110

Is there a way to round a single column in pandas without affecting the rest of the dataframe?

>>> print(df)
  item  value1  value2
0    a    1.12     1.3
1    a    1.50     2.5
2    a    0.10     0.0
3    b    3.30    -1.0
4    b    4.80    -1.0

I have tried the following:

>>> df.value1.apply(np.round)
0    1
1    2
2    0
3    3
4    5
5    5

What is the correct way to make data look like this:

  item  value1  value2
0    a       1     1.3
1    a       2     2.5
2    a       0     0.0
3    b       3    -1.0
4    b       5    -1.0
5    c       5     5.0

8 Answers 8

118

You are very close. You applied the round to the series of values given by df.value1. The return type is thus a Series. You need to assign that series back to the dataframe (or another dataframe with the same Index).

Also, there is a pandas.Series.round method which is basically a short hand for pandas.Series.apply(np.round).

>>> df.value1 = df.value1.round()
>>> print df
  item  value1  value2
0    a       1     1.3
1    a       2     2.5
2    a       0     0.0
3    b       3    -1.0
4    b       5    -1.0
5
  • 1
    Thank you. not feeling very bright for missing this :)
    – k3it
    Oct 1, 2014 at 4:15
  • 1
    Pandas does not (to me at least) come naturally. I am fairly sure I worked out how to do this after reading another SO answer last week or so. but I couldn't find it again to mark as duplicate so it may have been a slightly different question. Oct 1, 2014 at 14:57
  • 2
    @LyndonWhite could one use df["value1"].round() ? Also is there are a round up or round down function? And also what about if the column name has a space in it? ie value 1 - I assume df.value 1.round() would fail?
    – 3kstc
    Apr 11, 2018 at 6:13
  • 3
    Looks like you have 3 questions there. Use the ask a question button 3 times. Apr 11, 2018 at 7:18
  • You can even round entire dataframe by just saying df.round(). No need to give for each column
    – rishi jain
    Aug 18, 2020 at 4:31
78

For some reason the round() method doesn't work if you have float numbers with many decimal places, but this will.

decimals = 2    
df['column'] = df['column'].apply(lambda x: round(x, decimals))
3
  • 7
    df.column_name.round() seems to apply to output formatting. The applying of the lambda actually changes the underlying stored value. Feb 22, 2018 at 4:50
  • @StephanDoliov Exactly, precision problem bother me for a long time. round() can only set display precision not stored value. Mar 2, 2018 at 2:45
  • 2
    This gives SettingWithCopyWarning Nov 9, 2019 at 10:24
30

Use the pandas.DataFrame.round() method like this:

df = df.round({'value1': 0})

Any columns not included will be left as is.

1
  • this is the best answer. if only this had an inplace argument. Jan 8 at 16:09
19

No need to use for loop. It can be directly applied to a column of a dataframe

sleepstudy['Reaction'] = sleepstudy['Reaction'].round(1)
0
8

If you are doing machine learning and use tensorflow, many float are of 'float32', not 'float64', and none of the methods mentioned in this thread likely to work. You will have to first convert to float64 first.

x.astype('float')

before round(...).

6

No need to use lambda or creating function. It is straight-forward. See example below

df['decimal_place_2'] = df['decimal_place_2'].round(2)
1
  • 2
    I think answers to this question needs to be updated... Tx
    – Je Je
    Jun 13, 2021 at 18:21
5
saldo_acred['cumsum_prc_saldo'].astype('float').round(2)
1

In my case, I have both string values as well as decimal values in single columns.

def round_2(x):
    try:
        return round(x,2)
    except:
        return x

df['cur_TMIN_IMD_WeekSum']=df['cur_TMIN_IMD_WeekSum'].apply(round_2)

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