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Possible Duplicate:
how to filter the dataframe rows of pandas by “within”/“in”?

Lets 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]

marked as duplicate by BrenBarn, Daniel Velkov, j0k, KillianDS, KingCrunch Aug 24 '12 at 10:29

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • Is this really a duplicate? Is there a way to get the subset without using the in? – Chogg Aug 9 '17 at 22:42
  • Yes, yes. It is really a duplicate. An identical duplicate. – coldspeed Jan 22 at 4:40
758

This is indeed a duplicate of how to filter the dataframe rows of pandas by "within"/"in"?, translating the response to your example gives:

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

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

In [7]: df[df['A'].isin([3, 6])]
Out[7]:
   A  B
1  6  2
2  3  3
  • 7
    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. – Jason Strimpel Aug 14 '14 at 17:36
  • 6
    Is there a simple way to achieve 'pd.Series.str.notin(list)'? – Han Zhengzu Oct 21 '16 at 16:02
  • 2
    @HanZhengzu - this question here will help you. – gincard Jan 21 '17 at 4:30
  • 28
    df[~df['A'].isin([3, 6])] for not in list – kztd Sep 6 '17 at 19:31
  • 2
    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 '17 at 3:05

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