For programming purpose, I want .iloc to consistently return a data frame, even when the resulting data frame has only one row. How to accomplish this?

Currently, .iloc returns a Series when the result only has one row. Example:

In [1]: df = pd.DataFrame({'a':[1,2], 'b':[3,4]})

In [2]: df
   a  b
0  1  3
1  2  4

In [3]: type(df.iloc[0, :])
Out[3]: pandas.core.series.Series

This behavior is poor for 2 reasons:

  • Depending on the number of chosen rows, .iloc can either return a Series or a Data Frame, forcing me to manually check for this in my code

- .loc, on the other hand, always return a Data Frame, making pandas inconsistent within itself (wrong info, as pointed out in the comment)

For the R user, this can be accomplished with drop = FALSE, or by using tidyverse's tibble, which always return a data frame by default.

  • 2
    .loc does not always return a pd.DataFrame, indeed, try df.loc[0,:] and you'll get the same behavior. – juanpa.arrivillaga Aug 31 '17 at 21:07
  • @juanpa.arrivillaga You're correct -- I'll edit that wrong info out of my post. – Heisenberg Aug 31 '17 at 21:09

Use double brackets,



   a  b
0  1  3


<class 'pandas.core.frame.DataFrame'>

Short for df.iloc[[0],:]

  • 4
    Note it also works on df.loc[[0], :] ! I came here for hope and found gold. Thanks – Traxidus Wolf Dec 10 '18 at 21:03

Specify a slice for the row index.


It returns a single row dataframe.

   a  b
0  1  3

please use the below options:

df1 = df.iloc[[0],:]


df1 = df.iloc[0:1,:]

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.