Fast Fourier Transform is fast method of Discrete Fourier Transformation calculation, as far as I understood.
I've been playing with NumPy math library, as so has such plot with this code:
import numpy as np from numpy.fft import fft, fftfreq import matplotlib.pyplot as plt t = np.arange(0, 10, step=0.001) signal = np.sin(t) + np.sin(10*t) sp = fft(signal) freq = fftfreq(signal.size, d=0.001) plt.plot(freq, sp) plt.show()
It seems to me, that must look just like d(x-1) + d(x-10) ... // d is delta-function
(Discrete Fourier Transformation must look like simple Fourier Transformation, but with sloping edges, as far as I understand)
But it doesn't. it looks like "d(x-0.1) + d(x-1.5) ..." and I wonder why. Problems with fftfreq?