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I am working on my first large python project. I have one function which has the following code in it:

            # EXPAND THE EXPECTED VALUE TO APPLY TO ALL STATES,
            # THEN UPDATE fullFnMat
            EV_subset_expand = np.kron(EV_subset, np.ones((nrows, 1)))
            fullFnMat[key] = staticMat[key] + EV_subset_expand                

In my code profiler, it seems like this kronecker product is actually taking up a huge amount of time.

Function                                                                                        was called by...
                                                                                                    ncalls  tottime  cumtime
/home/stevejb/myhg/dpsolve/ootest/tests/ddw2011/profile_dir/BellmanEquation.py:17(bellmanFn)    <-      19   37.681   38.768  /home/stevejb/myhg/dpsolve/ootest/tests/ddw2011/profile_dir/dpclient.py:467(solveTheModel)
{numpy.core.multiarray.concatenate}                                                             <-     342   27.319   27.319  /usr/lib/pymodules/python2.7/numpy/lib/shape_base.py:665(kron)
/home/stevejb/myhg/dpsolve/ootest/tests/ddw2011/profile_dir/dpclient.py:467(solveTheModel)      <-       1   11.041   91.781  <string>:1(<module>)
{method 'argsort' of 'numpy.ndarray' objects}                                                   <-      19    7.692    7.692  /usr/lib/pymodules/python2.7/numpy/core/fromnumeric.py:597(argsort)
/usr/lib/pymodules/python2.7/numpy/core/numeric.py:789(outer)                                   <-     171    2.526    2.527  /usr/lib/pymodules/python2.7/numpy/lib/shape_base.py:665(kron)
{method 'max' of 'numpy.ndarray' objects}                                                       <-     209    2.034    2.034  /home/stevejb/myhg/dpsolve/ootest/tests/ddw2011/profile_dir/dpclient.py:391(getValPolMatrices)

Is there a way to get faster kronecker products in Numpy? It seems like it shouldn't take as long as it is.

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Downvotes? Serious? I think this is a pretty legitimate question. I'm not trolling / trying to start a flame war / anything. Just trying to make my code faster... –  stevejb Aug 25 '11 at 16:50
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2 Answers

up vote 5 down vote accepted

You can certainly take a look at the source for np.kron. It can be found in numpy/lib/shape_base.py, and you can see if there are improvements that can be made or simplifications that might make it more efficient. Alternatively you could write your own using Cython or some other binding to a low level language to try to eek out better performance.

Or as @matt suggested something like the following might be natively faster:

import numpy as np
nrows = 10
a = np.arange(100).reshape(10,10)
b = np.tile(a,nrows).reshape(nrows*a.shape[0],-1) # equiv to np.kron(a,np.ones((nrows,1)))

or:

b = np.repeat(a,nrows*np.ones(a.shape[0],np.int),axis=0)

Timings:

In [80]: %timeit np.tile(a,nrows).reshape(nrows*a.shape[0],-1)
10000 loops, best of 3: 25.5 us per loop

In [81]: %timeit np.kron(a,np.ones((nrows,1)))
10000 loops, best of 3: 117 us per loop

In [91]: %timeit np.repeat(a,nrows*np.ones(a.shape[0],np.int),0)
100000 loops, best of 3: 12.8 us per loop

Using np.repeat for the sized arrays in the above example gives a pretty nice 10x speed-up, which isn't too shabby.

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Thanks Josh. I think that the usage np.repeat you created will work perfectly. Otherwise, I can do it in Cython. –  stevejb Aug 25 '11 at 20:52
    
Forgot about repeat. Good answer. –  matt Aug 25 '11 at 21:20
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Maybe np.kron() is allocating memory and then you're throwing it away. Try using np.tile() instead. I don't know if that allocates more memory or plays indexing tricks under the covers. If you're only multiplying EV_subset by ones, you don't really need to call np.kron().

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Yeah, it makes sense that all of the *1's are redundant. Thanks –  stevejb Aug 25 '11 at 20:54
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