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I have the folowwing data structure:

N=100
TB =     {'names':('n', 'D'),'formats':(int, int)}
TA =     {'names':('id', 'B'),'formats':(int, dtype((TB, (N))))}
a = np.empty(1000, dtype=TA)
b = np.empty(N, dtype=TB)

where a is a structured array with two fields: 'id' and 'B'. In 'B' another structured array with fields 'n' and D is stored, e.g.

for i in range(0,1000):
   a['B'][i] = b

When the above assignment is executed, the data from b is copied to a. Is there a way to copy just the reference to b, so that when I change b, the change is reflected in a['B'][i]? What I want is to store pointers to b in a, because I dont need to create copies as the data in b is identical for every row of a.

I tired

TA = {'names':('id', 'B'),'formats':(int, object)}

and it works, but breaks the nested structure of the arrays. Is there a way the retain structured array functionality, e.g. a['B']['D']

Thanks

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2 Answers 2

The short answer is no. Although the syntax for numpy arrays looks the same as standard python syntax, what's happening behind the scenes is very different. Complex numpy datatypes like TA use large blocks of contiguous memory to store each record; the memory has to be laid out regularly, or everything falls apart.

So when you create a 1000-item array with a nested datatype like TA, you're actually allocating 1000 blocks of memory, each of which is large enough to contain N distinct TB arrays. That's exactly why you can do things like a['B']['D'] -- or, to point a point on it, things like this:

>>> (a['B'][1]['D'] == a['B']['D'][1]).all()
True
>>> a['B'][1]['D'][0] = 123456789
>>> (a['B'][1]['D'] == a['B']['D'][1]).all()
True

For normal Python objects, the above would fail, because object item access order matters. It's actually very weird that this is possible in numpy, and the only reason it's possible is that numpy uses uniformly structured contiguous memory.

As far as I know, numpy doesn't provide any way to do what you're asking (someone correct me if I'm wrong!), and the indirection required would probably involve significant changes to numpy's API.

I'll add that I don't think it makes a lot of sense to do this anyway. If only one copy of the array is needed, why not just store it outside the array? You could even pass it around along with the numpy array, as part of a tuple or namedtuple.

share|improve this answer
    
thanks for you reply. I havnt thought about it in terms of access order, now I see you point. I've also thought of using namedtuples as you suggest, but still from an interface point of view a "pure" structured array solution would be desireble. After some trial & error I have broken down the problem to thw folowwing asdsd –  maryam roayaee Aug 9 '12 at 18:35
    
After some trial & error I have broken down the problem to the following: A=np.ones(10); AA=np.empty(1, dtype=object); AA[0]=np.ones(10). If it's possible to convert AA to the type/dtype of A using AA.view() or AA.astype() then this would give the solution, but so far I havnt found a way –  maryam roayaee Aug 9 '12 at 18:47

Yes, you can just open a view. But it works the other way around as you described:

>>> a = np.array([1,2,3,4,5,6])
>>> b = a[2:4].view()
>>> b[0] = 0
>>> b[1] = 0
>>> a
array([1, 2, 0, 0, 5, 6])
share|improve this answer
    
Assigning a view to a structured array also copies the data, soyour suggestion doesnt work. The workaround is to create an array with dtype=object, but is there a way to convert/open a view of such an arary to the original dtype? –  maryam roayaee Aug 10 '12 at 9:56
    
maryam, a view does not copy the data. It is a reference to the same area in the memory, where the data is. –  Davoud Taghawi-Nejad Aug 10 '12 at 12:11
    
Not when you pass it to a structured array: A=np.zeros(1,dtype='int,10int'); B=np.arange(10); A['f1']=B.view(); B*=0; print B; print A –  maryam roayaee Aug 10 '12 at 12:28
    
compare with: AA=np.zeros(1,dtype='int,object'); B=np.arange(10); AA['f1'][0]=B; B*=0; print B; print AA Now Im looking for a conversion/view of AA to resemble A –  maryam roayaee Aug 10 '12 at 12:40

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