In the pandas library many times there is an option to change the object inplace such as with the following statement...

df.dropna(axis='index', how='all', inplace=True)

I am curious what is being returned as well as how the object is handled when inplace=True is passed vs. when inplace=False.

Are all operations modifying self when inplace=True? And when inplace=False is a new object created immediately such as new_df = self and then new_df is returned?

  • 4
    Yes, inplace=True returns None inplace=False returns a copy of the object with the operation performed. The docs are pretty clear on this, is there something that is confusing with a specific part? Spefically If True, do operation inplace and return None. – EdChum May 10 '17 at 13:09
  • 1
    Correctly said.. – Aditya May 10 '17 at 13:10
  • I am subclassing the DataFrame object and with an operation such as merge it doesn't seem possible to do it inplace... self = self.merge(new_df, how='left', on='column2' I am not sure that it is possible to reassign self – Aran Freel May 10 '17 at 13:12
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    You're correct that DataFrame.merge has no inplace argument. It returns a DataFrame, so no issue reassigning. – JAV May 11 '17 at 5:01

When inplace=True is passed, the data is renamed in place (it returns nothing), so you'd use:


When inplace=False is passed (this is the default value, so isn't necessary), performs the operation and returns a copy of the object, so you'd use:

df = df.an_operation(inplace=False) 


if inplace == False:
    Assign your result to a new variable
    No need to assign
  • Would I be right in thinking that inplace is only an option for methods which alter existing data, but not for methods which 'reshape' the data. For instance, I can .set_index(inplace=True) as this applies values to the existing index, but can't .reindex(inplace=True) because this could create extra rows on the DataFrame that didn't exist in the previous array? – ac24 Mar 13 '18 at 22:49
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    The method .dropna() accepts inplace=True and can most definitely reshape the dataframe, so no. – jorijnsmit Aug 26 '18 at 13:46
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    You have to be careful here. @ac24 is actually more or less right. While dropna returns a dataframe of different shape, it doesn’t actually reshape the underlying data — it merely returns a mask over it (when inplace=False), which can lead to the dreaded SettingWithCopyWarning. Only when there are no more references to the old array of values will pandas reshape according to the mask. A better rule of thumb is: inplace is available when the operation doesn’t require allocating a new backing ndarray of values. – BallpointBen Feb 27 at 5:08
  • Perfection!! +1 – Kaushal28 Mar 17 at 11:42

The way I use it is

# Have to assign back to dataframe (because it is a new copy)
df = df.some_operation(inplace=False) 


# No need to assign back to dataframe (because it is on the same copy)


 if inplace is False
      Assign to a new variable;
      No need to assign
  • 1
    Hi @Nabin, Thats way too clear for anyone working on Pandas and Numpy :-) – Vetrivel PS Dec 27 '18 at 7:52

I usually use with numpy.

you use inplace=True, if you don't want to save the updated data to the same variable

data["column1"].where(data["column1"]< 5, inplace=True)

this is same as...

data["column1"] = data["column1"].where(data["column1"]< 5)

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