# jax.numpy.fft.rfftfreqΒΆ

jax.numpy.fft.rfftfreq(n, d=1.0)[source]ΒΆ
Return the Discrete Fourier Transform sample frequencies

(for usage with rfft, irfft).

LAX-backend implementation of rfftfreq(). Original docstring below.

The returned float array f contains the frequency bin centers in cycles per unit of the sample spacing (with zero at the start). For instance, if the sample spacing is in seconds, then the frequency unit is cycles/second.

Given a window length n and a sample spacing d:

f = [0, 1, ...,     n/2-1,     n/2] / (d*n)   if n is even
f = [0, 1, ..., (n-1)/2-1, (n-1)/2] / (d*n)   if n is odd


Unlike fftfreq (but like scipy.fftpack.rfftfreq) the Nyquist frequency component is considered to be positive.

Parameters
• n (int) β Window length.

• d (scalar, optional) β Sample spacing (inverse of the sampling rate). Defaults to 1.

Returns

f β Array of length n//2 + 1 containing the sample frequencies.

Return type

ndarray

Examples

>>> signal = np.array([-2, 8, 6, 4, 1, 0, 3, 5, -3, 4], dtype=float)
>>> fourier = np.fft.rfft(signal)
>>> n = signal.size
>>> sample_rate = 100
>>> freq = np.fft.fftfreq(n, d=1./sample_rate)
>>> freq
array([  0.,  10.,  20., ..., -30., -20., -10.])
>>> freq = np.fft.rfftfreq(n, d=1./sample_rate)
>>> freq
array([  0.,  10.,  20.,  30.,  40.,  50.])