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Diffstat (limited to 'unsupported/Eigen/CXX11/src/Tensor/TensorReductionGpu.h')
-rw-r--r-- | unsupported/Eigen/CXX11/src/Tensor/TensorReductionGpu.h | 966 |
1 files changed, 966 insertions, 0 deletions
diff --git a/unsupported/Eigen/CXX11/src/Tensor/TensorReductionGpu.h b/unsupported/Eigen/CXX11/src/Tensor/TensorReductionGpu.h new file mode 100644 index 000000000..db4e8d866 --- /dev/null +++ b/unsupported/Eigen/CXX11/src/Tensor/TensorReductionGpu.h @@ -0,0 +1,966 @@ +// This file is part of Eigen, a lightweight C++ template library +// for linear algebra. +// +// Copyright (C) 2014 Benoit Steiner <benoit.steiner.goog@gmail.com> +// +// 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/. + +#ifndef EIGEN_CXX11_TENSOR_TENSOR_REDUCTION_GPU_H +#define EIGEN_CXX11_TENSOR_TENSOR_REDUCTION_GPU_H + +namespace Eigen { +namespace internal { + + +#if defined(EIGEN_USE_GPU) && defined(EIGEN_GPUCC) +// Full reducers for GPU, don't vectorize for now + +// Reducer function that enables multiple gpu thread to safely accumulate at the same +// output address. It basically reads the current value of the output variable, and +// attempts to update it with the new value. If in the meantime another gpu thread +// updated the content of the output address it will try again. +template <typename T, typename R> +__device__ EIGEN_ALWAYS_INLINE void atomicReduce(T* output, T accum, R& reducer) { +#if (defined(EIGEN_HIP_DEVICE_COMPILE) && defined(__HIP_ARCH_HAS_WARP_SHUFFLE__)) || (EIGEN_CUDA_ARCH >= 300) + if (sizeof(T) == 4) + { + unsigned int oldval = *reinterpret_cast<unsigned int*>(output); + unsigned int newval = oldval; + reducer.reduce(accum, reinterpret_cast<T*>(&newval)); + if (newval == oldval) { + return; + } + unsigned int readback; + while ((readback = atomicCAS((unsigned int*)output, oldval, newval)) != oldval) { + oldval = readback; + newval = oldval; + reducer.reduce(accum, reinterpret_cast<T*>(&newval)); + if (newval == oldval) { + return; + } + } + } + else if (sizeof(T) == 8) { + unsigned long long oldval = *reinterpret_cast<unsigned long long*>(output); + unsigned long long newval = oldval; + reducer.reduce(accum, reinterpret_cast<T*>(&newval)); + if (newval == oldval) { + return; + } + unsigned long long readback; + while ((readback = atomicCAS((unsigned long long*)output, oldval, newval)) != oldval) { + oldval = readback; + newval = oldval; + reducer.reduce(accum, reinterpret_cast<T*>(&newval)); + if (newval == oldval) { + return; + } + } + } + else { + gpu_assert(0 && "Wordsize not supported"); + } +#else // EIGEN_CUDA_ARCH >= 300 + gpu_assert(0 && "Shouldn't be called on unsupported device"); +#endif // EIGEN_CUDA_ARCH >= 300 +} + +// We extend atomicExch to support extra data types +template <typename Type> +__device__ inline Type atomicExchCustom(Type* address, Type val) { + return atomicExch(address, val); +} + +template <> +__device__ inline double atomicExchCustom(double* address, double val) { + unsigned long long int* address_as_ull = reinterpret_cast<unsigned long long int*>(address); + return __longlong_as_double(atomicExch(address_as_ull, __double_as_longlong(val))); +} + +#ifdef EIGEN_HAS_GPU_FP16 +template <typename R> +__device__ inline void atomicReduce(half2* output, half2 accum, R& reducer) { + unsigned int oldval = *reinterpret_cast<unsigned int*>(output); + unsigned int newval = oldval; + reducer.reducePacket(accum, reinterpret_cast<half2*>(&newval)); + if (newval == oldval) { + return; + } + unsigned int readback; + while ((readback = atomicCAS((unsigned int*)output, oldval, newval)) != oldval) { + oldval = readback; + newval = oldval; + reducer.reducePacket(accum, reinterpret_cast<half2*>(&newval)); + if (newval == oldval) { + return; + } + } +} +// reduction should be associative since reduction is not atomic in wide vector but atomic in half2 operations +template <typename R> +__device__ inline void atomicReduce(Packet4h2* output, Packet4h2 accum, R& reducer) { + half2* houtput=reinterpret_cast<half2*>(output); + half2* haccum=reinterpret_cast<half2*>(&accum); + for(int i=0;i<4;++i){ + atomicReduce(houtput+i,*(haccum+i),reducer); + } +} +#endif // EIGEN_HAS_GPU_FP16 + +template <> +__device__ inline void atomicReduce(float* output, float accum, SumReducer<float>&) { +#if (defined(EIGEN_HIP_DEVICE_COMPILE) && defined(__HIP_ARCH_HAS_WARP_SHUFFLE__)) || (EIGEN_CUDA_ARCH >= 300) + atomicAdd(output, accum); +#else // EIGEN_CUDA_ARCH >= 300 + gpu_assert(0 && "Shouldn't be called on unsupported device"); +#endif // EIGEN_CUDA_ARCH >= 300 +} + + +template <typename CoeffType, typename Index> +__global__ EIGEN_HIP_LAUNCH_BOUNDS_1024 void ReductionInitKernel(const CoeffType val, Index