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What are the advantages and disadvantages of storing Python objects in a numpy.array with dtype='o' versus using list (or list of list, etc., in higher dimensions)?

Are numpy arrays more efficient in this case? (It seems that they cannot avoid the indirection, but might be more efficient in the multidimensional case.)

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I personally have never come across compelling uses for NumPy arrays of objects. It would be interesting to see if someone can come up with a convincing example. (+1) –  NPE Apr 11 '13 at 10:08
    
Possible duplicate of stackoverflow.com/questions/6141853/… –  tiago Apr 11 '13 at 12:29
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@NPE I mostly agree, other than as a convenient way to do (some) mathematical operations with arrays of Fraction objects (or the like), without resorting to half a dozen nested zip's and map's. –  Jaime Apr 11 '13 at 14:08
    
@NPE NodePy uses NumPy arrays of objects (sympy expressions) to do some exact analysis of numerical methods for ODEs. –  jorgeca Apr 11 '13 at 17:54

1 Answer 1

up vote 4 down vote accepted

Slicing works differently with NumPy arrays. The NumPy docs devote a lengthy page on the topic.

To highlight some points:

  • NumPy slices can slice through multiple dimensions
  • All arrays generated by NumPy basic slicing are always views of the original array, while slices of lists are shallow copies.
  • You can assign a scalar into a NumPy slice.
  • You can insert and delete items in a list by assigning a sequence of different length to a slice, while NumPy would raise an error.

Demo:

>>> a = np.arange(4, dtype=object).reshape((2,2))
>>> a
array([[0, 1],
       [2, 3]], dtype=object)
>>> a[:,0]             #multidimensional slicing
array([0, 2], dtype=object)
>>> b = a[:,0]
>>> b[:] = True        #can assign scalar
>>> a                  #contents of a changed because b is a view to a
array([[True, 1],
       [True, 3]], dtype=object)    
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Sorry, my previous comment was wrong. –  tiago Apr 11 '13 at 13:43
    
Also, you can use numpy helpers like flat, flatten, nditer –  Neil G Apr 12 '13 at 6:01

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