1115

Let’s say I have the following Pandas dataframe:

df = DataFrame({'A' : [5,6,3,4], 'B' : [1,2,3, 5]})
df

     A   B
0    5   1
1    6   2
2    3   3
3    4   5

I can subset based on a specific value:

x = df[df['A'] == 3]
x

     A   B
2    3   3

But how can I subset based on a list of values? - something like this:

list_of_values = [3,6]

y = df[df['A'] in list_of_values]

To get:

     A    B
1    6    2
2    3    3
0

4 Answers 4

1886

You can use the isin method:

In [1]: df = pd.DataFrame({'A': [5,6,3,4], 'B': [1,2,3,5]})

In [2]: df
Out[2]:
   A  B
0  5  1
1  6  2
2  3  3
3  4  5

In [3]: df[df['A'].isin([3, 6])]
Out[3]:
   A  B
1  6  2
2  3  3

And to get the opposite use ~:

In [4]: df[~df['A'].isin([3, 6])]
Out[4]:
   A  B
0  5  1
3  4  5
10
  • 27
    How would you return these values in the order of the list? For example, list_of_values has values 3 then 6 but the frame is returned with 6 then 3. I'm not talking about a simple sort, rather how specifically can we return in the order of the values in the list. Aug 14, 2014 at 17:36
  • 1
    This was an example of boolean indexing which keeps the order off the index, see pandas.pydata.org/pandas-docs/stable/… for more details. A sort after the selection is needed. Aug 18, 2014 at 15:16
  • 1
    This helped me stackoverflow.com/a/29108799/5629831 May 25, 2016 at 3:39
  • 9
    You can also achieve similar results by using 'query' and @<your list of values>: eg: df = pd.DataFrame({'A': [1, 2, 3], 'B': ['a', 'b', 'f']}) df = pd.DataFrame({'A' : [5,6,3,4], 'B' : [1,2,3, 5]}) list_of_values = [3,6] result= df.query("A in @list_of_values") result A B 1 6 2 2 3 3
    – akuriako
    Sep 28, 2017 at 3:05
  • 2
    @JasonStrimpel I replied to your question here: stackoverflow.com/questions/51944021/…
    – syltruong
    Aug 21, 2018 at 7:51
54

You can use the method query:

df.query('A in [6, 3]')
# df.query('A == [6, 3]')

or

lst = [6, 3]
df.query('A in @lst')
# df.query('A == @lst')
7
  • 3
    i wonder if query() is computationally better than isin() function
    – Hammad
    Aug 29, 2021 at 14:51
  • 3
    @Hammad According to Pandas docs: "DataFrame.query() using numexpr is slightly faster than Python for large frames." Aug 30, 2021 at 8:21
  • 1
    how would i combine two queries? df.query('A in @lst') AND df.query('B in @lst2') Oct 27, 2021 at 14:22
  • 2
    @data_runner df.query('(A in @lst) and (B in @lst2)') Oct 27, 2021 at 14:38
  • 1
    @SubhamBurnwal You can't use square brackets inside a query, but you can use the method slice instead: df.query('A.str.slice(stop=2) in @lst') Jan 6 at 15:52
6

Another method;

df.loc[df.apply(lambda x: x.A in [3,6], axis=1)]

Unlike the isin method, this is particularly useful in determining if the list contains a function of the column A. For example, f(A) = 2*A - 5 as the function;

df.loc[df.apply(lambda x: 2*x.A-5 in [3,6], axis=1)]

It should be noted that this approach is slower than the isin method.

1
  • The use of df.loc[df.apply(lambda x: ... is very powerful. Did the trick for me. And yes, it is slower but more flexible :)
    – serfer2
    Dec 6, 2021 at 18:12
0

You can store your values in a list as:

lis = [3,6]

then

df1 = df[df['A'].isin(lis)]

2
  • What's the difference between top answer?
    – Ynjxsjmh
    May 26 at 4:37
  • if you have more values to filter, it is better to store them as list and filter that list from the main dataframe. May 26 at 4:42

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