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I've written a script that reads in Binary files and puts the data into an appropriately dimensioned numpy array. So most of the heavy lifting is done in this line:

self.temp['data'] = np.array(struct.unpack(offset,tempdata),order='F').reshape(self.temp['shape'][9],self.temp['shape'][8],self.temp['shape'][7],self.temp['shape'][6])

the elements of self.temp['shape'] are the dimensions of the 4D array. The problem is when the 4D array is large this line becomes extremely slow. Can anyone think of a better way of doing this?

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Rather than using struct.unpack and a temporary string, have you considered reading the file directly using numpy.fromfile? –  mgilson Sep 17 '12 at 13:25
    
Or from numpy.fromstring? –  Pierre GM Sep 17 '12 at 13:41
1  
@Daniel, as a slightly-off-topic aside, you might want to consider keeping complex multidimensional data sets in HDF5 format, which makes it very easy to load, store, and manipulate from both numpy as well as other languages and command line tools. –  wjl Sep 17 '12 at 14:37

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