From 4f7693d8757cf12c33f049c61c63bc689379ab84 Mon Sep 17 00:00:00 2001 From: Sang-Hoon Park Date: Wed, 12 May 2021 13:59:10 +0100 Subject: Rename NEGEMMAssembly to CpuGemmAssembly - Dispatch, WrapperKernel has been renamed and moved - Header files for assembly kernels have been moved Partially Resolves: COMPMID-4506 Change-Id: I6c2f391bb95ba1ce7ca195d0efa57b9c3225570f Signed-off-by: Sang-Hoon Park Reviewed-on: https://review.mlplatform.org/c/ml/ComputeLibrary/+/5637 Reviewed-by: Michele Di Giorgio Reviewed-by: Georgios Pinitas Comments-Addressed: Arm Jenkins Tested-by: Arm Jenkins --- .../operators/internal/CpuGemmAssemblyDispatch.cpp | 863 +++++++++++++++++++++ 1 file changed, 863 insertions(+) create mode 100644 src/runtime/cpu/operators/internal/CpuGemmAssemblyDispatch.cpp (limited to 'src/runtime/cpu/operators/internal/CpuGemmAssemblyDispatch.cpp') diff --git a/src/runtime/cpu/operators/internal/CpuGemmAssemblyDispatch.cpp b/src/runtime/cpu/operators/internal/CpuGemmAssemblyDispatch.cpp new file mode 100644 index 0000000000..36c1bbb1b3 --- /dev/null +++ b/src/runtime/cpu/operators/internal/CpuGemmAssemblyDispatch.cpp @@ -0,0 +1,863 @@ +/* + * Copyright (c) 2018-2021 Arm Limited. + * + * SPDX-License-Identifier: MIT + * + * Permission is hereby granted, free of charge, to any person obtaining a copy + * of this software and associated documentation files (the "Software"), to + * deal in the Software without restriction, including without limitation the + * rights to use, copy, modify, merge, publish, distribute, sublicense, and/or + * sell copies of the Software, and to permit persons to whom the Software is + * furnished to do so, subject to the following conditions: + * + * The above copyright notice and this permission notice shall be included in all + * copies or substantial portions of the Software. + * + * THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR + * IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, + * FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE + * AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER + * LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, + * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE + * SOFTWARE. + */ +#include "src/runtime/cpu/operators/internal/CpuGemmAssemblyDispatch.h" + +#include "arm_compute/runtime/NEON/NEScheduler.h" +#include "src/core/CPP/Validate.h" +#include "src/core/cpu/kernels/assembly/CpuGemmAssemblyWrapperKernel.h" +#include "src/core/cpu/kernels/assembly/arm_gemm.hpp" + +#include +#include + +namespace arm_compute +{ +namespace cpu +{ +namespace +{ +struct free_delete +{ + void operator()(void *x) + { + free(x); + } +}; + +struct Params +{ + unsigned int M; + unsigned int N; + unsigned int K; + unsigned int batches; + unsigned int multis; + unsigned int sections; + bool indirect; +}; + +Params extract_parameters(const ITensor *a, const ITensor *b, const ITensor *d, const AsmGemmInfo &info) +{ + ARM_COMPUTE_ERROR_ON_NULLPTR(a, b, d); + + Params p; + p.M = d->info()->tensor_shape().y(); + p.K = a->info()->tensor_shape().x(); + p.N = d->info()->tensor_shape().x(); + p.batches = 1; + p.multis = 1; + p.sections = 1; + p.indirect = false; + + if(info.method == AsmConvMethod::Conv || info.method == AsmConvMethod::Indirect) + { + p.indirect = true; + p.sections = b->info()->tensor_shape()[2] * b->info()->tensor_shape()[3]; + } + else + { + p.multis = b->info()->tensor_shape().z(); + p.batches = d->info()->tensor_shape().total_size_upper(2) / p.multis; + } + + // Update M in case of GEMM3D for output + if(info.depth_output_gemm3d != 0) + { + p.M = d->info()->tensor_shape().y() * d->info()->tensor_shape().z(); + p.batches = d->info()->tensor_shape().total_size_upper(3) / p.multis; + } + + return p; +} + +arm_gemm::Activation map_to_arm_gemm_activation(const ActivationLayerInfo &act) +{ + arm_gemm::Activation gemm_act; + + // Early exit in case lower bound is other than 0, as it's