diff options
Diffstat (limited to 'src/runtime/NEON/functions/NEQLSTMLayer.cpp')
-rw-r--r-- | src/runtime/NEON/functions/NEQLSTMLayer.cpp | 1171 |
1 files changed, 789 insertions, 382 deletions
diff --git a/src/runtime/NEON/functions/NEQLSTMLayer.cpp b/src/runtime/NEON/functions/NEQLSTMLayer.cpp index 1013730235..dd78d10d16 100644 --- a/src/runtime/NEON/functions/NEQLSTMLayer.cpp +++ b/src/runtime/NEON/functions/NEQLSTMLayer.cpp @@ -1,5 +1,5 @@ /* - * Copyright (c) 2020 Arm Limited. + * Copyright (c) 2020-2022 Arm Limited. * * SPDX-License-Identifier: MIT * @@ -23,35 +23,38 @@ */ #include "arm_compute/runtime/NEON/functions/NEQLSTMLayer.h" +#include "arm_compute/core/ITensorPack.h" #include "arm_compute/core/KernelDescriptors.h" #include "arm_compute/core/QuantizationInfo.h" #include "arm_compute/core/Utils.h" -#include "arm_compute/core/Validate.h" #include "arm_compute/core/utils/misc/InfoHelpers.h" #include "arm_compute/core/utils/quantization/AsymmHelpers.h" +#include "arm_compute/core/Validate.h" #include "arm_compute/runtime/NEON/NEScheduler.h" -#include "src/core/NEON/kernels/NEConvertQuantizedSignednessKernel.h" -#include "src/core/NEON/kernels/NEGEMMInterleave4x4Kernel.h" -#include "src/core/NEON/kernels/NEGEMMLowpMatrixMultiplyKernel.h" -#include "src/core/NEON/kernels/NEGEMMLowpOffsetContributionKernel.h" -#include "src/core/NEON/kernels/NEGEMMLowpOffsetContributionOutputStageKernel.h" -#include "src/core/NEON/kernels/NEGEMMLowpReductionKernel.h" -#include "src/core/NEON/kernels/NEGEMMTranspose1xWKernel.h" -#include "src/core/NEON/kernels/NEQLSTMLayerNormalizationKernel.h" + +#include "src/common/utils/Log.h" #include "src/core/helpers/WindowHelpers.h" -#include "support/MemorySupport.h" +#include "src/core/NEON/kernels/NEQLSTMLayerNormalizationKernel.h" +#include "src/cpu/kernels/CpuGemmLowpMatrixReductionKernel.h" namespace arm_compute { using namespace arm_compute::utils::info_helpers; namespace { -Status validate_mm(GEMMLowpOutputStageInfo &gemmlowp_info, const ITensorInfo *mm_input, const ITensorInfo *mm_weights, const ITensorInfo *bias, - float gemmlowp_scale, const TensorInfo *mm_res_info, const TensorInfo *outstage_tensor_info) +Status validate_mm(GEMMLowpOutputStageInfo &gemmlowp_info, + const ITensorInfo *mm_input, + const ITensorInfo *mm_weights, + const ITensorInfo *bias, + float gemmlowp_scale, + const TensorInfo *mm_res_info, + const TensorInfo *outstage_tensor_info) { ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpMatrixMultiplyCore::validate(mm_input, mm_weights, nullptr, mm_res_info)); - ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier(gemmlowp_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift)); - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpOutputStage::validate(mm_res_info, bias, outstage_tensor_info, gemmlowp_info)); + ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier( + gemmlowp_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift)); + ARM_COMPUTE_RETURN_ON_ERROR( + NEGEMMLowpOutputStage::validate(mm_res_info, bias, outstage_tensor_info, gemmlowp_info)); return Status{}; } } // namespace @@ -60,10 +63,7 @@ Status NEQLSTMLayer::validate_layer_norm(const ITensorInfo &in, const ITensorInf { // Output quantization scale will be different, but ignored here // since it will be configured at configure() stage. - const TensorInfo out - { - in - }; + const TensorInfo out{in}; return NEQLSTMLayerNormalizationKernel::validate(&in, &out, &weight, &bias); } @@ -75,7 +75,7 @@ void NEQLSTMLayer::configure_layer_norm(NEQLSTMLayer::LayerNormGate g, const ITe _memory_group.manage(&out); out.allocator()->init(*(in->info())); - get_layer_norm(g) = arm_compute::support::cpp14::make_unique<NEQLSTMLayerNormalizationKernel>(); + get_layer_norm(g) = std::make_unique<NEQLSTMLayerNormalizationKernel>(); get_layer_norm(g)->configure(in, &out, get_layer_norm_weight(g), get_layer_norm_bias(g)); } @@ -93,6 +93,8 @@ Status NEQLSTMLayer::TensorCopyKernel::validate(const ITensorInfo &src, const IT void NEQLSTMLayer::TensorCopyKernel::configure(ITensor &src, ITensor &dst) { ARM_COMPUTE_ERROR_THROW_ON(NEQLSTMLayer::TensorCopyKernel::validate(*src.info(), *dst.info())); + ARM_COMPUTE_LOG_PARAMS(src, dst); + _src = &src; _dst = &dst; _row_size = std::min(_src->info()->tensor_shape().x(), _dst->info()->tensor_shape().x()); @@ -101,39 +103,108 @@ void NEQLSTMLayer::TensorCopyKernel::configure(ITensor &src, ITensor &dst) void NEQLSTMLayer::TensorCopyKernel::run() { - Iterator input_iter{ _src, _window }; - Iterator output_iter{ _dst, _window }; + Iterator input_iter{_src, _window}; + Iterator output_iter{_dst, _window}; - execute_window_loop(_window, [&](const Coordinates &) - { - memcpy(output_iter.ptr(), input_iter.ptr(), _row_size); - }, - input_iter, output_iter); + execute_window_loop( + _window, [&](const Coordinates &) { memcpy(output_iter.ptr(), input_iter.ptr(), _row_size); }, input_iter, + output_iter); } NEQLSTMLayer::~NEQLSTMLayer() = default; NEQLSTMLayer::NEQLSTMLayer(std::shared_ptr<IMemoryManager> memory_manager) - : _memory_group(), _transpose_input_to_forget_weights(), _transpose_input_to_cell_weights(), _transpose_input_to_output_weights(), _transpose_input_to_input_weights(), - _transpose_recurrent_to_forget_weights(), _transpose_recurrent_to_cell_weights(), _transpose_recurrent_to_output_weights(), _transpose_recurrent_to_input_weights(), _transpose_projection_weights(), - _input_to_input_reduction(), _recurrent_to_input_reduction(), _input_to_forget_reduction(), _recurrent_to_forget_reduction(), _input_to_cell_reduction(), _recurrent_to_cell_reduction(), - _input_to_output_reduction(), _recurrent_to_output_reduction(), _projection_reduction(), _projection_bias_add(), _mm_input_to_forget(), _mm_recurrent_to_forget(), _pixelwise_mul_cell_to_forget(), - _input_to_forget_outstage(), _recurrent_to_forget_outstage(), _cell_to_forget_outstage(), _accumulate_input_recurrent_forget(), _accumulate_cell_forget(), _forget_gate_sigmoid(), _mm_input_to_cell(), - _input_to_cell_outstage(), _mm_recurrent_to_cell(), _recurrent_to_cell_outstage(), _accumulate_input_recurrent_modulation(), _cell_gate_tanh(), _input_gate_sub(), _mm_input_to_input(), - _input_to_input_outstage(), _mm_recurrent_to_input(), _recurrent_to_input_outstage(), _accumulate_input_recurrent_input(), _pixelwise_mul_cell_to_input(), _cell_to_input_outstage(), - _accumulate_cell_input(), _input_gate_sigmoid(), _pixelwise_mul_forget_cell(), _pixelwise_mul_input_cell(), _add_forget_cell(), _cell_clip(), _mm_input_to_output(), _input_to_output_outstage(), - _mm_recurrent_to_output(), _recurrent_to_output_outstage(), _accumulate_input_recurrent_output(), _pixelwise_mul_cell_to_output(), _cell_to_output_outstage(), _accumulate_cell_to_output(), - _output_gate_sigmoid(), _hidden_tanh(), _pixelwise_mul_hidden(), _hidden_outstage(), _mm_projection(), _projection_outstage(), _accumulate_projection(), _projection_clip(), _projection_bias_copy(), - _projection_output_to_accumulate_copy(), _projection_accumulate_to_output_copy(), _hidden_to_output_copy(), _layer_norms(), _copy_output(), _layer_norm_weights(), _layer_norm_bias(), + : _memory_group(), + _dequantize_input_to_forget_weights(), + _quantize_input_to_forget_weights(), + _transpose_input_to_forget_weights(), + _transpose_input_to_cell_weights(), + _transpose_input_to_output_weights(), + _transpose_input_to_input_weights(), + _transpose_recurrent_to_forget_weights(), + _transpose_recurrent_to_cell_weights(), + _transpose_recurrent_to_output_weights(), + _transpose_recurrent_to_input_weights(), + _transpose_projection_weights(), + _input_to_input_reduction(), + _recurrent_to_input_reduction(), + _input_to_forget_reduction(), + _recurrent_to_forget_reduction(), + _input_to_cell_reduction(), + _recurrent_to_cell_reduction(), + _input_to_output_reduction(), + _recurrent_to_output_reduction(), + _projection_reduction(), + _projection_bias_add(), + _mm_input_to_forget(), + _mm_recurrent_to_forget(), + _pixelwise_mul_cell_to_forget(), + _input_to_forget_outstage(), + _recurrent_to_forget_outstage(), + _cell_to_forget_outstage(), + _accumulate_input_recurrent_forget(), + _accumulate_cell_forget(), + _forget_gate_sigmoid(), + _mm_input_to_cell(), + _input_to_cell_outstage(), + _mm_recurrent_to_cell(), + _recurrent_to_cell_outstage(), + _accumulate_input_recurrent_modulation(), + _cell_gate_tanh(), + _input_gate_sub(), + _mm_input_to_input(), + _input_to_input_outstage(), + _mm_recurrent_to_input(), + _recurrent_to_input_outstage(), + _accumulate_input_recurrent_input(), + _pixelwise_mul_cell_to_input(), + _cell_to_input_outstage(), + _accumulate_cell_input(), + _input_gate_sigmoid(), + _pixelwise_mul_forget_cell(), + _pixelwise_mul_input_cell(), + _add_forget_cell(), + _cell_clip(), + _mm_input_to_output(), + _input_to_output_outstage(), + _mm_recurrent_to_output(), + _recurrent_to_output_outstage(), + _accumulate_input_recurrent_output(), + _pixelwise_mul_cell_to_output(), + _cell_to_output_outstage(), + _accumulate_cell_to_output(), + _output_gate_sigmoid(), + _hidden_tanh(), + _pixelwise_mul_hidden(), + _hidden_outstage(), + _mm_projection(), + _projection_outstage(), + _accumulate_projection(), + _projection_clip(), + _projection_bias_copy(), + _projection_output_to_accumulate_copy(), + _projection_accumulate_to_output_copy(), + _hidden_to_output_copy(), + _layer_norms(), + _copy_output(), + _layer_norm_weights(), + _layer_norm_bias(), _layer_norm_output() { _memory_group = MemoryGroup(std::move(memory_manager)); } -void NEQLSTMLayer::configure_mm(NEGEMMLowpMatrixMultiplyCore &mm, NEGEMMLowpOutputStage &outstage, GEMMLowpOutputStageInfo &gemmlowp_info, - const ITensor *mm_input, const ITensor *mm_weights, const ITensor *bias, - Tensor *mm_res, Tensor *outstage_res, float gemmlowp_scale, - const TensorInfo &mm_res_info, const TensorInfo &outstage_tensor_info) +void NEQLSTMLayer::configure_mm(NEGEMMLowpMatrixMultiplyCore &mm, + NEGEMMLowpOutputStage &outstage, + GEMMLowpOutputStageInfo &gemmlowp_info, + const ITensor *mm_input, + const ITensor *mm_weights, + const ITensor *bias, + Tensor *mm_res, + Tensor *outstage_res, + float gemmlowp_scale, + const TensorInfo &mm_res_info, + const TensorInfo &outstage_tensor_info) { _memory_group.manage(mm_res); _memory_group.manage(outstage_res); @@ -145,33 +216,88 @@ void NEQLSTMLayer::configure_mm(NEGEMMLowpMatrixMultiplyCore &mm, NEGEMMLowpOutp mm.configure(mm_input, mm_weights, nullptr, mm_res); // Configure output stage - quantization::calculate_quantized_multiplier(gemmlowp_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift); + quantization::calculate_quantized_multiplier(gemmlowp_scale, &gemmlowp_info.gemmlowp_multiplier, + &gemmlowp_info.gemmlowp_shift); outstage.configure(mm_res, bias, outstage_res, gemmlowp_info); mm_res->allocator()->allocate(); } -void NEQLSTMLayer::configure(const ITensor *input, - const ITensor *input_to_forget_weights, const ITensor *input_to_cell_weights, const ITensor *input_to_output_weights, - const ITensor *recurrent_to_forget_weights, const ITensor *recurrent_to_cell_weights, const ITensor *recurrent_to_output_weights, - const ITensor *forget_gate_bias, const ITensor *cell_bias, const ITensor *output_gate_bias, - const ITensor *cell_state_in, ITensor *output_state_in, - ITensor *cell_state_out, ITensor *output_state_out, ITensor *output, +void NEQLSTMLayer::configure(const ITensor *input, + const ITensor *input_to_forget_weights, + const ITensor *input_to_cell_weights, + const ITensor *input_to_output_weights, + const ITensor *recurrent_to_forget_weights, + const ITensor *recurrent_to_cell_weights, + const ITensor *recurrent_to_output_weights, + const ITensor *forget_gate_bias, + const ITensor *cell_bias, + const ITensor *output_gate_bias, + const ITensor *cell_state_in, + ITensor *output_state_in, + ITensor *cell_state_out, + ITensor *output_state_out, + ITensor *output, const LSTMParams<ITensor> &lstm_params) { ARM_COMPUTE_ERROR_ON_NULLPTR(input, input_to_forget_weights, input_to_cell_weights, input_to_output_weights, recurrent_to_forget_weights, recurrent_to_cell_weights, recurrent_to_output_weights, - forget_gate_bias, cell_bias, output_gate_bias, cell_state_in, output_state_in, cell_state_out, output_state_out); + forget_gate_bias, cell_bias, output_gate_bias, cell_state_in, output_state_in, + cell_state_out, output_state_out); + + ARM_COMPUTE_LOG_PARAMS(input, input_to_forget_weights, input_to_cell_weights, input_to_output_weights, + recurrent_to_forget_weights, recurrent_to_cell_weights, recurrent_to_output_weights, + forget_gate_bias, cell_bias, output_gate_bias, cell_state_in, output_state_in, + cell_state_out, output_state_out); // Set lstm parameters LSTMParams<ITensorInfo> lstm_params_info{}; build_lstm_params_tensor_info(lstm_params, &lstm_params_info); - // Validate - ARM_COMPUTE_ERROR_THROW_ON(NEQLSTMLayer::validate(input->info(), input_to_forget_weights->info(), input_to_cell_weights->info(), input_to_output_weights->info(), - recurrent_to_forget_weights->info(), recurrent_to_cell_weights->info(), recurrent_to_output_weights->info(), - forget_gate_bias->info(), cell_bias->info(), output_gate_bias->info(), - cell_state_in->info(), output_state_in->info(), cell_state_out->info(), output_state_out->info(), output->info(), - lstm_params_info)); + _input_to_forget_weights_transposed.info()->set_quantization_info( + input_to_forget_weights->info()->quantization_info()); + _input_to_cell_weights_transposed.info()->set_quantization_info(input_to_cell_weights->info()->quantization_info()); + _input_to_output_weights_transposed.info()->set_quantization_info( + input_to_output_weights->info()->quantization_info()); + _recurrent_to_forget_weights_transposed.info()->set_quantization_info( + recurrent_to_forget_weights->info()->quantization_info()); + _recurrent_to_cell_weights_transposed.info()->set_quantization_info( + recurrent_to_cell_weights->info()->quantization_info()); + _recurrent_to_output_weights_transposed.info()->set_quantization_info( + recurrent_to_output_weights->info()->quantization_info()); + + if (input_to_forget_weights->info()->data_type() == DataType::QASYMM8_SIGNED) + { + _convert_input_to_forget_weights_to_qsymm8 = true; + // Setup dequantize output tensor to go from QASYMM8_SIGNED -> F32 + + _input_to_forget_weights_f32.allocator()->init( + TensorInfo(input_to_forget_weights->info()->tensor_shape(), 1, DataType::F32) + .set_data_layout(input_to_forget_weights->info()->data_layout())); + // Setup the quantize output tensor to go from F32 -> QSYMM8 + _input_to_forget_weights_symm8.allocator()->init( + (TensorInfo(input_to_forget_weights->info()->tensor_shape(), 1, DataType::QSYMM8) + .set_data_layout(input_to_forget_weights->info()->data_layout()) + .set_quantization_info(input_to_forget_weights->info()->quantization_info()))); + + _dequantize_input_to_forget_weights.configure(input_to_forget_weights, &_input_to_forget_weights_f32); + _quantize_input_to_forget_weights.configure(&_input_to_forget_weights_f32, &_input_to_forget_weights_symm8); + + ARM_COMPUTE_ERROR_THROW_ON(NEQLSTMLayer::validate( + input->info(), _input_to_forget_weights_symm8.info(), input_to_cell_weights->info(), + input_to_output_weights->info(), recurrent_to_forget_weights->info(), recurrent_to_cell_weights->info(), + recurrent_to_output_weights->info(), forget_gate_bias->info(), cell_bias->info(), output_gate_bias->info(), + cell_state_in->info(), output_state_in->info(), cell_state_out->info(), output_state_out->info(), + output->info(), lstm_params_info)); + } + else + { + ARM_COMPUTE_ERROR_THROW_ON(NEQLSTMLayer::validate( + input->info(), input_to_forget_weights->info(), input_to_cell_weights->info(), + input_to_output_weights->info(), recurrent_to_forget_weights->info(), recurrent_to_cell_weights->info(), + recurrent_to_output_weights->info(), forget_gate_bias->info(), cell_bias->info(), output_gate_bias->info(), + cell_state_in->info(), output_state_in->info(), cell_state_out->info(), output_state_out->info(), + output->info(), lstm_params_info)); + } const int batch_size = input->info()->dimension(1); const int num_units = input_to_output_weights->info()->dimension(1); @@ -182,7 +308,9 @@ void NEQLSTMLayer::configure(const ITensor *input, const UniformQuantizationInfo qoutput_state_in = output_state_in->info()->quantization_info().uniform(); _projection_bias = lstm_params.projection_bias(); - _input_to_forget_weights = input_to_forget_weights; + _input_to_forget_weights = (input_to_forget_weights->info()->data_type() == DataType::QASYMM8_SIGNED) + ? &_input_to_forget_weights_symm8 + : input_to_forget_weights; _input_to_cell_weights = input_to_cell_weights; _input_to_output_weights = input_to_output_weights; _recurrent_to_forget_weights = recurrent_to_forget_weights; @@ -192,7 +320,7 @@ void NEQLSTMLayer::configure(const ITensor *input, // Layer normalization _has_layer_norm = lstm_params.use_layer_norm(); - if(_has_layer_norm) + if (_has_layer_norm) { set_layer_norm_weight(lstm_params.forget_layer_norm_weights(), LayerNormGate::Forget); set_layer_norm_weight(lstm_params.cell_layer_norm_weights(), LayerNormGate::Cell); @@ -214,44 +342,59 @@ void NEQLSTMLayer::configure(const ITensor *input, // Calculate quantized parameters for clipping. int16_t quantized_cell_clip = 0; - if(lstm_params.cell_clip() > 0.0f) + if (lstm_params.cell_clip() > 0.0f) { quantized_cell_clip = quantize_qsymm16(lstm_params.cell_clip(), qcell_state_in); } _has_cell_clipping = quantized_cell_clip > 0; // Precompute effective bias for optimizing the matmul computations. - if(!_has_cifg) + if (!_has_cifg) { _input_to_input_weights = lstm_params.input_to_input_weights(); _recurrent_to_input_weights = lstm_params.recurrent_to_input_weights(); - _input_to_input_reduction = arm_compute::support::cpp14::make_unique<NEGEMMLowpMatrixAReductionKernel>(); - _recurrent_to_input_reduction = arm_compute::support::cpp14::make_unique<NEGEMMLowpMatrixAReductionKernel>(); - _input_to_input_reduction->configure(_input_to_input_weights, &_input_to_input_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true)); - _recurrent_to_input_reduction->configure(_recurrent_to_input_weights, &_recurrent_to_input_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true)); + _input_to_input_reduction = std::make_unique<cpu::kernels::CpuGemmLowpMatrixAReductionKernel>(); + _recurrent_to_input_reduction = std::make_unique<cpu::kernels::CpuGemmLowpMatrixAReductionKernel>(); + _input_to_input_reduction->configure(_input_to_input_weights->info(), _input_to_input_eff_bias.info(), + GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true)); + _recurrent_to_input_reduction->configure( + _recurrent_to_input_weights->info(), _recurrent_to_input_eff_bias.info(), + GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true)); } - _input_to_forget_reduction = arm_compute::support::cpp14::make_unique<NEGEMMLowpMatrixAReductionKernel>(); - _recurrent_to_forget_reduction = arm_compute::support::cpp14::make_unique<NEGEMMLowpMatrixAReductionKernel>(); - _input_to_cell_reduction = arm_compute::support::cpp14::make_unique<NEGEMMLowpMatrixAReductionKernel>(); - _recurrent_to_cell_reduction = arm_compute::support::cpp14::make_unique<NEGEMMLowpMatrixAReductionKernel>(); - _input_to_output_reduction = arm_compute::support::cpp14::make_unique<NEGEMMLowpMatrixAReductionKernel>(); - _recurrent_to_output_reduction = arm_compute::support::cpp14::make_unique<NEGEMMLowpMatrixAReductionKernel>(); - - _recurrent_to_cell_reduction->configure(input_to_forget_weights, &_input_to_forget_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true)); - _recurrent_to_forget_reduction->configure(recurrent_to_forget_weights, &_recurrent_to_forget_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true)); - _input_to_cell_reduction->configure(input_to_cell_weights, &_input_to_cell_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true)); - _recurrent_to_cell_reduction->configure(recurrent_to_cell_weights, &_recurrent_to_cell_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true)); - _input_to_output_reduction->configure(input_to_output_weights, &_input_to_output_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true)); - _recurrent_to_output_reduction->configure(recurrent_to_output_weights, &_recurrent_to_output_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true)); - if(_has_projection) + _input_to_forget_reduction = std::make_unique<cpu::kernels::CpuGemmLowpMatrixAReductionKernel>(); + _recurrent_to_forget_reduction = std::make_unique<cpu::kernels::CpuGemmLowpMatrixAReductionKernel>(); + _input_to_cell_reduction = std::make_unique<cpu::kernels::CpuGemmLowpMatrixAReductionKernel>(); + _recurrent_to_cell_reduction = std::make_unique<cpu::kernels::CpuGemmLowpMatrixAReductionKernel>(); + _input_to_output_reduction = std::make_unique<cpu::kernels::CpuGemmLowpMatrixAReductionKernel>(); + _recurrent_to_output_reduction = std::make_unique<cpu::kernels::CpuGemmLowpMatrixAReductionKernel>(); + + _input_to_forget_reduction->configure(input_to_forget_weights->info(), _input_to_forget_eff_bias.info(), + GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true)); + _recurrent_to_forget_reduction->configure( + recurrent_to_forget_weights->info(), _recurrent_to_forget_eff_bias.info(), + GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true)); + _input_to_cell_reduction->configure(input_to_cell_weights->info(), _input_to_cell_eff_bias.info(), + GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true)); + _recurrent_to_cell_reduction->configure( + recurrent_to_cell_weights->info(), _recurrent_to_cell_eff_bias.info(), + GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true)); + _input_to_output_reduction->configure(input_to_output_weights->info(), _input_to_output_eff_bias.info(), + GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true)); + _recurrent_to_output_reduction->configure( + recurrent_to_output_weights->info(), _recurrent_to_output_eff_bias.info(), + GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true)); + if (_has_projection) { - _projection_reduction = arm_compute::support::cpp14::make_unique<NEGEMMLowpMatrixAReductionKernel>(); - _projection_reduction->configure(_projection_weights, &_projection_eff_bias, GEMMLowpReductionKernelInfo(output_size, false, lstm_params.hidden_state_zero(), true)); - if(_projection_bias != nullptr) + _projection_reduction = std::make_unique<cpu::kernels::CpuGemmLowpMatrixAReductionKernel>(); + _projection_reduction->configure( + _projection_weights->info(), _projection_eff_bias.info(), + GEMMLowpReductionKernelInfo(output_size, false, lstm_params.hidden_state_zero(), true)); + if (_projection_bias != nullptr) { - _projection_bias_add.configure(_projection_bias, &_projection_eff_bias, &_projection_eff_bias, ConvertPolicy::SATURATE); + _projection_bias_add.configure(_projection_bias, &_projection_eff_bias, &_projection_eff_bias, + ConvertPolicy::SATURATE); } } @@ -259,15 +402,19 @@ void NEQLSTMLayer::configure(const ITensor *input, _transpose_input_to_forget_weights.configure(input_to_forget_weights, &_input_to_forget_weights_transposed); _transpose_input_to_cell_weights.configure(input_to_cell_weights, &_input_to_cell_weights_transposed); _transpose_input_to_output_weights.configure(input_to_output_weights, &_input_to_output_weights_transposed); - _transpose_recurrent_to_forget_weights.configure(recurrent_to_forget_weights, &_recurrent_to_forget_weights_transposed); + _transpose_recurrent_to_forget_weights.configure(recurrent_to_forget_weights, + &_recurrent_to_forget_weights_transposed); _transpose_recurrent_to_cell_weights.configure(recurrent_to_cell_weights, &_recurrent_to_cell_weights_transposed); - _transpose_recurrent_to_output_weights.configure(recurrent_to_output_weights, &_recurrent_to_output_weights_transposed); - if(!_has_cifg) + _transpose_recurrent_to_output_weights.configure(recurrent_to_output_weights, + &_recurrent_to_output_weights_transposed); + if (!