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Link to code: Cython Code

Is there anything I've forgotten to do here in order to speed things up a bit? I'm trying to implement an algorithm described in a book called Tuning Timbre Spectrum Scale. Also---if all else fails, is there a way for me to just write this part of the code in C, then be able to call it from python?

Thankslot.

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No, I'm only using Cython to speed up an algorithm which was originally written in straight-up Python. –  Chironex Mar 17 '11 at 2:30
    
For python -> C, see SO simple-wrapping-of-c-code-with-cython –  denis Mar 17 '11 at 12:41

2 Answers 2

up vote 6 down vote accepted

Here are some things that I noticed:

  1. Use t1.shape[0] instead of np.shape(t1)[0] and in so on in other places.
  2. Don't use len as a variable because it is a built-in function in Python (not for speed, but for good practice). Use L or something like that.
  3. Don't pass two-element arrays to functions unless you really need to. Cython checks the buffer every time you do pass an array. So, when using diss2Partials(t[i], t[j]) do diss2Partials(t[i,0], t[i,1], t[j,0], t[j,1]) instead and redefine diss2Partials appropriately.
  4. Don't use abs, or at least not the Python one. It is having to convert your C double to a Python float, call the abs function, then convert back to a C double. It would probably be better to make an inlined function like you did with float_min.
  5. Calling np.exp is doing a similar thing to using abs. Change np.exp to exp and add from libc.math cimport exp to your imports at the top.
  6. Get rid of the transpose function completely. The np.dot is really slowing things down, but there really is no need for matrix multiplication here anyway. Rewrite your dissTimbreScale function to create an empty matrix, say t2. Before the current loop, set the second column of t2 to be equal to the second column of t (using a loop preferably, but you could probably get away with a Numpy operation here). Then, inside of the current loop, put in a loop that sets the first column of t2 equal to the first column of t times s[i]. That's what your matrix multiplication was really doing. Then just pass t2 as the second parameter to diss2Timbres instead of the one returned by the transpose function.

Do 1-5 first because they are rather easy. Number 6 may take a little more time, effort and maybe experimentation, but I suspect that it may also give you a significant boost in speed.

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I'd replaced Numpy exps with Python exps, but whoa---using C exps results in a good 2x speedup! Now looking into #3 and #6... –  Chironex Mar 25 '11 at 17:40
    
Alright, implemented #3 and #6 and juggled around with the way the code handles unsorted lists (instead of sorting and then passing them, it leaves them unsorted and expects the next function to compare each pair of elements in order to use them in the correct order)...anyway, thanks a lot for the comment, it made my code a good 2.5x faster (after I had already made it 15x faster)! –  Chironex Mar 25 '11 at 18:47
    
Hmmm...maybe I should add a quicksort function so that I don't have to do all of those comparisons...meh –  Chironex Mar 25 '11 at 18:53
    
So glad that I could help. –  Justin Peel Mar 25 '11 at 20:06

In your code:

for i from 0 <= i < len:
    for j from i+1 <= j < len:
        runningDiss1 += diss2Partials(t[i], t[j])
return runningDiss1

bounds checking is performed for each array lookup, use the decorator @cython.boundscheck(False) before the function, and then cast to an unsigned int type before using i and j as the indices. Look up the cython for Numpy tutorial for more info.

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