111

I have a pandas dataframe df as illustrated below:

BrandName Specialty
A          H
B          I
ABC        J
D          K
AB         L

I want to replace 'ABC' and 'AB' in column BrandName by A. Can someone help with this?

170

The easiest way is to use the replace method on the column. The arguments are a list of the things you want to replace (here ['ABC', 'AB']) and what you want to replace them with (the string 'A' in this case):

>>> df['BrandName'].replace(['ABC', 'AB'], 'A')
0    A
1    B
2    A
3    D
4    A

This creates a new Series of values so you need to assign this new column to the correct column name:

df['BrandName'] = df['BrandName'].replace(['ABC', 'AB'], 'A')
2
  • 11
    One tricky thing if your datatypes are messed up in the dataframe (ie they look like strings but are not), use: df['BrandName'] = df['BrandName'].str.replace(['ABC', 'AB'], 'A')
    – ski_squaw
    Sep 15 '17 at 17:28
  • 7
    I had to pass inplace=True as well, else it wasn't changing. Jul 22 '20 at 17:26
49

Replace

DataFrame object has powerful and flexible replace method:

DataFrame.replace(
        to_replace=None,
        value=None,
        inplace=False,
        limit=None,
        regex=False, 
        method='pad',
        axis=None)

Note, if you need to make changes in place, use inplace boolean argument for replace method:

Inplace

inplace: boolean, default False If True, in place. Note: this will modify any other views on this object (e.g. a column form a DataFrame). Returns the caller if this is True.

Snippet

df['BrandName'].replace(
    to_replace=['ABC', 'AB'],
    value='A',
    inplace=True
)
2
  • 1
    thanks for the snippet example, but it does not work. For one, if there is no = in the to_replace portion it errors out. For another, it is not making any replacements. Is there anyway to get a working example of the replace functionality in v 0.20.1?
    – Alison S
    May 21 '17 at 17:57
  • Does replace not scale well? It seems to crash my machine when replacing ~5 million rows of integers. Any way around this?
    – guy
    Sep 27 '17 at 14:29
15

loc method can be used to replace multiple values:

df.loc[df['BrandName'].isin(['ABC', 'AB'])] = 'A'
9

You could also pass a dict to the pandas.replace method:

data.replace({
    'column_name': {
        'value_to_replace': 'replace_value_with_this'
    }
})

This has the advantage that you can replace multiple values in multiple columns at once, like so:

data.replace({
    'column_name': {
        'value_to_replace': 'replace_value_with_this',
        'foo': 'bar',
        'spam': 'eggs'
    },
    'other_column_name': {
        'other_value_to_replace': 'other_replace_value_with_this'
    },
    ...
})
1
  • 2
    Ty for this answer. It was exactly what I was looking for. :)
    – NikSp
    Nov 20 '20 at 16:03
7

This solution will change the existing dataframe itself:

mydf = pd.DataFrame({"BrandName":["A", "B", "ABC", "D", "AB"], "Speciality":["H", "I", "J", "K", "L"]})
mydf["BrandName"].replace(["ABC", "AB"], "A", inplace=True)
4

Created the Data frame:

import pandas as pd
dk=pd.DataFrame({"BrandName":['A','B','ABC','D','AB'],"Specialty":['H','I','J','K','L']})

Now use DataFrame.replace() function:

dk.BrandName.replace(to_replace=['ABC','AB'],value='A')
4

Just wanted to show that there is no performance difference between the 2 main ways of doing it:

df = pd.DataFrame(np.random.randint(0,10,size=(100, 4)), columns=list('ABCD'))

def loc():
    df1.loc[df1["A"] == 2] = 5
%timeit loc
19.9 ns ± 0.0873 ns per loop (mean ± std. dev. of 7 runs, 10000000 loops each)


def replace():
    df2['A'].replace(
        to_replace=2,
        value=5,
        inplace=True
    )
%timeit replace
19.6 ns ± 0.509 ns per loop (mean ± std. dev. of 7 runs, 10000000 loops each)
3

You can use loc for replacing based on condition and specifying the column name

df = pd.DataFrame([['A','H'],['B','I'],['ABC','ABC'],['D','K'],['AB','L']],columns=['BrandName','Col2'])
df.loc[df['BrandName'].isin(['ABC', 'AB']),'BrandName'] = 'A'

Output
enter image description here

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