Home

Awesome

Build Status

Build branchmasterdevelop
GCC/Clang x64Build StatusBuild Status
Visual Studio x64Build status

clFFT

clFFT is a software library containing FFT functions written in OpenCL. In addition to GPU devices, the library also supports running on CPU devices to facilitate debugging and heterogeneous programming.

Pre-built binaries are available here.

What's New

Note

Introduction to clFFT

The FFT is an implementation of the Discrete Fourier Transform (DFT) that makes use of symmetries in the FFT definition to reduce the mathematical intensity required from O(N^2) to O(N log2(N)) when the sequence length N is the product of small prime factors. Currently, there is no standard API for FFT routines. Hardware vendors usually provide a set of high-performance FFTs optimized for their systems: no two vendors employ the same interfaces for their FFT routines. clFFT provides a set of FFT routines that are optimized for AMD graphics processors, but also are functional across CPU and other compute devices.

The clFFT library is an open source OpenCL library implementation of discrete Fast Fourier Transforms. The library:

clFFT library user documentation

Library and API documentation for developers is available online as a GitHub Pages website

Google Groups

Two mailing lists exist for the clMath projects:

API semantic versioning

Good software is typically the result of the loop of feedback and iteration; software interfaces no less so. clFFT follows the semantic versioning guidelines. The version number used is of the form MAJOR.MINOR.PATCH.

clFFT Wiki

The project wiki contains helpful documentation, including a build primer

Contributing code

Please refer to and read the Contributing document for guidelines on how to contribute code to this open source project. The code in the /master branch is considered to be stable, and all pull-requests must be made against the /develop branch.

License

The source for clFFT is licensed under the Apache License, Version 2.0

Example

The following simple example shows how to use clFFT to compute a simple 1D forward transform

#include <stdlib.h>

/* No need to explicitely include the OpenCL headers */
#include <clFFT.h>

int main( void )
{
    cl_int err;
    cl_platform_id platform = 0;
    cl_device_id device = 0;
    cl_context_properties props[3] = { CL_CONTEXT_PLATFORM, 0, 0 };
    cl_context ctx = 0;
    cl_command_queue queue = 0;
    cl_mem bufX;
	float *X;
    cl_event event = NULL;
    int ret = 0;
	size_t N = 16;

	/* FFT library realted declarations */
	clfftPlanHandle planHandle;
	clfftDim dim = CLFFT_1D;
	size_t clLengths[1] = {N};

    /* Setup OpenCL environment. */
    err = clGetPlatformIDs( 1, &platform, NULL );
    err = clGetDeviceIDs( platform, CL_DEVICE_TYPE_GPU, 1, &device, NULL );

    props[1] = (cl_context_properties)platform;
    ctx = clCreateContext( props, 1, &device, NULL, NULL, &err );
    queue = clCreateCommandQueue( ctx, device, 0, &err );

    /* Setup clFFT. */
	clfftSetupData fftSetup;
	err = clfftInitSetupData(&fftSetup);
	err = clfftSetup(&fftSetup);

	/* Allocate host & initialize data. */
	/* Only allocation shown for simplicity. */
	X = (float *)malloc(N * 2 * sizeof(*X));

    /* Prepare OpenCL memory objects and place data inside them. */
    bufX = clCreateBuffer( ctx, CL_MEM_READ_WRITE, N * 2 * sizeof(*X), NULL, &err );

    err = clEnqueueWriteBuffer( queue, bufX, CL_TRUE, 0,
	N * 2 * sizeof( *X ), X, 0, NULL, NULL );

	/* Create a default plan for a complex FFT. */
	err = clfftCreateDefaultPlan(&planHandle, ctx, dim, clLengths);

	/* Set plan parameters. */
	err = clfftSetPlanPrecision(planHandle, CLFFT_SINGLE);
	err = clfftSetLayout(planHandle, CLFFT_COMPLEX_INTERLEAVED, CLFFT_COMPLEX_INTERLEAVED);
	err = clfftSetResultLocation(planHandle, CLFFT_INPLACE);

    /* Bake the plan. */
	err = clfftBakePlan(planHandle, 1, &queue, NULL, NULL);

	/* Execute the plan. */
	err = clfftEnqueueTransform(planHandle, CLFFT_FORWARD, 1, &queue, 0, NULL, NULL, &bufX, NULL, NULL);

	/* Wait for calculations to be finished. */
	err = clFinish(queue);

	/* Fetch results of calculations. */
	err = clEnqueueReadBuffer( queue, bufX, CL_TRUE, 0, N * 2 * sizeof( *X ), X, 0, NULL, NULL );

    /* Release OpenCL memory objects. */
    clReleaseMemObject( bufX );

	free(X);

	/* Release the plan. */
	err = clfftDestroyPlan( &planHandle );

    /* Release clFFT library. */
    clfftTeardown( );

    /* Release OpenCL working objects. */
    clReleaseCommandQueue( queue );
    clReleaseContext( ctx );

    return ret;
}

Build dependencies

Library for Windows

To develop the clFFT library code on a Windows operating system, ensure to install the following packages on your system:

Library for Linux

To develop the clFFT library code on a Linux operating system, ensure to install the following packages on your system:

Library for Mac OSX

To develop the clFFT library code on a Mac OS X, it is recommended to generate Unix makefiles with cmake.

Test infrastructure

To test the developed clFFT library code, ensure to install the following packages on your system:

Performance infrastructure

To measure the performance of the clFFT library code, ensure that the Python package is installed on your system.