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It looks to me like a bug in pandas.Series.

a = pd.Series([1,2,3,4])
b = a.reshape(2,2)
b

b has type Series but can not be displayed, the last statement gives exception, very lengthy, the last line is "TypeError: %d format: a number is required, not numpy.ndarray". b.shape returns (2,2), which contradicts its type Series. I am guessing perhaps pandas.Series does not implement reshape function and I am calling the version from np.array? Anyone see this error as well? I am at pandas 0.9.1.

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2  
I am not very familiar with Pandas, but I understand that its charms and limitations lie in having dedicated objects for arrays of different dimensions. So even if there is numpy in the background, pd.Series is always 1D, and pd.DataFrame is always 2D. So reshaping one of those objects the way your doing does not make much sense. –  Jaime Jan 18 '13 at 0:02
    
And "the way your doing" should be "the way you're doing"... Shame on me! –  Jaime Jan 18 '13 at 0:29

2 Answers 2

up vote 6 down vote accepted

You can call reshape on the values array of the Series:

In [4]: a.values.reshape(2,2)
Out[4]: 
array([[1, 2],
       [3, 4]], dtype=int64)

I actually think it won't always make sense to apply reshape to a Series (do you ignore the index?), and that you're correct in thinking it's just numpy's reshape:

a.reshape?
Docstring: See numpy.ndarray.reshape

that said, I agree the fact that it let's you try to do this looks like a bug.

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I once subclassed ndarray to implement a fixed dimensionality object. It is tempting to catch the reshapes and don't allow them, but a lot of the cool things you've come to love in numpy rely on altering the dimensions of the underlying data, e.g. get rid of reshape and tile does not work any more. May be this is a small, unavoidable, price to pay for reusing the numpy engine in Pandas. –  Jaime Jan 18 '13 at 2:19
    
@Jaime the fact that it causes an exception when you try to do it is surely a bug, either it should let you do it to a DataFrame (and reindex) or the method shouldn't be available? –  Andy Hayden Jan 18 '13 at 7:09
    
The point is you cannot make it unavailable without breaking other functionality, unless you are willing to redo a lot of what numpy gives you for free. It isn't nice, I agree, but it may really be the best that is possible. –  Jaime Jan 18 '13 at 7:13
1  
I agree with hayden that it is better to disallow user calling reshape from pandas.Series. @Jaime, why it is hard to make it unavailable to user? Can I simply create a function reshape in pandas.Series and throw an exception "Not Implemented" there? In the implementation of the pandas.Series (i.e., the derived class of np.array), one still have access to np.ndarray.reshape via, for example, super(), right? –  szli Jan 18 '13 at 22:35
    
@isulsz I don't use Pandas, so I really couldn't care less, I am not against changing the behavior of Series, do submit a bug report. But the problem is not having access to reshape from within your object, but knowing if the call to reshape your object got is coming from a user, that should get a NotImplemented exception, or from another numpy method relying on reshape to do its thing. In numpy, matrix is supposed to be a 2D object, but you can reshape it to 1D or 3D, because if not you wouldn't be able to, for instance, np.tile a matrix. –  Jaime Jan 18 '13 at 22:48

The reshape function takes the new shape as a tuple rather than as multiple arguments:

In [4]: a.reshape?
Type:       function
String Form:<function reshape at 0x1023d2578>
File:       /Library/Frameworks/EPD64.framework/Versions/7.3/lib/python2.7/site-packages/numpy/core/fromnumeric.py
Definition: numpy.reshape(a, newshape, order='C')
Docstring:
Gives a new shape to an array without changing its data.

Parameters
----------
a : array_like
    Array to be reshaped.
newshape : int or tuple of ints
    The new shape should be compatible with the original shape. If
    an integer, then the result will be a 1-D array of that length.
    One shape dimension can be -1. In this case, the value is inferred
    from the length of the array and remaining dimensions.

Reshape is actually implemented in Series and will return an ndarray:

In [11]: a
Out[11]: 
0    1
1    2
2    3
3    4

In [12]: a.reshape((2, 2))
Out[12]: 
array([[1, 2],
       [3, 4]])
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