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Diffstat (limited to 'Eigen/src/Core/arch/Default/Half.h')
-rw-r--r-- | Eigen/src/Core/arch/Default/Half.h | 942 |
1 files changed, 942 insertions, 0 deletions
diff --git a/Eigen/src/Core/arch/Default/Half.h b/Eigen/src/Core/arch/Default/Half.h new file mode 100644 index 000000000..9f8e8cc1e --- /dev/null +++ b/Eigen/src/Core/arch/Default/Half.h @@ -0,0 +1,942 @@ +// This file is part of Eigen, a lightweight C++ template library +// for linear algebra. +// +// This Source Code Form is subject to the terms of the Mozilla +// Public License v. 2.0. If a copy of the MPL was not distributed +// with this file, You can obtain one at http://mozilla.org/MPL/2.0/. +// +// The conversion routines are Copyright (c) Fabian Giesen, 2016. +// The original license follows: +// +// Copyright (c) Fabian Giesen, 2016 +// All rights reserved. +// Redistribution and use in source and binary forms, with or without +// modification, are permitted. +// THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS +// "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT +// LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR +// A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT +// HOLDER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, +// SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT +// LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, +// DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY +// THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT +// (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE +// OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. + + +// Standard 16-bit float type, mostly useful for GPUs. Defines a new +// type Eigen::half (inheriting either from CUDA's or HIP's __half struct) with +// operator overloads such that it behaves basically as an arithmetic +// type. It will be quite slow on CPUs (so it is recommended to stay +// in fp32 for CPUs, except for simple parameter conversions, I/O +// to disk and the likes), but fast on GPUs. + + +#ifndef EIGEN_HALF_H +#define EIGEN_HALF_H + +#include <sstream> + +#if defined(EIGEN_HAS_GPU_FP16) || defined(EIGEN_HAS_ARM64_FP16_SCALAR_ARITHMETIC) +// When compiling with GPU support, the "__half_raw" base class as well as +// some other routines are defined in the GPU compiler header files +// (cuda_fp16.h, hip_fp16.h), and they are not tagged constexpr +// As a consequence, we get compile failures when compiling Eigen with +// GPU support. Hence the need to disable EIGEN_CONSTEXPR when building +// Eigen with GPU support + #pragma push_macro("EIGEN_CONSTEXPR") + #undef EIGEN_CONSTEXPR + #define EIGEN_CONSTEXPR +#endif + +#define F16_PACKET_FUNCTION(PACKET_F, PACKET_F16, METHOD) \ + template <> \ + EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC EIGEN_UNUSED \ + PACKET_F16 METHOD<PACKET_F16>(const PACKET_F16& _x) { \ + return float2half(METHOD<PACKET_F>(half2float(_x))); \ + } + +namespace Eigen { + +struct half; + +namespace half_impl { + +// We want to use the __half_raw struct from the HIP header file only during the device compile phase. +// This is required because of a quirk in the way TensorFlow GPU builds are done. +// When compiling TensorFlow source code with GPU support, files that +// * contain GPU kernels (i.e. *.cu.cc files) are compiled via hipcc +// * do not contain GPU kernels ( i.e. *.cc files) are compiled via gcc (typically) +// +// Tensorflow uses the Eigen::half type as its FP16 type, and there are functions that +// * are defined in a file that gets compiled via hipcc AND +// * have Eigen::half as a pass-by-value argument AND +// * are called in a file that gets compiled via gcc +// +// In the scenario described above the caller and callee will see different versions +// of the Eigen::half base class __half_raw, and they will be compiled by different compilers +// +// There appears to be an ABI mismatch between gcc and clang (which is called by hipcc) that results in +// the callee getting corrupted values for the Eigen::half argument. +// +// Making the host side compile phase of hipcc use the same Eigen::half impl, as the gcc compile, resolves +// this error, and hence the following convoluted #if condition +#if !defined(EIGEN_HAS_GPU_FP16) || !defined(EIGEN_GPU_COMPILE_PHASE) +// Make our own __half_raw definition that is similar to CUDA's. +struct __half_raw { +#if (defined(EIGEN_HAS_GPU_FP16) && !defined(EIGEN_GPU_COMPILE_PHASE)) + // Eigen::half can be used as the datatype for shared memory declarations (in Eigen and TF) + // The element type for shared memory cannot