116

Looks ugly:

df_cut = df_new[
             (
             (df_new['l_ext']==31) |
             (df_new['l_ext']==22) |
             (df_new['l_ext']==30) |
             (df_new['l_ext']==25) |
             (df_new['l_ext']==64)
             )
            ]

Does not work:

df_cut = df_new[(df_new['l_ext'] in [31, 22, 30, 25, 64])]

Is there an elegant and working solution of the above "problem"?

0

2 Answers 2

251

Use isin

df_new[df_new['l_ext'].isin([31, 22, 30, 25, 64])]
6
  • 28
    This is one of those less-intuitive pandas syntax features... You don't know unless you know.
    – openwonk
    Sep 7, 2016 at 23:45
  • 4
    What's the negative of isin? I'm looking for a way to filter out the list elements. Sep 21, 2016 at 18:38
  • 1
    numpy.logical_not(foo.isin(x)) and another method suggested by Pandas author: stackoverflow.com/questions/14057007/remove-rows-not-isinx Sep 28, 2016 at 8:07
  • 9
    Negation using ~ should be enough for doing not isin. df_new[~df_new['l_ext'].isin([31, 22, 30, 25, 64])]
    – Arun Das
    Mar 27, 2018 at 21:57
  • 1
    Be cautious, if the type of the column is ambiguous for example "object" which could be either numeric or string "isin" will automatically infer data type.
    – Semooze
    Oct 18, 2021 at 14:40
16

You can use pd.DataFrame.query:

select_values = [31, 22, 30, 25, 64]
df_cut = df_new.query('l_ext in @select_values')

In the background, this uses the top-level pd.eval function.

1
  • 1
    Another alternative without having to create an extra variable: df_new.query('l_ext.isin([31, 22, 30, 25, 64]).values')
    – rachwa
    May 8, 2022 at 20:07

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