not yet supported + if(act.b() != 0.f) + { + return gemm_act; + } + + switch(act.activation()) + { + case ActivationLayerInfo::ActivationFunction::RELU: + gemm_act.type = arm_gemm::Activation::Type::ReLU; + break; + case ActivationLayerInfo::ActivationFunction::BOUNDED_RELU: + gemm_act.type = arm_gemm::Activation::Type::BoundedReLU; + gemm_act.param1 = act.a(); + gemm_act.param2 = 0.f; + break; + case ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU: + gemm_act.type = arm_gemm::Activation::Type::BoundedReLU; + gemm_act.param1 = act.a(); + gemm_act.param2 = act.b(); + break; + default: + gemm_act.type = arm_gemm::Activation::Type::None; + } + + return gemm_act; +} + +IScheduler::Hints scheduling_hint_heuristic(arm_gemm::GemmMethod method, DataType data_type) +{ + // Schedule assembly kernel + const int granule_threshold = 200; + IScheduler::Hints scheduling_hint = IScheduler::Hints(Window::DimX); + if(method == arm_gemm::GemmMethod::GEMM_INTERLEAVED && data_type == DataType::F32) + { + scheduling_hint = IScheduler::Hints(Window::DimX, IScheduler::StrategyHint::DYNAMIC, granule_threshold); + } + else if(method == arm_gemm::GemmMethod::GEMM_INTERLEAVED_2D && (data_type == DataType::F32 || data_type == DataType::F16 || data_type == DataType::U8 || data_type == DataType::S8)) + { + //GEMM_INTERLEAVED supports 2D parallelism, IScheduler::split_dimensions_all signals to parallelise over all window dimensions + scheduling_hint = IScheduler::Hints(IScheduler::split_dimensions_all, IScheduler::StrategyHint::STATIC, granule_threshold); + } + else if(method == arm_gemm::GemmMethod::QUANTIZE_WRAPPER_2D && (data_type == DataType::QASYMM8 || data_type == DataType::QASYMM8_SIGNED)) + { + //special case for QASYMM8 to support 2D parallelism, scheduler here may be tweaked differently compared to FP32 case + scheduling_hint = IScheduler::Hints(IScheduler::split_dimensions_all, IScheduler::StrategyHint::STATIC, granule_threshold); + } + + return scheduling_hint; +} + +template +class FallbackTransform : public ITransformWeights +{ +public: + FallbackTransform() noexcept {}; + /** Prevent instances of this class from being copied (As this class contains pointers) */ + FallbackTransform(const FallbackTransform &) = delete; + /** Default move constructor */ + FallbackTransform(FallbackTransform &&) = default; + /** Prevent instances of this class from being copied (As this class contains pointers) */ + FallbackTransform &operator=(const FallbackTransform &) = delete; + /** Default move assignment operator */ + FallbackTransform &operator=(FallbackTransform &&) = default; + void run() override + { + _output.allocator()->allocate(); + ARM_COMPUTE_ERROR_ON(_output.buffer() == nullptr); + _gemm_kernel_asm->pretranspose_B_array(_output.buffer(), _in1_ptr, _ldb, _multi_stride_b); + _reshape_run = true; + } + + void release() override + { + _output.allocator()->free(); + } + + ITensor *get_weights() override + { + return &_output; + } + + uint32_t uid() override + { + uint32_t id = (_B_pretranspose_size | 0x80000000); + return id; + } + + void configure(size_t B_pretranspose_size, unsigned int alignment) + { + _output.allocator()->init(TensorInfo(TensorShape{ (B_pretranspose_size + alignment) }, 1, DataType::S8), alignment); + _B_pretranspose_size = B_pretranspose_size; + } + + void set_pretranspose(ITensor *tensor) + { + if(!_reshape_run) + { + _gemm_kernel_asm->set_pretransposed_B_data(tensor->buffer()); + } + } + + void set_args(const int ldb, const TypeInput *in1_ptr, const int multi_stride_b, std::shared_ptr> gemm_kernel_asm) + { + _ldb = ldb; + _in1_ptr = in1_ptr; + _multi_stride_b = multi_stride_b; + _gemm_kernel_asm = gemm_kernel_asm; + } + +private: + Tensor _output{}; + int _ldb{}; + const TypeInput *_in1_ptr{}; + int _multi_stride_b{}; + size_t _B_pretranspose_size{}; + std::shared_ptr> _gemm_kernel_asm{ nullptr }; +}; + +/** Fallback in case ACL doesn't have a function */ +template +class Fallback : public CpuGemmAssemblyDispatch::IFallback +{ +public: + /** Destructor */ + ~Fallback() + { + // Release memory if we have allocated the memory ourselves + if(_pretranspose && !