have non-trivial constructors + // and hence the following special casing (which skips the zero-initilization). + // Note that this check gets done even in the host compilation phase, and + // hence the need for this + EIGEN_DEVICE_FUNC __half_raw() {} +#else + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR __half_raw() : x(0) {} +#endif +#if defined(EIGEN_HAS_ARM64_FP16_SCALAR_ARITHMETIC) + explicit EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR __half_raw(numext::uint16_t raw) : x(numext::bit_cast<__fp16>(raw)) { + } + __fp16 x; +#else + explicit EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR __half_raw(numext::uint16_t raw) : x(raw) {} + numext::uint16_t x; +#endif +}; + +#elif defined(EIGEN_HAS_HIP_FP16) + // Nothing to do here + // HIP fp16 header file has a definition for __half_raw +#elif defined(EIGEN_HAS_CUDA_FP16) + #if EIGEN_CUDA_SDK_VER < 90000 + // In CUDA < 9.0, __half is the equivalent of CUDA 9's __half_raw + typedef __half __half_raw; + #endif // defined(EIGEN_HAS_CUDA_FP16) +#elif defined(SYCL_DEVICE_ONLY) + typedef cl::sycl::half __half_raw; +#endif + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR __half_raw raw_uint16_to_half(numext::uint16_t x); +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC __half_raw float_to_half_rtne(float ff); +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC float half_to_float(__half_raw h); + +struct half_base : public __half_raw { + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR half_base() {} + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR half_base(const __half_raw& h) : __half_raw(h) {} + +#if defined(EIGEN_HAS_GPU_FP16) + #if defined(EIGEN_HAS_HIP_FP16) + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR half_base(const __half& h) { x = __half_as_ushort(h); } + #elif defined(EIGEN_HAS_CUDA_FP16) + #if EIGEN_CUDA_SDK_VER >= 90000 + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR half_base(const __half& h) : __half_raw(*(__half_raw*)&h) {} + #endif + #endif +#endif +}; + +} // namespace half_impl + +// Class definition. +struct half : public half_impl::half_base { + + // Writing this out as separate #if-else blocks to make the code easier to follow + // The same applies to most #if-else blocks in this file +#if !defined(EIGEN_HAS_GPU_FP16) || !defined(EIGEN_GPU_COMPILE_PHASE) + // Use the same base class for the following two scenarios + // * when compiling without GPU support enabled + // * during host compile phase when compiling with GPU support enabled + typedef half_impl::__half_raw __half_raw; +#elif defined(EIGEN_HAS_HIP_FP16) + // Nothing to do here + // HIP fp16 header file has a definition for __half_raw +#elif defined(EIGEN_HAS_CUDA_FP16) + // Note that EIGEN_CUDA_SDK_VER is set to 0 even when compiling with HIP, so + // (EIGEN_CUDA_SDK_VER < 90000) is true even for HIP! So keeping this within + // #if defined(EIGEN_HAS_CUDA_FP16) is needed + #if defined(EIGEN_CUDA_SDK_VER) && EIGEN_CUDA_SDK_VER < 90000 + typedef half_impl::__half_raw __half_raw; + #endif +#endif + + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR half() {} + + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR half(const __half_raw& h) : half_impl::half_base(h) {} + +#if defined(EIGEN_HAS_GPU_FP16) + #if defined(EIGEN_HAS_HIP_FP16) + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR half(const __half& h) : half_impl::half_base(h) {} + #elif defined(EIGEN_HAS_CUDA_FP16) + #if defined(EIGEN_CUDA_SDK_VER) && EIGEN_CUDA_SDK_VER >= 90000 + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR half(const __half& h) : half_impl::half_base(h) {} + #endif + #endif +#endif + + + explicit EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR half(bool b) + : half_impl::half_base(half_impl::raw_uint16_to_half(b ? 0x3c00 : 0)) {} + template<class T> + explicit EIGEN_DEVICE_FUNC half(T val) + : half_impl::half_base(half_impl::float_to_half_rtne(static_cast<float>(val))) {} + explicit EIGEN_DEVICE_FUNC half(float f) + : half_impl::half_base(half_impl::float_to_half_rtne(f)) {} + + // Following the convention of numpy, converting between complex and + // float will lead to loss of imag value. + template<typename RealScalar> + explicit EIGEN_DEVICE_FUNC half(std::complex<RealScalar> c) + : half_impl::half_base(half_impl::float_to_half_rtne(static_cast<float>(c.real()))) {} + + EIGEN_DEVICE_FUNC operator float() const { // NOLINT: Allow implicit conversion to float, because it is lossless. + return half_impl::half_to_float(*this); + } + +#if defined(EIGEN_HAS_GPU_FP16) && !defined(EIGEN_GPU_COMPILE_PHASE) + EIGEN_DEVICE_FUNC operator __half() const { + ::__half_raw hr; + hr.x = x; + return __half(hr); + } +#endif +}; + +} // end namespace Eigen + +namespace std { +template<> +struct numeric_limits<Eigen::half> { + static const bool is_specialized = true; + static const bool is_signed = true; + static const bool is_integer = false; + static const bool is_exact = false; + static const bool has_infinity = true; + static const bool has_quiet_NaN = true; + static const bool has_signaling_NaN = true; + static const float_denorm_style has_denorm = denorm_present; + static const bool has_denorm_loss = false; + static const std::float_round_style round_style = std::round_to_nearest; + static const bool is_iec559 = false; + static const bool is_bounded = false; + static const bool is_modulo = false; + static const int digits = 11; + static const int digits10 = 3; // according to http://half.sourceforge.net/structstd_1_1numeric__limits_3_01half__float_1_1half_01_4.html + static const int max_digits10 = 5; // according to http://half.sourceforge.net/structstd_1_1numeric__limits_3_01half__float_1_1half_01_4.html + static const int radix = 2; + static const int min_exponent = -13; + static const int min_exponent10 = -4; + static const int max_exponent = 16; + static const int max_exponent10 = 4; + static const bool traps = true; + static const bool tinyness_before = false; + + static Eigen::half (min)() { return Eigen::half_impl::raw_uint16_to_half(0x400); } + static Eigen::half lowest() { return Eigen::half_impl::raw_uint16_to_half(0xfbff); } + static Eigen::half (max)() { return Eigen::half_impl::raw_uint16_to_half(0x7bff); } + static Eigen::half epsilon() { return Eigen::half_impl::raw_uint16_to_half(0x0800); } + static Eigen::half round_error() { return Eigen::half(0.5); } + static Eigen::half infinity() { return Eigen::half_impl::raw_uint16_to_half(0x7c00); } + static Eigen::half quiet_NaN() { return Eigen::half_impl::raw_uint16_to_half(0x7e00); } + static Eigen::half signaling_NaN() { return Eigen::half_impl::raw_uint16_to_half(0x7d00); } + static Eigen::half denorm_min() { return Eigen::half_impl::raw_uint16_to_half(0x1); } +}; + +// If std::numeric_limits<T> is specialized, should also specialize +// std::numeric_limits<const T>, std::numeric_limits<volatile T>, and +// std::numeric_limits<const volatile T> +// https://stackoverflow.com/a/16519653/ +template<> +struct numeric_limits<const Eigen::half> : numeric_limits<Eigen::half> {}; +template<> +struct numeric_limits<volatile Eigen::half> : numeric_limits<Eigen::half> {}; +template<> +struct numeric_limits<const volatile Eigen::half> : numeric_limits<Eigen::half> {}; +} // end namespace std + +namespace Eigen { + +namespace half_impl { + +#if (defined(EIGEN_HAS_CUDA_FP16) && defined(EIGEN_CUDA_ARCH) && \ + EIGEN_CUDA_ARCH >= 530) || \ + (defined(EIGEN_HAS_HIP_FP16) && defined(HIP_DEVICE_COMPILE)) +// Note: We deliberatly do *not* define this to 1 even if we have Arm's native +// fp16 type since GPU halfs are rather different from native CPU halfs. +// TODO: Rename to something like EIGEN_HAS_NATIVE_GPU_FP16 +#define EIGEN_HAS_NATIVE_FP16 +#endif + +// Intrinsics for native fp16 support. Note that on current hardware, +// these are no faster than fp32 arithmetic (you need to use the half2 +// versions to get the ALU speed increased), but you do save the +// conversion steps back and forth. + +#if defined(EIGEN_HAS_NATIVE_FP16) +EIGEN_STRONG_INLINE __device__ half operator + (const half& a, const half& b) { +#if defined(EIGEN_CUDA_SDK_VER) && EIGEN_CUDA_SDK_VER >= 90000 + return __hadd(::__half(a), ::__half(b)); +#else + return __hadd(a, b); +#endif +} +EIGEN_STRONG_INLINE __device__ half operator * (const half& a, const half& b) { + return __hmul(a, b); +} +EIGEN_STRONG_INLINE __device__ half operator - (const half& a, const half& b) { + return __hsub(a, b); +} +EIGEN_STRONG_INLINE __device__ half operator / (const half& a, const half& b) { +#if defined(EIGEN_CUDA_SDK_VER) && EIGEN_CUDA_SDK_VER >= 90000 + return __hdiv(a, b); +#else + float num = __half2float(a); + float denom = __half2float(b); + return __float2half(num / denom); +#endif +} +EIGEN_STRONG_INLINE __device__ half operator - (const half& a) { + return __hneg(a); +} +EIGEN_STRONG_INLINE __device__ half& operator += (half& a, const half& b) { + a = a + b; + return a; +} +EIGEN_STRONG_INLINE __device__ half& operator *= (half& a, const half& b) { + a = a * b; + return a; +} +EIGEN_STRONG_INLINE __device__ half& operator -= (half& a, const half& b) { + a = a - b; + return a; +} +EIGEN_STRONG_INLINE __device__ half& operator /= (half& a, const half& b) { + a = a / b; + return