_has_cifg) { - _transpose_input_to_input_weights.configure(lstm_params.input_to_input_weights(), &_input_to_input_weights_transposed); - _transpose_recurrent_to_input_weights.configure(lstm_params.recurrent_to_input_weights(), &_recurrent_to_input_weights_transposed); + _transpose_input_to_input_weights.configure(lstm_params.input_to_input_weights(), + &_input_to_input_weights_transposed); + _transpose_recurrent_to_input_weights.configure(lstm_params.recurrent_to_input_weights(), + &_recurrent_to_input_weights_transposed); } - if(_has_projection) + if (_has_projection) { _transpose_projection_weights.configure(_projection_weights, &_projection_weights_transposed); } @@ -280,40 +427,52 @@ void NEQLSTMLayer::configure(const ITensor *input, const TensorInfo mm_out_info(TensorShape(num_units, batch_size), 1, DataType::S32); // Forget gate. - const TensorInfo forget_gate_outstage_info(mm_out_info.tensor_shape(), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.forget_intermediate_scale(), 0)); - const float input_to_forget_scale = input_to_forget_weights->info()->quantization_info().uniform().scale * qinput.scale / lstm_params.forget_intermediate_scale(); - configure_mm(_mm_input_to_forget, _input_to_forget_outstage, gemmlowp_info, - input, &_input_to_forget_weights_transposed, &_input_to_forget_eff_bias, - &_mm_input_to_forget_res, &_input_to_forget_outstage_res, input_to_forget_scale, - mm_out_info, forget_gate_outstage_info); - - const float recurrent_to_forget_scale = recurrent_to_forget_weights->info()->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.forget_intermediate_scale(); - configure_mm(_mm_recurrent_to_forget, _recurrent_to_forget_outstage, gemmlowp_info, - output_state_in, &_recurrent_to_forget_weights_transposed, &_recurrent_to_forget_eff_bias, - &_mm_recurrent_to_forget_res, &_recurrent_to_forget_outstage_res, recurrent_to_forget_scale, - mm_out_info, forget_gate_outstage_info); - - _accumulate_input_recurrent_forget.configure(&_input_to_forget_outstage_res, &_recurrent_to_forget_outstage_res, &_recurrent_to_forget_outstage_res, ConvertPolicy::SATURATE); + const TensorInfo forget_gate_outstage_info(mm_out_info.tensor_shape(), 1, DataType::QSYMM16, + QuantizationInfo(lstm_params.forget_intermediate_scale(), 0)); + const float input_to_forget_scale = input_to_forget_weights->info()->quantization_info().uniform().scale * + qinput.scale / lstm_params.forget_intermediate_scale(); + configure_mm(_mm_input_to_forget, _input_to_forget_outstage, gemmlowp_info, input, + &_input_to_forget_weights_transposed, &_input_to_forget_eff_bias, &_mm_input_to_forget_res, + &_input_to_forget_outstage_res, input_to_forget_scale, mm_out_info, forget_gate_outstage_info); + + const float recurrent_to_forget_scale = recurrent_to_forget_weights->info()->quantization_info().uniform().scale * + qoutput_state_in.scale / lstm_params.forget_intermediate_scale(); + configure_mm(_mm_recurrent_to_forget, _recurrent_to_forget_outstage, gemmlowp_info, output_state_in, + &_recurrent_to_forget_weights_transposed, &_recurrent_to_forget_eff_bias, &_mm_recurrent_to_forget_res, + &_recurrent_to_forget_outstage_res, recurrent_to_forget_scale, mm_out_info, forget_gate_outstage_info); + + _accumulate_input_recurrent_forget.configure(&_input_to_forget_outstage_res, &_recurrent_to_forget_outstage_res, + &_recurrent_to_forget_outstage_res, ConvertPolicy::SATURATE); _input_to_forget_outstage_res.allocator()->allocate(); - if(_has_peephole) + if (_has_peephole) { _mul_cell_to_forget_res.allocator()->init(TensorInfo(cell_state_in->info()->tensor_shape(), 1, DataType::S32)); _memory_group.manage(&_mul_cell_to_forget_res); - _pixelwise_mul_cell_to_forget.configure(cell_state_in, lstm_params.cell_to_forget_weights(), &_mul_cell_to_forget_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO); - _cell_to_forget_outstage_res.allocator()->init(TensorInfo(_mul_cell_to_forget_res.info()->tensor_shape(), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.forget_intermediate_scale(), 0))); + _pixelwise_mul_cell_to_forget.configure(cell_state_in, lstm_params.cell_to_forget_weights(), + &_mul_cell_to_forget_res, 1.f, ConvertPolicy::SATURATE, + RoundingPolicy::TO_ZERO); + _cell_to_forget_outstage_res.allocator()->init( + TensorInfo(_mul_cell_to_forget_res.info()->tensor_shape(), 1, DataType::QSYMM16, + QuantizationInfo(lstm_params.forget_intermediate_scale(), 0))); _memory_group.manage(&_cell_to_forget_outstage_res); - const float cell_to_forget_scale = std::pow(2, cell_shift) * lstm_params.cell_to_forget_weights()->info()->quantization_info().uniform().scale / lstm_params.forget_intermediate_scale(); - quantization::calculate_quantized_multiplier(cell_to_forget_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift); - _cell_to_forget_outstage.configure(&_mul_cell_to_forget_res, nullptr, &_cell_to_forget_outstage_res, gemmlowp_info); + const float cell_to_forget_scale = + std::pow(2, cell_shift) * + lstm_params.cell_to_forget_weights()->info()->quantization_info().uniform().scale / + lstm_params.forget_intermediate_scale(); + quantization::calculate_quantized_multiplier(cell_to_forget_scale, &gemmlowp_info.gemmlowp_multiplier, + &gemmlowp_info.gemmlowp_shift); + _cell_to_forget_outstage.configure(&_mul_cell_to_forget_res, nullptr, &_cell_to_forget_outstage_res, + gemmlowp_info); _mul_cell_to_forget_res.allocator()->allocate(); - _accumulate_cell_forget.configure(&_recurrent_to_forget_outstage_res, &_cell_to_forget_outstage_res, &_recurrent_to_forget_outstage_res, ConvertPolicy::SATURATE); + _accumulate_cell_forget.configure(&_recurrent_to_forget_outstage_res, &_cell_to_forget_outstage_res, + &_recurrent_to_forget_outstage_res, ConvertPolicy::SATURATE); _cell_to_forget_outstage_res.allocator()->allocate(); } Tensor *forget_activation_input = &_recurrent_to_forget_outstage_res; - if(_has_layer_norm) + if (_has_layer_norm) { configure_layer_norm(LayerNormGate::Forget, forget_activation_input); forget_activation_input->allocator()->allocate(); @@ -322,33 +481,36 @@ void NEQLSTMLayer::configure(const ITensor *input, // Output quantization info of Sigmoid and Tanh activations const QuantizationInfo sigmoid_tanh_outqinfo(1.f / 32768.f, 0); - const TensorInfo forget_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo); + const TensorInfo forget_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo); _memory_group.manage(&_forget_gate); _forget_gate.allocator()->init(forget_gate_info); - _forget_gate_sigmoid.configure(forget_activation_input, &_forget_gate, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC)); + _forget_gate_sigmoid.configure(forget_activation_input, &_forget_gate, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC)); forget_activation_input->allocator()->allocate(); // Modulation gate. - const TensorInfo cell_outstage_info(mm_out_info.tensor_shape(), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.cell_intermediate_scale(), 0)); - const float input_to_cell_scale = input_to_cell_weights->info()->quantization_info().uniform().scale * qinput.scale / lstm_params.cell_intermediate_scale(); - configure_mm(_mm_input_to_cell, _input_to_cell_outstage, gemmlowp_info, - input, &_input_to_cell_weights_transposed, &_input_to_cell_eff_bias, - &_mm_input_to_cell_res, &_input_to_cell_outstage_res, input_to_cell_scale, + const TensorInfo cell_outstage_info(mm_out_info.tensor_shape(), 1, DataType::QSYMM16, + QuantizationInfo(lstm_params.cell_intermediate_scale(), 0)); + const float input_to_cell_scale = input_to_cell_weights->info()->quantization_info().uniform().scale * + qinput.scale / lstm_params.cell_intermediate_scale(); + configure_mm(_mm_input_to_cell, _input_to_cell_outstage, gemmlowp_info, input, &_input_to_cell_weights_transposed, + &_input_to_cell_eff_bias, &_mm_input_to_cell_res, &_input_to_cell_outstage_res, input_to_cell_scale, mm_out_info, cell_outstage_info); - const float recurrent_to_cell_scale = recurrent_to_cell_weights->info()->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.cell_intermediate_scale(); - configure_mm(_mm_recurrent_to_cell, _recurrent_to_cell_outstage, gemmlowp_info, - output_state_in, &_recurrent_to_cell_weights_transposed, &_recurrent_to_cell_eff_bias, - &_mm_recurrent_to_cell_res, &_recurrent_to_cell_outstage_res, recurrent_to_cell_scale, - mm_out_info, cell_outstage_info); + const float recurrent_to_cell_scale = recurrent_to_cell_weights->info()->quantization_info().uniform().scale * + qoutput_state_in.scale / lstm_params.cell_intermediate_scale(); + configure_mm(_mm_recurrent_to_cell, _recurrent_to_cell_outstage, gemmlowp_info, output_state_in, + &_recurrent_to_cell_weights_transposed, &_recurrent_to_cell_eff_bias, &_mm_recurrent_to_cell_res, + &_recurrent_to_cell_outstage_res, recurrent_to_cell_scale, mm_out_info, cell_outstage_info); - _accumulate_input_recurrent_modulation.configure(&_input_to_cell_outstage_res, &_recurrent_to_cell_outstage_res, &_recurrent_to_cell_outstage_res, ConvertPolicy::SATURATE); + _accumulate_input_recurrent_modulation.configure(&_input_to_cell_outstage_res, &_recurrent_to_cell_outstage_res, + &_recurrent_to_cell_outstage_res, ConvertPolicy::SATURATE); _input_to_cell_outstage_res.allocator()->allocate(); Tensor *cell_activation_input = &_recurrent_to_cell_outstage_res; - if(_has_layer_norm) + if (_has_layer_norm) { configure_layer_norm(LayerNormGate::Cell, cell_activation_input); cell_activation_input->allocator()->allocate(); @@ -359,14 +521,15 @@ void NEQLSTMLayer::configure(const ITensor *input, _memory_group.manage(&_cell_gate); _cell_gate.allocator()->init(cell_gate_info); - _cell_gate_tanh.configure(cell_activation_input, &_cell_gate, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f)); + _cell_gate_tanh.configure(cell_activation_input, &_cell_gate, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f)); cell_activation_input->allocator()->allocate(); // Input gate. const TensorInfo input_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo); _input_gate.allocator()->init(input_gate_info); _memory_group.manage(&_input_gate); - if(_has_cifg) + if (_has_cifg) { _ones.allocator()->init(*_forget_gate.info()); _input_gate_sub.configure(&_ones, &_forget_gate, &_input_gate, ConvertPolicy::SATURATE); @@ -374,104 +537,137 @@ void NEQLSTMLayer::configure(const ITensor *input, } else { - const TensorInfo input_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.input_intermediate_scale(), 0)); - const float input_to_input_scale = _input_to_input_weights->info()->quantization_info().uniform().scale * qinput.scale / lstm_params.input_intermediate_scale(); - configure_mm(_mm_input_to_input, _input_to_input_outstage, gemmlowp_info, - input, &_input_to_input_weights_transposed, &_input_to_input_eff_bias, - &_mm_input_to_input_res, &_input_to_input_outstage_res, input_to_input_scale, - mm_out_info, input_outstage_info); - - const float recurrent_to_input_scale = _recurrent_to_input_weights->info()->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.input_intermediate_scale(); - configure_mm(_mm_recurrent_to_input, _recurrent_to_input_outstage, gemmlowp_info, - output_state_in, &_recurrent_to_input_weights_transposed, &_recurrent_to_input_eff_bias, + const TensorInfo input_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, + QuantizationInfo(lstm_params.input_intermediate_scale(), 0)); + const float input_to_input_scale = _input_to_input_weights->info()->quantization_info().uniform().scale * + qinput.scale / lstm_params.input_intermediate_scale(); + configure_mm(_mm_input_to_input, _input_to_input_outstage, gemmlowp_info, input, + &_input_to_input_weights_transposed, &_input_to_input_eff_bias, &_mm_input_to_input_res, + &_input_to_input_outstage_res, input_to_input_scale, mm_out_info, input_outstage_info); + + const float recurrent_to_input_scale = + _recurrent_to_input_weights->info()->quantization_info().uniform().scale * qoutput_state_in.scale / + lstm_params.input_intermediate_scale(); + configure_mm(_mm_recurrent_to_input, _recurrent_to_input_outstage, gemmlowp_info, output_state_in, + &_recurrent_to_input_weights_transposed, &_recurrent_to_input_eff_bias, &_mm_recurrent_to_input_res, &_recurrent_to_input_outstage_res, recurrent_to_input_scale, mm_out_info, input_outstage_info); - _accumulate_input_recurrent_input.configure(&_input_to_input_outstage_res, &_recurrent_to_input_outstage_res, &_recurrent_to_input_outstage_res, ConvertPolicy::SATURATE); + _accumulate_input_recurrent_input.configure(&_input_to_input_outstage_res, &_recurrent_to_input_outstage_res, + &_recurrent_to_input_outstage_res, ConvertPolicy::SATURATE); _input_to_input_outstage_res.allocator()->allocate(); - if(_has_peephole) + if (_has_peephole) { - _mul_cell_to_input_res.allocator()->init(TensorInfo(cell_state_in->info()->tensor_shape(), 1, DataType::S32)); + _mul_cell_to_input_res.allocator()->init( + TensorInfo(cell_state_in->info()->tensor_shape(), 1, DataType::S32)); _memory_group.manage(&_mul_cell_to_input_res); - _pixelwise_mul_cell_to_input.configure(cell_state_in, lstm_params.cell_to_input_weights(), &_mul_cell_to_input_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO); - const float cell_to_input_scale = std::pow(2, cell_shift) * lstm_params.cell_to_input_weights()->info()->quantization_info().uniform().scale / lstm_params.input_intermediate_scale(); - quantization::calculate_quantized_multiplier(cell_to_input_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift); - _cell_to_input_outstage_res.allocator()->init(TensorInfo(_mul_cell_to_input_res.info()->tensor_shape(), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.input_intermediate_scale(), 0))); + _pixelwise_mul_cell_to_input.configure(cell_state_in, lstm_params.cell_to_input_weights(), + &_mul_cell_to_input_res, 1.f, ConvertPolicy::SATURATE, + RoundingPolicy::TO_ZERO); + const float cell_to_input_scale = + std::pow(2, cell_shift) * + lstm_params.cell_to_input_weights()->info()->quantization_info().uniform().scale / + lstm_params.input_intermediate_scale(); + quantization::calculate_quantized_multiplier(cell_to_input_scale, &gemmlowp_info.gemmlowp_multiplier, + &gemmlowp_info.gemmlowp_shift); + _cell_to_input_outstage_res.allocator()->init( + TensorInfo(_mul_cell_to_input_res.info()->tensor_shape(), 1, DataType::QSYMM16, + QuantizationInfo(lstm_params.input_intermediate_scale(), 