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I have the following:

for i in xrange(n):
    label = labels[i]
    frame = data[:, i]
    dostuff()

where data is a 2-D numpy array. I'd like to rewrite it using izip

for label, frame in izip(labels, ???):
    dostuff()

What do I replace ??? with to get this to work?

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1  
What is dostuff(), namely can it be implemented in numpy ufuncs –  Vincent Marchetti Nov 30 '10 at 4:31
    
Is there a typo?: data[:, i] –  Kabie Nov 30 '10 at 4:44
    
@vincent, no the dostuff() can't be done in numpy unfortunately. –  Kekito Nov 30 '10 at 14:43

2 Answers 2

up vote 3 down vote accepted

If you really want to use izip(), you can do it like this:

for label, frame in izip(labels, data.T):
    dostuff()

It is generally advisable not to iterate over a NumPy array using a Python loop, but rather use NumPy ufuncs to do the loops in C code. How to do this, depends on what dostuff() actually does.

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Does the data.T operation create a new array (a slow operation) or does it just change how you access the data? My data array is really large. –  Kekito Nov 30 '10 at 14:47
1  
@Jeff: data.T will create a new array object sharing the same data as data. Your data won't be copied. –  Sven Marnach Nov 30 '10 at 15:27

You could use:

  ??? = numpy.transpose(data)

EDIT: remove second version. Since transpose doesn't copy the array like I assumed there is no reason to anything as crazy as I was doing.

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More than one Ellipsis object in slicing a NumPy array won't yield the expected result -- the first one will consume all remaining dimensions. You probably meant slice(None) instead, but even then the function iterate_axis() will be slower than using NumPy directly. –  Sven Marnach Nov 30 '10 at 10:06
    
@Sven Marnach, I'm using the Ellipsis for the unexpected result because I wasn't sure how to produce a : slice. I'm guessing that is what slice(None) represents? –  Winston Ewert Nov 30 '10 at 15:09
    
Yes, data[slice(None)] is equivalent to data[:]. –  Sven Marnach Nov 30 '10 at 15:29
    
@Sven Marnach, thanks. I've never need it before, but now I know how to do it! –  Winston Ewert Nov 30 '10 at 17:43

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