a; +} +EIGEN_STRONG_INLINE __device__ bool operator == (const half& a, const half& b) { + return __heq(a, b); +} +EIGEN_STRONG_INLINE __device__ bool operator != (const half& a, const half& b) { + return __hne(a, b); +} +EIGEN_STRONG_INLINE __device__ bool operator < (const half& a, const half& b) { + return __hlt(a, b); +} +EIGEN_STRONG_INLINE __device__ bool operator <= (const half& a, const half& b) { + return __hle(a, b); +} +EIGEN_STRONG_INLINE __device__ bool operator > (const half& a, const half& b) { + return __hgt(a, b); +} +EIGEN_STRONG_INLINE __device__ bool operator >= (const half& a, const half& b) { + return __hge(a, b); +} +#endif + +#if defined(EIGEN_HAS_ARM64_FP16_SCALAR_ARITHMETIC) +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator + (const half& a, const half& b) { + return half(vaddh_f16(a.x, b.x)); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator * (const half& a, const half& b) { + return half(vmulh_f16(a.x, b.x)); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator - (const half& a, const half& b) { + return half(vsubh_f16(a.x, b.x)); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator / (const half& a, const half& b) { + return half(vdivh_f16(a.x, b.x)); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator - (const half& a) { + return half(vnegh_f16(a.x)); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half& operator += (half& a, const half& b) { + a = half(vaddh_f16(a.x, b.x)); + return a; +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half& operator *= (half& a, const half& b) { + a = half(vmulh_f16(a.x, b.x)); + return a; +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half& operator -= (half& a, const half& b) { + a = half(vsubh_f16(a.x, b.x)); + return a; +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half& operator /= (half& a, const half& b) { + a = half(vdivh_f16(a.x, b.x)); + return a; +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool operator == (const half& a, const half& b) { + return vceqh_f16(a.x, b.x); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool operator != (const half& a, const half& b) { + return !vceqh_f16(a.x, b.x); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool operator < (const half& a, const half& b) { + return vclth_f16(a.x, b.x); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool operator <= (const half& a, const half& b) { + return vcleh_f16(a.x, b.x); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool operator > (const half& a, const half& b) { + return vcgth_f16(a.x, b.x); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool operator >= (const half& a, const half& b) { + return vcgeh_f16(a.x, b.x); +} +// We need to distinguish ‘clang as the CUDA compiler’ from ‘clang as the host compiler, +// invoked by NVCC’ (e.g. on MacOS). The former needs to see both host and device implementation +// of the functions, while the latter can only deal with one of them. +#elif !defined(EIGEN_HAS_NATIVE_FP16) || (EIGEN_COMP_CLANG && !EIGEN_COMP_NVCC) // Emulate support for half floats + +#if EIGEN_COMP_CLANG && defined(EIGEN_CUDACC) +// We need to provide emulated *host-side* FP16 operators for clang. +#pragma push_macro("EIGEN_DEVICE_FUNC") +#undef EIGEN_DEVICE_FUNC +#if defined(EIGEN_HAS_CUDA_FP16) && defined(EIGEN_HAS_NATIVE_FP16) +#define EIGEN_DEVICE_FUNC __host__ +#else // both host and device need emulated ops. +#define EIGEN_DEVICE_FUNC __host__ __device__ +#endif +#endif + +// Definitions for CPUs and older HIP+CUDA, mostly working through conversion +// to/from fp32. +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator + (const half& a, const half& b) { + return half(float(a) + float(b)); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator * (const half& a, const half& b) { + return half(float(a) * float(b)); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator - (const half& a, const half& b) { + return half(float(a) - float(b)); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator / (const half& a, const half& b) { + return half(float(a) / float(b)); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator - (const half& a) { + half result; + result.x = a.x ^ 0x8000; + return result; +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half& operator += (half& a, const half& b) { + a = half(float(a) + float(b)); + return a; +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half& operator *= (half& a, const half& b) { + a = half(float(a) * float(b)); + return a; +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half& operator -= (half& a, const half& b) { + a = half(float(a) - float(b)); + return a; +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half& operator /= (half& a, const half& b) { + a = half(float(a) / float(b)); + return a; +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool operator == (const half& a, const half& b) { + return numext::equal_strict(float(a),float(b)); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool operator != (const half& a, const half& b) { + return numext::not_equal_strict(float(a), float(b)); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool operator < (const half& a, const half& b) { + return float(a) < float(b); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool operator <= (const half& a, const half& b) { + return float(a) <= float(b); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool operator > (const half& a, const half& b) { + return float(a) > float(b); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool operator >= (const half& a, const half& b) { + return float(a) >= float(b); +} + +#if defined(__clang__) && defined(__CUDA__) +#pragma pop_macro("EIGEN_DEVICE_FUNC") +#endif +#endif // Emulate support for half floats + +// Division by an index. Do it in full float precision to avoid accuracy +// issues in converting the denominator to half. +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator / (const half& a, Index b) { + return half(static_cast<float>(a) / static_cast<float>(b)); +} + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator++(half& a) { + a += half(1); + return a; +} + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator--(half& a) { + a -= half(1); + return a; +} + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator++(half& a, int) { + half original_value = a; + ++a; + return original_value; +} + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half operator--(half& a, int) { + half original_value = a; + --a; + return original_value; +} + +// Conversion routines, including fallbacks for the host or older CUDA. +// Note that newer Intel CPUs (Haswell or newer) have vectorized versions of +// these in hardware. If we need more performance on older/other CPUs, they are +// also possible to vectorize directly. + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR __half_raw raw_uint16_to_half(numext::uint16_t x) { + // We cannot simply do a "return __half_raw(x)" here, because __half_raw is union type + // in the hip_fp16 header file, and that will trigger a compile error + // On the other hand, having anything but a return statement also triggers a compile error + // because this is constexpr function. + // Fortunately, since we need to disable EIGEN_CONSTEXPR for GPU anyway, we can get out + // of this catch22 by having separate bodies for GPU / non GPU +#if defined(EIGEN_HAS_GPU_FP16) + __half_raw h; + h.x = x; + return h; +#else + return __half_raw(x); +#endif +} + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC numext::uint16_t raw_half_as_uint16(const __half_raw& h) { + // HIP/CUDA/Default have a member 'x' of type uint16_t. + // For ARM64 native half, the member 'x' is of type __fp16, so we need to bit-cast. + // For SYCL, cl::sycl::half is _Float16, so cast directly. +#if defined(EIGEN_HAS_ARM64_FP16_SCALAR_ARITHMETIC) + return numext::bit_cast<numext::uint16_t>(h.x); +#elif defined(SYCL_DEVICE_ONLY) + return numext::bit_cast<numext::uint16_t>(h); +#else + return h.x; +#endif +} + +union float32_bits { + unsigned int u; + float f; +}; + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC __half_raw float_to_half_rtne(float ff) { +#if (defined(EIGEN_HAS_CUDA_FP16) && defined(EIGEN_CUDA_ARCH) && EIGEN_CUDA_ARCH >= 300) || \ + (defined(EIGEN_HAS_HIP_FP16) && defined(EIGEN_HIP_DEVICE_COMPILE)) + __half tmp_ff = __float2half(ff); + return *(__half_raw*)&tmp_ff; + +#elif defined(EIGEN_HAS_FP16_C) + __half_raw h; + h.x = _cvtss_sh(ff, 0); + return h; + +#elif defined(EIGEN_HAS_ARM64_FP16_SCALAR_ARITHMETIC) + __half_raw h; + h.x = static_cast<__fp16>(ff); + return h; + +#else + float32_bits f; f.f = ff; + + const float32_bits f32infty = { 255 << 23 }; + const float32_bits f16max = { (127 + 16) << 23 }; + const float32_bits denorm_magic = { ((127 - 15) + (23 - 10) + 1) << 23 }; + unsigned int sign_mask = 0x80000000u; + __half_raw o; + o.x = static_cast<numext::uint16_t>(0x0u); + + unsigned int sign = f.u & sign_mask; + f.u ^= sign; + + // NOTE all the integer compares in this function can be safely + // compiled into signed compares since all operands are below + // 0x80000000. Important if you want fast straight SSE2 code + // (since there's no unsigned PCMPGTD). + + if (f.u >= f16max.u) { // result is Inf or NaN (all exponent bits set) + o.x = (f.u > f32infty.u) ? 