Here is how I encountered the error:


The type of a_list is Int64Index, it contains a list of row indexes. All of these row indexes belong to df.

The df.a_col.isnull() part is a condition I need for filtering.

If I execute the following commands individually, I do not get any warnings:


But if I put them together df.loc[a_list][df.a_col.isnull()], I get the warning message (but I can see the result):

Boolean Series key will be reindexed to match DataFrame index

What is the meaning of this error message? Does it affect the result that it returned?

  • Do you still get it when you do this? df.loc[a_list.tolist()] – MYGz Jan 18 '17 at 3:21
  • @MYGz I updated the question sorry for the mistake – Cheng Jan 18 '17 at 3:41
  • 1
    What are you trying to achieve? df.loc[a_list] may not have the same length as df.a_col.isnull() any more which is the reason you are getting the error. – Psidom Jan 18 '17 at 3:56
  • @Psidom I want to apply two conditions to the df: 1. pick out the rows from a_list and 2. based one, find the rows with a_col = null – Cheng Jan 18 '17 at 7:56

Your approach will work despite the warning, but it's best not to rely on implicit, unclear behavior.

Solution 1, make the selection of indices in a_list a boolean mask:

df[df.index.isin(a_list) & df.a_col.isnull()]

Solution 2, do it in two steps:

df2 = df.loc[a_list]

Solution 3, if you want a one-liner, use a trick found here:

df.loc[a_list].query('a_col != a_col')

The warning comes from the fact that the boolean vector df.a_col.isnull() is the length of df, while df.loc[a_list] is of the length of a_list, i.e. shorter. Therefore, some indices in df.a_col.isnull() are not in df.loc[a_list]. What pandas does is reindex the boolean vector on the same index as the calling dataframe. In effect, it gets from df.a_col.isnull() the values corresponding to the indices in a_list. This works, but the behavior is implicit, and could easily change in the future, so that's what the warning is about.

  • How would you rewrite df1[dfo.isnull().any(axis=1)] where dfo = pd.merge(df1, df2, on=cols, how='outer') which is used to find those items in df1 which are not in df2 to make it explicit and clear and avoid the UserWarning in question – Vishal Jul 1 '18 at 4:03
  • @Vishal I think you should ask a new question, with example data. I see you already have a question on merge(how='inner') :) – IanS Jul 2 '18 at 9:58
  • hm, I wanted a new question so I could get example data to play with... can you add an example to your question? – IanS Jul 2 '18 at 13:25
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    This warning also occurs, when querying one data frame with a boolean mask computed on another data frame or a different view into the same data frame. – Robin Dinse Jul 29 '18 at 16:29

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