# Given a pandas Series that represents frequencies of a value, how can I turn those frequencies into percentages?

I was experimenting with the kaggle.com Titanic data set (data on every person on the Titanic) and came up with a gender breakdown like this:

``````df = pd.DataFrame({'sex': ['male'] * 577 + ['female'] * 314})
gender = df.sex.value_counts()
gender

male   577
female 314
``````

I would like to find out the percentage of each gender on the Titanic.

My approach is slightly less than ideal:

``````from __future__ import division
pcts = gender / gender.sum()
pcts

male      0.647587
female    0.352413
``````

Is there a better (more idiomatic) way?

This function is implemented in pandas, actually even in value_counts(). No need to calculate :)

just type:

``````df.sex.value_counts(normalize=True)
``````

which gives exactly the desired output.

Please note that value_counts() excludes NA values, so numbers might not add up to 1. See here: http://pandas-docs.github.io/pandas-docs-travis/generated/pandas.Series.value_counts.html (A column of a DataFrame is a Series)

• Any thing which gives as below `male 577 0.647587 female 314 0.352413` which can both, counts and pctcnts side by side ?? Oct 30, 2017 at 14:36

In case you wish to show percentage one of the things that you might do is use `value_counts(normalize=True)` as answered by @fanfabbb.

With that said, for many purposes, you might want to show it in the percentage out of a hundred.

That can be achieved like so:

``````gender = df.sex.value_counts(normalize=True).mul(100).round(1).astype(str) + '%'
``````

In this case, we multiply the results by hundred, round it to one decimal point and add the percentage sign.

If you want to merge counts with percentage, can use:

``````c = df.sex.value_counts(dropna=False)
p = df.sex.value_counts(dropna=False, normalize=True)
pd.concat([c,p], axis=1, keys=['counts', '%'])
``````
• there should really be an option to show this automatically! Dec 16, 2019 at 15:06

I think I would probably do this in one go (without importing division):

``````1. * df.sex.value_counts() / len(df.sex)
``````

or perhaps, remembering you want a percentage:

``````100. * df.sex.value_counts() / len(df.sex)
``````

Much of a muchness really, your way looks fine too.

• I like this approach because there's no need to import future. Thanks Hayden. Jan 13, 2013 at 6:02