0x7e00 : 0x7c00; // NaN->qNaN and Inf->Inf + } else { // (De)normalized number or zero + if (f.u < (113 << 23)) { // resulting FP16 is subnormal or zero + // use a magic value to align our 10 mantissa bits at the bottom of + // the float. as long as FP addition is round-to-nearest-even this + // just works. + f.f += denorm_magic.f; + + // and one integer subtract of the bias later, we have our final float! + o.x = static_cast<numext::uint16_t>(f.u - denorm_magic.u); + } else { + unsigned int mant_odd = (f.u >> 13) & 1; // resulting mantissa is odd + + // update exponent, rounding bias part 1 + // Equivalent to `f.u += ((unsigned int)(15 - 127) << 23) + 0xfff`, but + // without arithmetic overflow. + f.u += 0xc8000fffU; + // rounding bias part 2 + f.u += mant_odd; + // take the bits! + o.x = static_cast<numext::uint16_t>(f.u >> 13); + } + } + + o.x |= static_cast<numext::uint16_t>(sign >> 16); + return o; +#endif +} + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC float half_to_float(__half_raw h) { +#if (defined(EIGEN_HAS_CUDA_FP16) && defined(EIGEN_CUDA_ARCH) && EIGEN_CUDA_ARCH >= 300) || \ + (defined(EIGEN_HAS_HIP_FP16) && defined(EIGEN_HIP_DEVICE_COMPILE)) + return __half2float(h); +#elif defined(EIGEN_HAS_FP16_C) + return _cvtsh_ss(h.x); +#elif defined(EIGEN_HAS_ARM64_FP16_SCALAR_ARITHMETIC) + return static_cast<float>(h.x); +#else + const float32_bits magic = { 113 << 23 }; + const unsigned int shifted_exp = 0x7c00 << 13; // exponent mask after shift + float32_bits o; + + o.u = (h.x & 0x7fff) << 13; // exponent/mantissa bits + unsigned int exp = shifted_exp & o.u; // just the exponent + o.u += (127 - 15) << 23; // exponent adjust + + // handle exponent special cases + if (exp == shifted_exp) { // Inf/NaN? + o.u += (128 - 16) << 23; // extra exp adjust + } else if (exp == 0) { // Zero/Denormal? + o.u += 1 << 23; // extra exp adjust + o.f -= magic.f; // renormalize + } + + o.u |= (h.x & 0x8000) << 16; // sign bit + return o.f; +#endif +} + +// --- standard functions --- + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool (isinf)(const half& a) { +#ifdef EIGEN_HAS_ARM64_FP16_SCALAR_ARITHMETIC + return (numext::bit_cast<numext::uint16_t>(a.x) & 0x7fff) == 0x7c00; +#else + return (a.x & 0x7fff) == 0x7c00; +#endif +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool (isnan)(const half& a) { +#if (defined(EIGEN_HAS_CUDA_FP16) && defined(EIGEN_CUDA_ARCH) && EIGEN_CUDA_ARCH >= 530) || \ + (defined(EIGEN_HAS_HIP_FP16) && defined(EIGEN_HIP_DEVICE_COMPILE)) + return __hisnan(a); +#elif defined(EIGEN_HAS_ARM64_FP16_SCALAR_ARITHMETIC) + return (numext::bit_cast<numext::uint16_t>(a.x) & 0x7fff) > 0x7c00; +#else + return (a.x & 0x7fff) > 0x7c00; +#endif +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool (isfinite)(const half& a) { + return !(isinf EIGEN_NOT_A_MACRO (a)) && !(isnan EIGEN_NOT_A_MACRO (a)); +} + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half abs(const half& a) { +#if defined(EIGEN_HAS_ARM64_FP16_SCALAR_ARITHMETIC) + return half(vabsh_f16(a.x)); +#else + half result; + result.x = a.x & 0x7FFF; + return result; +#endif +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half exp(const half& a) { +#if (EIGEN_CUDA_SDK_VER >= 80000 && defined EIGEN_CUDA_ARCH && EIGEN_CUDA_ARCH >= 530) || \ + defined(EIGEN_HIP_DEVICE_COMPILE) + return half(hexp(a)); +#else + return half(::expf(float(a))); +#endif +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half expm1(const half& a) { + return half(numext::expm1(float(a))); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half log(const half& a) { +#if (defined(EIGEN_HAS_CUDA_FP16) && EIGEN_CUDA_SDK_VER >= 80000 && defined(EIGEN_CUDA_ARCH) && EIGEN_CUDA_ARCH >= 530) || \ + (defined(EIGEN_HAS_HIP_FP16) && defined(EIGEN_HIP_DEVICE_COMPILE)) + return half(::hlog(a)); +#else + return half(::logf(float(a))); +#endif +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half log1p(const half& a) { + return half(numext::log1p(float(a))); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half log10(const half& a) { + return half(::log10f(float(a))); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half log2(const half& a) { + return half(static_cast<float>(EIGEN_LOG2E) * ::logf(float(a))); +} + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half sqrt(const half& a) { +#if (EIGEN_CUDA_SDK_VER >= 80000 && defined EIGEN_CUDA_ARCH && EIGEN_CUDA_ARCH >= 530) || \ + defined(EIGEN_HIP_DEVICE_COMPILE) + return half(hsqrt(a)); +#else + return half(::sqrtf(float(a))); +#endif +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half pow(const half& a, const half& b) { + return half(::powf(float(a), float(b))); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half sin(const half& a) { + return half(::sinf(float(a))); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half cos(const half& a) { + return half(::cosf(float(a))); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half tan(const half& a) { + return half(::tanf(float(a))); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half tanh(const half& a) { + return half(::tanhf(float(a))); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half asin(const half& a) { + return half(::asinf(float(a))); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half acos(const half& a) { + return half(::acosf(float(a))); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half floor(const half& a) { +#if (EIGEN_CUDA_SDK_VER >= 80000 && defined EIGEN_CUDA_ARCH && EIGEN_CUDA_ARCH >= 300) || \ + defined(EIGEN_HIP_DEVICE_COMPILE) + return half(hfloor(a)); +#else + return half(::floorf(float(a))); +#endif +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half ceil(const half& a) { +#if (EIGEN_CUDA_SDK_VER >= 80000 && defined EIGEN_CUDA_ARCH && EIGEN_CUDA_ARCH >= 300) || \ + defined(EIGEN_HIP_DEVICE_COMPILE) + return half(hceil(a)); +#else + return half(::ceilf(float(a))); +#endif +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half rint(const half& a) { + return half(::rintf(float(a))); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half round(const half& a) { + return half(::roundf(float(a))); +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half fmod(const half& a, const half& b) { + return half(::fmodf(float(a), float(b))); +} + +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half (min)(const half& a, const half& b) { +#if (defined(EIGEN_HAS_CUDA_FP16) && defined(EIGEN_CUDA_ARCH) && EIGEN_CUDA_ARCH >= 530) || \ + (defined(EIGEN_HAS_HIP_FP16) && defined(EIGEN_HIP_DEVICE_COMPILE)) + return __hlt(b, a) ? b : a; +#else + const float f1 = static_cast<float>(a); + const float f2 = static_cast<float>(b); + return f2 < f1 ? b : a; +#endif +} +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC half (max)(const half& a, const half& b) { +#if (defined(EIGEN_HAS_CUDA_FP16) && defined(EIGEN_CUDA_ARCH) && EIGEN_CUDA_ARCH >= 530) || \ + (defined(EIGEN_HAS_HIP_FP16) && defined(EIGEN_HIP_DEVICE_COMPILE)) + return __hlt(a, b) ? b : a; +#else + const float f1 = static_cast<float>(a); + const float f2 = static_cast<float>(b); + return f1 < f2 ? b : a; +#endif +} + +#ifndef EIGEN_NO_IO +EIGEN_ALWAYS_INLINE std::ostream& operator << (std::ostream& os, const half& v) { + os << static_cast<float>(v); + return os; +} +#endif + +} // end namespace half_impl + +// import Eigen::half_impl::half into Eigen namespace +// using half_impl::half; + +namespace internal { + +template<> +struct random_default_impl<half, false, false> +{ + static inline half run(const half& x, const half& y) + { + return x + (y-x) * half(float(std::rand()) / float(RAND_MAX)); + } + static inline half run() + { + return run(half(-1.f), half(1.f)); + } +}; + +template<> struct is_arithmetic<half> { enum { value = true }; }; + +} // end namespace internal + +template<> struct NumTraits<Eigen::half> + : GenericNumTraits<Eigen::half> +{ + enum { + IsSigned = true, + IsInteger = false, + IsComplex = false, + RequireInitialization = false + }; + + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR static EIGEN_STRONG_INLINE Eigen::half epsilon() { + return half_impl::raw_uint16_to_half(0x0800); + } + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR static EIGEN_STRONG_INLINE Eigen::half dummy_precision() { + return half_impl::raw_uint16_to_half(0x211f); // Eigen::half(1e-2f); + } + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR static EIGEN_STRONG_INLINE Eigen::half highest() { + return half_impl::raw_uint16_to_half(0x7bff); + } + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR static EIGEN_STRONG_INLINE Eigen::half lowest() { + return half_impl::raw_uint16_to_half(0xfbff); + } + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR static EIGEN_STRONG_INLINE Eigen::half infinity() { + return half_impl::raw_uint16_to_half(0x7c00); + } + EIGEN_DEVICE_FUNC EIGEN_CONSTEXPR static EIGEN_STRONG_INLINE Eigen::half quiet_NaN() { + return half_impl::raw_uint16_to_half(0x7e00); + } +}; + +} // end namespace Eigen + +#if defined(EIGEN_HAS_GPU_FP16) || defined(EIGEN_HAS_ARM64_FP16_SCALAR_ARITHMETIC) + #pragma pop_macro("EIGEN_CONSTEXPR") +#endif + +namespace Eigen { +namespace numext { + +#if