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The RcppArrayFire package provides an interface from R to and from the ArrayFire library, an open source library that can make use of GPUs and other hardware accelerators via CUDA or OpenCL. In order to use RcppArrayFire you will need the ArrayFire library and header files which you can build from source or use up-stream’s binary installer. See previous articles for a general introduction.
Version 0.1.0 brings to important changes: Support for sparse matrices and Mac OS
Support for sparse matrices
RcppArrayFire was started by Kazuki Fukui under the name RcppFire.
Last September he came back to offer sparse matrix support in
#9. The typed_array<af::dtype>
class was changed to typed_array<af::dtype, af::storage>
with AF_STORAGE_DENSE
as default value. Existing code will work unchanged with using dense matrices, but you
can now define a function that expects a sparse matrix
//[[Rcpp::depends(RcppArrayFire)]] #include <RcppArrayFire.h> //[[Rcpp::export]] af::array times_two(const RcppArrayFire::typed_array<f32, AF_STORAGE_CSR>& x) { return 2 * x; }
and returns it multiplied by two:
library('Matrix') x <- as(matrix(c(1, 0, 0, 2, 3, 0, 0, 1, 0, 2), 2, 5), 'dgRMatrix') times_two(x) ## 2 x 5 sparse Matrix of class "dgRMatrix" ## ## [1,] 2 . 6 . . ## [2,] . 4 . 2 4
Besides such simplistic operations, you can use af::matmul
to multiply
sparse-dense matrices.
Currently only f32
(float
) and f64
(double
) are supported and mapped to
numeric
matrices, since the Matrix
package does not support complex sparse
matrices. The storage types CSR
, CSC
and COO
are supported via dgRMatrix
,
dgCMatrix
and dgTMatrix
.
Support for Mac OS
This was started more than a year ago (full history here:
#5), but it seemed impossible
to link with ArrayFire’s unified back-end libaf
. I even asked on
stackoverflow, but
that brought me only a tumbleweed badge.
The macos
branch started to gather dust when François Cocquemas
opened issue #14 saying that (unsurprisingly)
neither the master
nor the macos
branch worked with R 3.6.0, but that combining configure
from master
with the macos
branch did work. This was surprising, since configure
from master
did use the unified back-end. In the end I only had to handle a few conflicts
upon merging to get RcppArrayFire fully supported on Mac OS!
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