blob: 10f2e5c25e4fdd1f51e96aeb140313785036c6a0 [file] [log] [blame]
/*
* Copyright (c) 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.
*/
#ifndef ARM_COMPUTE_GRAPH_BACKENDS_FUSED_CONVOLUTION_BATCH_NORMAZLIZATION_WITH_POST_OPS_FUNCTION_H
#define ARM_COMPUTE_GRAPH_BACKENDS_FUSED_CONVOLUTION_BATCH_NORMAZLIZATION_WITH_POST_OPS_FUNCTION_H
#include "arm_compute/core/Types.h"
#include "arm_compute/core/experimental/IPostOp.h"
#include "arm_compute/runtime/IFunction.h"
namespace arm_compute
{
namespace graph
{
namespace backends
{
/** Wrapper function to first apply {NE, CL}BatchNormalizationLayer on the weights and then run {NE, CL}ConvolutionLayer with the modified weights */
template <typename TargetInfo, typename FusedLayerTypes>
class FusedConvolutionBatchNormalizationWithPostOpsFunction : public IFunction
{
public:
using TensorType = typename TargetInfo::TensorType;
using TensorConcreteType = typename TargetInfo::TensorConcreteType;
FusedConvolutionBatchNormalizationWithPostOpsFunction(std::shared_ptr<IMemoryManager> memory_manager = nullptr)
: _conv_layer(memory_manager), _fused_batch_norm_layer(), _fused_bias(), _is_prepared(false)
{
}
/** Set the input and output tensors.
*
* @param[in] input Source tensor. 3 lower dimensions represent a single input [width, height, IFM],
* while every optional dimension from 4 and above represent a batch of inputs.
* Data types supported: QASYMM8/F16/F32.
* @param[in] weights Weights tensor. Weights are 4D tensor with dimensions [kernel_x, kernel_y, IFM, OFM]. Data type supported: Same as @p input.
* @param[in] bias Biases tensor. Shared biases supported. Biases are 1D tensor with dimensions [OFM].
* Data type supported: Should match @p input data type.
* @param[out] output Destination tensor. 3 lower dimensions represent a single output [width, height, OFM], while the rest represent batch of outputs.
* Data types supported: Same as @p input.
* @param[in] mean Mean values tensor. 1 dimension with size equal to the feature maps [FM]. Data types supported: Same as @p input
* @param[in] var Variance values tensor. 1 dimension with size equal to the feature maps [FM]. Data types supported: Same as @p input
* @param[in] beta Beta values tensor info. 1 dimension with size equal to the feature maps [FM]. If not provided, default value for beta is 0. Data types supported: Same as @p input
* @param[in] gamma Gamma values tensor info. 1 dimension with size equal to the feature maps [FM]. If not provided, default value for gamma is 1. Data types supported: Same as @p input
* @param[in] epsilon Small value to avoid division with zero. Default value is 0.001f.
* @param[in] conv_info Contains padding and stride information described in @ref PadStrideInfo.
* @param[in] num_groups Number of groups when performing a grouped convolution. num_groups != 1 is only supported for NCHW data layout
* @param[in] fast_math Enable fast math computation. In case this flag were set, the function could dispatch the fastest implementation
* available which may introduce a drop of accuracy as well. Default is false
* @param[in] post_ops A sequence of post operations that are performed after the main operation.
*
*/
void configure(TensorType *input,
TensorType *weights,
TensorType *bias,
TensorType *output,
const TensorType *mean,
const TensorType *var,
const TensorType *beta,
const TensorType *gamma,
float epsilon, const PadStrideInfo &conv_info, unsigned int num_groups, bool fast_math,
const arm_compute::experimental::PostOpList<TensorType *> &post_ops = experimental::PostOpList<TensorType *> {})
{
// We don't run any validate, as we assume that the layers have been already validated
const bool has_bias = (bias != nullptr);
const TensorType *bias_to_use;
// We check if the layer has a bias. If yes, use it in-place. If not, we need to create one
// as batch normalization might end up with a bias != 0
if(has_bias)
{
_fused_batch_norm_layer.configure(weights, mean, var, nullptr, nullptr, bias, beta, gamma, epsilon);
bias_to_use = bias;
}
else
{
_fused_batch_norm_layer.configure(weights, mean, var, nullptr, &_fused_bias, nullptr, beta, gamma, epsilon);
bias_to_use = &_fused_bias;
}
ActivationLayerInfo fused_act = ActivationLayerInfo(); // Passing an empty ActivationLayerInfo.
_conv_layer.configure(input, weights, bias_to_use, output, conv_info, WeightsInfo(), Size2D(1U, 1U), fused_act, fast_math, num_groups, post_ops);
if(!has_bias)
{
_fused_bias.allocator()->allocate();
}
}
// Inherited methods overridden:
void run()
{
prepare();
_conv_layer.run();
}
void prepare()
{
if(!_is_prepared)
{
_fused_batch_norm_layer.run();
_is_prepared = true;
}
}
private:
typename FusedLayerTypes::ConvolutionLayer _conv_layer;
typename FusedLayerTypes::FuseBatchNormalization _fused_batch_norm_layer;
TensorConcreteType _fused_bias;
bool _is_prepared;
};
} // namespace backends
} // namespace graph
} // namespace arm_compute
#endif /* ARM_COMPUTE_GRAPH_BACKENDS_FUSED_CONVOLUTION_BATCH_NORMAZLIZATION_WITH_POST_OPS_FUNCTION_H */