defined(EIGEN_GPU_COMPILE_PHASE) + +template <> +EIGEN_DEVICE_FUNC EIGEN_ALWAYS_INLINE bool(isnan)(const Eigen::half& h) { + return (half_impl::isnan)(h); +} + +template <> +EIGEN_DEVICE_FUNC EIGEN_ALWAYS_INLINE bool(isinf)(const Eigen::half& h) { + return (half_impl::isinf)(h); +} + +template <> +EIGEN_DEVICE_FUNC EIGEN_ALWAYS_INLINE bool(isfinite)(const Eigen::half& h) { + return (half_impl::isfinite)(h); +} + +#endif + +template <> +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC Eigen::half bit_cast<Eigen::half, uint16_t>(const uint16_t& src) { + return Eigen::half(Eigen::half_impl::raw_uint16_to_half(src)); +} + +template <> +EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC uint16_t bit_cast<uint16_t, Eigen::half>(const Eigen::half& src) { + return Eigen::half_impl::raw_half_as_uint16(src); +} + +} // namespace numext +} // namespace Eigen + +// Add the missing shfl* intrinsics. +// The __shfl* functions are only valid on HIP or _CUDA_ARCH_ >= 300. +// CUDA defines them for (__CUDA_ARCH__ >= 300 || !defined(__CUDA_ARCH__)) +// +// HIP and CUDA prior to SDK 9.0 define +// __shfl, __shfl_up, __shfl_down, __shfl_xor for int and float +// CUDA since 9.0 deprecates those and instead defines +// __shfl_sync, __shfl_up_sync, __shfl_down_sync, __shfl_xor_sync, +// with native support for __half and __nv_bfloat16 +// +// Note that the following are __device__ - only functions. +#if (defined(EIGEN_CUDACC) && (!defined(EIGEN_CUDA_ARCH) || EIGEN_CUDA_ARCH >= 300)) \ + || defined(EIGEN_HIPCC) + +#if defined(EIGEN_HAS_CUDA_FP16) && EIGEN_CUDA_SDK_VER >= 90000 + +__device__ EIGEN_STRONG_INLINE Eigen::half __shfl_sync(unsigned mask, Eigen::half var, int srcLane, int width=warpSize) { + const __half h = var; + return static_cast<Eigen::half>(__shfl_sync(mask, h, srcLane, width)); +} + +__device__ EIGEN_STRONG_INLINE Eigen::half __shfl_up_sync(unsigned mask, Eigen::half var, unsigned int delta, int width=warpSize) { + const __half h = var; + return static_cast<Eigen::half>(__shfl_up_sync(mask, h, delta, width)); +} + +__device__ EIGEN_STRONG_INLINE Eigen::half __shfl_down_sync(unsigned mask, Eigen::half var, unsigned int delta, int width=warpSize) { + const __half h = var; + return static_cast<Eigen::half>(__shfl_down_sync(mask, h, delta, width)); +} + +__device__ EIGEN_STRONG_INLINE Eigen::half __shfl_xor_sync(unsigned mask, Eigen::half var, int laneMask, int width=warpSize) { + const __half h = var; + return static_cast<Eigen::half>(__shfl_xor_sync(mask, h, laneMask, width)); +} + +#else // HIP or CUDA SDK < 9.0 + +__device__ EIGEN_STRONG_INLINE Eigen::half __shfl(Eigen::half var, int srcLane, int width=warpSize) { + const int ivar = static_cast<int>(Eigen::numext::bit_cast<Eigen::numext::uint16_t>(var)); + return Eigen::numext::bit_cast<Eigen::half>(static_cast<Eigen::numext::uint16_t>(__shfl(ivar, srcLane, width))); +} + +__device__ EIGEN_STRONG_INLINE Eigen::half __shfl_up(Eigen::half var, unsigned int delta, int width=warpSize) { + const int ivar = static_cast<int>(Eigen::numext::bit_cast<Eigen::numext::uint16_t>(var)); + return Eigen::numext::bit_cast<Eigen::half>(static_cast<Eigen::numext::uint16_t>(__shfl_up(ivar, delta, width))); +} + +__device__ EIGEN_STRONG_INLINE Eigen::half __shfl_down(Eigen::half var, unsigned int delta, int width=warpSize) { + const int ivar = static_cast<int>(Eigen::numext::bit_cast<Eigen::numext::uint16_t>(var)); + return Eigen::numext::bit_cast<Eigen::half>(static_cast<Eigen::numext::uint16_t>(__shfl_down(ivar, delta, width))); +} + +__device__ EIGEN_STRONG_INLINE Eigen::half __shfl_xor(Eigen::half var, int laneMask, int width=warpSize) { + const int ivar = static_cast<int>(Eigen::numext::bit_cast<Eigen::numext::uint16_t>(var)); + return Eigen::numext::bit_cast<Eigen::half>(static_cast<Eigen::numext::uint16_t>(__shfl_xor(ivar, laneMask, width))); +} + +#endif // HIP vs CUDA +#endif // __shfl* + +// ldg() has an overload for __half_raw, but we also need one for Eigen::half. +#if (defined(EIGEN_CUDACC) && (!defined(EIGEN_CUDA_ARCH) || EIGEN_CUDA_ARCH >= 350)) \ + || defined(EIGEN_HIPCC) +EIGEN_STRONG_INLINE __device__ Eigen::half __ldg(const Eigen::half* ptr) { + return Eigen::half_impl::raw_uint16_to_half(__ldg(reinterpret_cast<const Eigen::numext::uint16_t*>(ptr))); +} +#endif // __ldg + +#if EIGEN_HAS_STD_HASH +namespace std { +template <> +struct hash<Eigen::half> { + EIGEN_DEVICE_FUNC EIGEN_STRONG_INLINE std::size_t operator()(const Eigen::half& a) const { + return static_cast<std::size_t>(Eigen::numext::bit_cast<Eigen::numext::uint16_t>(a)); + } +}; +} // end namespace std +#endif + +#endif // EIGEN_HALF_H |