28

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
Out[2]:
   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
47

Use double brackets,

df.iloc[[0]]

Output:

   a  b
0  1  3

print(type(df.iloc[[0]])

<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
5

Specify a slice for the row index.

df.iloc[0:1]

It returns a single row dataframe.

   a  b
0  1  3
0

please use the below options:

df1 = df.iloc[[0],:]
#type(df1)
df1

or

df1 = df.iloc[0:1,:]
#type(df1)
df1

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