num_preserved_coeffs, CoeffType* output) { + const Index thread_id = blockIdx.x * blockDim.x + threadIdx.x; + const Index num_threads = blockDim.x * gridDim.x; + for (Index i = thread_id; i < num_preserved_coeffs; i += num_threads) { + output[i] = val; + } +} + + +template <int BlockSize, int NumPerThread, typename Self, + typename Reducer, typename Index> +__global__ EIGEN_HIP_LAUNCH_BOUNDS_1024 void FullReductionKernel(Reducer reducer, const Self input, Index num_coeffs, + typename Self::CoeffReturnType* output, unsigned int* semaphore) { +#if (defined(EIGEN_HIP_DEVICE_COMPILE) && defined(__HIP_ARCH_HAS_WARP_SHUFFLE__)) || (EIGEN_CUDA_ARCH >= 300) + // Initialize the output value + const Index first_index = blockIdx.x * BlockSize * NumPerThread + threadIdx.x; + if (gridDim.x == 1) { + if (first_index == 0) { + *output = reducer.initialize(); + } + } + else { + if (threadIdx.x == 0) { + unsigned int block = atomicCAS(semaphore, 0u, 1u); + if (block == 0) { + // We're the first block to run, initialize the output value + atomicExchCustom(output, reducer.initialize()); + __threadfence(); + atomicExch(semaphore, 2u); + } + else { + // Wait for the first block to initialize the output value. + // Use atomicCAS here to ensure that the reads aren't cached + unsigned int val; + do { + val = atomicCAS(semaphore, 2u, 2u); + } + while (val < 2u); + } + } + } + + __syncthreads(); + + eigen_assert(gridDim.x == 1 || *semaphore >= 2u); + + typename Self::CoeffReturnType accum = reducer.initialize(); + Index max_iter = numext::mini<Index>(num_coeffs - first_index, NumPerThread*BlockSize); + for (Index i = 0; i < max_iter; i+=BlockSize) { + const Index index = first_index + i; + eigen_assert(index < num_coeffs); + typename Self::CoeffReturnType val = input.m_impl.coeff(index); + reducer.reduce(val, &accum); + } + +#pragma unroll + for (int offset = warpSize/2; offset > 0; offset /= 2) { + #if defined(EIGEN_HIPCC) + // use std::is_floating_point to determine the type of reduced_val + // This is needed because when Type == double, hipcc will give a "call to __shfl_down is ambguous" error + // and list the float and int versions of __shfl_down as the candidate functions. + if (std::is_floating_point<typename Self::CoeffReturnType>::value) { + reducer.reduce(__shfl_down(static_cast<float>(accum), offset, warpSize), &accum); + } else { + reducer.reduce(__shfl_down(static_cast<int>(accum), offset, warpSize), &accum); + } + #elif defined(EIGEN_CUDA_SDK_VER) && EIGEN_CUDA_SDK_VER < 90000 + reducer.reduce(__shfl_down(accum, offset, warpSize), &accum); + #else + reducer.reduce(__shfl_down_sync(0xFFFFFFFF, accum, offset, warpSize), &accum); + #endif + } + + if ((threadIdx.x & (warpSize - 1)) == 0) { + atomicReduce(output, accum, reducer); + } + + if (gridDim.x > 1 && threadIdx.x == 0) { + // Let the last block reset the semaphore + atomicInc(semaphore, gridDim.x + 1); +#if defined(EIGEN_HIPCC) + __threadfence_system(); +#endif + } +#else // EIGEN_CUDA_ARCH >= 300 + gpu_assert(0 && "Shouldn't be called on unsupported device"); +#endif // EIGEN_CUDA_ARCH >= 300 +} + + +#ifdef EIGEN_HAS_GPU_FP16 +template <typename Self, + typename Reducer, typename Index> +__global__ EIGEN_HIP_LAUNCH_BOUNDS_1024 void ReductionInitFullReduxKernelHalfFloat(Reducer reducer, const Self input, Index num_coeffs, + packet_traits<Eigen::half>::type* scratch) { + eigen_assert(blockDim.x == 1); + eigen_assert(gridDim.x == 1); + typedef packet_traits<Eigen::half>::type packet_type; + Index packet_remainder = + num_coeffs % Index(unpacket_traits<packet_type>::size); + if (packet_remainder != 0) { + half2* h2scratch = reinterpret_cast<half2*>(scratch); + for (Index i = num_coeffs - packet_remainder; i + 2 <= num_coeffs; i += 2) { + *h2scratch = + __halves2half2(input.m_impl.coeff(i), input.m_impl.coeff(i + 1)); + h2scratch++; + } + if ((num_coeffs & 1) != 0) { + half lastCoeff = input.m_impl.coeff(num_coeffs - 1); + *h2scratch = __halves2half2(lastCoeff, reducer.initialize()); + } + } else { + *scratch = reducer.template initializePacket<packet_type>(); + } +} + +template <typename Self, + typename Reducer, typename Index> +__global__ EIGEN_HIP_LAUNCH_BOUNDS_1024 void ReductionInitKernelHalfFloat(Reducer reducer, const Self input, Index num_coeffs, half* output) { + const Index thread_id = blockIdx.x * blockDim.x + threadIdx.x; + const Index num_threads = blockDim.x * gridDim.x; + typedef typename packet_traits<Eigen::half>::type PacketType; + + const Index num_packets = + num_coeffs / Index(unpacket_traits<PacketType>::size); + PacketType* p_output = reinterpret_cast<PacketType*>(output); + for (Index i = thread_id; i < num_packets; i += num_threads) { + p_output[i] = reducer.template initializePacket<PacketType>(); + } + Index packet_remainder = + num_coeffs % Index(unpacket_traits<PacketType>::size); + if (thread_id < packet_remainder) { + output[num_coeffs - packet_remainder + thread_id] = reducer.initialize(); + } +} + +template <int BlockSize, int NumPerThread, typename Self, + typename Reducer, typename Index> +__global__ EIGEN_HIP_LAUNCH_BOUNDS_1024 void FullReductionKernelHalfFloat(Reducer reducer, const Self input, Index num_coeffs, + half* output, packet_traits<Eigen::half>::type* scratch) { + typedef typename packet_traits<Eigen::half>::type PacketType; + const int packet_width = unpacket_traits<PacketType>::size; + eigen_assert(NumPerThread % packet_width == 0); + const Index first_index = + blockIdx.x * BlockSize * NumPerThread + packet_width * threadIdx.x; + + // Initialize the output value if it wasn't initialized by the ReductionInitKernel + + if (gridDim.x == 1) { + if (first_index == 0) { + int rem = num_coeffs % packet_width; + if (rem != 0) { + half2* p_scratch = reinterpret_cast<half2*>(scratch); + *scratch = reducer.template initializePacket<PacketType>(); + for (int i = 0; i < rem / 2; i++) { + *p_scratch = __halves2half2( + input.m_impl.coeff(num_coeffs - packet_width + 2 * i), + input.m_impl.coeff(num_coeffs - packet_width + 2 * i + 1)); + p_scratch++; + } + if ((num_coeffs & 1) != 0) { + half last = input.m_impl.coeff(num_coeffs - 1); + *p_scratch = __halves2half2(last, reducer.initialize()); + } + } else { + *scratch = reducer.template initializePacket<PacketType>(); + } + } + __syncthreads(); + } + + PacketType accum = reducer.template initializePacket<PacketType>(); + const Index max_iter = + numext::mini<Index>((num_coeffs - first_index) / packet_width, + NumPerThread * BlockSize / packet_width); + for (Index i = 0; i < max_iter; i += BlockSize) { + const Index index = first_index + packet_width * i; + eigen_assert(index + packet_width < num_coeffs); + PacketType val = input.m_impl.template packet<Unaligned>(index); + reducer.reducePacket(val, &accum); + } + +#pragma unroll + for (int offset = warpSize/2; offset > 0; offset /= 2) { + #if defined(EIGEN_HIPCC) + PacketType r1; + half2* hr = reinterpret_cast<half2*>(&r1); + half2* hacc = reinterpret_cast<half2*>(&accum); + for (int i = 0; i < packet_width / 2; i++) { + // FIXME : remove this workaround once we have native half/half2 support for __shfl_down + union { int i; half2 h; } wka_in, wka_out; + wka_in.h = hacc[i]; + wka_out.i = __shfl_down(wka_in.i, offset, warpSize); + hr[i] = wka_out.h; + } + reducer.reducePacket(r1, &accum); + #elif defined(EIGEN_CUDA_SDK_VER) && EIGEN_CUDA_SDK_VER < 90000 + PacketType r1; + half2* hr = reinterpret_cast<half2*>(&r1); + half2* hacc = reinterpret_cast<half2*>(&accum); + for (int i = 0; i < packet_width / 2; i++) { + hr[i] = __shfl_down(hacc[i], offset, warpSize); + } + reducer.reducePacket(r1, &accum); + #else + PacketType r1; + half2* hr = reinterpret_cast<half2*>(&r1); + half2* hacc = reinterpret_cast<half2*>(&accum); + for (int i = 0; i < packet_width / 2; i++) { + hr[i] = __shfl_down_sync(0xFFFFFFFF, hacc[i], (unsigned)offset, warpSize); + } + reducer.reducePacket(r1, &accum); + + #endif + } + + if ((threadIdx.x & (warpSize - 1)) == 0) { + atomicReduce(scratch, accum, reducer); + } + + __syncthreads(); + half2* rv1 = reinterpret_cast<half2*>(scratch); + if (packet_width > 2) { + reducer.reducePacket(rv1[2], rv1); + reducer.reducePacket(rv1[3], rv1 + 1); + reducer.reducePacket(rv1[1], rv1); + } + if (gridDim.x == 1) { + if (first_index == 0) { + half tmp = __low2half(*rv1); + reducer.reduce(__high2half(*rv1), &tmp); + *output = tmp; + } + } +} + +template <typename Op> +__global__ EIGEN_HIP_LAUNCH_BOUNDS_1024 void ReductionCleanupKernelHalfFloat(Op reducer, half* output, packet_traits<Eigen::half>::type* scratch) { + eigen_assert(threadIdx.x == 1); + half2* pscratch = reinterpret_cast<half2*>(scratch); + half tmp = __float2half(0.f); + typedef packet_traits<Eigen::half>::type packet_type; + for (int i = 0; i < unpacket_traits<packet_type>::size; i += 2) { + reducer.reduce(__low2half(*pscratch), &tmp); + reducer.reduce(__high2half(*pscratch), &tmp); + pscratch++; + } + *output = tmp; +} + +#endif // EIGEN_HAS_GPU_FP16 + +template <typename Self, typename Op, typename OutputType, bool PacketAccess, typename Enabled = void> +struct FullReductionLauncher { + static void run(const Self&, Op&, const GpuDevice&, OutputType*, typename Self::Index) { + gpu_assert(false && "Should only be called on doubles, floats and half floats"); + } +}; + +// Specialization for float and double +template <typename Self, typename Op, typename OutputType, bool PacketAccess> +struct FullReductionLauncher< + Self, Op, OutputType, PacketAccess, + typename internal::enable_if< + internal::is_same<float, OutputType>::value || + internal::is_same<double, OutputType>::value, + void>::type> { + static void run(const Self& self, Op& reducer, const GpuDevice& device, OutputType* output, typename Self::Index num_coeffs) { + + typedef typename Self::Index Index; + const int block_size = 256; + const int num_per_thread = 128; + const int num_blocks = divup<int>(num_coeffs, block_size * num_per_thread); + + unsigned int* semaphore = NULL; + if (num_blocks > 1) { + semaphore = device.semaphore(); + } + + LAUNCH_GPU_KERNEL((FullReductionKernel<block_size, num_per_thread, Self, Op, Index>), + num_blocks, block_size, 0, device, reducer, self, num_coeffs, output, semaphore); + } +}; + +#ifdef EIGEN_HAS_GPU_FP16 +template <typename Self, typename Op> +struct FullReductionLauncher<Self, Op, Eigen::half, false> { + static void run(const Self&, Op&, const GpuDevice&, half*, typename Self::Index) { + gpu_assert(false && "Should not be called since there is no packet accessor"); + } +}; + +template <typename Self, typename Op> +struct FullReductionLauncher<Self, Op, Eigen::half, true> { + static void run(const Self& self, Op& reducer, const GpuDevice& device, half* output, typename Self::Index num_coeffs) { + typedef typename Self::Index Index; + typedef typename packet_traits<Eigen::half>::type PacketType; + + const int block_size = 256; + const int num_per_thread = 128; + const int num_blocks = divup<int>(num_coeffs, block_size * num_per_thread); + PacketType* scratch = static_cast<PacketType*>(device.scratchpad()); + // half2* scratch = static_cast<half2*>(device.scratchpad()); + + if (num_blocks > 1) { + // We initialize the output and the scrathpad outside the reduction kernel when we can't be sure that there + // won't be a race conditions between multiple thread blocks. + LAUNCH_GPU_KERNEL((ReductionInitFullReduxKernelHalfFloat<Self, Op, Index>), + 1, 1, 0, device, reducer, self, num_coeffs, scratch); + } + + LAUNCH_GPU_KERNEL((FullReductionKernelHalfFloat<block_size, num_per_thread, Self, Op, Index>), + num_blocks, block_size, 0, device, reducer, self, num_coeffs, output, scratch); + + if (num_blocks > 1) { + LAUNCH_GPU_KERNEL((ReductionCleanupKernelHalfFloat<Op>), + 1, 1, 0, device, reducer, output, scratch); + } + } +}; +#endif // EIGEN_HAS_GPU_FP16 + + +template <typename Self, typename Op, bool Vectorizable> +struct FullReducer<Self, Op, GpuDevice, Vectorizable> { + // Unfortunately nvidia doesn't support well exotic types such as complex, + // so reduce the scope of the optimized version of the code to the simple cases + // of doubles, floats and half floats +#ifdef EIGEN_HAS_GPU_FP16 + static const bool HasOptimizedImplementation = !Self::ReducerTraits::IsStateful && + (internal::is_same<typename Self::CoeffReturnType, float>::value || + internal::is_same<typename Self::CoeffReturnType, double>::value || + (internal::is_same<typename Self::CoeffReturnType, Eigen::half>::value && reducer_traits<Op, GpuDevice>::PacketAccess)); +#else // EIGEN_HAS_GPU_FP16 + static const bool HasOptimizedImplementation = !Self::ReducerTraits::IsStateful && + (internal::is_same<typename Self::CoeffReturnType, float>::value || + internal::is_same<typename Self::CoeffReturnType, double>::value); +#endif // EIGEN_HAS_GPU_FP16 + + template <typename OutputType> + static void run(const Self& self, Op& reducer, const GpuDevice& device, OutputType* output) { + gpu_assert(HasOptimizedImplementation && "Should only be called on doubles, floats or half floats"); + const Index num_coeffs = array_prod(self.m_impl.dimensions()); + // Don't crash when we're called with an input tensor of size 0. + if (num_coeffs == 0) { + return; + } + + FullReductionLauncher<Self, Op, OutputType, reducer_traits<Op, GpuDevice>::PacketAccess>::run(self, reducer, device, output, num_coeffs); + } +}; + + +template <int NumPerThread, typename Self, + typename Reducer, typename Index> +__global__ EIGEN_HIP_LAUNCH_BOUNDS_1024 void InnerReductionKernel(Reducer reducer, const Self input, Index num_coeffs_to_reduce, Index num_preserved_coeffs, + typename Self::CoeffReturnType* output) { +#if (defined(EIGEN_HIP_DEVICE_COMPILE) && defined(__HIP_ARCH_HAS_WARP_SHUFFLE__)) || (EIGEN_CUDA_ARCH >= 300) + typedef typename Self::CoeffReturnType Type; + eigen_assert(blockDim.y == 1); + eigen_assert(blockDim.z == 1); + eigen_assert(gridDim.y == 1); + eigen_assert(gridDim.z == 1); + + const int unroll_times = 16; + eigen_assert(NumPerThread % unroll_times == 0); + + const Index input_col_blocks = divup<Index>(num_coeffs_to_reduce, blockDim.x * NumPerThread); + const Index num_input_blocks = input_col_blocks * num_preserved_coeffs; + + const Index num_threads = blockDim.x * gridDim.x; + const Index thread_id = blockIdx.x * blockDim.x + threadIdx.x; + + // Initialize the output values if they weren't initialized by the ReductionInitKernel + if (gridDim.x == 1) { + for (Index i = thread_id; i < num_preserved_coeffs; i += num_threads) { + output[i] = reducer.initialize(); + } + __syncthreads(); + } + + for (Index i = blockIdx.x; i < num_input_blocks; i += gridDim.x) { + const Index row = i / input_col_blocks; + + if (row < num_preserved_coeffs) { + const Index col_block = i % input_col_blocks; + const Index col_begin = col_block * blockDim.x * NumPerThread + threadIdx.x; + + Type reduced_val = reducer.initialize(); + + for (Index j = 0; j < NumPerThread; j += unroll_times) { + const Index last_col = col_begin + blockDim.x * (j + unroll_times - 1); + if (last_col >= num_coeffs_to_reduce) { + for (Index col = col_begin + blockDim.x * j; col < num_coeffs_to_reduce; col += blockDim.x) { + const Type val = input.m_impl.coeff(row * num_coeffs_to_reduce + col); + reducer.reduce(val, &reduced_val); + } + break; + } else { + // Faster version of the loop with no branches after unrolling. +#pragma unroll + for (int k = 0; k < unroll_times; ++k) { + const Index col = col_begin + blockDim.x * (j + k); + reducer.reduce(input.m_impl.coeff(row * num_coeffs_to_reduce + col), &reduced_val); + } + } + } + +#pragma unroll + for (int offset = warpSize/2; offset > 0; offset /= 2) { + #if defined(EIGEN_HIPCC) + // use std::is_floating_point to determine the type of reduced_val + // This is needed because when Type == double, hipcc will give a "call to __shfl_down is ambguous" error + // and list the float and int versions of __shfl_down as the candidate functions. + if (std::is_floating_point<Type>::value) { + reducer.reduce(__shfl_down(static_cast<float>(reduced_val), offset), &reduced_val); + } else { + reducer.reduce(__shfl_down(static_cast<int>(reduced_val), offset), &reduced_val); + } + #elif defined(EIGEN_CUDA_SDK_VER) && EIGEN_CUDA_SDK_VER < 90000 + reducer.reduce(__shfl_down(reduced_val, offset), &reduced_val); + #else + reducer.reduce(__shfl_down_sync(0xFFFFFFFF, reduced_val, offset), &reduced_val); + #endif + } + + if ((threadIdx.x & (warpSize - 1)) == 0) { + atomicReduce(&(output[row]), reduced_val, reducer); + } + } + } +#else // EIGEN_CUDA_ARCH >= 300 + gpu_assert(0 && "Shouldn't be called on unsupported device"); +#endif // EIGEN_CUDA_ARCH >= 300 +} + +#ifdef EIGEN_HAS_GPU_FP16 + +template <int NumPerThread, typename Self, + typename Reducer, typename Index> +__global__ EIGEN_HIP_LAUNCH_BOUNDS_1024 void InnerReductionKernelHalfFloat(Reducer reducer, const Self input, Index num_coeffs_to_reduce, Index num_preserved_coeffs, + half* output) { + eigen_assert(blockDim.y == 1); + eigen_assert(blockDim.z == 1); + eigen_assert(gridDim.y == 1); + eigen_assert(gridDim.z == 1); + + typedef typename packet_traits<Eigen::half>::type PacketType; + const int packet_width = unpacket_traits<PacketType>::size; + const int unroll_times = 16 / packet_width; + eigen_assert(NumPerThread % unroll_times == 0); + eigen_assert(unroll_times % 2 == 0); + + const Index input_col_blocks = divup<Index>(num_coeffs_to_reduce, blockDim.x * NumPerThread * 2); + const Index num_input_blocks = divup<Index>(input_col_blocks * num_preserved_coeffs, 2); + + const Index num_threads = blockDim.x * gridDim.x; + const Index thread_id = blockIdx.x * blockDim.x + threadIdx.x; + + // Initialize the output values if they weren't initialized by the ReductionInitKernel + if (gridDim.x == 1) { + Index i = packet_width * thread_id; + for (; i + packet_width <= num_preserved_coeffs; + i += packet_width * num_threads) { + PacketType* poutput = reinterpret_cast<PacketType*>(output + i); + *poutput = reducer.template initializePacket<PacketType>(); + } + if (i < num_preserved_coeffs) { + output[i] = reducer.initialize(); + } + __syncthreads(); + } + + for (Index i = blockIdx.x; i < num_input_blocks; i += gridDim.x) { + const Index row = 2 * (i / input_col_blocks); // everybody takes 2 rows + + if (row + 1 < num_preserved_coeffs) { + const Index col_block = i % input_col_blocks; + const Index col_begin = + packet_width * (col_block * blockDim.x * NumPerThread + threadIdx.x); + + PacketType reduced_val1 = reducer.template initializePacket<PacketType>(); + PacketType reduced_val2 = reducer.template initializePacket<PacketType>(); + + for (Index j = 0; j < NumPerThread; j += unroll_times) { + const Index last_col = + col_begin + blockDim.x * (j + unroll_times - 1) * packet_width; + if (last_col >= num_coeffs_to_reduce) { + Index col = col_begin + blockDim.x * j; + for (; col + packet_width <= num_coeffs_to_reduce; + col += blockDim.x) { + const PacketType val1 = input.m_impl.template packet<Unaligned>( + row * num_coeffs_to_reduce + col); + reducer.reducePacket(val1, &reduced_val1); + const