25

I have a pandas data frame, df, which looks like this:

Cut-off             <=35   >35                   
Calcium              0.0   1.0
Copper               1.0   0.0
Helium               0.0   8.0
Hydrogen             0.0   1.0

How can I remove the decimal point so that the data frame looks like this:

Cut-off             <= 35  > 35                   
Calcium              0     1
Copper               1     0
Helium               0     8
Hydrogen             0     1

I have tried df.round(0) without success.

36
0

You have a few options...

1) convert everything to integers.

df.astype(int)
          <=35  >35
Cut-off            
Calcium      0    1
Copper       1    0
Helium       0    8
Hydrogen     0    1

2) Use round:

>>> df.round()
          <=35  >35
Cut-off            
Calcium      0    1
Copper       1    0
Helium       0    8
Hydrogen     0    1

but not always great...

>>> (df - .2).round()
          <=35  >35
Cut-off            
Calcium     -0    1
Copper       1   -0
Helium      -0    8
Hydrogen    -0    1

3) Change your display precision option in Pandas.

pd.set_option('precision', 0)

>>> df
          <=35  >35
Cut-off            
Calcium      0    1
Copper       1    0
Helium       0    8
Hydrogen     0    1 
| improve this answer | |
  • @alexander how would one apply any of these methods to one particular column? Would it be? df[">35"].round() – 3kstc Apr 11 '18 at 22:53
  • 1
    @3kstc Yes. Probably best to convert result to integer df[">35"].round().astype(int) – Alexander Apr 11 '18 at 23:44
  • For your last comment. Why do you need round() if you will use astype(int) anyway? And why does round() give me one decimal place even if I leave it as blank or put zero in? Thanks – Bowen Liu Oct 3 '18 at 16:11
  • astype(int) truncates the value, so pd.Series([.9]).astype(int) results in a value of zero. It would be one if you first rounded. – Alexander Oct 3 '18 at 16:14
8
0

Since pandas 0.17.1 you can set the displayed numerical precision by modifying the style of the particular data frame rather than setting the global option:

import pandas as pd
import numpy as np

np.random.seed(24)
df = pd.DataFrame(np.random.randn(5, 3), columns=list('ABC'))
df 

enter image description here

df.style.set_precision(2)

enter image description here

It is also possible to apply column specific styles

df.style.format({
    'A': '{:,.1f}'.format,
    'B': '{:,.3f}'.format,
})

enter image description here

| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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