0))); _memory_group.manage(&_cell_to_input_outstage_res); - _cell_to_input_outstage.configure(&_mul_cell_to_input_res, nullptr, &_cell_to_input_outstage_res, gemmlowp_info); + _cell_to_input_outstage.configure(&_mul_cell_to_input_res, nullptr, &_cell_to_input_outstage_res, + gemmlowp_info); _mul_cell_to_input_res.allocator()->allocate(); - _accumulate_cell_input.configure(&_recurrent_to_input_outstage_res, &_cell_to_input_outstage_res, &_recurrent_to_input_outstage_res, ConvertPolicy::SATURATE); + _accumulate_cell_input.configure(&_recurrent_to_input_outstage_res, &_cell_to_input_outstage_res, + &_recurrent_to_input_outstage_res, ConvertPolicy::SATURATE); _cell_to_input_outstage_res.allocator()->allocate(); } Tensor *input_activation_input = &_recurrent_to_input_outstage_res; - if(_has_layer_norm) + if (_has_layer_norm) { configure_layer_norm(LayerNormGate::Input, input_activation_input); input_activation_input->allocator()->allocate(); input_activation_input = &get_layer_norm_output(LayerNormGate::Input); } - _input_gate_sigmoid.configure(input_activation_input, &_input_gate, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC)); + _input_gate_sigmoid.configure(input_activation_input, &_input_gate, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC)); input_activation_input->allocator()->allocate(); } // Cell. // TODO(COMPMID-3395): Perform multiplication in the quantized domain in NEPixelWiseMultiplication - _pixelwise_mul_forget_cell.configure(&_forget_gate, cell_state_in, &_forget_gate, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO); + _pixelwise_mul_forget_cell.configure(&_forget_gate, cell_state_in, &_forget_gate, 1.f, ConvertPolicy::SATURATE, + RoundingPolicy::TO_ZERO); const float cell_gate_scale = _cell_gate.info()->quantization_info().uniform().scale; const float mul_input_cell_scale = cell_gate_scale * std::pow(2, 15 + cell_shift); - const TensorInfo mul_input_cell_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(mul_input_cell_scale, 0)); + const TensorInfo mul_input_cell_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, + QuantizationInfo(mul_input_cell_scale, 0)); _memory_group.manage(&_mul_input_cell_res); _mul_input_cell_res.allocator()->init(mul_input_cell_info); - _pixelwise_mul_input_cell.configure(&_input_gate, &_cell_gate, &_mul_input_cell_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO); + _pixelwise_mul_input_cell.configure(&_input_gate, &_cell_gate, &_mul_input_cell_res, 1.f, ConvertPolicy::SATURATE, + RoundingPolicy::TO_ZERO); _cell_gate.allocator()->allocate(); _add_forget_cell.configure(&_forget_gate, &_mul_input_cell_res, cell_state_out, ConvertPolicy::SATURATE); _mul_input_cell_res.allocator()->allocate(); _forget_gate.allocator()->allocate(); - if(_has_cell_clipping) + if (_has_cell_clipping) { - _cell_clip.configure(cell_state_out, nullptr, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU, -quantized_cell_clip, quantized_cell_clip)); + _cell_clip.configure(cell_state_out, nullptr, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU, + -quantized_cell_clip, quantized_cell_clip)); } // Output gate. - const TensorInfo output_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.output_intermediate_scale(), 0)); - const float input_to_output_scale = input_to_output_weights->info()->quantization_info().uniform().scale * qinput.scale / lstm_params.output_intermediate_scale(); - configure_mm(_mm_input_to_output, _input_to_output_outstage, gemmlowp_info, - input, &_input_to_output_weights_transposed, &_input_to_output_eff_bias, - &_mm_input_to_output_res, &_input_to_output_outstage_res, input_to_output_scale, - mm_out_info, output_outstage_info); - - const float recurrent_to_output_scale = recurrent_to_output_weights->info()->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.output_intermediate_scale(); - configure_mm(_mm_recurrent_to_output, _recurrent_to_output_outstage, gemmlowp_info, - output_state_in, &_recurrent_to_output_weights_transposed, &_recurrent_to_output_eff_bias, - &_mm_recurrent_to_output_res, &_recurrent_to_output_outstage_res, recurrent_to_output_scale, - mm_out_info, output_outstage_info); - - _accumulate_input_recurrent_output.configure(&_recurrent_to_output_outstage_res, &_input_to_output_outstage_res, &_recurrent_to_output_outstage_res, ConvertPolicy::SATURATE); + const TensorInfo output_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, + QuantizationInfo(lstm_params.output_intermediate_scale(), 0)); + const float input_to_output_scale = input_to_output_weights->info()->quantization_info().uniform().scale * + qinput.scale / lstm_params.output_intermediate_scale(); + configure_mm(_mm_input_to_output, _input_to_output_outstage, gemmlowp_info, input, + &_input_to_output_weights_transposed, &_input_to_output_eff_bias, &_mm_input_to_output_res, + &_input_to_output_outstage_res, input_to_output_scale, mm_out_info, output_outstage_info); + + const float recurrent_to_output_scale = recurrent_to_output_weights->info()->quantization_info().uniform().scale * + qoutput_state_in.scale / lstm_params.output_intermediate_scale(); + configure_mm(_mm_recurrent_to_output, _recurrent_to_output_outstage, gemmlowp_info, output_state_in, + &_recurrent_to_output_weights_transposed, &_recurrent_to_output_eff_bias, &_mm_recurrent_to_output_res, + &_recurrent_to_output_outstage_res, recurrent_to_output_scale, mm_out_info, output_outstage_info); + + _accumulate_input_recurrent_output.configure(&_recurrent_to_output_outstage_res, &_input_to_output_outstage_res, + &_recurrent_to_output_outstage_res, ConvertPolicy::SATURATE); _input_to_output_outstage_res.allocator()->allocate(); - if(_has_peephole) + if (_has_peephole) { // TODO(COMPMID-3395): Perform multiplication in the quantized domain in NEPixelWiseMultiplication // Here we are not using the output stage because all operations are done in float _mul_cell_to_output_res.allocator()->init(TensorInfo(cell_state_out->info()->tensor_shape(), 1, DataType::S32)); _memory_group.manage(&_mul_cell_to_output_res); - _pixelwise_mul_cell_to_output.configure(cell_state_out, lstm_params.cell_to_output_weights(), &_mul_cell_to_output_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO); - - const float cell_to_output_scale = std::pow(2, cell_shift) * lstm_params.cell_to_output_weights()->info()->quantization_info().uniform().scale / lstm_params.output_intermediate_scale(); - quantization::calculate_quantized_multiplier(cell_to_output_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift); - _cell_to_output_outstage_res.allocator()->init(TensorInfo(_mul_cell_to_output_res.info()->tensor_shape(), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.output_intermediate_scale(), 0))); + _pixelwise_mul_cell_to_output.configure(cell_state_out, lstm_params.cell_to_output_weights(), + &_mul_cell_to_output_res, 1.f, ConvertPolicy::SATURATE, + RoundingPolicy::TO_ZERO); + + const float cell_to_output_scale = + std::pow(2, cell_shift) * + lstm_params.cell_to_output_weights()->info()->quantization_info().uniform().scale / + lstm_params.output_intermediate_scale(); + quantization::calculate_quantized_multiplier(cell_to_output_scale, &gemmlowp_info.gemmlowp_multiplier, + &gemmlowp_info.gemmlowp_shift); + _cell_to_output_outstage_res.allocator()->init( + TensorInfo(_mul_cell_to_output_res.info()->tensor_shape(), 1, DataType::QSYMM16, + QuantizationInfo(lstm_params.output_intermediate_scale(), 0))); _memory_group.manage(&_cell_to_output_outstage_res); - _cell_to_output_outstage.configure(&_mul_cell_to_output_res, nullptr, &_cell_to_output_outstage_res, gemmlowp_info); + _cell_to_output_outstage.configure(&_mul_cell_to_output_res, nullptr, &_cell_to_output_outstage_res, + gemmlowp_info); _mul_cell_to_output_res.allocator()->allocate(); - _accumulate_cell_to_output.configure(&_recurrent_to_output_outstage_res, &_cell_to_output_outstage_res, &_recurrent_to_output_outstage_res, ConvertPolicy::SATURATE); + _accumulate_cell_to_output.configure(&_recurrent_to_output_outstage_res, &_cell_to_output_outstage_res, + &_recurrent_to_output_outstage_res, ConvertPolicy::SATURATE); _cell_to_output_outstage_res.allocator()->allocate(); } Tensor *output_activation_input = &_recurrent_to_output_outstage_res; - if(_has_layer_norm) + if (_has_layer_norm) { configure_layer_norm(LayerNormGate::Output, output_activation_input); output_activation_input->allocator()->allocate(); @@ -481,20 +677,24 @@ void NEQLSTMLayer::configure(const ITensor *input, _memory_group.manage(&_output_gate); _output_gate.allocator()->init(output_gate_info); - _output_gate_sigmoid.configure(output_activation_input, &_output_gate, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC)); + _output_gate_sigmoid.configure(output_activation_input, &_output_gate, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC)); output_activation_input->allocator()->allocate(); // Hidden. - _hidden_tanh.configure(cell_state_out, &_input_gate, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f)); + _hidden_tanh.configure(cell_state_out, &_input_gate, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f)); // TODO(COMPMID-3395): Perform multiplication in the quantized domain in NEPixelWiseMultiplication _memory_group.manage(&_hidden_mul_res); const TensorInfo hidden_mul_res(_input_gate.info()->tensor_shape(), 1, DataType::S32); _hidden_mul_res.allocator()->init(hidden_mul_res); - _pixelwise_mul_hidden.configure(&_output_gate, &_input_gate, &_hidden_mul_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO); + _pixelwise_mul_hidden.configure(&_output_gate, &_input_gate, &_hidden_mul_res, 1.f, ConvertPolicy::SATURATE, + RoundingPolicy::TO_ZERO); _output_gate.allocator()->allocate(); _input_gate.allocator()->allocate(); const float hidden_state_scale = std::pow(2, -15) / lstm_params.hidden_state_scale() * std::pow(2, -15); - quantization::calculate_quantized_multiplier(hidden_state_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift, /* ignore_epsilon */ true); + quantization::calculate_quantized_multiplier(hidden_state_scale, &gemmlowp_info.gemmlowp_multiplier, + &gemmlowp_info.gemmlowp_shift, /* ignore_epsilon */ true); gemmlowp_info.gemmlowp_offset = lstm_params.hidden_state_zero(); gemmlowp_info.output_data_type = output_state_in->info()->data_type(); @@ -503,7 +703,7 @@ void NEQLSTMLayer::configure(const ITensor *input, _memory_group.manage(&_hidden_gate); - if(_projection_tensor_copy_required) + if (_projection_tensor_copy_required) { _hidden_gate.allocator()->init(*output_state_out->info()); _hidden_gate.info()->set_tensor_shape(_hidden_mul_res.info()->tensor_shape()); @@ -514,27 +714,26 @@ void NEQLSTMLayer::configure(const ITensor *input, _hidden_mul_res.allocator()->allocate(); // Projection. - if(_has_projection) + if (_has_projection) { const TensorInfo projection_outstage_info(*output_state_out->info()); - const UniformQuantizationInfo qprojection = _projection_weights->info()->quantization_info().uniform(); - const float projection_scale = qprojection.scale * lstm_params.hidden_state_scale() / qoutput_state_in.scale; - gemmlowp_info.gemmlowp_offset = qoutput_state_in.offset; - gemmlowp_info.gemmlowp_min_bound = std::numeric_limits<int8_t>::lowest(); - gemmlowp_info.gemmlowp_max_bound = std::numeric_limits<int8_t>::max(); - gemmlowp_info.output_data_type = DataType::QASYMM8_SIGNED; - - TensorInfo projection_mm_out_info{ mm_out_info }; + const UniformQuantizationInfo qprojection = _projection_weights->info()->quantization_info().uniform(); + const float projection_scale = qprojection.scale * lstm_params.hidden_state_scale() / qoutput_state_in.scale; + gemmlowp_info.gemmlowp_offset = qoutput_state_in.offset; + gemmlowp_info.gemmlowp_min_bound = std::numeric_limits<int8_t>::lowest(); + gemmlowp_info.gemmlowp_max_bound = std::numeric_limits<int8_t>::max(); + gemmlowp_info.output_data_type = DataType::QASYMM8_SIGNED; + + TensorInfo projection_mm_out_info{mm_out_info}; projection_mm_out_info.set_tensor_shape(TensorShape(output_size, batch_size)); - configure_mm(_mm_projection, _projection_outstage, gemmlowp_info, - hidden_gate_result, &_projection_weights_transposed, &_projection_eff_bias, - &_mm_projection_res, &_projection_outstage_res, projection_scale, - projection_mm_out_info, projection_outstage_info); + configure_mm(_mm_projection, _projection_outstage, gemmlowp_info, hidden_gate_result, + &_projection_weights_transposed, &_projection_eff_bias, &_mm_projection_res, + &_projection_outstage_res, projection_scale, projection_mm_out_info, projection_outstage_info); ITensor *accumulate_destination = output_state_out; - if(_projection_tensor_copy_required) + if (_projection_tensor_copy_required) { _hidden_gate.allocator()->allocate(); _projection_accumulate_res.allocator()->init(*output_state_in->info()); @@ -543,30 +742,34 @@ void NEQLSTMLayer::configure(const ITensor *input, accumulate_destination = &_projection_accumulate_res; } - _accumulate_projection.configure(&_projection_outstage_res, accumulate_destination, accumulate_destination, ConvertPolicy::SATURATE); + _accumulate_projection.configure(&_projection_outstage_res, accumulate_destination, accumulate_destination, + ConvertPolicy::SATURATE); _projection_outstage_res.allocator()->allocate(); - if(_projection_tensor_copy_required) + if (_projection_tensor_copy_required) { _projection_accumulate_to_output_copy.configure(_projection_accumulate_res, *output_state_out); _projection_accumulate_res.allocator()->allocate(); } - int8_t quantized_projection_clip{ 0 }; - if(lstm_params.projection_clip() > 0.0f) + int8_t quantized_projection_clip{0}; + if (lstm_params.projection_clip() > 0.0f) { - quantized_projection_clip = utility::clamp<int8_t>(lstm_params.projection_clip() / qprojection.scale, -128, 127); + quantized_projection_clip = + utility::clamp<int8_t>(lstm_params.projection_clip() / qprojection.scale, -128, 127); } - if(quantized_projection_clip > 0) + if (quantized_projection_clip > 0) { - _projection_clip.configure(output_state_out, nullptr, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU, -quantized_projection_clip, quantized_projection_clip)); + _projection_clip.configure(output_state_out, nullptr, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU, + -quantized_projection_clip, quantized_projection_clip)); _has_projection_clipping = true; } } else { - if(_projection_tensor_copy_required) + if (_projection_tensor_copy_required) { _hidden_to_output_copy.configure(_hidden_gate, *output_state_out); _hidden_gate.allocator()->allocate(); @@ -577,17 +780,27 @@ void NEQLSTMLayer::configure(const ITensor *input, _copy_output.configure(output_state_out, output); } -Status NEQLSTMLayer::validate(const ITensorInfo *input, - const ITensorInfo *input_to_forget_weights, const ITensorInfo *input_to_cell_weights, const ITensorInfo *input_to_output_weights, - const ITensorInfo *recurrent_to_forget_weights, const ITensorInfo *recurrent_to_cell_weights, const ITensorInfo *recurrent_to_output_weights, - const ITensorInfo *forget_gate_bias, const ITensorInfo *cell_bias, const ITensorInfo *output_gate_bias, - const ITensorInfo *cell_state_in, const ITensorInfo *output_state_in, - const ITensorInfo *cell_state_out, const ITensorInfo *output_state_out, const ITensorInfo *output, +Status NEQLSTMLayer::validate(const ITensorInfo *input, + const ITensorInfo *input_to_forget_weights, + const ITensorInfo *input_to_cell_weights, + const ITensorInfo *input_to_output_weights, + const ITensorInfo *recurrent_to_forget_weights, + const ITensorInfo *recurrent_to_cell_weights, + const ITensorInfo *recurrent_to_output_weights, + const ITensorInfo *forget_gate_bias, + const ITensorInfo *cell_bias, + const ITensorInfo *output_gate_bias, + const ITensorInfo *cell_state_in, + const ITensorInfo *output_state_in, + const ITensorInfo *cell_state_out, + const ITensorInfo *output_state_out, + const ITensorInfo *output, const LSTMParams<ITensorInfo> &lstm_params) { - ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(input, input_to_forget_weights, input_to_cell_weights, input_to_output_weights, recurrent_to_forget_weights, recurrent_to_cell_weights, - recurrent_to_output_weights, forget_gate_bias, cell_bias, output_gate_bias, cell_state_in, output_state_in, - cell_state_out, output_state_out, output); + ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(input, input_to_forget_weights, input_to_cell_weights, input_to_output_weights, + recurrent_to_forget_weights, recurrent_to_cell_weights, + recurrent_to_output_weights, forget_gate_bias, cell_bias, output_gate_bias, + cell_state_in, output_state_in, cell_state_out, output_state_out, output); ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(input, 1, DataType::QASYMM8_SIGNED); ARM_COMPUTE_RETURN_ERROR_ON_MSG(input->num_dimensions() != 2, "Input must have exactly 2 dimensions"); @@ -599,14 +812,28 @@ Status NEQLSTMLayer::validate(const ITensorInfo *input, ARM_COMPUTE_RETURN_ERROR_ON(input_to_output_weights->num_dimensions() != 2); ARM_COMPUTE_RETURN_ERROR_ON(input_to_output_weights->dimension(0) != input_size); - ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(input_to_output_weights, input_to_forget_weights, input_to_cell_weights); + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(input_to_output_weights, input_to_forget_weights, + input_to_cell_weights); ARM_COMPUTE_RETURN_ERROR_ON(recurrent_to_output_weights->num_dimensions() != 2); ARM_COMPUTE_RETURN_ERROR_ON(recurrent_to_output_weights->dimension(1) != num_units); - ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(recurrent_to_output_weights, recurrent_to_forget_weights, recurrent_to_cell_weights); - ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(input_to_forget_weights, 1, DataType::QSYMM8); - ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input_to_forget_weights, input_to_cell_weights, input_to_output_weights, - recurrent_to_forget_weights, recurrent_to_cell_weights, recurrent_to_output_weights); + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(recurrent_to_output_weights, recurrent_to_forget_weights, + recurrent_to_cell_weights); + ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(input_to_forget_weights, 1, DataType::QASYMM8_SIGNED, + DataType::QSYMM8); + // If the input_to_forget_weights data type is DataType::QSYMM8 then it can never match the other weights as they are all DataType::QASYMM8_SIGNED + if (input_to_forget_weights->data_type() == DataType::QSYMM8) + { + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input_to_cell_weights, input_to_output_weights, + recurrent_to_forget_weights, recurrent_to_cell_weights, + recurrent_to_output_weights); + } + else + { + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input_to_forget_weights, input_to_cell_weights, + input_to_output_weights, recurrent_to_forget_weights, + recurrent_to_cell_weights, recurrent_to_output_weights); + } ARM_COMPUTE_RETURN_ERROR_ON(forget_gate_bias->num_dimensions() != 1); ARM_COMPUTE_RETURN_ERROR_ON(forget_gate_bias->dimension(0) != num_units); ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(forget_gate_bias, cell_bias, output_gate_bias); @@ -624,20 +851,25 @@ Status NEQLSTMLayer::validate(const ITensorInfo *input, ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input, output_state_in); // Check whether peephole weights are all there or none - if(lstm_params.has_peephole_opt()) + if (lstm_params.has_peephole_opt()) { ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(lstm_params.cell_to_forget_weights(), lstm_params.cell_to_output_weights()); - ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(lstm_params.cell_to_forget_weights(), 1, DataType::QSYMM16); + ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(lstm_params.cell_to_forget_weights(), 1, + DataType::QSYMM16); ARM_COMPUTE_RETURN_ERROR_ON(lstm_params.cell_to_forget_weights()->num_dimensions() != 1); ARM_COMPUTE_RETURN_ERROR_ON(lstm_params.cell_to_forget_weights()->dimension(0) != num_units); - ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(lstm_params.cell_to_forget_weights(), lstm_params.cell_to_output_weights()); - ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(lstm_params.cell_to_forget_weights(), lstm_params.cell_to_output_weights()); + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(lstm_params.cell_to_forget_weights(), + lstm_params.cell_to_output_weights()); + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(lstm_params.cell_to_forget_weights(), + lstm_params.cell_to_output_weights()); - if(!lstm_params.has_cifg_opt()) + if (!lstm_params.has_cifg_opt()) { ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(lstm_params.cell_to_input_weights()); - ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(lstm_params.cell_to_forget_weights(), lstm_params.cell_to_input_weights()); - ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(lstm_params.cell_to_forget_weights(), lstm_params.cell_to_input_weights()); + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(lstm_params.cell_to_forget_weights(), + lstm_params.cell_to_input_weights()); + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(lstm_params.cell_to_forget_weights(), + lstm_params.cell_to_input_weights()); } } @@ -651,7 +883,7 @@ Status NEQLSTMLayer::validate(const ITensorInfo *input, // Calculate quantized parameters for clipping. int16_t quantized_cell_clip = 0; - if(lstm_params.cell_clip() > 0.0f) + if (lstm_params.cell_clip() > 0.0f) { quantized_cell_clip = quantize_qsymm16(lstm_params.cell_clip(), qcell_state_in); } @@ -659,49 +891,90 @@ Status NEQLSTMLayer::validate(const ITensorInfo *input, // Precompute effective bias for optimizing the matmul computations. const TensorInfo eff_bias_info(TensorShape(num_units), 1, DataType::S32); const TensorInfo projection_eff_bias_info(TensorShape(output_size), 1, DataType::S32); - if(!lstm_params.has_cifg_opt()) + if (!lstm_params.has_cifg_opt()) { - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpMatrixAReductionKernel::validate(lstm_params.input_to_input_weights(), &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true))); - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpMatrixAReductionKernel::validate(lstm_params.recurrent_to_input_weights(), &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, - true))); + ARM_COMPUTE_RETURN_ON_ERROR(cpu::kernels::CpuGemmLowpMatrixAReductionKernel::validate( + lstm_params.input_to_input_weights(), &eff_bias_info, + GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true))); + ARM_COMPUTE_RETURN_ON_ERROR(cpu::kernels::CpuGemmLowpMatrixAReductionKernel::validate( + lstm_params.recurrent_to_input_weights(), &eff_bias_info, + GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true))); } - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpMatrixAReductionKernel::validate(input_to_forget_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true))); - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpMatrixAReductionKernel::validate(recurrent_to_forget_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true))); - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpMatrixAReductionKernel::validate(input_to_cell_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true))); - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpMatrixAReductionKernel::validate(recurrent_to_cell_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true))); - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpMatrixAReductionKernel::validate(input_to_output_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true))); - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpMatrixAReductionKernel::validate(recurrent_to_output_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true))); - if(lstm_params.has_projection()) + ARM_COMPUTE_RETURN_ON_ERROR(cpu::kernels::CpuGemmLowpMatrixAReductionKernel::validate( + input_to_forget_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true))); + ARM_COMPUTE_RETURN_ON_ERROR(cpu::kernels::CpuGemmLowpMatrixAReductionKernel::validate( + recurrent_to_forget_weights, &eff_bias_info, + GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true))); + ARM_COMPUTE_RETURN_ON_ERROR(cpu::kernels::CpuGemmLowpMatrixAReductionKernel::validate( + input_to_cell_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true))); + ARM_COMPUTE_RETURN_ON_ERROR(cpu::kernels::CpuGemmLowpMatrixAReductionKernel::validate( + recurrent_to_cell_weights, &eff_bias_info, + GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true))); + ARM_COMPUTE_RETURN_ON_ERROR(cpu::kernels::CpuGemmLowpMatrixAReductionKernel::validate( + input_to_output_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true))); + ARM_COMPUTE_RETURN_ON_ERROR(cpu::kernels::CpuGemmLowpMatrixAReductionKernel::validate( + recurrent_to_output_weights, &eff_bias_info, + GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true))); + if (lstm_params.has_projection()) { - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpMatrixAReductionKernel::validate(lstm_params.projection_weights(), &projection_eff_bias_info, GEMMLowpReductionKernelInfo(output_size, false, - lstm_params.hidden_state_zero(), - true))); - if(lstm_params.projection_bias() != nullptr) + ARM_COMPUTE_RETURN_ON_ERROR(cpu::kernels::CpuGemmLowpMatrixAReductionKernel::validate( + lstm_params.projection_weights(), &projection_eff_bias_info, + GEMMLowpReductionKernelInfo(output_size, false, lstm_params.hidden_state_zero(), true))); + if (lstm_params.projection_bias() != nullptr) { ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(lstm_params.projection_bias(), 1, DataType::S32); - ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(lstm_params.projection_bias(), &projection_eff_bias_info, &projection_eff_bias_info, ConvertPolicy::SATURATE)); + ARM_COMPUTE_RETURN_ON_ERROR( + NEArithmeticAddition::validate(lstm_params.projection_bias(), &projection_eff_bias_info, + &projection_eff_bias_info, ConvertPolicy::SATURATE)); } } - const