(_weights_manager && _weights_manager->are_weights_managed(_b))) + { + delete _pretranspose; + } + } + + /** Initialise the functions's input and output. + * + * @param[in] a Input tensor containing the Matrix A. + * @param[in] b Input tensor containing the Matrix B. + * @param[in] c Input tensor containing the Matrix C. + * @param[out] d Output tensor to store the result of matrix multiplication. + * @param[in] args Matrix multiplication information. + * @param[in] gemm_info GEMM meta-data + * @param[in] memory_group Memory group to be used by the function. + * @param[in] weights_manager Weights manager to be used by the function. + * @param[in] os Output stage meta-data. + */ + void configure(const ITensor *a, const ITensor *b, const ITensor *c, ITensor *d, + arm_gemm::GemmArgs args, const AsmGemmInfo &gemm_info, + MemoryGroup &memory_group, IWeightsManager *weights_manager, const OutputStage &os = {}); + + /** Set requantization shifts to be used + * + * @param[in] shifts Requantization shifts + * + * @return Pointer to the shift data + */ + /** Set requantization data to be used + * + * + * @param shifts Requantization shifts + * @param multipliers Requantization multipliers + * + * @return A tuple with the pointers to the shift and multiplier data respectively + */ + std::tuple set_requantize_data(const std::vector &shifts, + const std::vector &multipliers); + + // Inherited methods overridden: + void run() override; + void prepare() override; + bool is_configured() const override; + +private: + /** Allocate a workspace tensor. + * + * @param[in] workspace_size Size to allocate. + * @param[in] memory_group Tensor memory group. + * @param[in] alignment Workspace memory alignment. + */ + void allocate_workspace(size_t workspace_size, MemoryGroup &memory_group, size_t alignment); + /** Configure the indirect buffer + * + * @param[in] a Input tensor containing the Matrix A. + * @param[in] b Input tensor containing the Matrix B. + * @param[out] d Output tensor to store the result of matrix multiplication. + * @param[in] info GEMM meta-data + */ + void configure_indirect(const ITensorInfo *a, const ITensorInfo *b, const ITensorInfo *d, const AsmGemmInfo &info); + /** Prepare the indirect buffer */ + void prepare_indirect_buffer(); + + /** Assembly Gemm kernel */ + std::shared_ptr> _gemm_kernel_asm{ nullptr }; + /** Optimised Arm® Neon™ kernel */ + std::unique_ptr _optimised_kernel{ nullptr }; + /** Input A */ + const ITensor *_a + { + nullptr + }; + /** Input B */ + const ITensor *_b + { + nullptr + }; + const ITensor *_c + { + nullptr + }; + /** Output */ + ITensor *_d{ nullptr }; + /** GEMM workspace */ + Tensor _workspace{}; + /** Pre-transpose tensor */ + ITensor *_pretranspose{ nullptr }; + /** Prepared flag */ + bool _is_prepared{ false }; + /** GEMM meta-data */ + AsmGemmInfo _gemm_info{}; + /** Weights manager */ + IWeightsManager *_weights_manager{ nullptr }; + /** Weights transform object */ + FallbackTransform _weights_transform{}; + /** GEMM kernel description */ + arm_gemm::KernelDescription _kernel_info{}; + /** Per channel quantization shifts */ + std::vector _shifts{}; + std::vector right_shifts{}; + std::vector left_shifts{}; + /** Per channel quantization multipliers */ + std::vector _multipliers{}; + /** Indirect buffer */ + std::unique_ptr _indirect_arg{}; + std::unique_ptr _indirect_buf{}; + std::vector _indirect_pad{}; + arm_gemm::ConvolutionParameters _cp{}; +}; + +template +std::tuple +Fallback::set_requantize_data(const std::vector &shifts, const std::vector &multipliers) +{ + _multipliers = multipliers; + _shifts = shifts; + bool need_left = false; + for(const auto s : _shifts) + { + left_shifts.push_back(std::max(-s, int32_t(0))); + right_shifts.push_back(std::min(-s, int32_t(0))); + if(s < 0 && !need_left) + { + need_left = true; + } + } + return std::make_tuple(need_left, left_shifts.data(), right_shifts.data(), _multipliers.data()); +} + +template +void Fallback::prepare_indirect_buffer() +{ + const TypeInput *A_ptr = reinterpret_cast(_a->buffer()); + const int multis = 1; + const int batches = _a->info()->tensor_shape().total_size_upper(3); + const size_t stride_A = _a->info()->strides_in_bytes().y() / sizeof(TypeInput); + const size_t batch_stride_A = _a->info()->strides_in_bytes()[3] / sizeof(TypeInput); + const size_t multi_stride_A = _a->info()->strides_in_bytes()[4] / sizeof(TypeInput); + + const size_t output_hw = _cp.output_height * _cp.output_width; + const int batch_size = _cp.kernel_height * _cp.kernel_width * output_hw * sizeof(TypeInput); + const size_t batch_stride = batch_size / sizeof(TypeInput); + const int multi_size = batch_size * batches; + const size_t multi_stride = multi_size / sizeof(TypeInput); + + for(int64_t m = 0; m < multis; m++) + { + for(int64_t b = 0; b < batches; b++) + { + for(int64_t output_y = 0; output_y < _cp.output_height; output_y++) + { + for(int64_t output_x = 0; output_x < _cp.output_width; output_x++) + { + int64_t output_xy = (output_y * _cp.output_width) + output_x; + + for(int64_t kernel_y = 0; kernel_y < _cp.kernel_height; kernel_y++) + { + for(int64_t kernel_x = 0; kernel_x < _cp.kernel_width; kernel_x++) + { + int64_t input_x = (output_x * _cp.output_stride_w) + kernel_x - _cp.padding_left; + int64_t input_y = (output_y * _cp.output_stride_h) + kernel_y - _cp.padding_top; + int64_t kernel_xy = (kernel_y * _cp.kernel_width) + kernel_x; + int64_t input_xy = (input_y * _cp.input_width) + input_x; + + if(input_x < 0 || input_x >= _cp.input_width || input_y < 0 || input_y >= _cp.input_height) + { + _indirect_buf.get()[m * multi_stride + b * batch_stride + kernel_xy * output_hw + output_xy] = _indirect_pad.data(); + } + else + { + _indirect_buf.get()[m * multi_stride + b * batch_stride + kernel_xy * output_hw + output_xy] = + A_ptr + (m * multi_stride_A + b * batch_stride_A + input_xy * stride_A); + } + } + } + } + } + } + } +} + +template +void Fallback::configure_indirect(const ITensorInfo *a, const ITensorInfo *b, const ITensorInfo *d, const AsmGemmInfo &info) +{ + ARM_COMPUTE_ERROR_ON(!(info.method == AsmConvMethod::Conv || info.method == AsmConvMethod::Indirect)); + + float zeropad = 0.f; + if(is_data_type_quantized(a->data_type())) + { + zeropad = a->quantization_info().uniform().offset; + } + + const int64_t input_width = static_cast(a->tensor_shape()[1]); + const int64_t input_height = static_cast(a->tensor_shape()[2]); + const int64_t input_channels = static_cast(a->tensor_shape()[0]); + const int64_t kernel_width = static_cast(b->tensor_shape()[2]); + const int64_t kernel_height = static_cast(b->tensor_shape()[3]); + const int64_t output_width = static_cast(d->tensor_shape()[1]); + const int64_t output_height = static_cast(d->tensor_shape()[2]); + + _cp = { input_width, input_height, input_channels, kernel_width, kernel_height, output_width, output_height, + info.ps_info.stride().first, info.ps_info.stride().second, info.padding_top, info.padding_left, zeropad + }; + + if(info.method == AsmConvMethod::Conv) + { + _gemm_kernel_asm->set_convolution_parameters(_cp); + } + + if(info.method == AsmConvMethod::Indirect) + { + const unsigned int multis = 1; + const unsigned int batches = a->tensor_shape().total_size_upper(3); + const unsigned int kernel_hw = _cp.kernel_width * _cp.kernel_height; + const unsigned int output_hw = _cp.output_width * _cp.output_height; + + using TypeInputPtr = TypeInput *; + const int batch_size = kernel_hw * output_hw * sizeof(TypeInputPtr); + const size_t batch_stride = batch_size / sizeof(TypeInputPtr); + const int multi_size = batch_size * batches; + const size_t multi_stride = multi_size / sizeof(TypeInputPtr); + + _indirect_buf = std::unique_ptr(reinterpret_cast(malloc(multi_size * multis))); + _indirect_arg = std::unique_ptr(reinterpret_cast(malloc(sizeof(TypeInput **) * kernel_hw * multis * batches))); + _indirect_pad = std::vector(_cp.input_channels, TypeInput(zeropad)); + + // Set indirect argument + int64_t pos = 0; + for(int64_t m = 0; m < multis; m++) + { + for(int64_t b = 0; b < batches; b++) + { + for(int64_t kernel_xy = 0; kernel_xy < kernel_hw; kernel_xy++) + { + (_indirect_arg.get())[pos++] = _indirect_buf.get() + m * multi_stride + b * batch_stride + kernel_xy * output_hw; + } + } + } + + _gemm_kernel_asm->set_indirect_parameters(a->tensor_shape()[0], _indirect_arg.get()); + } +} + +template +void Fallback::configure(const ITensor *a, const ITensor *b, const ITensor *c, ITensor *d, + arm_gemm::GemmArgs args, const AsmGemmInfo &gemm_info, + MemoryGroup &memory_group, IWeightsManager *weights_manager, const OutputStage &os) +{ + arm_gemm::GemmConfig gemm_cfg; + _kernel_info = arm_gemm::get_gemm_method(args, os); + _weights_manager = weights_manager; + if(_kernel_info.method != arm_gemm::GemmMethod::GEMV_BATCHED) + { + gemm_cfg.filter = _kernel_info.name; + args._cfg = &gemm_cfg; + } + _gemm_kernel_asm = arm_gemm::gemm(args, os); + if(_gemm_kernel_asm == nullptr) + { + //configuration not supported: Leave function unconfigured: + return; + } + + // arm_compute wrapper for the Gemm object (see above) + auto acl_gemm_wrapper = std::make_unique>(); + ARM_COMPUTE_ERROR_ON(acl_gemm_wrapper == nullptr); + acl_gemm_wrapper->configure(_gemm_kernel_asm.get(), gemm_cfg.filter); + const size_t workspace_size = _gemm_kernel_asm->get_working_size(); + if(workspace_size > 0) + { + // Allocate workspace + const unsigned int alignment = 4096; + allocate_workspace(workspace_size, memory_group, alignment); + } + + //if we disable this code below in brackets then ConvLayer deadlocks when threads > 1 and + //the shapes are In=1x1x1024 Weights=1x1x1024x1001 Biases=1001 Out=1x1x1001 + { + const unsigned int window_size = _gemm_kernel_asm->get_window_size().total_size(); + if(window_size < static_cast(args._maxthreads)) + { + _gemm_kernel_asm->set_nthreads(window_size); + } + } + + _optimised_kernel = std::move(acl_gemm_wrapper); + _a = a; + _b = b; + _c = c; + _d = d; + _gemm_info = gemm_info; + // Check for pre-transposed support + if(_gemm_kernel_asm->B_pretranspose_required()) + { + // Forcing 128-byte alignment (required by 32-bit kernels) + const unsigned int alignment = 128; + const size_t B_pretranspose_size = _gemm_kernel_asm->get_B_pretransposed_array_size(); + if(weights_manager && _weights_manager->are_weights_managed(b)) + { + _weights_transform.configure(B_pretranspose_size, alignment); + _pretranspose = _weights_manager->acquire(b, &_weights_transform); + } + else + { + _pretranspose = new Tensor(); + static_cast(_pretranspose)->allocator()->init(TensorInfo(TensorShape{ (B_pretranspose_size + alignment) }, 1, DataType::S8), alignment); + } + } + + // Handle indirect GEMM convolution + if(gemm_info.method == AsmConvMethod::Conv || gemm_info.method == AsmConvMethod::Indirect) + { + configure_indirect(a->info(), b->info(), d->info(), gemm_info); + } +} + +template +void Fallback::prepare() +{ + if(!_is_prepared) + { + // Setup up matrix bias in the assembly kernel, it's just a pointer to matrix C. + if(_c && _c->info()->data_type() == DataType::S32) + { + _gemm_kernel_asm->set_quantized_bias(reinterpret_cast(_c->buffer() + _c->info()->offset_first_element_in_bytes()), 0); + } + + // Pretranspose B if required + if(_gemm_kernel_asm->B_pretranspose_required()) + { + const int ldb = _b->info()->strides_in_bytes().y() / sizeof(TypeInput); + const auto in1_ptr = reinterpret_cast(_b->buffer() + _b->info()->offset_first_element_in_bytes()); + const int multi_stride_b = _b->info()->strides_in_bytes().z() / sizeof(TypeInput); + + if(_weights_manager && _weights_manager->are_weights_managed(_b)) + { + _weights_transform.set_args(ldb, in1_ptr, multi_stride_b, _gemm_kernel_asm); + _weights_manager->run(_b, &_weights_transform); + + // If we didn't run the reshape function, set the pretransposed buffer + if(!