Is it possible to specify a float precision specifically for each column to be printed by the Python pandas package method pandas.DataFrame.to_csv?


If I have a pandas dataframe that is arranged like this:

In [53]: df_data[:5]
    year  month  day       lats       lons  vals
0   2012      6   16  81.862745 -29.834254   0.0
1   2012      6   16  81.862745 -29.502762   0.1
2   2012      6   16  81.862745 -29.171271   0.0
3   2012      6   16  81.862745 -28.839779   0.2
4   2012      6   16  81.862745 -28.508287   0.0

There is the float_format option that can be used to specify a precision, but this applys that precision to all columns of the dataframe when printed.

When I use that like so:

df_data.to_csv(outfile, index=False,
                   header=False, float_format='%11.6f')

I get the following, where vals is given an inaccurate precision:

2012,6,16,  81.862745, -29.834254,   0.000000
2012,6,16,  81.862745, -29.502762,   0.100000
2012,6,16,  81.862745, -29.171270,   0.000000
2012,6,16,  81.862745, -28.839779,   0.200000
2012,6,16,  81.862745, -28.508287,   0.000000
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Change the type of column "vals" prior to exporting the data frame to a CSV file

df_data['vals'] = df_data['vals'].map(lambda x: '%2.1f' % x)

df_data.to_csv(outfile, index=False, header=False, float_format='%11.6f')
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  • 2
    Note you're not just changing the type of vals, you're also rounding it. If it's not acceptable to modify the column, then could save it to a temporary column 'vals.numeric' while doing the to_csv() write. – smci Aug 21 '15 at 22:08
  • this sets the numbers ok but it turns all the blanks in my column into 'nan' which makes its way to the csv also via to_csv and I'm not able to get rid of it. – Nikhil VJ Jun 18 '18 at 15:30
  • 1
    To avoid the nan issue, my approach is lambda x: '%2.1f % x if not pd.isna(x) else '' – daryl Dec 22 '18 at 5:25

The more current version of hknust's first line would be:

df_data['vals'] = df_data['vals'].map(lambda x: '{0:.1}'.format(x))

To print without scientific notation:

df_data['vals'] = df_data['vals'].map(lambda x: '{0:.1f}'.format(x)) 
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You can use round method for dataframe before saving the dataframe to the file.

df_data = df_data.round(6)
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You can do this with to_string. There is a formatters argument where you can provide a dict of columns names to formatters. Then you can use some regexp to replace the default column separators with your delimiter of choice.

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  • This also seems like a good method. I wonder what is more efficient. Thanks! – ryanjdillon Nov 18 '13 at 10:29
  • I haven't tested to see which is more efficient, but I would have to guess this one since it does not modify the dataframe... – mattexx Nov 18 '13 at 18:18
  • 1
    hi @matlexx if would be great if you could elaborate on this. The .to_string() method merely converts the df to one concatenated string at my end. I can't see how one can send the output of this to .to_csv() – Nikhil VJ Jun 18 '18 at 15:07
  • @NikhilVJ I think .to_string() should be able to do all that .to_csv() does. – Milind R Nov 11 '18 at 18:59
  • 1
    @MilindR Reading your comment again I see I interpreted your statement the wrong way around... Either way, it would be nice if the to_csv method could use formatters. – Matthijs Kramer Nov 21 '18 at 14:50

The to_string approach suggested by @mattexx looks better to me, since it doesn't modify the dataframe.

It also generalizes well when using jupyter notebooks to get pretty HTML output, via the to_html method. Here we set a new default precision of 4, and override it to get 5 digits for a particular column wider:

from IPython.display import HTML
from IPython.display import display

pd.set_option('precision', 4)

display(HTML(df.to_html(formatters={'wider': '{:,.5f}'.format})))
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  • I love this idea, and agree with your argumentation, but formatters argument is not available for df.to_csv function... – Géraud Sep 27 '17 at 22:37
  • @Géraud Thanks. That's too bad - maybe you can file an issue? But maybe they figure that rounding the data for purposes of a file export like csv makes less sense, and there are a bunch of ways to display csv files in tabular format with their own customizable ways of determining precision. – nealmcb Sep 29 '17 at 0:41

This question is a bit old, but I'd like to contribute with a better answer, I think so:

formats = {'lats': '{:10.5f}', 'lons': '{:.3E}', 'vals': '{:2.1f}'}

for col, f in formats.items():
    df_data[col] = df_data[col].map(lambda x: f.format(x))

I tried with the solution here, but it didn't work for me, I decided to experiment with previus solutions given here combined with that from the link above.

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  • The link you posted is for generated CSS for display in a Jupyter notebook, so if that won't work if you'd like your resulting CSV formatted. The chosen answer her that you've adapted converts all columns to (formatted) string data-types. for the format string, the pefered Python3.6+ way would be now be f"{x:2.1f}" rather than "%2.1f" % x. – ryanjdillon Jun 24 at 7:15
  • Now I fixed the problem. Thanks @ryanjdillon – Nacho Jun 26 at 20:37

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