72

I have a pandas DataFrame called data with a column called ms. I want to eliminate all the rows where data.ms is above the 95% percentile. For now, I'm doing this:

limit = data.ms.describe(90)['95%']
valid_data = data[data['ms'] < limit]

which works, but I want to generalize that to any percentile. What's the best way to do that?

0

3 Answers 3

120

Use the Series.quantile() method:

In [48]: cols = list('abc')

In [49]: df = DataFrame(randn(10, len(cols)), columns=cols)

In [50]: df.a.quantile(0.95)
Out[50]: 1.5776961953820687

To filter out rows of df where df.a is greater than or equal to the 95th percentile do:

In [72]: df[df.a < df.a.quantile(.95)]
Out[72]:
       a      b      c
0 -1.044 -0.247 -1.149
2  0.395  0.591  0.764
3 -0.564 -2.059  0.232
4 -0.707 -0.736 -1.345
5  0.978 -0.099  0.521
6 -0.974  0.272 -0.649
7  1.228  0.619 -0.849
8 -0.170  0.458 -0.515
9  1.465  1.019  0.966
3
  • using pandas,If I want compare different col with specific quantile, is there quick method similar numpy broadcasting? Jul 28, 2017 at 4:34
  • 1
    does it also work when removing over all columns, i.e. df[df < df.quantile(.95)]? I expect all the values being filtered out if not in the range and replace by NaN if needed. Nov 23, 2017 at 14:19
  • Principally the same but more concise: df.query('a < a.quantile(.95)'). If the column name is lengthy that can improve readability: col = 'some_verbose_metric_name'; df.query(f'{col} < {col}.quantile(.95)')
    – ribitskiyb
    Oct 16, 2019 at 23:04
51

numpy is much faster than Pandas for this kind of things :

numpy.percentile(df.a,95) # attention : the percentile is given in percent (5 = 5%)

is equivalent but 3 times faster than :

df.a.quantile(.95)  # as you already noticed here it is ".95" not "95"

so for your code, it gives :

df[df.a < np.percentile(df.a,95)]
4
  • 3
    Can confirm that numpy's implementation is waaay faster if you can afford the column extract cost Oct 17, 2018 at 14:11
  • @2diabolos.com is there a way to implement percentile filter on multiple pandas column. Mar 4, 2019 at 10:48
  • Something like df[numpy.logical_and(df.a < np.percentile(df.a,95),df.b < np.percentile(df.b,95))] ? Or you may create a new question for that... Mar 11, 2019 at 13:13
  • 1
    @deepelement what is the tradeoff with column extract cost? Dec 6, 2020 at 23:00
7

You can use query for a more concise option:

df.query('ms < ms.quantile(.95)')

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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