23

Here is how I encountered the error:

df.loc[a_list][df.a_col.isnull()]

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:

df.loc[a_list]
df[df.a_col.isnull()]

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
32

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]
df2[df2.a_col.isnull()]

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
  • 2
    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

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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