PacketType val2 = input.m_impl.template packet<Unaligned>( + (row + 1) * num_coeffs_to_reduce + col); + reducer.reducePacket(val2, &reduced_val2); + } + if (col < num_coeffs_to_reduce) { + PacketType r1 = reducer.template initializePacket<PacketType>(); + PacketType r2 = reducer.template initializePacket<PacketType>(); + half2* hr1 = reinterpret_cast<half2*>(&r1); + half2* hr2 = reinterpret_cast<half2*>(&r2); + while (col + 1 < num_coeffs_to_reduce) { + *hr1 = __halves2half2( + input.m_impl.coeff(row * num_coeffs_to_reduce + col), + input.m_impl.coeff(row * num_coeffs_to_reduce + col + 1)); + *hr2 = __halves2half2( + input.m_impl.coeff((row + 1) * num_coeffs_to_reduce + col), + input.m_impl.coeff((row + 1) * num_coeffs_to_reduce + col + + 1)); + hr1++; + hr2++; + col += 2; + } + if (col < num_coeffs_to_reduce) { + // Peel; + const half last1 = + input.m_impl.coeff(row * num_coeffs_to_reduce + col); + *hr1 = __halves2half2(last1, reducer.initialize()); + const half last2 = + input.m_impl.coeff((row + 1) * num_coeffs_to_reduce + col); + *hr2 = __halves2half2(last2, reducer.initialize()); + } + reducer.reducePacket(r1, &reduced_val1); + reducer.reducePacket(r2, &reduced_val2); + } + break; + } else { + // Faster version of the loop with no branches after unrolling. +#pragma unroll + for (int k = 0; k < unroll_times; ++k) { + const Index col = col_begin + blockDim.x * (j + k) * packet_width; + reducer.reducePacket(input.m_impl.template packet<Unaligned>( + row * num_coeffs_to_reduce + col), + &reduced_val1); + reducer.reducePacket(input.m_impl.template packet<Unaligned>( + (row + 1) * num_coeffs_to_reduce + col), + &reduced_val2); + } + } + } + +#pragma unroll + for (int offset = warpSize/2; offset > 0; offset /= 2) { + #if defined(EIGEN_HIPCC) + PacketType r1; + PacketType r2; + half2* hr1 = reinterpret_cast<half2*>(&r1); + half2* hr2 = reinterpret_cast<half2*>(&r2); + half2* rv1 = reinterpret_cast<half2*>(&reduced_val1); + half2* rv2 = reinterpret_cast<half2*>(&reduced_val2); + for (int i = 0; i < packet_width / 2; i++) { + // FIXME : remove this workaround once we have native half/half2 support for __shfl_down + union { int i; half2 h; } wka_in1, wka_out1; + wka_in1.h = rv1[i]; + wka_out1.i = __shfl_down(wka_in1.i, offset, warpSize); + hr1[i] = wka_out1.h; + + union { int i; half2 h; } wka_in2, wka_out2; + wka_in2.h = rv2[i]; + wka_out2.i = __shfl_down(wka_in2.i, offset, warpSize); + hr2[i] = wka_out2.h; + } + reducer.reducePacket(r1, &reduced_val1); + reducer.reducePacket(r2, &reduced_val2); + #elif defined(EIGEN_CUDA_SDK_VER) && EIGEN_CUDA_SDK_VER < 90000 + PacketType r1; + PacketType r2; + half2* hr1 = reinterpret_cast<half2*>(&r1); + half2* hr2 = reinterpret_cast<half2*>(&r2); + half2* rv1 = reinterpret_cast<half2*>(&reduced_val1); + half2* rv2 = reinterpret_cast<half2*>(&reduced_val2); + for (int i = 0; i < packet_width / 2; i++) { + hr1[i] = __shfl_down(rv1[i], offset, warpSize); + hr2[i] = __shfl_down(rv2[i], offset, warpSize); + } + reducer.reducePacket(r1, &reduced_val1); + reducer.reducePacket(r2, &reduced_val2); + #else + PacketType r1; + PacketType r2; + half2* hr1 = reinterpret_cast<half2*>(&r1); + half2* hr2 = reinterpret_cast<half2*>(&r2); + half2* rr1 = reinterpret_cast<half2*>(&reduced_val1); + half2* rr2 = reinterpret_cast<half2*>(&reduced_val2); + for (int i = 0; i < packet_width / 2; i++) { + hr1[i] = + __shfl_down_sync(0xFFFFFFFF, rr1[i], (unsigned)offset, warpSize); + hr2[i] = + __shfl_down_sync(0xFFFFFFFF, rr2[i], (unsigned)offset, warpSize); + } + reducer.reducePacket(r1, &reduced_val1); + reducer.reducePacket(r2, &reduced_val2); + + #endif + } + half2* rv1 = reinterpret_cast<half2*>(&reduced_val1); + half2* rv2 = reinterpret_cast<half2*>(&reduced_val2); + half2 val; + if (packet_width > 2) { + reducer.reducePacket(rv1[2], rv1); + reducer.reducePacket(rv1[3], rv1 + 1); + reducer.reducePacket(rv1[1], rv1); + reducer.reducePacket(rv2[2], rv2); + reducer.reducePacket(rv2[3], rv2 + 1); + reducer.reducePacket(rv2[1], rv2); + } + half val1 = __low2half(*rv1); + reducer.reduce(__high2half(*rv1), &val1); + half val2 = __low2half(*rv2); + reducer.reduce(__high2half(*rv2), &val2); + val = __halves2half2(val1, val2); + if ((threadIdx.x & (warpSize - 1)) == 0) { + half* loc = output + row; + atomicReduce((half2*)loc, val, reducer); + } + } + } +} + +#endif // EIGEN_HAS_GPU_FP16 + +template <typename Self, typename Op, typename OutputType, bool PacketAccess, typename Enabled = void> +struct InnerReductionLauncher { + static EIGEN_DEVICE_FUNC bool run(const Self&, Op&, const GpuDevice&, OutputType*, typename Self::Index, typename Self::Index) { + gpu_assert(false && "Should only be called to reduce doubles, floats and half floats on a gpu