How do I suppress scientific notation output from dataframe.describe():


count    1.979680e+05
mean     5.915134e+02
std      1.379618e+04
min     -1.750000e+05
25%      4.000000e+01
50%      1.000000e+02
75%      2.500000e+02
max      3.000000e+06
Name: AMNT, dtype: float64

My data is of type float64:


  • 1
    So what do you want instead? .describe returns a DataFrame, so you can simply use .drop to remove rows you don't want. If you just want one thing like count you can use .count by itself. Or you can create your own describe function to only return whatever you are interested in.
    – Kartik
    Oct 31 '16 at 18:03
  • 14
    stackoverflow.com/a/20937592/1577947 using something like pd.options.display.float_format = '{:.2f}'.format?
    – Jarad
    Oct 31 '16 at 18:16
  • @Jarad Perfect. Please post it as an answer and I'll accept it.
    – mfabi
    Nov 5 '16 at 13:32
  • @Jarad! Please post it as answer to be accepted by @mfabi as he said before. This should be the write way to get rid of scientific numbers which appears in pandas and are displayed by default. Thank you!!
    – Elias
    May 22 '21 at 11:26

For single column:

contrib_df["AMNT"].describe().apply(lambda x: format(x, 'f'))

For entire DataFrame (as suggested by @databyte )

df.describe().apply(lambda s: s.apply('{0:.5f}'.format))

For whole DataFrame (as suggested by @Jayen):

contrib_df.describe().apply(lambda s: s.apply(lambda x: format(x, 'g')))

As the function describe returns a data frame, what the above function does is, it simply formats each row to the regular format. I wrote this answer because I was having a though, in my mind, that was ** It's pointless to get the count of 95 as 95.00000e+01** Also in our regular format its easier to compare.

Before applying the above function we were getting

count    9.500000e+01
mean     5.621943e+05
std      2.716369e+06
min      4.770000e+02
25%      2.118160e+05
50%      2.599960e+05
75%      3.121170e+05
max      2.670423e+07
Name: salary, dtype: float64

After applying, we get

count          95.000000
mean       562194.294737
std       2716369.154553
min           477.000000
25%        211816.000000
50%        259996.000000
75%        312117.000000
max      26704229.000000
Name: salary, dtype: object
  • 15
    for anyone trying to do this on a dataframe and not a series, it's: contrib_df.describe().apply(lambda s: s.apply(lambda x: format(x, 'g')))
    – Jayen
    Aug 10 '19 at 3:33
  • @Jayen - any idea how to round it up / down?
    – SCool
    Aug 13 '19 at 17:54
  • 1
    @SCool - I believe x is a normal python float so you should be able to use format(math.ceil(x), 'g')
    – Jayen
    Aug 14 '19 at 1:17
  • 1
    This didn't work for me, got unsupported format string passed to Series.__format__ Nov 14 '19 at 5:31
  • 1
    Without having to nest lambdas: df.describe().apply(lambda s: s.apply('{0:.5f}'.format))
    – databyte
    Oct 30 '20 at 12:52

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