1. gpyfftΒΆ
A Python wrapper for the OpenCL FFT library clFFT.
## Introduction
### clFFT
The open source library [clFFT] implements FFT for running on a GPU via OpenCL. Some highlights are:
batched 1D, 2D, and 3D transforms
supports many transform sizes (any combinatation of powers of 2,3,5,7,11, and 13)
flexible memory layout
single and double precisions
complex and real-to-complex transforms
supports injecting custom code for data pre- and post-processing
### gpyfft
This python wrapper is designed to tightly integrate with [PyOpenCL]. It consists of a low-level Cython based wrapper with an interface similar to the underlying C library. On top of that it offers a high-level interface designed to work on data contained in instances of pyopencl.array.Array, a numpy work-alike array class for GPU computations. The high-level interface takes some inspiration from [pyFFTW]. For details of the high-level interface see [fft.py].
## Status
The low lever interface is complete (more or less), the high-level interface is not yet settled and likely to change in future. Features to come (not yet implemented in the high-level interface):
### work done
low level wrapper (mostly) completed
high level wrapper
complex-to-complex transform, in- and out-of-place
real-to-complex transform (out-of-place)
complex-to-real transform (out-of-place)
single precision
double precision
interleaved data
support injecting custom OpenCL code (pre and post callbacks)
accept pyopencl arrays with non-zero offsets (Syam Gadde)
## Basic usage
Here we describe a simple example of performing a batch of 2D complex-to-complex FFT transforms on the GPU, using the high-level interface of gpyfft. The full source code of this example ist contained in [simple_example.py], which is the essence of [benchmark.py]. Note, for testing it is recommended to start [simple_example.py] from the command line, so you have the possibility to interactively choose an OpenCL context (otherwise, e.g. when using an IPython, you are not asked end might end up with a CPU device, which is prone to fail).
imports:
` python
import numpy as np
import pyopencl as cl
import pyopencl.array as cla
from gpyfft.fft import FFT
`
initialize GPU:
` python
context = cl.create_some_context()
queue = cl.CommandQueue(context)
`
initialize memory (on host and GPU). In this example we want to perform in parallel four 2D FFTs for 1024x1024 single precision data.
` python
data_host = np.zeros((4, 1024, 1024), dtype = np.complex64)
#data_host[:] = some_useful_data
data_gpu = cla.to_device(queue, data_host)
`
create FFT transform plan for batched inline 2D transform along second two axes.
` python
transform = FFT(context, queue, data_gpu, axes = (2, 1))
`
If you want an out-of-place transform, provide the output array as additional argument after the input data.
Start the work and wait until it is finished (Note that enqueu() returns a tuple of events)
` python
event, = transform.enqueue()
event.wait()
`
Read back the data from the GPU to the host
` python
result_host = data_gpu.get()
`
## Benchmark
A simple benchmark is contained as a submodule, you can run it on the command line by python -m gpyfft.benchmark, or from Python
` python
import gpyfft.benchmark
gpyfft.benchmark.run()
`
Note, you might want to set the PYOPENCL_CTX environment variable to select your OpenCL platform and device.
[clFFT]: https://github.com/clMathLibraries/clFFT [pyFFTW]: https://github.com/hgomersall/pyFFTW [PyOpenCL]: https://mathema.tician.de/software/pyopencl [fft.py]: gpyfft/fft.py [pyfft]: http://github.com/Manticore/pyfft [simple_example.py]: examples/simple_example.py [benchmark.py]: gpyfft/benchmark.py