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bundles / scipy 1.17.1 / scipy / fft / _basic / hfft2

_Function

scipy.fft._basic:hfft2

source: /scipy/fft/_basic.py :1471

Signature

def   hfft2 ( x s = None axes = (-2, -1) norm = None overwrite_x = False workers = None * plan = None )

Summary

Compute the 2-D FFT of a Hermitian complex array.

Parameters

x : array

Input array, taken to be Hermitian complex.

s : sequence of ints, optional

Shape of the real output.

axes : sequence of ints, optional

Axes over which to compute the FFT.

norm : {"backward", "ortho", "forward"}, optional

Normalization mode (see fft). Default is "backward".

overwrite_x : bool, optional

If True, the contents of x can be destroyed; the default is False. See fft for more details.

workers : int, optional

Maximum number of workers to use for parallel computation. If negative, the value wraps around from os.cpu_count(). See fft for more details.

plan : object, optional

This argument is reserved for passing in a precomputed plan provided by downstream FFT vendors. It is currently not used in SciPy.

Returns

out : ndarray

The real result of the 2-D Hermitian complex real FFT.

Notes

This is really just hfftn with different default behavior. For more details see hfftn.

Array API Standard Support

hfft2 has experimental support for Python Array API Standard compatible backends in addition to NumPy. Please consider testing these features by setting an environment variable SCIPY_ARRAY_API=1 and providing CuPy, PyTorch, JAX, or Dask arrays as array arguments. The following combinations of backend and device (or other capability) are supported.

====================  ====================  ====================
Library               CPU                   GPU
====================  ====================  ====================
NumPy                 ✅                     n/a                 
CuPy                  n/a                   ✅                   
PyTorch               ✅                     ✅                   
JAX                   ✅                     ✅                   
Dask                  ⚠️ computes graph     n/a                 
====================  ====================  ====================

See dev-arrayapi for more information.

Examples

import scipy.fft
import numpy as np
x = np.array([[1+0j, 2+0j], [2+0j, 1+0j]])  # Hermitian-symmetric input
scipy.fft.hfft2(x, s=(2, 2))

See also

hfftn

Compute the N-D discrete Fourier Transform for Hermitian complex input.

Aliases

  • scipy.fft.hfft2