106

I have a column with consecutive digits in a Pandas DataFrame.

A
1
2
3
4

I would like to change all those values to a simple string, say "foo", resulting in

A
foo
foo
foo
foo

6 Answers 6

152

Just select the column and assign like normal:

In [194]:
df['A'] = 'foo'
df

Out[194]:
     A
0  foo
1  foo
2  foo
3  foo

Assigning a scalar value will set all the rows to the same scalar value

4
  • To me it only fills the first item... I have to do a fillna(method='ffill') to make it work... that is strange Commented Jun 20, 2022 at 14:58
  • This also returns "A value is trying to be set on a copy of a slice from a DataFrame."
    – Cos
    Commented Jun 24, 2022 at 7:25
  • 1
    @FedericoGentile I was having the same issue, until I realised I was assigning a series with a single element. Once I accessed the element with foo[0] It worked as above. Commented Jan 27, 2023 at 5:49
  • This gives ValueError: If using all scalar values, you must pass an index Commented Mar 20, 2023 at 12:59
23

The good answer above throws a warning. You can also do:

df.insert(0, 'A', 'foo')

where 0 is the index where the new column will be inserted.

0
8

You can use the method assign:

df = df.assign(A='foo')
3
  • 4
    Thanks - also note to save time of others, it is written A in this case and not 'A'. Commented Aug 3, 2021 at 3:47
  • 1
    This was the only way that worked to eliminate the "setting on copy" warning. loc and copy() wouldn't work since I have a complex situation where I am looping over a dictionary of dataframes, within a loop over a master dataframe with metadata, and augmenting those dataframes with that metadata. Thanks.
    – Rafs
    Commented Sep 12, 2023 at 9:49
  • @Rafs Thank you for upvote. Warnings are not errors, and it's not always possible to avoid them in Pandas. Commented Sep 12, 2023 at 11:13
8

You can also exploit the power of the .loc property by addressing all the rows using : as the argument. Say that your DataFrame is called df:

df.loc[:]['A'] = 'foo'

Resulting in

     A
0  foo
1  foo
2  foo
3  foo
2
  • This gives me "A value is trying to be set on a copy of a slice from a DataFrame."
    – Cos
    Commented Jun 24, 2022 at 7:24
  • Do you expect this to be more efficient on large datasets? Commented Jan 27, 2023 at 5:50
4

For this to work without receiving the slice error/warning, you can do this:

df.loc[:]['A'] = 'foo'
3

You could also try pd.Series.replace:

df['A'] = df['A'].replace(df['A'], 'foo')
print(df)

Output:

     A
0  foo
1  foo
2  foo
3  foo

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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