cufft: Haskell bindings for the CUFFT library

[ bsd3, foreign, library ] [ Propose Tags ]

This library contains FFI bindings to the CUFFT library, which provides highly optimised, FFTW compatible, Fast-Fourier Transform (FFT) implementations for NVIDIA GPUs. The CUFFT library is part of the CUDA developer toolkit.

http://developer.nvidia.com/cuda-downloads

The configure script will look for your CUDA installation in the standard places, and if the nvcc compiler is in your PATH, relative to that.

This release tested with versions 6.5, 7.0, and 7.5 of the CUDA toolkit.


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Versions [faq] 0.1.0.0, 0.1.0.1, 0.1.0.2, 0.1.0.3, 0.1.1.0, 0.1.2.0, 0.1.2.1, 0.1.2.2, 0.7.5.0, 0.8.0.0, 0.9.0.0, 0.9.0.1, 0.10.0.0
Dependencies base (==4.*), cuda (>=0.6.6) [details]
License BSD-3-Clause
Author Robert Clifton-Everest, Trevor L. McDonell
Maintainer Robert Clifton-Everest <robertce@cse.unsw.edu.au>
Category Foreign
Home page https://github.com/robeverest/cufft
Bug tracker https://github.com/robeverest/cufft/issues
Source repo head: git clone git://github.com/robeverest/cufft.git
Uploaded by RobEverest at 2016-11-08T11:34:18Z
Distributions LTSHaskell:0.9.0.1, NixOS:0.10.0.0, Stackage:0.9.0.1
Downloads 9059 total (22 in the last 30 days)
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Status Hackage Matrix CI
Docs not available [build log]
All reported builds failed as of 2016-11-17 [all 3 reports]

Modules

  • Foreign
    • CUDA
      • Foreign.CUDA.FFT

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Readme for cufft-0.7.5.0

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Haskell FFI Bindings to CUDA FFT

Build Status

The CUFFT library provides high performance implementations of Fast Fourier Transform (FFT) operations on NVIDIA GPUs. This is a collection of bindings to allow you to call those functions from Haskell. You will need to install the CUDA driver and developer toolkit.

http://developer.nvidia.com/cuda-downloads

The configure script will look for your CUDA installation in the standard places, and if the nvcc compiler is found in your PATH, relative to that.