TensorInfo input_weights_transposed(TensorShape(num_units, input_size), 1, input_to_forget_weights->data_type(), input_to_forget_weights->quantization_info()); - const TensorInfo recurrent_weights_transposed(TensorShape(num_units, output_size), 1, recurrent_to_forget_weights->data_type(), recurrent_to_forget_weights->quantization_info()); + const TensorInfo input_weights_transposed(TensorShape(num_units, input_size), 1, input_to_cell_weights->data_type(), + input_to_cell_weights->quantization_info()); + const TensorInfo input_to_output_weights_transposed(TensorShape(num_units, input_size), 1, + input_to_output_weights->data_type(), + input_to_output_weights->quantization_info()); + const TensorInfo recurrent_to_forget_weights_transposed(TensorShape(num_units, output_size), 1, + recurrent_to_forget_weights->data_type(), + recurrent_to_forget_weights->quantization_info()); + const TensorInfo recurrent_to_cell_weights_transposed(TensorShape(num_units, output_size), 1, + recurrent_to_cell_weights->data_type(), + recurrent_to_cell_weights->quantization_info()); + const TensorInfo recurrent_to_output_weights_transposed(TensorShape(num_units, output_size), 1, + recurrent_to_output_weights->data_type(), + recurrent_to_output_weights->quantization_info()); + const TensorInfo recurrent_weights_transposed(TensorShape(num_units, output_size), 1, + recurrent_to_forget_weights->data_type(), + recurrent_to_forget_weights->quantization_info()); - // Validate weights transpose - ARM_COMPUTE_RETURN_ON_ERROR(NETranspose::validate(input_to_forget_weights, &input_weights_transposed)); ARM_COMPUTE_RETURN_ON_ERROR(NETranspose::validate(input_to_cell_weights, &input_weights_transposed)); - ARM_COMPUTE_RETURN_ON_ERROR(NETranspose::validate(input_to_output_weights, &input_weights_transposed)); - ARM_COMPUTE_RETURN_ON_ERROR(NETranspose::validate(recurrent_to_forget_weights, &recurrent_weights_transposed)); - ARM_COMPUTE_RETURN_ON_ERROR(NETranspose::validate(recurrent_to_cell_weights, &recurrent_weights_transposed)); - ARM_COMPUTE_RETURN_ON_ERROR(NETranspose::validate(recurrent_to_output_weights, &recurrent_weights_transposed)); - if(!lstm_params.has_cifg_opt()) + ARM_COMPUTE_RETURN_ON_ERROR(NETranspose::validate(input_to_output_weights, &input_to_output_weights_transposed)); + ARM_COMPUTE_RETURN_ON_ERROR( + NETranspose::validate(recurrent_to_forget_weights, &recurrent_to_forget_weights_transposed)); + ARM_COMPUTE_RETURN_ON_ERROR( + NETranspose::validate(recurrent_to_cell_weights, &recurrent_to_cell_weights_transposed)); + ARM_COMPUTE_RETURN_ON_ERROR( + NETranspose::validate(recurrent_to_output_weights, &recurrent_to_output_weights_transposed)); + if (!lstm_params.has_cifg_opt()) { - ARM_COMPUTE_RETURN_ON_ERROR(NETranspose::validate(lstm_params.input_to_input_weights(), &input_weights_transposed)); - ARM_COMPUTE_RETURN_ON_ERROR(NETranspose::validate(lstm_params.recurrent_to_input_weights(), &recurrent_weights_transposed)); + const TensorInfo recurrent_to_input_weights_transposed( + TensorShape(num_units, output_size), 1, recurrent_to_forget_weights->data_type(), + lstm_params.recurrent_to_input_weights()->quantization_info()); + const TensorInfo input_to_input_weights_transposed(TensorShape(num_units, input_size), 1, + lstm_params.input_to_input_weights()->data_type(), + lstm_params.input_to_input_weights()->quantization_info()); + ARM_COMPUTE_RETURN_ON_ERROR( + NETranspose::validate(lstm_params.input_to_input_weights(), &input_to_input_weights_transposed)); + ARM_COMPUTE_RETURN_ON_ERROR( + NETranspose::validate(lstm_params.recurrent_to_input_weights(), &recurrent_to_input_weights_transposed)); } - if(lstm_params.has_projection()) + if (lstm_params.has_projection()) { - const TensorInfo projection_weights_transposed(TensorShape(output_size, num_units), 1, lstm_params.projection_weights()->data_type(), lstm_params.projection_weights()->quantization_info()); - ARM_COMPUTE_RETURN_ON_ERROR(NETranspose::validate(lstm_params.projection_weights(), &projection_weights_transposed)); + const TensorInfo projection_weights_transposed(TensorShape(output_size, num_units), 1, + lstm_params.projection_weights()->data_type(), + lstm_params.projection_weights()->quantization_info()); + ARM_COMPUTE_RETURN_ON_ERROR( + NETranspose::validate(lstm_params.projection_weights(), &projection_weights_transposed)); } GEMMLowpOutputStageInfo gemmlowp_info; @@ -714,28 +987,42 @@ Status NEQLSTMLayer::validate(const ITensorInfo *input, // Forget gate. ARM_COMPUTE_RETURN_ERROR_ON(lstm_params.forget_intermediate_scale() == 0); - const TensorInfo forget_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.forget_intermediate_scale(), 0)); + const TensorInfo forget_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, + QuantizationInfo(lstm_params.forget_intermediate_scale(), 0)); const TensorInfo mm_out_info(TensorShape(num_units, batch_size), 1, DataType::S32); - const float input_to_forget_scale = input_to_forget_weights->quantization_info().uniform().scale * qinput.scale / lstm_params.forget_intermediate_scale(); - ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, input, &input_weights_transposed, &eff_bias_info, input_to_forget_scale, &mm_out_info, &forget_outstage_info)); + const float input_to_forget_scale = input_to_forget_weights->quantization_info().uniform().scale * qinput.scale / + lstm_params.forget_intermediate_scale(); + ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, input, &input_weights_transposed, &eff_bias_info, + input_to_forget_scale, &mm_out_info, &forget_outstage_info)); - const float recurrent_to_forget_scale = recurrent_to_forget_weights->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.forget_intermediate_scale(); - ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, output_state_in, &recurrent_weights_transposed, &eff_bias_info, recurrent_to_forget_scale, &mm_out_info, &forget_outstage_info)); + const float recurrent_to_forget_scale = recurrent_to_forget_weights->quantization_info().uniform().scale * + qoutput_state_in.scale / lstm_params.forget_intermediate_scale(); + ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, output_state_in, &recurrent_weights_transposed, + &eff_bias_info, recurrent_to_forget_scale, &mm_out_info, + &forget_outstage_info)); - ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&forget_outstage_info, &forget_outstage_info, &forget_outstage_info, ConvertPolicy::SATURATE)); + ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&forget_outstage_info, &forget_outstage_info, + &forget_outstage_info, ConvertPolicy::SATURATE)); - if(lstm_params.has_peephole_opt()) + if (lstm_params.has_peephole_opt()) { - ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(lstm_params.cell_to_forget_weights(), 1, DataType::QSYMM16); - ARM_COMPUTE_RETURN_ON_ERROR(NEPixelWiseMultiplication::validate(cell_state_in, lstm_params.cell_to_forget_weights(), &mm_out_info, 1.f, ConvertPolicy::SATURATE, - RoundingPolicy::TO_ZERO)); - const float cell_to_forget_scale = std::pow(2, cell_shift) * lstm_params.cell_to_forget_weights()->quantization_info().uniform().scale / lstm_params.forget_intermediate_scale(); - ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier(cell_to_forget_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift)); - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpOutputStage::validate(&mm_out_info, nullptr, &forget_outstage_info, gemmlowp_info)); - ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&forget_outstage_info, &forget_outstage_info, &forget_outstage_info, ConvertPolicy::SATURATE)); + ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(lstm_params.cell_to_forget_weights(), 1, + DataType::QSYMM16); + ARM_COMPUTE_RETURN_ON_ERROR( + NEPixelWiseMultiplication::validate(cell_state_in, lstm_params.cell_to_forget_weights(), &mm_out_info, 1.f, + ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO)); + const float cell_to_forget_scale = std::pow(2, cell_shift) * + lstm_params.cell_to_forget_weights()->quantization_info().uniform().scale / + lstm_params.forget_intermediate_scale(); + ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier( + cell_to_forget_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift)); + ARM_COMPUTE_RETURN_ON_ERROR( + NEGEMMLowpOutputStage::validate(&mm_out_info, nullptr, &forget_outstage_info, gemmlowp_info)); + ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&forget_outstage_info, &forget_outstage_info, + &forget_outstage_info, ConvertPolicy::SATURATE)); } - if(has_layer_norm) + if (has_layer_norm) { const ITensorInfo *w_info = lstm_params.forget_layer_norm_weights(); const ITensorInfo *b_info = forget_gate_bias; @@ -744,22 +1031,31 @@ Status NEQLSTMLayer::validate(const ITensorInfo *input, // Output quantization info of Sigmoid and Tanh activations const QuantizationInfo sigmoid_tanh_outqinfo(1.f / 32768.f, 0); - const TensorInfo forget_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo); + const TensorInfo forget_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo); - ARM_COMPUTE_RETURN_ON_ERROR(NEActivationLayer::validate(&forget_outstage_info, &forget_gate_info, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC))); + ARM_COMPUTE_RETURN_ON_ERROR( + NEActivationLayer::validate(&forget_outstage_info, &forget_gate_info, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC))); // Modulation gate. ARM_COMPUTE_RETURN_ERROR_ON(lstm_params.cell_intermediate_scale() == 0); - const TensorInfo cell_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.cell_intermediate_scale(), 0)); - const float input_to_cell_scale = input_to_cell_weights->quantization_info().uniform().scale * qinput.scale / lstm_params.cell_intermediate_scale(); - ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, input, &input_weights_transposed, &eff_bias_info, input_to_cell_scale, &mm_out_info, &cell_outstage_info)); - - const float recurrent_to_cell_scale = recurrent_to_cell_weights->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.cell_intermediate_scale(); - ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, output_state_in, &recurrent_weights_transposed, &eff_bias_info, recurrent_to_cell_scale, &mm_out_info, &cell_outstage_info)); - - ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&cell_outstage_info, &cell_outstage_info, &cell_outstage_info, ConvertPolicy::SATURATE)); - - if(has_layer_norm) + const TensorInfo cell_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, + QuantizationInfo(lstm_params.cell_intermediate_scale(), 0)); + const float input_to_cell_scale = input_to_cell_weights->quantization_info().uniform().scale * qinput.scale / + lstm_params.cell_intermediate_scale(); + ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, input, &input_weights_transposed, &eff_bias_info, + input_to_cell_scale, &mm_out_info, &cell_outstage_info)); + + const float recurrent_to_cell_scale = recurrent_to_cell_weights->quantization_info().uniform().scale * + qoutput_state_in.scale / lstm_params.cell_intermediate_scale(); + ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, output_state_in, &recurrent_weights_transposed, + &eff_bias_info, recurrent_to_cell_scale, &mm_out_info, + &cell_outstage_info)); + + ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&cell_outstage_info, &cell_outstage_info, + &cell_outstage_info, ConvertPolicy::SATURATE)); + + if (has_layer_norm) { const ITensorInfo *w_info = lstm_params.cell_layer_norm_weights(); const ITensorInfo *b_info = cell_bias; @@ -767,85 +1063,134 @@ Status NEQLSTMLayer::validate(const ITensorInfo *input, } const TensorInfo cell_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo); - ARM_COMPUTE_RETURN_ON_ERROR(NEActivationLayer::validate(&cell_outstage_info, &cell_gate_info, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f))); + ARM_COMPUTE_RETURN_ON_ERROR( + NEActivationLayer::validate(&cell_outstage_info, &cell_gate_info, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f))); // Input gate. const TensorInfo input_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo); - if(lstm_params.has_cifg_opt()) + if (lstm_params.has_cifg_opt()) { - ARM_COMPUTE_RETURN_ERROR_ON_MSG(lstm_params.input_gate_bias() != nullptr, "Input gate bias must not be present when CIFG is used"); - ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticSubtraction::validate(&input_gate_info, &forget_gate_info, &forget_gate_info, ConvertPolicy::SATURATE)); + ARM_COMPUTE_RETURN_ERROR_ON_MSG(lstm_params.input_gate_bias() != nullptr, + "Input gate bias must not be present when CIFG is used"); + ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticSubtraction::validate(&input_gate_info, &forget_gate_info, + &forget_gate_info, ConvertPolicy::SATURATE)); } else { - ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(lstm_params.input_to_input_weights(), lstm_params.recurrent_to_input_weights(), lstm_params.input_gate_bias()); - ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input_to_forget_weights, lstm_params.input_to_input_weights(), lstm_params.recurrent_to_input_weights()); + ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(lstm_params.input_to_input_weights(), + lstm_params.recurrent_to_input_weights(), lstm_params.input_gate_bias()); + + // If the input_to_forget_weights data type is DataType::QSYMM8 then it can never match the other weights as they are all DataType::QASYMM8_SIGNED + if (input_to_forget_weights->data_type() == DataType::QSYMM8) + { + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(lstm_params.input_to_input_weights(), + lstm_params.recurrent_to_input_weights()); + } + else + { + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input_to_forget_weights, + lstm_params.input_to_input_weights(), + lstm_params.recurrent_to_input_weights()); + } ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(input_to_forget_weights, lstm_params.input_to_input_weights()); - ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(recurrent_to_forget_weights, lstm_params.recurrent_to_input_weights()); + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(recurrent_to_forget_weights, + lstm_params.recurrent_to_input_weights()); ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(forget_gate_bias, lstm_params.input_gate_bias()); ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(forget_gate_bias, lstm_params.input_gate_bias()); ARM_COMPUTE_RETURN_ERROR_ON(lstm_params.input_intermediate_scale() == 0); - const TensorInfo input_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.input_intermediate_scale(), 0)); - const float input_to_input_scale = lstm_params.input_to_input_weights()->quantization_info().uniform().scale * qinput.scale / lstm_params.input_intermediate_scale(); - ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, input, &input_weights_transposed, &eff_bias_info, input_to_input_scale, &mm_out_info, &input_outstage_info)); - - const float recurrent_to_input_scale = lstm_params.recurrent_to_input_weights()->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.input_intermediate_scale(); - ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, output_state_in, &recurrent_weights_transposed, &eff_bias_info, recurrent_to_input_scale, &mm_out_info, &input_outstage_info)); - - ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&input_outstage_info, &input_outstage_info, &input_outstage_info, ConvertPolicy::SATURATE)); - - if(lstm_params.has_peephole_opt()) + const TensorInfo input_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, + QuantizationInfo(lstm_params.input_intermediate_scale(), 0)); + const float input_to_input_scale = lstm_params.input_to_input_weights()->quantization_info().uniform().scale * + qinput.scale / lstm_params.input_intermediate_scale(); + ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, input, &input_weights_transposed, &eff_bias_info, + input_to_input_scale, &mm_out_info, &input_outstage_info)); + + const float recurrent_to_input_scale = + lstm_params.recurrent_to_input_weights()->quantization_info().uniform().scale * qoutput_state_in.scale / + lstm_params.input_intermediate_scale(); + ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, output_state_in, &recurrent_weights_transposed, + &eff_bias_info, recurrent_to_input_scale, &mm_out_info, + &input_outstage_info)); + + ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&input_outstage_info, &input_outstage_info, + &input_outstage_info, ConvertPolicy::SATURATE)); + + if (lstm_params.has_peephole_opt()) { - ARM_COMPUTE_RETURN_ON_ERROR(NEPixelWiseMultiplication::validate(cell_state_in, lstm_params.cell_to_input_weights(), &mm_out_info, 1.f, ConvertPolicy::SATURATE, - RoundingPolicy::TO_ZERO)); - const float cell_to_input_scale = std::pow(2, cell_shift) * lstm_params.cell_to_input_weights()->quantization_info().uniform().scale / lstm_params.input_intermediate_scale(); - ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier(cell_to_input_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift)); - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpOutputStage::validate(&mm_out_info, &eff_bias_info, &input_outstage_info, gemmlowp_info)); - ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&input_outstage_info, &input_outstage_info, &input_outstage_info, ConvertPolicy::SATURATE)); + ARM_COMPUTE_RETURN_ON_ERROR( + NEPixelWiseMultiplication::validate(cell_state_in, lstm_params.cell_to_input_weights(), &mm_out_info, + 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO)); + const float cell_to_input_scale = std::pow(2, cell_shift) * + lstm_params.cell_to_input_weights()->quantization_info().uniform().scale / + lstm_params.input_intermediate_scale(); + ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier( + cell_to_input_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift)); + ARM_COMPUTE_RETURN_ON_ERROR( + NEGEMMLowpOutputStage::validate(&mm_out_info, &eff_bias_info, &input_outstage_info, gemmlowp_info)); + ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&input_outstage_info, &input_outstage_info, + &input_outstage_info, ConvertPolicy::SATURATE)); } - if(has_layer_norm) + if (has_layer_norm) { const ITensorInfo *w_info = lstm_params.input_layer_norm_weights(); const ITensorInfo *b_info = lstm_params.input_gate_bias(); ARM_COMPUTE_RETURN_ON_ERROR(validate_layer_norm(input_outstage_info, *w_info, *b_info)); } - ARM_COMPUTE_RETURN_ON_ERROR(NEActivationLayer::validate(&input_outstage_info, &input_gate_info, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f))); + ARM_COMPUTE_RETURN_ON_ERROR( + NEActivationLayer::validate(&input_outstage_info, &input_gate_info, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f))); } // Cell. - ARM_COMPUTE_RETURN_ON_ERROR(NEPixelWiseMultiplication::validate(&forget_gate_info, cell_state_in, &forget_gate_info, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO)); - ARM_COMPUTE_RETURN_ON_ERROR(NEPixelWiseMultiplication::validate(&input_gate_info, cell_state_in, &cell_gate_info, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO)); - ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&forget_gate_info, &cell_gate_info, cell_state_out, ConvertPolicy::SATURATE)); - if(quantized_cell_clip > 0) + ARM_COMPUTE_RETURN_ON_ERROR(NEPixelWiseMultiplication::validate( + &forget_gate_info, cell_state_in, &forget_gate_info, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO)); + ARM_COMPUTE_RETURN_ON_ERROR(NEPixelWiseMultiplication::validate( + &input_gate_info, cell_state_in, &cell_gate_info, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO)); + ARM_COMPUTE_RETURN_ON_ERROR( + NEArithmeticAddition::validate(&forget_gate_info, &cell_gate_info, cell_state_out, ConvertPolicy::SATURATE)); + if (quantized_cell_clip > 0) { - ARM_COMPUTE_RETURN_ON_ERROR(NEActivationLayer::validate(cell_state_out, nullptr, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU, -quantized_cell_clip, - quantized_cell_clip))); + ARM_COMPUTE_RETURN_ON_ERROR( + NEActivationLayer::validate(cell_state_out, nullptr, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU, + -quantized_cell_clip, quantized_cell_clip))); } // Output gate. ARM_COMPUTE_RETURN_ERROR_ON(lstm_params.output_intermediate_scale() == 0); - const TensorInfo output_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.output_intermediate_scale(), 0)); - const float input_to_output_scale = input_to_output_weights->quantization_info().uniform().scale * qinput.scale / lstm_params.output_intermediate_scale(); - ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, input, &input_weights_transposed, &eff_bias_info, input_to_output_scale, &mm_out_info, &output_outstage_info)); - - const float recurrent_to_output_scale = recurrent_to_output_weights->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.output_intermediate_scale(); - ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, output_state_in, &recurrent_weights_transposed, &eff_bias_info, recurrent_to_output_scale, &mm_out_info, &output_outstage_info)); - - ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&output_outstage_info, &output_outstage_info, &output_outstage_info, ConvertPolicy::SATURATE)); - if(lstm_params.has_peephole_opt()) + const TensorInfo output_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, + QuantizationInfo(lstm_params.output_intermediate_scale(), 0)); + const float input_to_output_scale = input_to_output_weights->quantization_info().uniform().scale * qinput.scale / + lstm_params.output_intermediate_scale(); + ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, input, &input_weights_transposed, &eff_bias_info, + input_to_output_scale, &mm_out_info, &output_outstage_info)); + + const float recurrent_to_output_scale = recurrent_to_output_weights->quantization_info().uniform().scale * + qoutput_state_in.scale / lstm_params.output_intermediate_scale(); + ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, output_state_in, &recurrent_weights_transposed, + &eff_bias_info, recurrent_to_output_scale, &mm_out_info, + &output_outstage_info)); + + ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&output_outstage_info, &output_outstage_info, + &output_outstage_info, ConvertPolicy::SATURATE)); + if (lstm_params.has_peephole_opt()) { - ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(lstm_params.cell_to_output_weights(), 1, DataType::QSYMM16); + ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(lstm_params.cell_to_output_weights(), 1, + DataType::QSYMM16); // TODO(COMPMID-3395): Perform multiplication in the quantized domain in NEPixelWiseMultiplication // Here we are not using the output stage because all operations are done in float // const float cell_to_output_scale = std::pow(2, cell_shift) * lstm_params.cell_to_output_weights()->quantization_info().uniform().scale / lstm_params.output_intermediate_scale(); // ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier(cell_to_output_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift)); - ARM_COMPUTE_RETURN_ON_ERROR(NEPixelWiseMultiplication::validate(cell_state_out, lstm_params.cell_to_output_weights(), &output_outstage_info, 1.f, ConvertPolicy::SATURATE, - RoundingPolicy::TO_ZERO)); - ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&output_outstage_info, &output_outstage_info, &output_outstage_info, ConvertPolicy::SATURATE)); + ARM_COMPUTE_RETURN_ON_ERROR(NEPixelWiseMultiplication::validate( + cell_state_out, lstm_params.cell_to_output_weights(), &output_outstage_info, 1.f, ConvertPolicy::SATURATE, + RoundingPolicy::TO_ZERO)); + ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(&output_outstage_info, &output_outstage_info, + &output_outstage_info, ConvertPolicy::SATURATE)); } - if(has_layer_norm) + if (has_layer_norm) { const ITensorInfo *w_info = lstm_params.output_layer_norm_weights(); const ITensorInfo *b_info = output_gate_bias; @@ -853,85 +1198,103 @@ Status NEQLSTMLayer::validate(const ITensorInfo *input, } const TensorInfo output_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo); - ARM_COMPUTE_RETURN_ON_ERROR(NEActivationLayer::validate(&output_outstage_info, &output_gate_info, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC))); + ARM_COMPUTE_RETURN_ON_ERROR( + NEActivationLayer::validate(&output_outstage_info, &output_gate_info, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC))); // Hidden. - ARM_COMPUTE_RETURN_ON_ERROR(NEActivationLayer::validate(cell_state_out, &input_gate_info, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f))); + ARM_COMPUTE_RETURN_ON_ERROR( + NEActivationLayer::validate(cell_state_out, &input_gate_info, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f))); const TensorInfo hidden_mul_res(TensorShape(num_units, batch_size), 1, DataType::S32); const TensorInfo hidden_out_info(TensorShape(num_units, batch_size), 1, DataType::QASYMM8_SIGNED); - ARM_COMPUTE_RETURN_ON_ERROR(NEPixelWiseMultiplication::validate(&output_gate_info, &input_gate_info, &hidden_mul_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO)); + ARM_COMPUTE_RETURN_ON_ERROR(NEPixelWiseMultiplication::validate( + &output_gate_info, &input_gate_info, &hidden_mul_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO)); ARM_COMPUTE_RETURN_ERROR_ON(lstm_params.hidden_state_scale() == 0); const float hidden_state_scale = std::pow(2, -15) / lstm_params.hidden_state_scale() * std::pow(2, -15); - ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier(hidden_state_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift, /* ignore_epsilon */ true)); + ARM_COMPUTE_RETURN_ON_ERROR( + quantization::calculate_quantized_multiplier(hidden_state_scale, &gemmlowp_info.gemmlowp_multiplier, + &gemmlowp_info.gemmlowp_shift, /* ignore_epsilon */ true)); gemmlowp_info.gemmlowp_offset = lstm_params.hidden_state_zero(); gemmlowp_info.output_data_type = hidden_out_info.data_type(); - ARM_COMPUTE_RETURN_ON_ERROR(NEGEMMLowpOutputStage::validate(&hidden_mul_res, nullptr, &hidden_out_info, gemmlowp_info)); + ARM_COMPUTE_RETURN_ON_ERROR( + NEGEMMLowpOutputStage::validate(&hidden_mul_res, nullptr, &hidden_out_info, gemmlowp_info)); const bool projection_tensor_copy_required = num_units != output_size; // Projection. - if(lstm_params.has_projection()) + if (lstm_params.has_projection()) { - ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(recurrent_to_forget_weights, lstm_params.projection_weights()); + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(recurrent_to_forget_weights, + lstm_params.projection_weights()); ARM_COMPUTE_RETURN_ERROR_ON(qoutput_state_in.scale == 0); - const UniformQuantizationInfo qprojection = lstm_params.projection_weights()->quantization_info().uniform(); - const float projection_scale = qprojection.scale * lstm_params.hidden_state_scale() / qoutput_state_in.scale; - ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier(projection_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift)); + const UniformQuantizationInfo qprojection = lstm_params.projection_weights()->quantization_info().uniform(); + const float projection_scale = qprojection.scale * lstm_params.hidden_state_scale() / qoutput_state_in.scale; + ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier( + projection_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift)); gemmlowp_info.gemmlowp_offset = qoutput_state_in.offset; gemmlowp_info.gemmlowp_min_bound = std::numeric_limits<int8_t>::lowest(); gemmlowp_info.gemmlowp_max_bound = std::numeric_limits<int8_t>::max(); gemmlowp_info.output_data_type = DataType::QASYMM8_SIGNED; const TensorInfo projection_outstage_info(*output_state_out); - const TensorInfo projection_weights_transposed(TensorShape(output_size, num_units), 1, lstm_params.projection_weights()->data_type(), lstm_params.projection_weights()->quantization_info()); + const TensorInfo projection_weights_transposed(TensorShape(output_size, num_units), 1, + lstm_params.projection_weights()->data_type(), + lstm_params.projection_weights()->quantization_info()); - TensorInfo projection_mm_out_info{ mm_out_info }; + TensorInfo projection_mm_out_info{mm_out_info}; projection_mm_out_info.set_tensor_shape(TensorShape(output_size, batch_size)); - ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, &hidden_out_info, &projection_weights_transposed, &projection_eff_bias_info, projection_scale, &projection_mm_out_info, + ARM_COMPUTE_RETURN_ON_ERROR(validate_mm(gemmlowp_info, &hidden_out_info, &projection_weights_transposed, + &projection_eff_bias_info, projection_scale, &projection_mm_out_info, &projection_outstage_info)); - if(projection_tensor_copy_required) + if (projection_tensor_copy_required) { - ARM_COMPUTE_RETURN_ON_ERROR(NEQLSTMLayer::TensorCopyKernel::validate(*output_state_in, projection_outstage_info)); + ARM_COMPUTE_RETURN_ON_ERROR( + NEQLSTMLayer::TensorCopyKernel::validate(*output_state_in, projection_outstage_info)); } - ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(output_state_out, output_state_out, output_state_out, ConvertPolicy::SATURATE)); + ARM_COMPUTE_RETURN_ON_ERROR(NEArithmeticAddition::validate(output_state_out, output_state_out, output_state_out, + ConvertPolicy::SATURATE)); - if(projection_tensor_copy_required) + if (projection_tensor_copy_required) { - ARM_COMPUTE_RETURN_ON_ERROR(NEQLSTMLayer::TensorCopyKernel::validate(projection_outstage_info, *output_state_out)); + ARM_COMPUTE_RETURN_ON_ERROR( + NEQLSTMLayer::TensorCopyKernel::validate(projection_outstage_info, *output_state_out)); } - int8_t quantized_projection_clip{ 0 }; - if(lstm_params.projection_clip() > 0.0f) + int8_t quantized_projection_clip{0}; + if (lstm_params.projection_clip() > 0.0f) { quantized_projection_clip = quantize_qasymm8_signed(lstm_params.projection_clip(), qprojection); } - if(quantized_projection_clip > 0) + if (quantized_projection_clip > 0) { - ARM_COMPUTE_RETURN_ON_ERROR(NEActivationLayer::validate(output_state_out, nullptr, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU, -quantized_projection_clip, - quantized_projection_clip))); + ARM_COMPUTE_RETURN_ON_ERROR(NEActivationLayer::validate( + output_state_out, nullptr, + ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU, + -quantized_projection_clip, quantized_projection_clip))); } } else { - if(projection_tensor_copy_required) + if (projection_tensor_copy_required) { ARM_COMPUTE_RETURN_ON_ERROR(NEQLSTMLayer::TensorCopyKernel::validate(hidden_out_info, *output_state_out)); } } - if(cell_state_out->total_size() > 0) + if (cell_state_out->total_size() > 0) { ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(cell_state_in, cell_state_out); ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(cell_state_in, cell_state_out); } - if(output_state_out->total_size() > 0) + if (output_state_out->total_size() > 0) { ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input, output_state_out); ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(output_state_in, output_state_out); @@ -956,14 +1319,14 @@ void NEQLSTMLayer::run() _recurrent_to_forget_outstage.run(); _accumulate_input_recurrent_forget.run(); - if(_has_peephole) + if (_has_peephole) { _pixelwise_mul_cell_to_forget.run(); _cell_to_forget_outstage.run(); _accumulate_cell_forget.run(); } - if(_has_layer_norm) + if (_has_layer_norm) { NEScheduler::get().schedule(get_layer_norm(LayerNormGate::Forget).get(), Window::DimY); } @@ -978,7 +1341,7 @@ void NEQLSTMLayer::run() _recurrent_to_cell_outstage.run(); _accumulate_input_recurrent_modulation.run(); - if(_has_layer_norm) + if (_has_layer_norm) { NEScheduler::get().schedule(get_layer_norm(LayerNormGate::Cell).get(), Window::DimY); } @@ -986,7 +1349,7 @@ void NEQLSTMLayer::run() _cell_gate_tanh.run(); // Input gate - if(_has_cifg) + if (_has_cifg) { _input_gate_sub.run(); } @@ -998,14 +1361,14 @@ void NEQLSTMLayer::run() _recurrent_to_input_outstage.run(); _accumulate_input_recurrent_input.run(); - if(_has_peephole) + if (_has_peephole) { _pixelwise_mul_cell_to_input.run(); _cell_to_input_outstage.run(); _accumulate_cell_input.run(); } - if(_has_layer_norm) + if (_has_layer_norm) { NEScheduler::get().schedule(get_layer_norm(LayerNormGate::Input).get(), Window::DimY); } @@ -1018,7 +1381,7 @@ void NEQLSTMLayer::run() _pixelwise_mul_input_cell.run(); _add_forget_cell.run(); - if(_has_cell_clipping) + if (_has_cell_clipping) { _cell_clip.run(); } @@ -1029,14 +1392,14 @@ void NEQLSTMLayer::run() _mm_recurrent_to_output.run(); _recurrent_to_output_outstage.run(); _accumulate_input_recurrent_output.run(); - if(_has_peephole) + if (_has_peephole) { _pixelwise_mul_cell_to_output.run(); _cell_to_output_outstage.run(); _accumulate_cell_to_output.run(); } - if(_has_layer_norm) + if (_has_layer_norm) { NEScheduler::get().schedule(get_layer_norm(LayerNormGate::Output).get(), Window::DimY); } @@ -1049,31 +1412,31 @@ void NEQLSTMLayer::run() _hidden_outstage.run(); // Projection. - if(_has_projection) + if (_has_projection) { _mm_projection.run(); _projection_outstage.run(); - if(_projection_tensor_copy_required) + if (_projection_tensor_copy_required) { _projection_output_to_accumulate_copy.run(); } _accumulate_projection.run(); - if(_projection_tensor_copy_required) + if (_projection_tensor_copy_required) { _projection_accumulate_to_output_copy.run(); } - if(_has_projection_clipping) + if (_has_projection_clipping) { _projection_clip.run(); } } else { - if(_projection_tensor_copy_required) + if (_projection_tensor_copy_required) { _hidden_to_output_copy.run(); } @@ -1085,8 +1448,16 @@ void NEQLSTMLayer::run() void NEQLSTMLayer::prepare() { - if(!_is_prepared) + if (!_is_prepared) { + if (_convert_input_to_forget_weights_to_qsymm8) + { + _input_to_forget_weights_f32.allocator()->allocate(); + _input_to_forget_weights_symm8.allocator()->allocate(); + _dequantize_input_to_forget_weights.run(); + _quantize_input_to_forget_weights.run(); + } + // Pre-transpose weights to be used in GEMM. _input_to_forget_weights_transposed.allocator()->allocate(); _input_to_cell_weights_transposed.allocator()->allocate(); @@ -1102,16 +1473,25 @@ void NEQLSTMLayer::prepare() _transpose_recurrent_to_output_weights.run(); // Precompute effective biases - if(_has_cifg) + if (_has_cifg) { - std::fill_n(reinterpret_cast<int16_t *>(_ones.buffer()), _ones.info()->total_size() / _ones.info()->element_size(), 32767); + std::fill_n(reinterpret_cast<int16_t *>(_ones.buffer()), + _ones.info()->total_size() / _ones.info()->element_size(), 32767); } else { _input_to_input_eff_bias.allocator()->allocate(); _recurrent_to_input_eff_bias.allocator()->allocate(); - NEScheduler::get().schedule(_input_to_input_reduction.get(), Window::DimY); - NEScheduler::get().schedule(_recurrent_to_input_reduction.get(), Window::DimY); + + ITensorPack packII = {{TensorType::ACL_SRC, _input_to_input_weights}, + {TensorType::ACL_DST, &_input_to_input_eff_bias}}; + NEScheduler::get().schedule_op(_input_to_input_reduction.get(), Window::DimY, + _input_to_input_reduction->window(), packII); + + ITensorPack packRI = {{TensorType::ACL_SRC, _recurrent_to_input_weights}, + {TensorType::ACL_DST, &_recurrent_to_input_eff_bias}}; + NEScheduler::get().schedule_op(_recurrent_to_input_reduction.get(), Window::DimY, + _recurrent_to_input_reduction->window(), packRI); _input_to_input_weights_transposed.allocator()->allocate(); _recurrent_to_input_weights_transposed.allocator()->allocate(); @@ -1126,18 +1506,45 @@ void NEQLSTMLayer::prepare() _recurrent_to_cell_eff_bias.allocator()->allocate(); _input_to_output_eff_bias.allocator()->allocate(); _recurrent_to_output_eff_bias.allocator()->allocate(); - NEScheduler::get().schedule(_input_to_forget_reduction.get(), Window::DimY); - NEScheduler::get().schedule(_recurrent_to_forget_reduction.get(), Window::DimY); - NEScheduler::get().schedule(_input_to_cell_reduction.get(), Window::DimY); - NEScheduler::get().schedule(_recurrent_to_cell_reduction.get(), Window::DimY); - NEScheduler::get().schedule(_input_to_output_reduction.get(), Window::DimY); - NEScheduler::get().schedule(_recurrent_to_output_reduction.get(), Window::DimY); - - if(_has_projection) + + ITensorPack packIF = {{TensorType::ACL_SRC, _input_to_forget_weights}, + {TensorType::ACL_DST, &_input_to_forget_eff_bias}}; + NEScheduler::get().schedule_op(_input_to_forget_reduction.get(), Window::DimY, + _input_to_forget_reduction->window(), packIF); + + ITensorPack packRF = {{TensorType::ACL_SRC, _recurrent_to_forget_weights}, + {TensorType::ACL_DST, &_recurrent_to_forget_eff_bias}}; + NEScheduler::get().schedule_op(_recurrent_to_forget_reduction.get(), Window::DimY, + _recurrent_to_forget_reduction->window(), packRF); + + ITensorPack packIC = {{TensorType::ACL_SRC, _input_to_cell_weights}, + {TensorType::ACL_DST, &_input_to_cell_eff_bias}}; + NEScheduler::get().schedule_op(_input_to_cell_reduction.get(), Window::DimY, _input_to_cell_reduction->window(), + packIC); + + ITensorPack packRC = {{TensorType::ACL_SRC, _recurrent_to_cell_weights}, + {TensorType::ACL_DST, &_recurrent_to_cell_eff_bias}}; + NEScheduler::get().schedule_op(_recurrent_to_cell_reduction.get(), Window::DimY, + _recurrent_to_cell_reduction->window(), packRC); + + ITensorPack packIO = {{TensorType::ACL_SRC, _input_to_output_weights}, + {TensorType::ACL_DST, &_input_to_output_eff_bias}}; + NEScheduler::get().schedule_op(_input_to_output_reduction.get(), Window::DimY, + _input_to_output_reduction->window(), packIO); + + ITensorPack packRO = {{TensorType::ACL_SRC, _recurrent_to_output_weights}, + {TensorType::ACL_DST, &_recurrent_to_output_eff_bias}}; + NEScheduler::get().schedule_op(_recurrent_to_output_reduction.get(), Window::DimY, + _recurrent_to_output_reduction->window(), packRO); + + if (_has_projection) { _projection_eff_bias.allocator()->allocate(); - NEScheduler::get().schedule(_projection_reduction.get(), Window::DimY); - if(_projection_bias != nullptr) + ITensorPack pack = {{TensorType::ACL_SRC, _projection_weights}, + {TensorType::ACL_DST, &_projection_eff_bias}}; + NEScheduler::get().schedule_op(_projection_reduction.get(), Window::DimY, _projection_reduction->window(), + pack); + if (_projection_bias != nullptr) { _projection_bias_add.run(); _projection_bias->mark_as_unused(); @@ -1147,7 +1554,7 @@ void NEQLSTMLayer::prepare() _transpose_projection_weights.run(); _projection_weights->mark_as_unused(); - if(!_projection_tensor_copy_required) + if (!_projection_tensor_copy_required) { _hidden_gate.mark_as_unused(); _projection_accumulate_res.mark_as_unused(); |