_weights_transform.is_reshape_run()) + { + _weights_transform.set_pretranspose(_pretranspose); + } + } + else + { + static_cast(_pretranspose)->allocator()->allocate(); + ARM_COMPUTE_ERROR_ON(_pretranspose->buffer() == nullptr); + _gemm_kernel_asm->pretranspose_B_array(_pretranspose->buffer(), in1_ptr, ldb, multi_stride_b); + _b->mark_as_unused(); + } + } + + if(_gemm_info.method == AsmConvMethod::Indirect) + { + prepare_indirect_buffer(); + } + + _is_prepared = true; + } +} + +template +void Fallback::allocate_workspace(size_t workspace_size, MemoryGroup &memory_group, size_t alignment) +{ + ARM_COMPUTE_ERROR_ON_MSG(workspace_size == 0, "size cannot be 0"); + _workspace.allocator()->init(TensorInfo(TensorShape{ (workspace_size + alignment) }, 1, DataType::S8), alignment); + memory_group.manage(&_workspace); + _workspace.allocator()->allocate(); +} + +template +bool Fallback::is_configured() const +{ + return _optimised_kernel != nullptr; +} + +template +void Fallback::run() +{ + int lda = _a->info()->strides_in_bytes().y() / sizeof(TypeInput); + int ldb = 0; + const int ldd = _d->info()->strides_in_bytes().y() / sizeof(TypeOutput); + + const size_t a_batch_idx = _gemm_info.reinterpret_input_as_3d != 0 ? 3 : 2; + const size_t a_multi_idx = a_batch_idx + 1; + const size_t d_batch_idx = _gemm_info.depth_output_gemm3d != 0 ? 3 : 2; + const size_t d_multi_idx = d_batch_idx + 1; + + int batch_stride_a = _a->info()->strides_in_bytes()[a_batch_idx] / sizeof(TypeInput); + const int batch_stride_d = _d->info()->strides_in_bytes()[d_batch_idx] / sizeof(TypeOutput); + + int multi_stride_a = _a->info()->strides_in_bytes()[a_multi_idx] / sizeof(TypeInput); + int multi_stride_b = 0; + const int multi_stride_d = _d->info()->strides_in_bytes()[d_multi_idx] / sizeof(TypeOutput); + + auto in0_ptr = reinterpret_cast(_a->buffer() + _a->info()->offset_first_element_in_bytes()); + const TypeInput *in1_ptr = nullptr; + auto out_ptr = reinterpret_cast(_d->buffer() + _d->info()->offset_first_element_in_bytes()); + + // Check if B is pre-tranposed and de-reference if not + if(!_gemm_kernel_asm->B_is_pretransposed()) + { + ldb = _b->info()->strides_in_bytes().y() / sizeof(TypeInput); + multi_stride_b = _b->info()->strides_in_bytes().z() / sizeof(TypeInput); + in1_ptr = reinterpret_cast(_b->buffer() + _b->info()->offset_first_element_in_bytes()); + } + + const auto scheduling_hint = scheduling_hint_heuristic(_kernel_info.method, _d->info()->data_type()); + + // Set workspace if needed and reset number of threads as buffer manager gets re-created with max_threads + if(_workspace.buffer() != nullptr) + { + _gemm_kernel_asm->set_working_space(reinterpret_cast(_workspace.buffer())); + const unsigned int split_dim = scheduling_hint.split_dimension(); + const unsigned int window_size = _gemm_kernel_asm->get_window_size().total_size(); + unsigned int num_threads = NEScheduler::get().num_threads(); + if(window_size < num_threads) + { + num_threads = window_size; + } + if(split_dim != IScheduler::split_dimensions_all) + { + // Make sure the kernel does not expect more threads than we can actually spawn + const unsigned int num_iterations = _optimised_kernel.get()->window().num_iterations(split_dim); + num_threads = std::min(num_iterations, num_threads); + } + _gemm_kernel_asm->set_nthreads(num_threads); + } + + // Prepare assembly kernel + prepare(); + + // Setup up matrix bias in the assembly kernel, it's just a pointer to matrix C. + TypeOutput *bias = nullptr; + if(_c && _c->info()->data_type() != DataType::S32) + { + bias = reinterpret_cast(_c->buffer() + _c->info()->offset_first_element_in_bytes()); + } + + if(_gemm_info.method == AsmConvMethod::Indirect) + { + in0_ptr = nullptr; + lda = 