I have a pandas data frame with two columns. I need to change the values of the first column without affecting the second one and get back the whole data frame with just first column values changed. How can I do that using apply in pandas?

  • 3
    Please post some input sample data and desired output. – Fabio Lamanna Jan 23 '16 at 10:12
  • You should almost never use apply in a situation like this. Operate on the column directly instead. – Ted Petrou Nov 6 '17 at 22:43
up vote 162 down vote accepted

Given a sample dataframe df as:

a,b
1,2
2,3
3,4
4,5

what you want is:

df['a'] = df['a'].apply(lambda x: x + 1)

that returns:

   a  b
0  2  2
1  3  3
2  4  4
3  5  5
  • 2
    apply should never be used in a situation like this – Ted Petrou Nov 6 '17 at 22:41
  • 2
    @TedPetrou you're perfectly right, it was just an example on how to apply a general function on one single column, as the OP asked. – Fabio Lamanna Nov 7 '17 at 9:26
  • 4
    When I try doing this I get the following warning: "A value is trying to be set on a copy of a slice from a DataFrame. Try using .loc[row_indexer,col_indexer] = value instead" – dagrun Mar 13 at 11:24
  • 4
    As a matter of curiosity: why should apply not be used in that situation? What is the situation exactly? – Uncle Ben Ben Mar 28 at 18:08
  • 4
    @UncleBenBen in general apply uses an internal loop over rows that is far slower than vectorized functions, like e.g. df.a = df.a / 2 (see Mike Muller answer). – Fabio Lamanna Mar 29 at 9:21

You don't need a function at all. You can work on a whole column directly.

Example data:

>>> df = pd.DataFrame({'a': [100, 1000], 'b': [200, 2000], 'c': [300, 3000]})
>>> df

      a     b     c
0   100   200   300
1  1000  2000  3000

Half all the values in column a:

>>> df.a = df.a / 2
>>> df

     a     b     c
0   50   200   300
1  500  2000  3000

For a single column better to use map(), like this:

df = pd.DataFrame([{'a': 15, 'b': 15, 'c': 5}, {'a': 20, 'b': 10, 'c': 7}, {'a': 25, 'b': 30, 'c': 9}])

    a   b  c
0  15  15  5
1  20  10  7
2  25  30  9



df['a'] = df['a'].map(lambda a: a / 2.)

      a   b  c
0   7.5  15  5
1  10.0  10  7
2  12.5  30  9
  • 46
    Why is map() better than apply() for a single column? – ChaimG Feb 5 '17 at 18:21
  • 3
    I think it should be lambda a: a / 2. instead. – Max Candocia Mar 17 '17 at 4:52
  • This was very useful. I used it to extract file names from paths stored in a column df['file_name'] = df['Path'].map(lambda a: os.path.basename(a)) – mmann1123 May 1 at 19:10
  • 5
    map() is for Series (i.e. single columns) and operates on one cell at a time, while apply() is for DataFrame, and operates on a whole row at a time. – jpcgt Jul 24 at 14:27

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