device"); + return true; + } +}; + +// Specialization for float and double +template <typename Self, typename Op, typename OutputType, bool PacketAccess> +struct InnerReductionLauncher< + Self, Op, OutputType, PacketAccess, + typename internal::enable_if< + internal::is_same<float, OutputType>::value || + internal::is_same<double, OutputType>::value, + void>::type> { + static bool run(const Self& self, Op& reducer, const GpuDevice& device, OutputType* output, typename Self::Index num_coeffs_to_reduce, typename Self::Index num_preserved_vals) { + typedef typename Self::Index Index; + + const Index num_coeffs = num_coeffs_to_reduce * num_preserved_vals; + const int block_size = 256; + const int num_per_thread = 128; + const int dyn_blocks = divup<int>(num_coeffs, block_size * num_per_thread); + const int max_blocks = device.getNumGpuMultiProcessors() * + device.maxGpuThreadsPerMultiProcessor() / block_size; + const int num_blocks = numext::mini<int>(max_blocks, dyn_blocks); + + if (num_blocks > 1) { + // We initialize the outputs outside the reduction kernel when we can't be sure that there + // won't be a race conditions between multiple thread blocks. + const int dyn_blocks = divup<int>(num_preserved_vals, 1024); + const int max_blocks = device.getNumGpuMultiProcessors() * + device.maxGpuThreadsPerMultiProcessor() / 1024; + const int num_blocks = numext::mini<int>(max_blocks, dyn_blocks); + LAUNCH_GPU_KERNEL((ReductionInitKernel<OutputType, Index>), + num_blocks, 1024, 0, device, reducer.initialize(), + num_preserved_vals, output); + } + + LAUNCH_GPU_KERNEL((InnerReductionKernel<num_per_thread, Self, Op, Index>), + num_blocks, block_size, 0, device, reducer, self, num_coeffs_to_reduce, num_preserved_vals, output); + + return false; + } +}; + +#ifdef EIGEN_HAS_GPU_FP16 +template <typename Self, typename Op> +struct InnerReductionLauncher<Self, Op, Eigen::half, false> { + static bool run(const Self&, Op&, const GpuDevice&, half*, typename Self::Index, typename Self::Index) { + gpu_assert(false && "Should not be called since there is no packet accessor"); + return true; + } +}; + +template <typename Self, typename Op> +struct InnerReductionLauncher<Self, Op, Eigen::half, true> { + static bool run(const Self& self, Op& reducer, const GpuDevice& device, half* output, typename Self::Index num_coeffs_to_reduce, typename Self::Index num_preserved_vals) { + typedef typename Self::Index Index; + + if (num_preserved_vals % 2 != 0) { + // Not supported yet, revert to the slower code path + return true; + } + + const Index num_coeffs = num_coeffs_to_reduce * num_preserved_vals; + const int block_size = /*256*/128; + const int num_per_thread = /*128*/64; + const int dyn_blocks = divup<int>(num_coeffs, block_size * num_per_thread); + const int max_blocks = device.getNumGpuMultiProcessors() * + device.maxGpuThreadsPerMultiProcessor() / block_size; + const int num_blocks = numext::mini<int>(max_blocks, dyn_blocks); + + if (num_blocks > 1) { + // We initialize the outputs outside the reduction kernel when we can't be sure that there + // won't be a race conditions between multiple thread blocks. + LAUNCH_GPU_KERNEL((ReductionInitKernelHalfFloat<Self, Op, Index>), + 1, 1, 0, device, reducer, self, num_preserved_vals, output); + } + + LAUNCH_GPU_KERNEL((InnerReductionKernelHalfFloat<num_per_thread, Self, Op, Index>), + num_blocks, block_size, 0, device, reducer, self, num_coeffs_to_reduce, num_preserved_vals, output); + + return false; + } +}; +#endif // EIGEN_HAS_GPU_FP16 + + +template <typename Self, typename Op> +struct InnerReducer<Self, Op, GpuDevice> { + // Unfortunately nvidia doesn't support well exotic types such as complex, + // so reduce the scope of the optimized version of the code to the simple case + // of floats and half floats. +#ifdef EIGEN_HAS_GPU_FP16 + static const bool HasOptimizedImplementation = !Self::ReducerTraits::IsStateful && + (internal::is_same<typename Self::CoeffReturnType, float>::value || + internal::is_same<typename Self::CoeffReturnType, double>::value || + (internal::is_same<typename Self::CoeffReturnType, Eigen::half>::value && reducer_traits<Op, GpuDevice>::PacketAccess)); +#else // EIGEN_HAS_GPU_FP16 + static const bool HasOptimizedImplementation = !Self::ReducerTraits::IsStateful && + (internal::is_same<typename Self::CoeffReturnType, float>::value || + internal::is_same<typename Self::CoeffReturnType, double>::value); +#endif // EIGEN_HAS_GPU_FP16 + + template <typename OutputType> + static bool run(const Self& self, Op& reducer, const GpuDevice& device, OutputType* output, typename Self::Index num_coeffs_to_reduce, typename Self::Index num_preserved_vals) { + gpu_assert(HasOptimizedImplementation && "Should only be called on doubles, floats or half