0; + batch_stride_a = 0; + multi_stride_a = 0; + } + + // Set gemm parameters + _gemm_kernel_asm->set_arrays(in0_ptr, lda, batch_stride_a, multi_stride_a, + in1_ptr, ldb, multi_stride_b, + out_ptr, ldd, batch_stride_d, multi_stride_d, + bias, 0); + // Schedule + NEScheduler::get().schedule(_optimised_kernel.get(), scheduling_hint); +} + +template +void create_arm_gemm(std::unique_ptr &arm_gemm, MemoryGroup &memory_group, + const ITensor *a, const ITensor *b, const ITensor *c, ITensor *d, arm_gemm::Activation activation, const AsmGemmInfo &info, + IWeightsManager *weights_manager) +{ + Params p = extract_parameters(a, b, d, info); + const CPUInfo &ci = NEScheduler::get().cpu_info(); + unsigned int num_threads = NEScheduler::get().num_threads(); + + arm_gemm::GemmArgs args(&ci, p.M, p.N, p.K, p.sections, p.batches, p.multis, p.indirect, activation, num_threads); + + // Create arm_gemm fallback + auto fallback = std::make_unique>(); + fallback->configure(a, b, c, d, args, info, memory_group, weights_manager); + arm_gemm = std::move(fallback); +} + +template +void create_arm_gemm_quant(std::unique_ptr &arm_gemm, MemoryGroup &memory_group, + const ITensor *a, const ITensor *b, const ITensor *c, ITensor *d, arm_gemm::Activation activation, const AsmGemmInfo &info, + IWeightsManager *weights_manager) +{ + ARM_COMPUTE_UNUSED(activation); + Params p = extract_parameters(a, b, d, info); + const CPUInfo &ci = NEScheduler::get().cpu_info(); + unsigned int num_threads = NEScheduler::get().num_threads(); + + arm_gemm::GemmArgs args(&ci, p.M, p.N, p.K, p.sections, p.batches, p.multis, p.indirect, activation, num_threads); + + // Create arm_gemm fallback + auto fallback = std::make_unique>(); + + // Configure requantization info + const int32_t negation = info.negated_offsets ? 1 : -1; + const int32_t a_offset = -a->info()->quantization_info().uniform().offset * negation; + const int32_t b_offset = -b->info()->quantization_info().uniform().offset * negation; + const GEMMLowpOutputStageInfo os_info = info.output_stage; + + arm_gemm::Requantize32 gemm_requant_info{}; + if(os_info.gemmlowp_shifts.size() > 1) + { + const auto requantize_data = fallback->set_requantize_data(os_info.gemmlowp_shifts, os_info.gemmlowp_multipliers); + gemm_requant_info = arm_gemm::Requantize32(nullptr, 0, + a_offset, b_offset, os_info.gemmlowp_offset, + (std::get<0>(requantize_data)) ? std::get<1>(requantize_data) : nullptr, + std::get<2>(requantize_data), + std::get<3>(requantize_data), + os_info.gemmlowp_min_bound, os_info.gemmlowp_max_bound); + } + else + { + gemm_requant_info = arm_gemm::Requantize32(nullptr, 0, + a_offset, b_offset, os_info.gemmlowp_offset, + -os_info.gemmlowp_shift, os_info.gemmlowp_multiplier, + os_info.gemmlowp_min_bound, os_info.gemmlowp_max_bound); + } + + // Configure fallback + fallback->configure(a, b, c, d, args, info, memory_group, weights_manager, gemm_requant_info); + arm_gemm = std::move(fallback); +} + +} //namespace + +CpuGemmAssemblyDispatch::CpuGemmAssemblyDispatch(std::shared_ptr memory_manager, IWeightsManager *weights_manager) + : _arm_gemm(nullptr), _memory_group(std::move(memory_manager)), _weights_manager(weights_manager) +{ +} + +Status CpuGemmAssemblyDispatch::validate(const ITensorInfo *a, const ITensorInfo *b, const ITensorInfo *c, const ITensorInfo *d, const AsmGemmInfo &info) +{ + ARM_COMPUTE_UNUSED(c, info); + ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(a, b, d); + ARM_COMPUTE_RETURN_ERROR_ON_CPU_F16_UNSUPPORTED(a); + ARM_COMPUTE_RETURN_ERROR_ON_CPU_BF16_UNSUPPORTED(a); + +#ifndef __aarch64__ + ARM_COMPUTE_RETURN_ERROR_ON_MSG(a->element_size() == 1, "8bit integer types only supported for aarch64"); +#endif /* __aarch64__ */ + ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(a, 1, DataType::U8, DataType::QASYMM8, DataType::QASYMM8_SIGNED, DataType::S8, + DataType::BFLOAT16, DataType::F16, DataType::F32); + ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(b, 