I get a different error than you do (using numpy 1.7.0.dev):
ValueError: setting an array element with a sequence.
so the explanation below may not be correct for your system (or it could even be the wrong explanation for what I see).
First, notice that indexing a row of a structured array gives you a
numpy.void object (see data type docs)
import numpy as np
dt = np.dtype([('tuple', (int, 2))])
a = np.zeros(3, dt)
print type(a) # = numpy.void
From what I understand,
void is sort of like a Python list since it can hold objects of different data types, which makes sense since the columns in a structured array can be different data types.
If, instead of indexing, you slice out the first row, you get an
print type(a[:1]) # = numpy.ndarray
This is analogous to how Python lists work:
b = [1, 2, 3]
print b # 1
print b[:1] # 
Slicing returns a shortened version of the original sequence, but indexing returns an element (here, an
int; above, a
So when you slice into the rows of the structured array, you should expect it to behave just like your original array (only with fewer rows). Continuing with your example, you can now assign to the 'tuple' columns of the first row:
a[:1]['tuple'] = (1, 2)
So,... why doesn't
a['tuple'] = (1, 2) work?
Well, recall that
a returns a
void object. So, when you call
a['tuple'] = (1, 2) # this line fails
you're assigning a
tuple to the 'tuple' element of that
void object. Note: despite the fact you've called this index 'tuple', it was stored as an
print type(a['tuple']) # = numpy.ndarray
So, this means the tuple needs to be cast into an
ndarray. But, the
void object can't cast assignments (this is just a guess) because it can contain arbitrary data types so it doesn't know what type to cast to. To get around this you can cast the input yourself:
a['tuple'] = np.array((1, 2))
The fact that we get different errors suggests that the above line might not work for you since casting addresses the error I received---not the one you received.
So why does the following work?
a['tuple'][:] = (1, 2)
Here, you're indexing into the array when you add
[:], but without that, you're indexing into the
void object. In other words,
a['tuple'][:] says "replace the elements of the stored array" (which is handled by the array),
a['tuple'] says "replace the stored array" (which is handled by
Strangely enough, accessing the row (i.e. indexing with 0) seems to drop the base array, but it still allows you to assign to the base array.
print a['tuple'].base is a # = True
print a.base is a # = False
a = ((1, 2),) # `a` is changed
void is not really an array so it doesn't have a base array,... but then why does it have a