36

I have a DataFrame in pandas where some of the numbers are expressed in scientific notation (or exponent notation) like this:

                  id        value
id              1.00    -4.22e-01
value          -0.42     1.00e+00
percent        -0.72     1.00e-01
played          0.03    -4.35e-02
money          -0.22     3.37e-01
other            NaN          NaN
sy             -0.03     2.19e-04
sz             -0.33     3.83e-01

And the scientific notation makes what should be an easy comparison, needlessly difficult. I assume it's the 21900 value that's screwing it up for the others. I mean 1.0 is encoded. ONE!

This doesn't work:

np.set_printoptions(supress=True) 

And pandas.set_printoptions doesn't implement suppress either, and I've looked all at pd.describe_options() in despair, and pd.core.format.set_eng_float_format() only seems to turn it on for all the other float values, with no ability to turn it off.

  • Dd you fix the typo in np.set_printoptions(suppress=True) - two p's in suppress? – smci Nov 16 '16 at 14:50
10

Your data is probably object dtype. This is a direct copy/paste of your data. read_csv interprets it as the correct dtype. You should normally only have object dtype on string-like fields.

In [5]: df = read_csv(StringIO(data),sep='\s+')

In [6]: df
Out[6]: 
           id     value
id       1.00 -0.422000
value   -0.42  1.000000
percent -0.72  0.100000
played   0.03 -0.043500
money   -0.22  0.337000
other     NaN       NaN
sy      -0.03  0.000219
sz      -0.33  0.383000

check if your dtypes are object

In [7]: df.dtypes
Out[7]: 
id       float64
value    float64
dtype: object

This converts this frame to object dtype (notice the printing is funny now)

In [8]: df.astype(object)
Out[8]: 
           id     value
id          1    -0.422
value   -0.42         1
percent -0.72       0.1
played   0.03   -0.0435
money   -0.22     0.337
other     NaN       NaN
sy      -0.03  0.000219
sz      -0.33     0.383

This is how to convert it back (astype(float)) also works here

In [9]: df.astype(object).convert_objects()
Out[9]: 
           id     value
id       1.00 -0.422000
value   -0.42  1.000000
percent -0.72  0.100000
played   0.03 -0.043500
money   -0.22  0.337000
other     NaN       NaN
sy      -0.03  0.000219
sz      -0.33  0.383000

This is what an object dtype frame would look like

In [10]: df.astype(object).dtypes
Out[10]: 
id       object
value    object
dtype: object
  • Actually the column was int64, that had then been df.corr() 'd which returns all float64s – user1244215 Jul 23 '13 at 3:36
  • if you have NaN in the column it could NOT have been int64; only float64 or object – Jeff Jul 23 '13 at 8:39
  • df.corr() returns NaNs when the stddev of a column is 0. – user1244215 Jul 23 '13 at 21:47
  • they may have started out as Int64 but they are float64 by definition. However, if they were actually object to begin with, then they still might be object – Jeff Jul 23 '13 at 21:56
53

quick temporary: df.round(4)

global: pd.options.display.float_format = '{:20,.2f}'.format

  • 2
    What does the {:20} mean? – Moondra Apr 28 '17 at 0:24
  • try this experiment: print('{:20,.8f}'.format(12333344445676.0123456789)), then adjust the 20 to 40 and see what happens and I think you'll have your answer. you can use this same style formatter on numbers in a print statement. – TMWP Jul 26 '17 at 4:12
  • Fwiw you might also want to suppress the data type output – citynorman Oct 6 '17 at 20:58
  • 1
    This is the only really working solution for me. Works like a charm in Jupyter. – Bouncner Feb 15 '18 at 8:09
  • 1
    Agree with @Bouncner, I also tried many solutions but found that only this solution can print a specific number of decimal points for float values in pandas as expected. – Good Will Apr 22 '18 at 21:00
1

If you would like to use the values as formated string in a list, say as part of csvfile csv.writier, the numbers can be formated before creating a list:

df['label'].apply(lambda x: '%.17f' % x).values.tolist()

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.