# ifft in matlab and numpy give different results

I have another question. Quite similar to the other that i already asked (and got great help - thanks again). Unfortunately the solution from the other thread does not work here: (http://stackoverflow.com/questions/8680909/fft-in-matlab-and-numpy-scipy-give-different-results)

now it is about the ifft:

``````  # i have an array 'aaa' of shape (6,) such as:
for i in aaa:  print i
...

(1.22474487139+0j)
(-0.612372435696-1.06066017178j)
(-0.612372435696+1.06066017178j)
(1.22474487139+0j)
(-0.612372435696-1.06066017178j)
(-0.612372435696+1.06066017178j)

#when i perform np.ifft the result is:
np.fft.ifft(aaa)

array([  1.48029737e-16 +1.48029737e-16j,
-8.26024733e-17 -1.72464044e-16j,
1.22474487e+00 -3.94508649e-16j,
3.70074342e-17 -2.96059473e-16j,
-2.22044605e-16 +2.46478913e-16j,   4.55950391e-17 +4.68523518e-16j])

###################################################################
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% BUT IN MATLAB
% the same array...

aaa =

1.2247
-0.6124 - 1.0607i
-0.6124 + 1.0607i
1.2247
-0.6124 - 1.0607i
-0.6124 + 1.0607i

% ...gives the result:
ifft(aaa)

ans =

-0.0000
0
1.2247
0
0
0
``````

i did experiments with real numbers like range(1,6). then the results are the same. Could it be a problem of precision? But then - why the results differ so significantly? maybe someone has an idea how to solve the problem?

-
possible duplicate of FFT in Matlab and numpy / scipy give different results –  Paul R Jan 3 '12 at 18:52
Did you notice that the two questions were asked by the same user? ;) –  Bi Rico Jan 4 '12 at 3:10
this is not a duplicate. as i said in the introduction-the solution from that thread does not apply here. –  Chris Jan 4 '12 at 8:07