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/*
* 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/runtime/CL/functions/CLFullyConnectedLayer.h"
#include "arm_compute/core/Size2D.h"
#include "arm_compute/core/Validate.h"
#include "arm_compute/runtime/CL/CLScheduler.h"
#include "support/ToolchainSupport.h"
#include <algorithm>
using namespace arm_compute;
void CLFullyConnectedLayerReshapeWeights::configure(const ICLTensor *input, ICLTensor *output)
{
auto k = arm_compute::support::cpp14::make_unique<CLTransposeKernel>();
k->configure(input, output);
_kernel = std::move(k);
}
CLFullyConnectedLayer::CLFullyConnectedLayer(std::shared_ptr<IMemoryManager> memory_manager)
: _memory_group(std::move(memory_manager)), _im2col_kernel(), _reshape_weights_kernel(), _mm_kernel(), _accumulate_biases_kernel(), _im2col_output(), _reshape_weights_output(),
_are_weights_reshaped(true), _is_fc_after_conv(true), _accumulate_biases(false)
{
}
void CLFullyConnectedLayer::configure_conv_fc(const ICLTensor *input, const ICLTensor *weights, ICLTensor *output)
{
ARM_COMPUTE_ERROR_ON((weights->info()->dimension(1) != (input->info()->dimension(0) * input->info()->dimension(1) * input->info()->dimension(2))));
const DataType dt = input->info()->data_type();
const int fixed_point_position = input->info()->fixed_point_position();
// If the fully connected layer is called after a convolution layer, the input tensor must be linearized
// Initialize output tensor for im2col
TensorShape shape_im2col;
shape_im2col.set(0, input->info()->dimension(0) * input->info()->dimension(1) * input->info()->dimension(2));
shape_im2col.set(1, input->info()->dimension(3));
shape_im2col.set(2, input->info()->dimension(4));
shape_im2col.set(3, input->info()->dimension(5));
_im2col_output.allocator()->init(TensorInfo(shape_im2col, 1, dt, fixed_point_position));
// Configure im2col kernel
_memory_group.manage(&_im2col_output);
_im2col_kernel.configure(input, &_im2col_output, Size2D(1, 1), PadStrideInfo(1, 1, 0, 0), false);
// Configure matrix multiply kernel
_mm_kernel.configure(&_im2col_output, weights, output, 1.0f, false);
// Allocate the output tensor for im2col once all the configure methods have been called
_im2col_output.allocator()->allocate();
}
void CLFullyConnectedLayer::configure_fc_fc(const ICLTensor *input, const ICLTensor *weights, ICLTensor *output)
{
ARM_COMPUTE_ERROR_ON(input->info()->dimension(0) != weights->info()->dimension(1));
// Configure matrix multiply kernel
_mm_kernel.configure(input, weights, output, 1.0f, false);
}
void CLFullyConnectedLayer::configure(const ICLTensor *input, const ICLTensor *weights, const ICLTensor *biases, ICLTensor *output, bool transpose_weights, bool are_weights_reshaped)
{
ARM_COMPUTE_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(input, 1, DataType::QS8, DataType::QS16, DataType::F16, DataType::F32);
ARM_COMPUTE_ERROR_ON_MISMATCHING_DATA_TYPES(input, weights, output);
ARM_COMPUTE_ERROR_ON(weights->info()->num_dimensions() != 2);
_are_weights_reshaped = transpose_weights ? are_weights_reshaped : true;
_is_fc_after_conv = true;
_accumulate_biases = false;
if(biases != nullptr)
{
ARM_COMPUTE_ERROR_ON_MISMATCHING_DATA_TYPES(input, biases);
_accumulate_biases = true;
// Configure accumulate biases kernel
_accumulate_biases_kernel.configure(output, biases);
}
// With the Fully Connected layer we can have 4 different cases:
// 1) Convolution layer -> Fully Connected layer without batches
// 2) Fully Connected layer -> Fully Connected layer without batches
// 3) Convolution layer -> Fully Connected layer with batches
// 4) Fully Connected layer -> Fully Connected layer with batches
const ICLTensor *weights_to_use = weights;
if(!_are_weights_reshaped)
{
weights_to_use = &_reshape_weights_output;
// Reshape the weights
_reshape_weights_kernel.configure(weights, &_reshape_weights_output);
}
// Check if we have a fully connected layer with batches
const bool is_batched_fc_layer = output->info()->dimension(1) > 1;
if(is_batched_fc_layer)
{
_is_fc_after_conv = (TensorShape::num_max_dimensions >= 4) && (std::equal(input->info()->tensor_shape().cbegin() + 3,
input->info()->tensor_shape().cend(),
output->info()->tensor_shape().cbegin() + 1));
}
else
{
_is_fc_after_conv = input->info()->num_dimensions() > 1;
}
if(_is_fc_after_conv)
{
// Fully Connected layer after a Convolution Layer without batches
configure_conv_fc(input, weights_to_use, output);
}
else
{
// Fully Connected layer after a Fully Connected Layer without batches
configure_fc_fc(input, weights_to_use, output);
}
// Allocate the transpose tensor if the are_weights_reshaped flag is false and once all the configure methods have been called
if(!_are_weights_reshaped)
{
// Allocate the tensor for the weights reshaped
_reshape_weights_output.allocator()->allocate();
}
}
void CLFullyConnectedLayer::run()
{
// Reshape of the weights (happens only once)
if(!_are_weights_reshaped)
{
_are_weights_reshaped = true;
_reshape_weights_kernel.run();
}
_memory_group.acquire();
// Linearize input if it comes from a convolutional layer
if(_is_fc_after_conv)
{
CLScheduler::get().enqueue(_im2col_kernel, false);
}
// Run matrix multiply
CLScheduler::get().enqueue(_mm_kernel, !_accumulate_biases);
// Accumulate biases if provided
if(_accumulate_biases)
{
CLScheduler::get().enqueue(_accumulate_biases_kernel);
}
_memory_group.release();
}