floats"); + const Index num_coeffs = array_prod(self.m_impl.dimensions()); + // Don't crash when we're called with an input tensor of size 0. + if (num_coeffs == 0) { + return true; + } + // It's faster to use the usual code. + if (num_coeffs_to_reduce <= 128) { + return true; + } + + return InnerReductionLauncher<Self, Op, OutputType, reducer_traits<Op, GpuDevice>::PacketAccess>::run(self, reducer, device, output, num_coeffs_to_reduce, num_preserved_vals); + } +}; + +template <int NumPerThread, typename Self, + typename Reducer, typename Index> +__global__ EIGEN_HIP_LAUNCH_BOUNDS_1024 void OuterReductionKernel(Reducer reducer, const Self input, Index num_coeffs_to_reduce, Index num_preserved_coeffs, + typename Self::CoeffReturnType* output) { + const Index num_threads = blockDim.x * gridDim.x; + const Index thread_id = blockIdx.x * blockDim.x + threadIdx.x; + // Initialize the output values if they weren't initialized by the ReductionInitKernel + if (gridDim.x == 1) { + for (Index i = thread_id; i < num_preserved_coeffs; i += num_threads) { + output[i] = reducer.initialize(); + } + __syncthreads(); + } + + // Do the reduction. + const Index max_iter = num_preserved_coeffs * divup<Index>(num_coeffs_to_reduce, NumPerThread); + for (Index i = thread_id; i < max_iter; i += num_threads) { + const Index input_col = i % num_preserved_coeffs; + const Index input_row = (i / num_preserved_coeffs) * NumPerThread; + typename Self::CoeffReturnType reduced_val = reducer.initialize(); + const Index max_row = numext::mini(input_row + NumPerThread, num_coeffs_to_reduce); + for (Index j = input_row; j < max_row; j++) { + typename Self::CoeffReturnType val = input.m_impl.coeff(j * num_preserved_coeffs + input_col); + reducer.reduce(val, &reduced_val); + } + atomicReduce(&(output[input_col]), reduced_val, reducer); + } +} + + +template <typename Self, typename Op> +struct OuterReducer<Self, Op, GpuDevice> { + // Unfortunately nvidia doesn't support well exotic types such as complex, + // so reduce the scope of the optimized version of the code to the simple case + // of floats. + static const bool HasOptimizedImplementation = !Self::ReducerTraits::IsStateful && + (internal::is_same<typename Self::CoeffReturnType, float>::value || + internal::is_same<typename Self::CoeffReturnType, double>::value); + template <typename Device, typename OutputType> + static + #if !defined(EIGEN_HIPCC) + // FIXME : leaving this EIGEN_DEVICE_FUNC in, results in the following runtime error + // (in the cxx11_tensor_reduction_gpu test) + // + // terminate called after throwing an instance of 'std::runtime_error' + // what(): No device code available for function: _ZN5Eigen8internal20OuterReductionKernelIL... + // + // don't know why this happens (and why is it a runtime error instead of a compile time error) + // + // this will be fixed by HIP PR#457 + EIGEN_DEVICE_FUNC + #endif + bool run(const Self&, Op&, const Device&, OutputType*, typename Self::Index, typename Self::Index) { + gpu_assert(false && "Should only be called to reduce doubles or floats on a gpu device"); + return true; + } + + static bool run(const Self& self, Op& reducer, const GpuDevice& device, float* output, typename Self::Index num_coeffs_to_reduce, typename Self::Index num_preserved_vals) { + typedef typename Self::Index Index; + + // It's faster to use the usual code. + if (num_coeffs_to_reduce <= 32) { + return true; + } + + const Index num_coeffs = num_coeffs_to_reduce * num_preserved_vals; + const int block_size = 256; + const int num_per_thread = 16; + const int dyn_blocks = divup<int>(num_coeffs, block_size * num_per_thread); + const int max_blocks = device.getNumGpuMultiProcessors() * + device.maxGpuThreadsPerMultiProcessor() / block_size; + const int num_blocks = numext::mini<int>(max_blocks, dyn_blocks); + + if (num_blocks > 1) { + // We initialize the outputs in the reduction kernel itself when we don't have to worry + // about race conditions between multiple thread blocks. + const int dyn_blocks = divup<int>(num_preserved_vals, 1024); + const int max_blocks = device.getNumGpuMultiProcessors() * + device.maxGpuThreadsPerMultiProcessor() / 1024; + const int num_blocks = numext::mini<int>(max_blocks, dyn_blocks); + LAUNCH_GPU_KERNEL((ReductionInitKernel<float, Index>), + num_blocks, 1024, 0, device, reducer.initialize(), + num_preserved_vals, output); + } + + LAUNCH_GPU_KERNEL((OuterReductionKernel<num_per_thread, Self, Op, Index>), + num_blocks, block_size, 0, device, reducer, self, num_coeffs_to_reduce, num_preserved_vals, output); + + return false; + } +}; + +#endif // defined(EIGEN_USE_GPU) && defined(EIGEN_GPUCC) + + +} // end namespace internal +} // end namespace Eigen + +#endif // EIGEN_CXX11_TENSOR_TENSOR_REDUCTION_GPU_H |