0.140711  0.1125688
H11  0.140711  0.1125688
H12  0.140711  0.1125688
H13  0.140711  0.1125688
H14  0.140711   0.140711
H15  0.140711   0.140711
H16  0.140711   0.140711
H17  0.140711   0.140711
H18  0.140711   0.140711
H19  0.140711   0.140711
H20  0.140711   0.140711
H21  0.140711   0.140711
H22  0.140711   0.140711
H23  0.140711   0.140711

the key thing here is to assign back the result:

df = df.stack().str.replace(',','.').unstack()

2
  • 2
    this will NaN integer values on the dataframe Commented Apr 20, 2021 at 12:47
  • This fails for large dataframes
    – Dhyana
    Commented Jan 24, 2023 at 15:48
28

If you need to replace commas with dots in particular columns, try

    data["column_name"]=data["column_name"].str.replace(',','.')

to avoid 'str' object has no attribute 'str' error.

2
  • why does .str.replace work for me but .replace doesn't?
    – Fisqkuz
    Commented Apr 28, 2022 at 18:55
  • @Fisqkuz it's been a while and you probably know it already by now but you have to pass as regex. I added an answer below that includes a demo. Cheers
    – cottontail
    Commented Sep 18, 2023 at 0:04
0

You can also use .replace() (not str.replace()) by passing the conversion mapping as regex= parameter.1 Good thing about this method is that unlike str.replace(), it can change multiple columns vectorially. There are a number of ways you can pass the same parameters.

cols = ['col1', 'col2']
df[cols] = df[cols].replace(regex={',': '.'}).astype(float)
#                           ^^^^ <- pass as regex ^^^ <--- probably need to cast as float

df[cols] = df[cols].replace(regex=',', value='.')

df[cols] = df[cols].replace(',', '.', regex=True)

A demonstration of the method is as follows:

df = pd.DataFrame({
    'a': ['0,140711', '0,0999', '0,001'],
    'b': [0, '0,1125688', '0,1125688'],
    'c': ['0,140711', '0,1125688', '0,140711']
})
df = df.replace(regex={',': '.'}).astype(float)


          a         b         c
0  0.140711  0.000000  0.140711
1  0.099900  0.112569  0.112569
2  0.001000  0.112569  0.140711

1 By default, replace() scans the values as a whole; so .replace({',': '.'}) can make a replacement only if a value in a cell is a comma. Passing regex= signals to pandas to scan the individual strings in each cells as well. A consequence is df.replace(regex={',': '.'}) is much slower than df.replace({',': '.'}) but of course the latter won't make the correct replacements.

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