numpy.fft.fft¶
- numpy.fft.fft(a, n=None, axis=-1, norm=None)[source]¶
- Compute the one-dimensional discrete Fourier Transform. - This function computes the one-dimensional n-point discrete Fourier Transform (DFT) with the efficient Fast Fourier Transform (FFT) algorithm [CT]. - Parameters: - a : array_like - Input array, can be complex. - n : int, optional - Length of the transformed axis of the output. If n is smaller than the length of the input, the input is cropped. If it is larger, the input is padded with zeros. If n is not given, the length of the input along the axis specified by axis is used. - axis : int, optional - Axis over which to compute the FFT. If not given, the last axis is used. - norm : {None, “ortho”}, optional - New in version 1.10.0. - Normalization mode (see numpy.fft). Default is None. - Returns: - out : complex ndarray - The truncated or zero-padded input, transformed along the axis indicated by axis, or the last one if axis is not specified. - Raises: - IndexError - if axes is larger than the last axis of a. - See also - Notes - FFT (Fast Fourier Transform) refers to a way the discrete Fourier Transform (DFT) can be calculated efficiently, by using symmetries in the calculated terms. The symmetry is highest when n is a power of 2, and the transform is therefore most efficient for these sizes. - The DFT is defined, with the conventions used in this implementation, in the documentation for the numpy.fft module. - References - [CT] - Cooley, James W., and John W. Tukey, 1965, “An algorithm for the machine calculation of complex Fourier series,” Math. Comput. 19: 297-301. - Examples - >>> np.fft.fft(np.exp(2j * np.pi * np.arange(8) / 8)) array([ -3.44505240e-16 +1.14383329e-17j, 8.00000000e+00 -5.71092652e-15j, 2.33482938e-16 +1.22460635e-16j, 1.64863782e-15 +1.77635684e-15j, 9.95839695e-17 +2.33482938e-16j, 0.00000000e+00 +1.66837030e-15j, 1.14383329e-17 +1.22460635e-16j, -1.64863782e-15 +1.77635684e-15j]) - >>> import matplotlib.pyplot as plt >>> t = np.arange(256) >>> sp = np.fft.fft(np.sin(t)) >>> freq = np.fft.fftfreq(t.shape[-1]) >>> plt.plot(freq, sp.real, freq, sp.imag) [<matplotlib.lines.Line2D object at 0x...>, <matplotlib.lines.Line2D object at 0x...>] >>> plt.show() - In this example, real input has an FFT which is Hermitian, i.e., symmetric in the real part and anti-symmetric in the imaginary part, as described in the numpy.fft documentation. 
