I found doc says reduce the dimensionality of the return type if possible,otherwise return a consistent type.

df = pd.DataFrame(
     {'a': np.ones(4, dtype='float32'),
     'b': np.ones(4, dtype='float32'),
     'c': np.zeros(4, dtype='float32')})


I couldn't see any change with or without squeeze.Can someone explain me the real purpose of squeeze = True and why is it by default set to false


1 Answer 1


After a bit of research it is used to reduce the dimension if possible. An example showed by @Jeff in github shows why exactly squeeze is used. Its stated in the issue here.

df1 = pd.DataFrame(dict(A = range(4), B = 0))

def func(dataf):
    return pd.Series({ dataf.name : 1})

result1 = df1.groupby("B",squeeze=False).apply(func)
0  1

result2 = df1.groupby("B",squeeze=True).apply(func)

0  0    1
Name: 0, dtype: int64


Squeeze will try to reduce the dimension if its possible to reduce. As you can see above dataframe can be reduced to series so it was done via squeeze parameter. There are very less cases of use of squeeze.

  • 1
    squeeze has become a common idiom. It is included as a param in read_csv (well, most I/O functions), and there's a function as well - df.squeeze which does the same thing. Very handy.
    – cs95
    Commented Jan 18, 2018 at 6:51
  • @cᴏʟᴅsᴘᴇᴇᴅ Yeah, but usually squeeze in groupby had no effect as it was being done as usual. It was hard to find an example where squeeze plays a role based on the parameter in groupby. Commented Jan 18, 2018 at 6:52

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