/* * Copyright (c) 2017 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 "arm_compute/graph/nodes/FullyConnectedLayer.h" #include "arm_compute/core/Helpers.h" #include "arm_compute/runtime/CL/functions/CLFullyConnectedLayer.h" #include "arm_compute/runtime/NEON/functions/NEFullyConnectedLayer.h" #include "support/ToolchainSupport.h" #include "utils/TypePrinter.h" using namespace arm_compute::graph; namespace { template std::unique_ptr instantiate_function(ITensor *input, Tensor &weights, Tensor &biases, ITensor *output) { bool weights_are_loaded = weights.tensor() != nullptr; bool biases_are_loaded = biases.tensor() != nullptr; auto conv = arm_compute::support::cpp14::make_unique(); conv->configure( dynamic_cast(input), dynamic_cast(weights.set_target(hint)), dynamic_cast(biases.set_target(hint)), dynamic_cast(output)); if(!weights_are_loaded) { weights.allocate_and_fill_if_needed(); } if(!biases_are_loaded) { biases.allocate_and_fill_if_needed(); } return std::move(conv); } template std::unique_ptr instantiate(ITensor *input, Tensor &weights, Tensor &biases, ITensor *output); template <> std::unique_ptr instantiate(ITensor *input, Tensor &weights, Tensor &biases, ITensor *output) { return instantiate_function(input, weights, biases, output); } template <> std::unique_ptr instantiate(ITensor *input, Tensor &weights, Tensor &biases, ITensor *output) { return instantiate_function(input, weights, biases, output); } } // namespace std::unique_ptr FullyConnectedLayer::instantiate_node(Hint hint, ITensor *input, ITensor *output) { if(_weights.tensor() == nullptr) { unsigned int num_weights = 1; unsigned int num_dimensions = input->info()->num_dimensions(); // Ignore the batch dimension if there is one: if(num_dimensions == 2 || num_dimensions == 4) { num_dimensions--; } for(unsigned int i = 0; i < num_dimensions; i++) { num_weights *= input->info()->dimension(i); } _weights.set_info(TensorInfo(TensorShape(num_weights, _num_neurons), input->info()->num_channels(), input->info()->data_type(), input->info()->fixed_point_position())); } if(_biases.tensor() == nullptr) { _biases.set_info(TensorInfo(TensorShape(_num_neurons), input->info()->num_channels(), input->info()->data_type(), input->info()->fixed_point_position())); } arm_compute::auto_init_if_empty(*output->info(), TensorShape(_num_neurons, input->info()->dimension(1)), input->info()->num_channels(), input->info()->data_type(), input->info()->fixed_point_position()); std::unique_ptr func; _hint = hint; _input = input; _output = output; if(_hint == Hint::OPENCL) { func = instantiate(input, _weights, _biases, output); } else { func = instantiate(input, _weights, _biases, output); } return func; } void FullyConnectedLayer::print_info() { if(_hint == Hint::OPENCL) { std::cout << "Instantiating CLFullyConnectedLayer"; } else { std::cout << "Instantiating NEFullyConnectedLayer"; } std::cout << " Type: " << _input->info()->data_type() << " Input Shape: " << _input->info()->tensor_shape() << " Weights shape: " << _weights.info().tensor_shape() << " Biases Shape: " << _biases.info().tensor_shape() << " Output Shape: " << _output->info()->tensor_shape() << std::endl; }