I know generally speaking FFT and multiplication
is usually faster than direct convolve
operation, when the array is relatively large. However, I'm convolving a very long signal (say 10 million points) with a very short response (say 1 thousand points). In this case the fftconvolve
doesn't seem to make much sense, since it forces a FFT of the second array to the same size of the first array. Is it faster to just do direct convolve in this case?


Take a look at the comparison I did here: http://www.scipy.org/Cookbook/ApplyFIRFilter Your case might be near the transition between using a plain convolution and using the FFTbased convolution, so your best bet (as suggested by @Dougal in a comment) is to time it yourself. (Note that I didn't do overlapadd or overlapsave in that comparison.) 


thank you for your help. Now I did the test myself, I did convolution with 2 arrays, size of 2^20 and 2^4, and this is the result:
So we have a winner, numpy convolve is is much faster than the others. I still don't know why though. Now I tried 2 longer arrays, size of 2^22 and 2^10. The result is:
The difference just gets bigger. 


FFT fast convolution via the overlapadd or overlap save algorithms can be done in limited memory by using an FFT that is only a small multiple (such as 2X) larger than the impulse response. It breaks the long FFT up into properly overlapped shorter but zeropadded FFTs. Even with the overlap overhead, O(NlogN) will beat M*N in efficiency for large enough N and M. 


timeit
? – Dougal Feb 22 '13 at 6:57