1, DataType::U8, DataType::QASYMM8, DataType::QASYMM8_SIGNED, DataType::QSYMM8_PER_CHANNEL, DataType::S8, + DataType::BFLOAT16, DataType::F16, DataType::F32); + if(is_data_type_quantized_per_channel(b->data_type())) + { + ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(a, 1, DataType::QASYMM8_SIGNED, DataType::S8); + } + else + { + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(a, b); + } + ARM_COMPUTE_RETURN_ERROR_ON_MSG(a->data_type() == DataType::F32 && d->data_type() != DataType::F32, "Only F32 output supported for F32 input"); + ARM_COMPUTE_RETURN_ERROR_ON_MSG(a->data_type() == DataType::F16 && d->data_type() != DataType::F16, "Only F16 output supported for F16 input"); + ARM_COMPUTE_RETURN_ERROR_ON_MSG(a->data_type() == DataType::BFLOAT16 && d->data_type() != DataType::F32, "Only F32 output supported for BFLOAT16 input"); + ARM_COMPUTE_RETURN_ERROR_ON_MSG(a->data_type() == DataType::U8 && d->data_type() != DataType::U32, "Only U32 output supported for U8 input"); + ARM_COMPUTE_RETURN_ERROR_ON_MSG(a->data_type() == DataType::S8 && d->data_type() != DataType::S32, "Only S32 output supported for S8 input"); + ARM_COMPUTE_RETURN_ERROR_ON_MSG(a->data_type() == DataType::QASYMM8 && d->data_type() != DataType::QASYMM8, "Only QASYMM8 output supported for QASYMM8 input"); + return Status{}; +} + +bool CpuGemmAssemblyDispatch::is_activation_supported(const ActivationLayerInfo &activation) +{ + arm_gemm::Activation act = map_to_arm_gemm_activation(activation); + return act.type != arm_gemm::Activation::Type::None; +} + +void CpuGemmAssemblyDispatch::configure(const ITensor *a, const ITensor *b, const ITensor *c, ITensor *d, const AsmGemmInfo &info) +{ + ARM_COMPUTE_ERROR_ON_NULLPTR(a, b, d); + arm_gemm::Activation act = map_to_arm_gemm_activation(info.activation_info); + + //If we don't support a combination of data types, silently return: it is the caller's responsibility to check if configure() was successful via is_configured() + if(!CpuGemmAssemblyDispatch::validate(a->info(), b->info(), c != nullptr ? c->info() : nullptr, d->info(), info)) + { + return; + } + + switch(a->info()->data_type()) + { + case DataType::F32: + create_arm_gemm(_arm_gemm, _memory_group, a, b, c, d, act, info, _weights_manager); + break; +#ifdef __aarch64__ + case DataType::U8: + case DataType::QASYMM8: + if(d->info()->data_type() == DataType::S32) + { + create_arm_gemm(_arm_gemm, _memory_group, a, b, c, d, act, info, _weights_manager); + } + else + { + create_arm_gemm_quant(_arm_gemm, _memory_group, a, b, c, d, act, info, _weights_manager); + } + break; + case DataType::S8: + case DataType::QASYMM8_SIGNED: + if(d->info()->data_type() == DataType::S32) + { + create_arm_gemm(_arm_gemm, _memory_group, a, b, c, d, act, info, _weights_manager); + } + else + { + create_arm_gemm_quant(_arm_gemm, _memory_group, a, b, c, d, act, info, _weights_manager); + } + break; +#endif /* __aarch64__ */ +#if defined(__ARM_FEATURE_BF16_VECTOR_ARITHMETIC) || defined(ARM_COMPUTE_FORCE_BF16) + case DataType::BFLOAT16: + create_arm_gemm(_arm_gemm, _memory_group, a, b, c, d, act, info, _weights_manager); + break; +#endif /* defined(__ARM_FEATURE_BF16_VECTOR_ARITHMETIC) || defined(ARM_COMPUTE_FORCE_BF16) */ +#ifdef __ARM_FEATURE_FP16_VECTOR_ARITHMETIC + case DataType::F16: + create_arm_gemm(_arm_gemm, _memory_group, a, b, c, d, act, info, _weights_manager); + break; +#endif /* __ARM_FEATURE_FP16_VECTOR_ARITHMETIC */ + default: + break; + } +} + +void CpuGemmAssemblyDispatch::prepare() +{ + ARM_COMPUTE_ERROR_ON(_arm_gemm == nullptr); + _arm_gemm->prepare(); +} + +bool CpuGemmAssemblyDispatch::is_configured() const +{ + return _arm_gemm != nullptr && _arm_gemm->is_configured(); +} + +void CpuGemmAssemblyDispatch::run() +{ + MemoryGroupResourceScope scope_mg(_memory_group); + + ARM_COMPUTE_ERROR_ON(_arm_gemm == nullptr); + _arm_gemm->run(); +} +} // namespace cpu +} // namespace arm_compute -- cgit v1.2.1