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How can I achieve the equivalents of SQL's IN and NOT IN?

I have a list with the required values. Here's the scenario:

df = pd.DataFrame({'countries':['US','UK','Germany','China']})
countries = ['UK','China']

# pseudo-code:
df[df['countries'] not in countries]

My current way of doing this is as follows:

df = pd.DataFrame({'countries':['US','UK','Germany','China']})
countries = pd.DataFrame({'countries':['UK','China'], 'matched':True})

# IN

not_in = df.merge(countries,how='left',on='countries')
not_in = not_in[pd.isnull(not_in['matched'])]

But this seems like a horrible kludge. Can anyone improve on it?

share|improve this question

3 Answers 3

up vote 31 down vote accepted

You can use something.isin(somewhere) and ~something.isin(somewhere):

>>> df
0        US
1        UK
2   Germany
3     China
>>> countries
['UK', 'China']
>>> df.countries.isin(countries)
0    False
1     True
2    False
3     True
Name: countries, dtype: bool
>>> df[df.countries.isin(countries)]
1        UK
3     China
>>> df[~df.countries.isin(countries)]
0        US
2   Germany
share|improve this answer
isin is not inverse sin()? :D –  Kos Nov 13 '13 at 17:15
Just an FYI, the @LondonRob had his as a DataFrame and yours is a Series. DataFrame's isin was added in .13. –  TomAugspurger Nov 13 '13 at 18:07
Any suggestions for how to do this with pandas 0.12.0? It's the current released version. (Maybe I should just wait for 0.13?!) –  LondonRob Nov 13 '13 at 18:41
If you're actually dealing with 1-dimensional arrays (like in you're example) then on you're first line use a Series instead of a DataFrame, like @DSM used: df = pd.Series({'countries':['US','UK','Germany','China']}) –  TomAugspurger Nov 13 '13 at 19:41
@TomAugspurger: like usual, I'm probably missing something. df, both mine and his, is a DataFrame. countries is a list. df[~df.countries.isin(countries)] produces a DataFrame, not a Series, and seems to work even back in 0.11.0.dev-14a04dd. –  DSM Nov 14 '13 at 16:10

I've been usually doing generic filtering over rows like this:

criterion = lambda row: row['countries'] not in countries
not_in = df[df.apply(criterion, axis=1)]
share|improve this answer
FYI, this is much slower than @DSM soln which is vectorized –  Jeff Nov 13 '13 at 17:47
@Jeff I'd expect that, but that's what I fall back to when I need to filter over something unavailable in pandas directly. (I was about to say "like .startwith or regex matching, but just found out about Series.str that has all of that!) –  Kos Nov 14 '13 at 7:42

Here's the best way to do it using Pandas 0.12.0 (which was the current release at the time of this answer!):

>>> df = pd.DataFrame({'countries':['US','UK','Germany','China'],'vals':[1,4,9,16]})
>>> countries = ['UK','China']
>>> # IN
>>> df.set_index('countries').ix[countries]
UK        4
China    16
>>> # NOT IN
>>> notin = [notin for notin in df['countries'].values.tolist() \
... if notin not in countries]
>>> df.set_index('countries').ix[notin]
US          1
Germany     9

Here's a generic function for achieving IN and NOT IN:

def _in(data, inlist, col_name, notin=False):
    if notin:
        how = 'left'
        how = 'inner'
    matchfld = 'x123abc'
    match = pd.DataFrame({matchfld:inlist,'matched':True})
    x = data.merge(match,how=how,left_on=col_name,right_on=matchfld)

    if notin:
        return x[pd.isnull(x['matched'])].drop(['matched',matchfld],1)
        return x.drop(['matched',matchfld],1)
share|improve this answer
Are you saying that df[df.countries.isin(countries)] and df[~df.countries.isin(countries)] don't work for you? They work for me even back in 0.11. –  DSM Nov 14 '13 at 16:13
Argh! Sorry @DSM. I didn't spot that you had to 'Series'-ify before this worked. I was looking for df.isin...! –  LondonRob Nov 14 '13 at 17:34

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