Difference between revisions of "User:Cantonios/3.4"
From Eigen
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*** Enable AVX512 instructions by default if available. | *** Enable AVX512 instructions by default if available. | ||
*** New <code>std::complex</code>, <code>half</code>, <code>bfloat16</code> vectorization support. | *** New <code>std::complex</code>, <code>half</code>, <code>bfloat16</code> vectorization support. | ||
+ | *** Better accuracy for several vectorized math functions including <code>exp</code>, <code>log</code>, <code>pow</code>, <code>sqrt</code>. | ||
*** Many missing packet functions added. | *** Many missing packet functions added. | ||
** GPU (CUDA and HIP) | ** GPU (CUDA and HIP) |
Revision as of 20:02, 17 August 2021
- New support for
bfloat16
The 16-bit Brain floating point format[1] is now available as Eigen::bfloat16
. The constructor must be called explicitly, but it can otherwise be used as any other scalar type. To convert back-and-forth between uint16_t
to extract the bit representation, use Eigen::numext::bit_cast
.
bfloat16 s(0.25); // explicit construction uint16_t s_bits = numext::bit_cast<uint16_t>(s); // bit representation using MatrixBf16 = Matrix<bfloat16, Dynamic, Dynamic>; MatrixBf16 X = s * MatrixBf16::Random(3, 3);
- New backends
- HIP: added support for AMD ROCm HIP, unified with the previously existing CUDA code for a generic GPU backend.
- Improvements/Cleanups to Core modules
- Improved support for
half
- Native support for ARM
__fp16
, CUDA/HIP__half
, ClangF16C
. - Better vectorization support across backends.
- Native support for ARM
- Improved support for custom types
- More custom types work out-of-the-box (see #2201[2]).
- Improved Geometry Module
-
Transform::computeRotationScaling()
andTransform::computeScalingRotation()
are now more continuous across degeneracies (see !349[3]). - New minimal vectorization support.
-
- Improved support for
- Backend-specific improvements
- SSE/AVX/AVX512
- Enable AVX512 instructions by default if available.
- New
std::complex
,half
,bfloat16
vectorization support. - Better accuracy for several vectorized math functions including
exp
,log
,pow
,sqrt
. - Many missing packet functions added.
- GPU (CUDA and HIP)
- Several optimized math functions added, better support for
std::complex
. - Option to disable CUDA entirely by defining
EIGEN_NO_CUDA
. - Many more functions can now be used in device code (e.g. comparisons, matrix inversion).
- Several optimized math functions added, better support for
- SYCL
- Redesigned SYCL implementation for use with the Tensor[4] module, which can be enabled by defining
EIGEN_USE_SYCL
. - New generic memory model used by
TensorDeviceSycl
. - Better integration with OpenCL devices.
- Added many math function specializations.
- Redesigned SYCL implementation for use with the Tensor[4] module, which can be enabled by defining
- SSE/AVX/AVX512